Complex network approaches to nonlinear time series analysis
暂无分享,去创建一个
[1] Emal Pasarly. Time , 2011, Encyclopedia of Evolutionary Psychological Science.
[2] Martin S. Fridson,et al. Trends , 1948, Bankmagazin.
[3] Tuan D. Pham,et al. Fuzzy recurrence plots , 2016, Fuzzy Recurrence Plots and Networks with Applications in Biomedicine.
[4] Charles F. F. Karney. Long-Time Correlations in the Stochastic Regime , 1983, Hamiltonian Dynamical Systems.
[5] R. Donner,et al. Recurrence‐Based Quantification of Dynamical Complexity in the Earth's Magnetosphere at Geospace Storm Timescales , 2018, Journal of Geophysical Research: Space Physics.
[6] Lixin Tian,et al. Degree distributions and motif profiles of limited penetrable horizontal visibility graphs , 2018, Physica A: Statistical Mechanics and its Applications.
[7] Dimitrios Tsiotas,et al. Visibility in the topology of complex networks , 2018, Physica A: Statistical Mechanics and its Applications.
[8] Javad Haddadnia,et al. Analysis of heart rate signals during meditation using visibility graph complexity , 2018, Cognitive Neurodynamics.
[9] Norbert Marwan,et al. Recurrence threshold selection for obtaining robust recurrence characteristics in different embedding dimensions. , 2018, Chaos.
[10] D. Ghosh,et al. Evidence of centrality dependent fractal behavior in high energy heavy ion interactions: Hint of two different sources , 2018, Chaos, Solitons & Fractals.
[11] Hongzhi Liu,et al. Exploring dynamic evolution and fluctuation characteristics of air traffic flow volume time series: A single waypoint case , 2018, Physica A: Statistical Mechanics and its Applications.
[12] D. Shepelyansky,et al. Small world of Ulam networks for chaotic Hamiltonian dynamics , 2018, Physical Review E.
[13] Mykola Pechenizkiy,et al. Assessment of visibility graph similarity as a synchronization measure for chaotic, noisy and stochastic time series , 2018, Social Network Analysis and Mining.
[14] Gemma Lancaster,et al. Surrogate data for hypothesis testing of physical systems , 2018, Physics Reports.
[15] L. Telesca,et al. Relation between HVG-irreversibility and persistence in the modified Langevin equation. , 2018, Chaos.
[16] Yang Li,et al. A New Epileptic Seizure Detection Method Based on Fusion Feature of Weighted Complex Network , 2018, ISNN.
[17] Liubov Tupikina,et al. Characterizing Flows by Complex Network Methods , 2018, A Mathematical Modeling Approach from Nonlinear Dynamics to Complex Systems.
[18] Shuguang Guan,et al. Cross and joint ordinal partition transition networks for multivariate time series analysis , 2018, Frontiers of Physics.
[19] Pengjian Shang,et al. Time irreversibility and intrinsics revealing of series with complex network approach , 2018, Physica A: Statistical Mechanics and its Applications.
[20] Michael Small,et al. Ordinal Network Measures — Quantifying Determinism in Data , 2018, 2018 IEEE International Symposium on Circuits and Systems (ISCAS).
[21] Daolin Xu,et al. Predicting catastrophes of non-autonomous networks with visibility graphs and horizontal visibility , 2018 .
[22] John F. Timms,et al. Parenclitic networks for predicting ovarian cancer , 2018, Oncotarget.
[23] Pengjian Shang,et al. Relative asynchronous index: a new measure for time series irreversibility , 2018 .
[24] Theodoros E. Karakasidis,et al. Dynamics and causalities of atmospheric and oceanic data identified by complex networks and Granger causality analysis , 2018 .
[25] Gurmukh Singh,et al. Multifractal analysis of multiparticle emission data in the framework of visibility graph and sandbox algorithm , 2018 .
[26] Yong Zou,et al. Recurrence Density Enhanced Complex Networks for Nonlinear Time Series Analysis , 2018, Int. J. Bifurc. Chaos.
[27] L. Telesca,et al. Time-reversibility in seismic sequences: Application to the seismicity of Mexican subduction zone , 2018 .
[28] Minggang Wang,et al. The parametric modified limited penetrable visibility graph for constructing complex networks from time series , 2018 .
[29] Reik V Donner,et al. Phase space reconstruction for non-uniformly sampled noisy time series. , 2018, Chaos.
[30] J. Kurths,et al. Temporal organization of magnetospheric fluctuations unveiled by recurrence patterns in the Dst index. , 2018, Chaos.
[31] Jürgen Kurths,et al. Multiplex recurrence networks. , 2018, Physical review. E.
[32] Michael Small,et al. On system behaviour using complex networks of a compression algorithm. , 2018, Chaos.
[33] Lixin Tian,et al. Exact results of the limited penetrable horizontal visibility graph associated to random time series and its application , 2017, Scientific Reports.
[34] G. Ambika,et al. Recurrence network measures for hypothesis testing using surrogate data: Application to black hole light curves , 2017, Commun. Nonlinear Sci. Numer. Simul..
[35] L. Lacasa,et al. Visibility graphs and symbolic dynamics , 2017, Physica D: Nonlinear Phenomena.
[36] Luciano Telesca,et al. Fractal, Informational and Topological Methods for the Analysis of Discrete and Continuous Seismic Time Series: An Overview , 2018 .
[37] J. Kurths,et al. Abrupt transitions in time series with uncertainties , 2018, Nature Communications.
[38] Shou-Wen Wang. Inferring dissipation from the violation of Fluctuation-Dissipation Theorem for Markov systems , 2017, 1710.10531.
[39] George Hloupis,et al. Temporal pattern in Corinth rift seismicity revealed by visibility graph analysis , 2017, Commun. Nonlinear Sci. Numer. Simul..
[40] Lei Wang,et al. EEG analysis of seizure patterns using visibility graphs for detection of generalized seizures , 2017, Journal of Neuroscience Methods.
[41] Jürgen Kurths,et al. Reconstructing multi-mode networks from multivariate time series , 2017 .
[42] Miki U. Kobayashi,et al. Network analysis of chaotic systems through unstable periodic orbits. , 2017, Chaos.
[43] M. Small,et al. Constructing ordinal partition transition networks from multivariate time series , 2017, Scientific Reports.
[44] M. Small,et al. Multiscale ordinal network analysis of human cardiac dynamics , 2017, Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences.
[45] Aneta Stefanovska,et al. Coupling functions:universal insights into dynamical interaction mechanisms , 2017, 1706.01810.
[46] R. Donner,et al. Dynamical anomalies in terrestrial proxies of North Atlantic climate variability during the last 2 ka , 2017, Climatic Change.
[47] Jürgen Kurths,et al. Mapping and discrimination of networks in the complexity-entropy plane. , 2017, Physical review. E.
[48] Tuan D. Pham,et al. From fuzzy recurrence plots to scalable recurrence networks of time series , 2017 .
[49] Michael Small,et al. Regenerating time series from ordinal networks. , 2017, Chaos.
[50] Lucas Lacasa,et al. Visibility graphs of random scalar fields and spatial data. , 2017, Physical review. E.
[51] Lucas Lacasa,et al. Visibility graphs for fMRI data: Multiplex temporal graphs and their modulations across resting-state networks , 2017, bioRxiv.
[52] Michael Small,et al. Memory and betweenness preference in temporal networks induced from time series , 2017, Scientific Reports.
[53] K. P. Harikrishnan,et al. Cross over of recurrence networks to random graphs and random geometric graphs , 2017 .
[54] E. Hernández‐García,et al. Clustering coefficient and periodic orbits in flow networks. , 2016, Chaos.
[55] Robert Jenssen,et al. Multiplex visibility graphs to investigate recurrent neural network dynamics , 2016, Scientific Reports.
[56] Lucas Lacasa,et al. Canonical horizontal visibility graphs are uniquely determined by their degree sequence , 2016, 1605.05222.
[57] Reik V Donner,et al. Spatio-temporal organization of dynamics in a two-dimensional periodically driven vortex flow: A Lagrangian flow network perspective. , 2016, Chaos.
[58] Iosif Meyerov,et al. Parenclitic Network Analysis of Methylation Data for Cancer Identification , 2015, PloS one.
[59] Rong Zhang,et al. Visibility graph analysis for re-sampled time series from auto-regressive stochastic processes , 2017, Commun. Nonlinear Sci. Numer. Simul..
[60] Martín Gómez Ravetti,et al. Time series characterization via horizontal visibility graph and Information Theory , 2016 .
[61] G. Ambika,et al. Characterization of chaotic attractors under noise: A recurrence network perspective , 2016, Commun. Nonlinear Sci. Numer. Simul..
[62] Michael Small,et al. Counting forbidden patterns in irregularly sampled time series. II. Reliability in the presence of highly irregular sampling. , 2016, Chaos.
[63] Michael Small,et al. Counting forbidden patterns in irregularly sampled time series. I. The effects of under-sampling, random depletion, and timing jitter. , 2016, Chaos.
[64] Chunhe Xie,et al. A visibility graph power averaging aggregation operator: A methodology based on network analysis , 2016, Comput. Ind. Eng..
[65] Wei-Dong Dang,et al. Multiscale limited penetrable horizontal visibility graph for analyzing nonlinear time series , 2016, Scientific Reports.
[66] Jiang Wang,et al. Functional brain networks in Alzheimer’s disease: EEG analysis based on limited penetrable visibility graph and phase space method , 2016 .
[67] K. Aihara,et al. Three-dimensional reconstruction of single-cell chromosome structure using recurrence plots , 2016, Scientific Reports.
[68] Christoph Räth,et al. Surrogate-assisted network analysis of nonlinear time series. , 2016, Chaos.
[69] Jürgen Kurths,et al. See–saw relationship of the Holocene East Asian–Australian summer monsoon , 2016, Nature Communications.
[70] Mahdi Yaghoobi,et al. Predicting protein structural classes based on complex networks and recurrence analysis. , 2016, Journal of theoretical biology.
[71] Z. Struzik,et al. Network tools for tracing the dynamics of heart rate after cardiac transplantation , 2016 .
[72] Qiang Zhang,et al. A Novel Feature Extraction Method for Epileptic Seizure Detection Based on the Degree Centrality of Complex Network and SVM , 2016, ICIC.
[73] Gene D. Sprechini,et al. Using ordinal partition transition networks to analyze ECG data. , 2016, Chaos.
[74] B. Luque,et al. Entropy and Renormalization in Chaotic Visibility Graphs , 2016 .
[75] Zhong-Ke Gao,et al. Multivariate weighted recurrence network inference for uncovering oil-water transitional flow behavior in a vertical pipe. , 2016, Chaos.
[76] Gang Wang,et al. Network structure entropy and its dynamical evolution for recurrence networks from earthquake magnitude time series , 2016 .
[77] Changgui Gu,et al. Visibility graphlet approach to chaotic time series. , 2016, Chaos.
[78] K P Harikrishnan,et al. Measure for degree heterogeneity in complex networks and its application to recurrence network analysis , 2016, Royal Society Open Science.
[79] Francesco Serinaldi,et al. Irreversibility and complex network behavior of stream flow fluctuations , 2016 .
[80] Ernestina Menasalvas Ruiz,et al. Combining complex networks and data mining: why and how , 2016, bioRxiv.
[81] Michael Small,et al. Examining k-nearest neighbour networks: Superfamily phenomena and inversion. , 2016, Chaos.
[82] Du Meng,et al. Time Irreversibility from Time Series for Analyzing Oil-in-Water Flow Transition , 2016 .
[83] M. Small,et al. Constructing networks from a dynamical system perspective for multivariate nonlinear time series. , 2016, Physical review. E.
[84] Zhiyong Gao,et al. Complex network theory-based condition recognition of electromechanical system in process industry , 2016 .
[85] Jürgen Kurths,et al. Disentangling regular and chaotic motion in the standard map using complex network analysis of recurrences in phase space. , 2016, Chaos.
[86] Luciano Telesca,et al. Multifractal analysis of visibility graph-based Ito-related connectivity time series. , 2016, Chaos.
[87] Klaus Lehnertz,et al. Evaluation of selected recurrence measures in discriminating pre-ictal and inter-ictal periods from epileptic EEG data , 2016, 1602.07974.
[88] C. Kulp,et al. Using forbidden ordinal patterns to detect determinism in irregularly sampled time series. , 2016, Chaos.
[89] Wei-Dong Dang,et al. Multivariate multiscale complex network analysis of vertical upward oil-water two-phase flow in a small diameter pipe , 2016, Scientific Reports.
[90] Lucas Lacasa,et al. Irreversibility of financial time series: a graph-theoretical approach , 2016, 1601.01980.
[91] Lucas Lacasa,et al. Sequential visibility-graph motifs. , 2015, Physical review. E.
[92] H. V. Ribeiro,et al. Characterization of river flow fluctuations via horizontal visibility graphs , 2015, 1510.07009.
[93] Jürgen Kurths,et al. Spatial network surrogates for disentangling complex system structure from spatial embedding of nodes , 2015, Physical review. E.
[94] G. Ambika,et al. Uniform framework for the recurrence-network analysis of chaotic time series. , 2015, Physical review. E.
[95] Dima Shepelyansky,et al. Google matrix , 2016, Scholarpedia.
[96] Lixin Tian,et al. Characterizing air quality data from complex network perspective , 2016, Environmental Science and Pollution Research.
[97] Huijie Yang,et al. Visibility Graph Based Time Series Analysis , 2015, PloS one.
[98] J. Donges,et al. Signatures of chaotic and stochastic dynamics uncovered with ϵ-recurrence networks , 2015, Proceedings of the Royal Society A: Mathematical, Physical and Engineering Sciences.
[99] Yong Hu,et al. Ordered visibility graph weighted averaging aggregation operator: A methodology based on network analysis , 2015, Comput. Ind. Eng..
[100] Ying Wah Teh,et al. Time-series clustering - A decade review , 2015, Inf. Syst..
[101] G. Litak,et al. Two phase flow bifurcation due to turbulence: transition from slugs to bubbles , 2015 .
[102] Songyang Lao,et al. Dynamical Systems Induced on Networks Constructed from Time Series , 2015, Entropy.
[103] Pouya Manshour,et al. Complex network approach to fractional time series. , 2015, Chaos.
[104] Joachim Peinke,et al. Fully developed turbulence in the view of horizontal visibility graphs , 2015, 1512.08200.
[105] Lucas Lacasa,et al. Time reversibility from visibility graphs of nonstationary processes. , 2015, Physical review. E, Statistical, nonlinear, and soft matter physics.
[106] Yong Deng,et al. Fast transformation from time series to visibility graphs. , 2015, Chaos.
[107] Wei-Xin Ren,et al. Selection of optimal threshold to construct recurrence plot for structural operational vibration measurements , 2015 .
[108] Alexander Y. Sun,et al. Global terrestrial water storage connectivity revealed using complex climate network analyses , 2015 .
[109] Zbigniew R. Struzik,et al. Chronographic Imprint of Age-Induced Alterations in Heart Rate Dynamical Organization , 2015, Front. Physiol..
[110] Jürgen Kurths,et al. Unified functional network and nonlinear time series analysis for complex systems science: The pyunicorn package. , 2015, Chaos.
[111] Susmita Bhaduri,et al. Electroencephalographic Data Analysis With Visibility Graph Technique for Quantitative Assessment of Brain Dysfunction , 2015, Clinical EEG and neuroscience.
[112] Haizhong An,et al. Multiresolution transmission of the correlation modes between bivariate time series based on complex network theory , 2015 .
[113] Eric Gossett,et al. Big Data: A Revolution That Will Transform How We Live, Work, and Think , 2015 .
[114] G. Górski,et al. Detection of two-phase flow patterns using the recurrence network analysis of pressure drop fluctuations , 2015 .
[115] Sergio Gómez,et al. Strategical incoherence regulates cooperation in social dilemmas on multiplex networks , 2015, Scientific Reports.
[116] Jonathan F. Donges,et al. Indications for a North Atlantic ocean circulation regime shift at the onset of the Little Ice Age , 2015, Climate Dynamics.
[117] Elizabeth Bradley,et al. Nonlinear time-series analysis revisited. , 2015, Chaos.
[118] Zbigniew R. Struzik,et al. Entropic Measures of Complexity of Short-Term Dynamics of Nocturnal Heartbeats in an Aging Population , 2015, Entropy.
[119] Zhong-Ke Gao,et al. Multiscale complex network for analyzing experimental multivariate time series , 2015 .
[120] Michael Small,et al. Time lagged ordinal partition networks for capturing dynamics of continuous dynamical systems. , 2015, Chaos.
[121] Sarah Ayad,et al. Quantifying sudden changes in dynamical systems using symbolic networks , 2015, 1501.06790.
[122] Enrico Ser-Giacomi,et al. Flow networks: a characterization of geophysical fluid transport. , 2014, Chaos.
[123] Jürgen Kurths,et al. Analyzing long-term correlated stochastic processes by means of recurrence networks: potentials and pitfalls. , 2014, Physical review. E, Statistical, nonlinear, and soft matter physics.
[124] Lucas Lacasa,et al. Network structure of multivariate time series , 2014, Scientific Reports.
[125] Jonathan F. Donges,et al. Complex Network Analysis of Recurrences , 2015 .
[126] Holger Lange,et al. Recurrence quantification and recurrence network analysis of global photosynthetic activity , 2015 .
[127] Zhong-Ke Gao,et al. Multivariate weighted complex network analysis for characterizing nonlinear dynamic behavior in two-phase flow , 2015 .
[128] Michael Small,et al. Long-term changes in the north-south asymmetry of solar activity: a nonlinear dynamics characterization using visibility graphs , 2014 .
[129] J. Foussier,et al. Modeling cardiorespiratory interaction during human sleep with complex networks , 2014 .
[130] Norbert Marwan,et al. Finding recurrence networks' threshold adaptively for a specific time series , 2014 .
[131] J. Hyttinen,et al. Characterization of dynamical systems under noise using recurrence networks: Application to simulated and EEG data , 2014 .
[132] Yan Li,et al. Analysis of alcoholic EEG signals based on horizontal visibility graph entropy , 2014, Brain Informatics.
[133] Huajiao Li,et al. Characteristics of the transmission of autoregressive sub-patterns in financial time series , 2014, Scientific Reports.
[134] Jun Wang,et al. A dynamic marker of very short-term heartbeat under pathological states via network analysis , 2014 .
[135] Dima Shepelyansky,et al. Google matrix analysis of directed networks , 2014, ArXiv.
[136] J. Mignot,et al. Labrador current variability over the last 2000 years , 2014 .
[137] Huajiao Li,et al. The transmission of fluctuant patterns of the forex burden based on international crude oil prices , 2014 .
[138] Z. Wang,et al. The structure and dynamics of multilayer networks , 2014, Physics Reports.
[139] Yi Zhao,et al. Geometrical invariability of transformation between a time series and a complex network. , 2014, Physical review. E, Statistical, nonlinear, and soft matter physics.
[140] Huajiao Li,et al. Transmission of linear regression patterns between time series: from relationship in time series to complex networks. , 2014, Physical review. E, Statistical, nonlinear, and soft matter physics.
[141] Jiang Wang,et al. WLPVG approach to the analysis of EEG-based functional brain network under manual acupuncture , 2014, Cognitive Neurodynamics.
[142] Massimiliano Zanin,et al. Parenclitic networks: uncovering new functions in biological data , 2014, Scientific Reports.
[143] Yang Hui-jie,et al. Row—column visibility graph approach to two-dimensional landscapes , 2014 .
[144] T E Karakasidis,et al. The application of complex network time series analysis in turbulent heated jets. , 2014, Chaos.
[145] Christof Schutte,et al. Finding metastable states in real-world time series with recurrence networks , 2014, 1404.7807.
[146] E. Ser-Giacomi,et al. Hydrodynamic provinces and oceanic connectivity from a transport network help designing marine reserves , 2014, 1407.6920.
[147] Zu-Guo Yu,et al. Topological properties and fractal analysis of a recurrence network constructed from fractional Brownian motions. , 2014, Physical review. E, Statistical, nonlinear, and soft matter physics.
[148] Ying Li,et al. Unraveling chaotic attractors by complex networks and measurements of stock market complexity. , 2014, Chaos.
[149] M. Small,et al. Characterizing system dynamics with a weighted and directed network constructed from time series data. , 2014, Chaos.
[150] Jürgen Kurths,et al. Non-linear regime shifts in Holocene Asian monsoon variability: potential impacts on cultural change and migratory patterns , 2014 .
[151] J. Donges,et al. Identifying nonlinearities by time-reversal asymmetry of vertex properties in visibility graphs , 2014 .
[152] Jürgen Kurths,et al. Detection of coupling directions with intersystem recurrence networks , 2014 .
[153] Lucas Lacasa,et al. On the degree distribution of horizontal visibility graphs associated with Markov processes and dynamical systems: diagrammatic and variational approaches , 2014, 1402.5368.
[154] J. Andrews,et al. Multidecadal to millennial marine climate oscillations across the Denmark Strait (~ 66° N) over the last 2000 cal yr BP , 2014 .
[155] Yan Li,et al. Analysis and Classification of Sleep Stages Based on Difference Visibility Graphs From a Single-Channel EEG Signal , 2014, IEEE Journal of Biomedical and Health Informatics.
[156] Martín Gómez Ravetti,et al. Distinguishing Noise from Chaos: Objective versus Subjective Criteria Using Horizontal Visibility Graph , 2014, PloS one.
[157] A. Snarskii,et al. From the time series to the complex networks: The parametric natural visibility graph , 2012, 1208.6365.
[158] Jari Saramäki,et al. Temporal Networks , 2011, Encyclopedia of Social Network Analysis and Mining.
[159] Marc Barthelemy,et al. Spatial Networks , 2010, Encyclopedia of Social Network Analysis and Mining.
[160] Saint John Walker. Big Data: A Revolution That Will Transform How We Live, Work, and Think , 2014 .
[161] Zbigniew R. Struzik,et al. Transition Network Entropy in Characterization of Complexity of Heart Rhythm After Heart Transplantation , 2014 .
[162] Zuntao Fu,et al. Time irreversibility of mean temperature anomaly variations over China , 2014, Theoretical and Applied Climatology.
[163] Aurobinda Routray,et al. Complex brain networks using Visibility Graph synchronization , 2013, 2013 Annual IEEE India Conference (INDICON).
[164] B Luque,et al. Quasiperiodic graphs at the onset of chaos. , 2013, Physical review. E, Statistical, nonlinear, and soft matter physics.
[165] Sankaran Mahadevan,et al. A Visibility Graph Averaging Aggregation Operator , 2013, ArXiv.
[166] Hui Yang,et al. Self-organized topology of recurrence-based complex networks. , 2013, Chaos.
[167] Jürgen Kurths,et al. Statistical Mechanics and Information-Theoretic Perspectives on Complexity in the Earth System , 2013, Entropy.
[168] J. Hyttinen,et al. Analysis of nonlinear dynamics of healthy and epileptic EEG signals using recurrence based complex network approach , 2013, 2013 6th International IEEE/EMBS Conference on Neural Engineering (NER).
[169] H. Stepan,et al. Classifying healthy women and preeclamptic patients from cardiovascular data using recurrence and complex network methods , 2013, Autonomic Neuroscience.
[170] Jürgen Kurths,et al. Multivariate recurrence network analysis for characterizing horizontal oil-water two-phase flow. , 2013, Physical review. E, Statistical, nonlinear, and soft matter physics.
[171] Zhong-Ke Gao,et al. Recurrence networks from multivariate signals for uncovering dynamic transitions of horizontal oil-water stratified flows , 2013 .
[172] Michael Small,et al. Complex network approach to characterize the statistical features of the sunspot series , 2013, 1307.6280.
[173] Zbigniew R. Struzik,et al. Complexity of the heart rhythm after heart transplantation by entropy of transition network for RR-increments of RR time intervals between heartbeats , 2013, 2013 35th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC).
[174] Xinbao Ning,et al. Visibility graph analysis on heartbeat dynamics of meditation training , 2013 .
[175] Sergio Gómez,et al. On the dynamical interplay between awareness and epidemic spreading in multiplex networks , 2013, Physical review letters.
[176] J. Kurths,et al. Estimating coupling directions in the cardiorespiratory system using recurrence properties , 2013, Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences.
[177] Dima Shepelyansky,et al. PageRank model of opinion formation on Ulam networks , 2013, ArXiv.
[178] Michael Small,et al. Complex networks from time series: Capturing dynamics , 2013, 2013 IEEE International Symposium on Circuits and Systems (ISCAS2013).
[179] Zhongke Gao,et al. Markov transition probability-based network from time series for characterizing experimental two-phase flow , 2013 .
[180] Zhongke Gao,et al. Local Property of Recurrence Network for Investigating Gas-Liquid Two-Phase Flow Characteristics , 2013 .
[181] N. Graham,et al. Continental-scale temperature variability during the past two millennia , 2013 .
[182] Xiaoying Tang,et al. New Approach to Epileptic Diagnosis Using Visibility Graph of High-Frequency Signal , 2013, Clinical EEG and neuroscience.
[183] Viktor Mayer-Schnberger,et al. Big Data: A Revolution That Will Transform How We Live, Work, and Think , 2013 .
[184] Michael Schulz,et al. Information from paleoclimate archives , 2013 .
[185] Zhong-Ke Gao,et al. Recurrence network analysis of experimental signals from bubbly oil-in-water flows , 2013 .
[186] Lucas Lacasa,et al. Horizontal Visibility graphs generated by type-II intermittency , 2013, Physical review. E, Statistical, nonlinear, and soft matter physics.
[187] J. Donges,et al. Functional network macroscopes for probing past and present Earth system dynamics , 2013 .
[188] Gholamreza Jafari,et al. Coupling between time series: A network view , 2013, 1301.1010.
[189] Norbert Marwan,et al. Geometric signature of complex synchronisation scenarios , 2013, 1301.0806.
[190] Jürgen Kurths,et al. Node-weighted interacting network measures improve the representation of real-world complex systems , 2013, ArXiv.
[191] A. Hutt,et al. Detecting recurrence domains of dynamical systems by symbolic dynamics. , 2012, Physical review letters.
[192] Jurgen Kurths,et al. Testing time series irreversibility using complex network methods , 2012, 1211.1162.
[193] Conrado J. Pérez Vicente,et al. Diffusion dynamics on multiplex networks , 2012, Physical review letters.
[194] Bartolome Luque,et al. Quasiperiodic Graphs: Structural Design, Scaling and Entropic Properties , 2012, J. Nonlinear Sci..
[195] Z. Struzik,et al. Community Structure in Network Representation of Increments in Beat-to-beat Time Intervals of the Heart in Patients After Heart Transplantation , 2013 .
[196] Liu Jie,et al. Comparison study of typical algorithms for reconstructing time series from the recurrence plot of dynamical systems , 2013 .
[197] Jürgen Kurths,et al. Late Holocene Asian summer monsoon dynamics from small but complex networks of paleoclimate data , 2013, Climate Dynamics.
[198] G. Feulner,et al. A volcanically triggered regime shift in the subpolar North Atlantic Ocean as a possible origin of the Little Ice Age , 2012 .
[199] Na Wang,et al. Visibility graph analysis on quarterly macroeconomic series of China based on complex network theory , 2012 .
[200] Zu-Guo Yu,et al. Multifractal analysis of solar flare indices and their horizontal visibility graphs , 2012 .
[201] Xiang Li,et al. Bridging Time Series Dynamics and Complex Network Theory with Application to Electrocardiogram Analysis , 2012, IEEE Circuits and Systems Magazine.
[202] Luciano Telesca,et al. Visibility graph analysis of wind speed records measured in central Argentina , 2012 .
[203] Jonathan F. Donges,et al. Geometric detection of coupling directions by means of inter-system recurrence networks , 2012, 1301.0934.
[204] H. Adeli,et al. Improved visibility graph fractality with application for the diagnosis of Autism Spectrum Disorder , 2012 .
[205] Frank Emmert-Streib,et al. Universal construction mechanism for networks from one-dimensional symbol sequences , 2012, Appl. Math. Comput..
[206] Jürgen Kurths,et al. Quantifying Causal Coupling Strength: A Lag-specific Measure For Multivariate Time Series Related To Transfer Entropy , 2012, Physical review. E, Statistical, nonlinear, and soft matter physics.
[207] J. Guiot,et al. Mechanisms for European summer temperature response to solar forcing over the last millennium , 2012 .
[208] Michael Small,et al. Phase coherence and attractor geometry of chaotic electrochemical oscillators. , 2012, Chaos.
[209] Sodeif Ahadpour,et al. Randomness criteria in binary visibility graph and complex network perspective , 2012, Inf. Sci..
[210] Hui Yang,et al. Multiscale recurrence analysis of long-term nonlinear and nonstationary time series , 2012 .
[211] Hideyuki Suzuki,et al. Characterizing global evolutions of complex systems via intermediate network representations , 2012, Scientific Reports.
[212] Toshihiro Tanizawa,et al. Networks with time structure from time series , 2012, 1205.4811.
[213] Zhong-Ke Gao,et al. Characterization of chaotic dynamic behavior in the gas–liquid slug flow using directed weighted complex network analysis , 2012 .
[214] Jonathan F. Donges,et al. Visibility graph analysis of geophysical time series: Potentials and possible pitfalls , 2012, Acta Geophysica.
[215] Zhongke Gao,et al. A directed weighted complex network for characterizing chaotic dynamics from time series , 2012 .
[216] J. Kurths,et al. Analytical framework for recurrence network analysis of time series. , 2012, Physical review. E, Statistical, nonlinear, and soft matter physics.
[217] Zhou Ting-Ting,et al. Limited penetrable visibility graph for establishing complex network from time series , 2012 .
[218] J. Kurths,et al. Power-laws in recurrence networks from dynamical systems , 2012, 1203.3345.
[219] Lucas Lacasa,et al. Visibility Algorithms: A Short Review , 2012 .
[220] Luciano Telesca,et al. Analysis of seismic sequences by using the method of visibility graph , 2012 .
[221] H. Adeli,et al. Visibility graph similarity: A new measure of generalized synchronization in coupled dynamic systems , 2012 .
[222] Jürgen Kurths,et al. Geometric and dynamic perspectives on phase-coherent and noncoherent chaos. , 2012, Chaos.
[223] M. Holland,et al. Abrupt onset of the Little Ice Age triggered by volcanism and sustained by sea‐ice/ocean feedbacks , 2012 .
[224] H. Goosse,et al. The role of forcing and internal dynamics in explaining the “Medieval Climate Anomaly” , 2011, Climate Dynamics.
[225] J. Parrondo,et al. Time series irreversibility: a visibility graph approach , 2011, 1108.1691.
[226] C. Timmreck,et al. Bi-decadal variability excited in the coupled ocean–atmosphere system by strong tropical volcanic eruptions , 2012, Climate Dynamics.
[227] Frank Emmert-Streib,et al. Parametric Construction of Episode Networks from Pseudoperiodic Time Series Based on Mutual Information , 2011, PloS one.
[228] Jürgen Kurths,et al. Nonlinear detection of paleoclimate-variability transitions possibly related to human evolution , 2011, Proceedings of the National Academy of Sciences.
[229] Xiang Li,et al. Detection and prediction of the onset of human ventricular fibrillation: an approach based on complex network theory. , 2011, Physical review. E, Statistical, nonlinear, and soft matter physics.
[230] Bin Deng,et al. Characterizing electrical signals evoked by acupuncture through complex network mapping: A new perspective on acupuncture , 2011, Comput. Methods Programs Biomed..
[231] Jürgen Kurths,et al. Inferring Indirect Coupling by Means of Recurrences , 2011, Int. J. Bifurc. Chaos.
[232] Matthias Dehmer,et al. Information Theory of Networks , 2011, Symmetry.
[233] Norbert Marwan,et al. Identification of dynamical transitions in marine palaeoclimate records by recurrence network analysis , 2011 .
[234] Ying Li,et al. Novel method of identifying time series based on network graphs , 2011, Complex..
[235] L. Amaral,et al. Duality between Time Series and Networks , 2011, PloS one.
[236] J Kurths,et al. Inner composition alignment for inferring directed networks from short time series. , 2011, Physical review letters.
[237] Dmitri V. Krioukov,et al. Hidden Variables in Bipartite Networks , 2011, Physical review. E, Statistical, nonlinear, and soft matter physics.
[238] Yong Tan,et al. A comparison of two methods for modeling large-scale data from time series as complex networksa) , 2011 .
[239] Jürgen Kurths,et al. Investigating the topology of interacting networks , 2011, 1102.3067.
[240] Norbert Marwan,et al. The geometry of chaotic dynamics — a complex network perspective , 2011, 1102.1853.
[241] H. Wanner,et al. 2500 Years of European Climate Variability and Human Susceptibility , 2011, Science.
[242] Tak-Chung Fu,et al. A review on time series data mining , 2011, Eng. Appl. Artif. Intell..
[243] Wen-Jie Xie,et al. Horizontal visibility graphs transformed from fractional Brownian motions: Topological properties versus the Hurst index , 2010, 1012.3850.
[244] Michael Small,et al. Recurrence-based time series analysis by means of complex network methods , 2010, Int. J. Bifurc. Chaos.
[245] Simone Severini,et al. A characterization of horizontal visibility graphs and combinatorics on words , 2010, 1010.1850.
[246] Jürgen Kurths,et al. Identifying complex periodic windows in continuous-time dynamical systems using recurrence-based methods. , 2010, Chaos.
[247] Lucas Lacasa,et al. Description of stochastic and chaotic series using visibility graphs. , 2010, Physical review. E, Statistical, nonlinear, and soft matter physics.
[248] Helge Drange,et al. External forcing as a metronome for Atlantic multidecadal variability , 2010 .
[249] Reuven Cohen,et al. Complex Networks: Structure, Robustness and Function , 2010 .
[250] Hojjat Adeli,et al. New diagnostic EEG markers of the Alzheimer’s disease using visibility graph , 2010, Journal of Neural Transmission.
[251] Ying-Cheng Lai,et al. Motif distributions in phase-space networks for characterizing experimental two-phase flow patterns with chaotic features. , 2010, Physical review. E, Statistical, nonlinear, and soft matter physics.
[252] Zhao Dong,et al. Comment on “Network analysis of human heartbeat dynamics” [Appl. Phys. Lett. 96, 073703 (2010)] , 2010 .
[253] István Z Kiss,et al. Effect of temperature on precision of chaotic oscillations in nickel electrodissolution. , 2010, Chaos.
[254] Jie Liu,et al. COMPARISON OF DIFFERENT DAILY STREAMFLOW SERIES IN US AND CHINA, UNDER A VIEWPOINT OF COMPLEX NETWORKS , 2010 .
[255] Annick Lesne,et al. Recurrence Plots for Symbolic Sequences , 2010, Int. J. Bifurc. Chaos.
[256] Mark Newman,et al. Networks: An Introduction , 2010 .
[257] Osvaldo A. Rosso,et al. Missing ordinal patterns in correlated noises , 2010 .
[258] Juan M R Parrondo,et al. Estimating dissipation from single stationary trajectories. , 2010, Physical review letters.
[259] Zhong-Ke Gao,et al. Erratum: “Complex network from time series based on phase space reconstruction” [Chaos 19, 033137 (2009)] , 2010 .
[260] Z. Shao. Network analysis of human heartbeat dynamics , 2010 .
[261] Jürgen Kurths,et al. Distinguishing direct from indirect interactions in oscillatory networks with multiple time scales. , 2010, Physical review letters.
[262] Jürgen Kurths,et al. Ambiguities in recurrence-based complex network representations of time series. , 2010, Physical review. E, Statistical, nonlinear, and soft matter physics.
[263] Dima Shepelyansky,et al. Google matrix and Ulam networks of intermittency maps , 2009, Physical review. E, Statistical, nonlinear, and soft matter physics.
[264] Zhi-Qiang Jiang,et al. Universal and nonuniversal allometric scaling behaviors in the visibility graphs of world stock market indices , 2009, 0910.2524.
[265] Jürgen Kurths,et al. Recurrence networks—a novel paradigm for nonlinear time series analysis , 2009, 0908.3447.
[266] Harry Eugene Stanley,et al. Catastrophic cascade of failures in interdependent networks , 2009, Nature.
[267] D L Shepelyansky,et al. Google matrix, dynamical attractors, and Ulam networks. , 2009, Physical review. E, Statistical, nonlinear, and soft matter physics.
[268] Wei-Xing Zhou,et al. Statistical properties of visibility graph of energy dissipation rates in three-dimensional fully developed turbulence , 2009, 0905.1831.
[269] José Amigó,et al. Permutation Complexity in Dynamical Systems , 2010 .
[270] Jürgen Kurths,et al. Recurrence-based evolving networks for time series analysis of complex systems , 2010 .
[271] Niels Wessel,et al. Recurrence based complex network analysis of cardiovascular variability data to predict pre-eclampsia , 2010 .
[272] Wei-Xing Zhou,et al. Superfamily classification of nonstationary time series based on DFA scaling exponents , 2009, 0912.2016.
[273] E. N. Sawardecker,et al. Comparison of methods for the detection of node group membership in bipartite networks , 2009 .
[274] Yue Yang,et al. Visibility graph approach to exchange rate series , 2009 .
[275] B. Luque,et al. Horizontal visibility graphs: exact results for random time series. , 2009, Physical review. E, Statistical, nonlinear, and soft matter physics.
[276] Alessandro Giuliani,et al. Simpler methods do it better: Success of Recurrence Quantification Analysis as a general purpose data analysis tool , 2009 .
[277] Grzegorz Litak,et al. Cracked rotor detection by recurrence plots , 2009 .
[278] Zhongke Gao,et al. Complex network from time series based on phase space reconstruction. , 2009, Chaos.
[279] Tsuyoshi Murata,et al. Detecting Communities from Bipartite Networks Based on Bipartite Modularities , 2009, 2009 International Conference on Computational Science and Engineering.
[280] Ken Wakita,et al. Extracting Multi-facet Community Structure from Bipartite Networks , 2009, 2009 International Conference on Computational Science and Engineering.
[281] J. Kurths,et al. Influence of paced maternal breathing on fetal–maternal heart rate coordination , 2009, Proceedings of the National Academy of Sciences.
[282] Emily A. Fogarty,et al. Visibility network of United States hurricanes , 2009 .
[283] N. Marwan,et al. Long-term asymmetry in the wings of the butterfly diagram , 2009 .
[284] Potsdam,et al. Complex networks in climate dynamics. Comparing linear and nonlinear network construction methods , 2009, 0907.4359.
[285] J. Kurths,et al. Complex network approach for recurrence analysis of time series , 2009, 0907.3368.
[286] Jianbo Wang,et al. COMPLEX NETWORK-BASED ANALYSIS OF AIR TEMPERATURE DATA IN CHINA , 2009 .
[287] Zhongke Gao,et al. Flow-pattern identification and nonlinear dynamics of gas-liquid two-phase flow in complex networks. , 2009, Physical review. E, Statistical, nonlinear, and soft matter physics.
[288] Santo Fortunato,et al. Community detection in graphs , 2009, ArXiv.
[289] Marco Thiel,et al. Recurrences determine the dynamics. , 2009, Chaos.
[290] Norbert Marwan,et al. The backbone of the climate network , 2009, 1002.2100.
[291] M. Mudelsee,et al. Trends, rhythms and events in Plio-Pleistocene African climate , 2009 .
[292] O. Sporns,et al. Complex brain networks: graph theoretical analysis of structural and functional systems , 2009, Nature Reviews Neuroscience.
[293] Jürgen Kurths,et al. Hypothesis test for synchronization: twin surrogates revisited. , 2009, Chaos.
[294] Michael Small,et al. Transforming Time Series into Complex Networks , 2009, Complex.
[295] J. C. Nuño,et al. The visibility graph: A new method for estimating the Hurst exponent of fractional Brownian motion , 2009, 0901.0888.
[296] Zhi-Qiang Jiang,et al. Degree distributions of the visibility graphs mapped from fractional Brownian motions and multifractal random walks , 2008, 0812.2099.
[297] Mark E. J. Newman,et al. Power-Law Distributions in Empirical Data , 2007, SIAM Rev..
[298] Strozzi Fernanda,et al. From Complex Networks to Time Series Analysis and Viceversa: Application to Metabolic Networks , 2009 .
[299] Michael Small,et al. Superfamily phenomena and motifs of networks induced from time series , 2008, Proceedings of the National Academy of Sciences.
[300] R. Donner,et al. Symbolic recurrence plots: A new quantitative framework for performance analysis of manufacturing networks , 2008 .
[301] Norbert Marwan,et al. A historical review of recurrence plots , 2008, 1709.09971.
[302] Kazuyuki Aihara,et al. Reproduction of distance matrices and original time series from recurrence plots and their applications , 2008 .
[303] Norbert Marwan,et al. Selection of recurrence threshold for signal detection , 2008 .
[304] W. Zhu,et al. On the asynchronization of hemispheric high-latitude solar activity , 2008 .
[305] M. Small,et al. Characterizing pseudoperiodic time series through the complex network approach , 2008 .
[306] Yutaka Shimada,et al. Analysis of Chaotic Dynamics Using Measures of the Complex Network Theory , 2008, ICANN.
[307] S. Havlin,et al. Pattern of climate network blinking links follows El Niño events , 2008 .
[308] Bin Wu,et al. Overlapping Community Detection in Bipartite Networks , 2008, 2008 IEEE/WIC/ACM International Conference on Web Intelligence and Intelligent Agent Technology.
[309] Matthäus Staniek,et al. Symbolic transfer entropy. , 2008, Physical review letters.
[310] Thomas Wilhelm,et al. What is a complex graph , 2008 .
[311] S. Havlin,et al. Climate networks around the globe are significantly affected by El Niño. , 2008, Physical review letters.
[312] Lucas Lacasa,et al. From time series to complex networks: The visibility graph , 2008, Proceedings of the National Academy of Sciences.
[313] Qi-Xiu Li,et al. Periodicity and Hemispheric Phase Relationship in High-Latitude Solar Activity , 2008 .
[314] H Kantz,et al. Direction of coupling from phases of interacting oscillators: a permutation information approach. , 2008, Physical review letters.
[315] M. Paluš,et al. Inferring the directionality of coupling with conditional mutual information. , 2008, Physical review. E, Statistical, nonlinear, and soft matter physics.
[316] Yue Yang,et al. Complex network-based time series analysis , 2008 .
[317] Chun-Biu Li,et al. Multiscale complex network of protein conformational fluctuations in single-molecule time series , 2008, Proceedings of the National Academy of Sciences.
[318] Mingzhou Ding,et al. Estimating Granger causality from fourier and wavelet transforms of time series data. , 2007, Physical review letters.
[319] S. Lehmann,et al. Biclique communities. , 2007, Physical review. E, Statistical, nonlinear, and soft matter physics.
[320] Z. Di,et al. Clustering coefficient and community structure of bipartite networks , 2007, 0710.0117.
[321] J Zhang,et al. Time series classification by complex network transformation , 2008 .
[322] R. Donner. Phase Coherence Analysis of Decadal-Scale Sunspot Activity on Both Solar Hemispheres , 2008 .
[323] J. Meiss. Symplectic maps , 2008 .
[324] Jürgen Kurths,et al. Recurrence plots for the analysis of complex systems , 2009 .
[325] R. Donner,et al. Scale-resolved phase coherence analysis of hemispheric sunspot activity: a new look at the north-south asymmetry , 2007 .
[326] S. Frenzel,et al. Partial mutual information for coupling analysis of multivariate time series. , 2007, Physical review letters.
[327] O A Rosso,et al. Distinguishing noise from chaos. , 2007, Physical review letters.
[328] Jürgen Kurths,et al. Estimation of the direction of the coupling by conditional probabilities of recurrence. , 2007, Physical review. E, Statistical, nonlinear, and soft matter physics.
[329] Miguel A. F. Sanjuán,et al. True and false forbidden patterns in deterministic and random dynamics , 2007 .
[330] M. Barber. Modularity and community detection in bipartite networks. , 2007, Physical review. E, Statistical, nonlinear, and soft matter physics.
[331] Enrico Rogora,et al. Time reversal, symbolic series and irreversibility of human heartbeat , 2007 .
[332] J. Kurths,et al. Structure–function relationship in complex brain networks expressed by hierarchical synchronization , 2007 .
[333] M. Paluš,et al. Directionality of coupling from bivariate time series: how to avoid false causalities and missed connections. , 2007, Physical review. E, Statistical, nonlinear, and soft matter physics.
[334] Ping Li,et al. Extracting hidden fluctuation patterns of Hang Seng stock index from network topologies , 2007 .
[335] A. Vicino,et al. Nonlinear time series analysis of dissolved oxygen in the Orbetello Lagoon (Italy) , 2007 .
[336] Eduardo Zorita,et al. European climate response to tropical volcanic eruptions over the last half millennium , 2007 .
[337] K. Hlavácková-Schindler,et al. Causality detection based on information-theoretic approaches in time series analysis , 2007 .
[338] A. Porporato,et al. Irreversibility and fluctuation theorem in stationary time series. , 2007, Physical review letters.
[339] R. Guimerà,et al. Module identification in bipartite and directed networks. , 2007, Physical review. E, Statistical, nonlinear, and soft matter physics.
[340] Jürgen Kurths,et al. Non-commercial Research and Educational Use including without Limitation Use in Instruction at Your Institution, Sending It to Specific Colleagues That You Know, and Providing a Copy to Your Institution's Administrator. All Other Uses, Reproduction and Distribution, including without Limitation Comm , 2022 .
[341] A. Knoll. The " Little Ice Age " : Northern Hemisphere Average Observations and Model Calculations , 2007 .
[342] Changsong Zhou,et al. Hierarchical organization unveiled by functional connectivity in complex brain networks. , 2006, Physical review letters.
[343] S. Bressler,et al. Granger Causality: Basic Theory and Application to Neuroscience , 2006, q-bio/0608035.
[344] Reinhold Kliegl,et al. Twin surrogates to test for complex synchronisation , 2006 .
[345] M Small,et al. Complex network from pseudoperiodic time series: topology versus dynamics. , 2006, Physical review letters.
[346] J. Kurths,et al. Spurious Structures in Recurrence Plots Induced by Embedding , 2006 .
[347] N. V. Zolotova,et al. Phase asynchrony of the north-south sunspot activity , 2006 .
[348] V. Latora,et al. Complex networks: Structure and dynamics , 2006 .
[349] M Small,et al. Detecting chaos in pseudoperiodic time series without embedding. , 2006, Physical review. E, Statistical, nonlinear, and soft matter physics.
[350] Alan M. Frieze,et al. Random graphs , 2006, SODA '06.
[351] Shlomo Havlin,et al. Origins of fractality in the growth of complex networks , 2005, cond-mat/0507216.
[352] Michael T. Gastner,et al. The spatial structure of networks , 2004, cond-mat/0407680.
[353] Binghong Wang,et al. An approach to Hang Seng Index in Hong Kong stock market based on network topological statistics , 2006 .
[354] M. Winterhalder,et al. 17 Granger Causality : Basic Theory and Application to Neuroscience , 2006 .
[355] Gregoire Nicolis,et al. Dynamical Aspects of Interaction Networks , 2005, Int. J. Bifurc. Chaos.
[356] Madalena Costa,et al. Broken asymmetry of the human heartbeat: loss of time irreversibility in aging and disease. , 2005, Physical review letters.
[357] J. L. Hudson,et al. Detection of synchronization for non-phase-coherent and non-stationary data , 2005 .
[358] L. da F. Costa,et al. Characterization of complex networks: A survey of measurements , 2005, cond-mat/0505185.
[359] Marta C. González,et al. Cycles and clustering in bipartite networks. , 2005, Physical review. E, Statistical, nonlinear, and soft matter physics.
[360] Matthew B Kennel,et al. Statistically relaxing to generating partitions for observed time-series data. , 2005, Physical review. E, Statistical, nonlinear, and soft matter physics.
[361] C. Bandt. Ordinal time series analysis , 2005 .
[362] R. Andrzejak,et al. Detection of weak directional coupling: phase-dynamics approach versus state-space approach. , 2005, Physical review. E, Statistical, nonlinear, and soft matter physics.
[363] Julie C. Mitchell,et al. Singular hydrophobicity patterns and net charge: a mesoscopic principle for protein aggregation/folding , 2004 .
[364] Jürgen Kurths,et al. How much information is contained in a recurrence plot , 2004 .
[365] Jürgen Kurths,et al. Multivariate recurrence plots , 2004 .
[366] U. Cubasch,et al. Climate evolution in the last five centuries simulated by an atmosphere-ocean model: global temperatures, the North Atlantic Oscillation and the Late Maunder Minimum , 2004 .
[367] K. Judd,et al. Estimating a generating partition from observed time series: symbolic shadowing. , 2004, Physical review. E, Statistical, nonlinear, and soft matter physics.
[368] Jean-Loup Guillaume,et al. Bipartite structure of all complex networks , 2004, Inf. Process. Lett..
[369] Matthew B Kennel,et al. Testing time symmetry in time series using data compression dictionaries. , 2004, Physical review. E, Statistical, nonlinear, and soft matter physics.
[370] P. deMenocal. African climate change and faunal evolution during the Pliocene-Pleistocene , 2004 .
[371] J. Kurths,et al. Estimation of dynamical invariants without embedding by recurrence plots. , 2004, Chaos.
[372] Mark Newman,et al. Detecting community structure in networks , 2004 .
[373] Paul J. Roebber,et al. The architecture of the climate network , 2004 .
[374] Matthieu Latapy,et al. Bipartite Graphs as Models of Complex Networks , 2003, CAAN.
[375] Eamonn J. Keogh,et al. On the Need for Time Series Data Mining Benchmarks: A Survey and Empirical Demonstration , 2002, Data Mining and Knowledge Discovery.
[376] Richard J. Telford,et al. All age–depth models are wrong: but how badly? , 2004 .
[377] Matthew B Kennel,et al. Estimating good discrete partitions from observed data: symbolic false nearest neighbors. , 2003, Physical review letters.
[378] Mark E. J. Newman,et al. The Structure and Function of Complex Networks , 2003, SIAM Rev..
[379] J. Kurths,et al. Comparing modern and Pleistocene ENSO-like influences in NW Argentina using nonlinear time series analysis methods , 2003, nlin/0303056.
[380] M. Barthelemy,et al. Connectivity distribution of spatial networks. , 2003, Physical review. E, Statistical, nonlinear, and soft matter physics.
[381] C. Finney,et al. A review of symbolic analysis of experimental data , 2003 .
[382] M Anghel,et al. Estimation of entropies and dimensions by nonlinear symbolic time series analysis. , 2002, Chaos.
[383] S. Shen-Orr,et al. Network motifs: simple building blocks of complex networks. , 2002, Science.
[384] Jürgen Kurths,et al. Influence of observational noise on the recurrence quantification analysis , 2002 .
[385] M. Newman. Assortative mixing in networks. , 2002, Physical review letters.
[386] B. Pompe,et al. Permutation entropy: a natural complexity measure for time series. , 2002, Physical review letters.
[387] M. Rosenblum,et al. Identification of coupling direction: application to cardiorespiratory interaction. , 2002, Physical review. E, Statistical, nonlinear, and soft matter physics.
[388] Alfredo Colosimo,et al. Nonlinear signal analysis methods in the elucidation of protein sequence-structure relationships. , 2002, Chemical reviews.
[389] J. Dall,et al. Random geometric graphs. , 2002, Physical review. E, Statistical, nonlinear, and soft matter physics.
[390] J. Kurths,et al. Recurrence-plot-based measures of complexity and their application to heart-rate-variability data. , 2002, Physical review. E, Statistical, nonlinear, and soft matter physics.
[391] M. Thiel,et al. Cross recurrence plot based synchronization of time series , 2002, physics/0201062.
[392] N. Marwan,et al. Nonlinear analysis of bivariate data with cross recurrence plots , 2002, physics/0201061.
[393] Kazuyuki Aihara,et al. Determinism Analysis with Iso-Directional Recurrence Plots , 2002 .
[394] S. Boccaletti,et al. Synchronization of chaotic systems , 2001 .
[395] Chi K. Tse,et al. A Surrogate Test for Pseudo‐periodic Time Series Data , 2002 .
[396] Michael Small,et al. Surrogate Test for Pseudoperiodic Time Series Data , 2001 .
[397] J. Sprott. Chaos and time-series analysis , 2001 .
[398] M. Rosenblum,et al. Detecting direction of coupling in interacting oscillators. , 2001, Physical review. E, Statistical, nonlinear, and soft matter physics.
[399] Albert-László Barabási,et al. Statistical mechanics of complex networks , 2001, ArXiv.
[400] Y. Lai,et al. What symbolic dynamics do we get with a misplaced partition? On the validity of threshold crossings analysis of chaotic time-series , 2001 .
[401] A. Turner,et al. From Isovists to Visibility Graphs: A Methodology for the Analysis of Architectural Space , 2001 .
[402] Jürgen Kurths,et al. Synchronization - A Universal Concept in Nonlinear Sciences , 2001, Cambridge Nonlinear Science Series.
[403] Kennel,et al. Symbolic approach for measuring temporal "irreversibility" , 2000, Physical review. E, Statistical physics, plasmas, fluids, and related interdisciplinary topics.
[404] Crowley,et al. Atmospheric science: Methane rises from wetlands , 2011, Nature.
[405] Schreiber,et al. Measuring information transfer , 2000, Physical review letters.
[406] T. Schreiber,et al. Surrogate time series , 1999, chao-dyn/9909037.
[407] R. Quiroga,et al. Learning driver-response relationships from synchronization patterns. , 1999, Physical review. E, Statistical physics, plasmas, fluids, and related interdisciplinary topics.
[408] Albert,et al. Emergence of scaling in random networks , 1999, Science.
[409] M. Weigt,et al. On the properties of small-world network models , 1999, cond-mat/9903411.
[410] Philippe Faure,et al. A new method to estimate the Kolmogorov entropy from recurrence plots: its application to neuronal signals , 1998 .
[411] A. Giuliani,et al. Detecting deterministic signals in exceptionally noisy environments using cross-recurrence quantification , 1998 .
[412] J. Kurths,et al. TEST FOR NONLINEAR DYNAMICAL BEHAVIOR IN SYMBOL SEQUENCES , 1998 .
[413] Duncan J. Watts,et al. Collective dynamics of ‘small-world’ networks , 1998, Nature.
[414] Antonio Politi,et al. Guidelines for the construction of a generating partition in the standard map , 1997 .
[415] M. Casdagli. Recurrence plots revisited , 1997 .
[416] Liaofu Luo,et al. Periodicity of base correlation in nucleotide sequence , 1997 .
[417] A. Giuliani,et al. Recurrence quantification analysis of the logistic equation with transients , 1996 .
[418] Antonio Politi,et al. Symbolic encoding in symplectic maps , 1996 .
[419] P. Rapp,et al. Re-examination of the evidence for low-dimensional, nonlinear structure in the human electroencephalogram. , 1996, Electroencephalography and clinical neurophysiology.
[420] Cees Diks,et al. Reversibility as a criterion for discriminating time series , 1995 .
[421] J. A. Stewart,et al. Nonlinear Time Series Analysis , 2015 .
[422] M. Paluš. Testing for nonlinearity using redundancies: quantitative and qualitative aspects , 1994, comp-gas/9406002.
[423] J. Theiler,et al. Generalized redundancies for time series analysis , 1994, comp-gas/9405006.
[424] Leila De Floriani,et al. Line-of-Sight Communication on Terrain Models , 1994, Int. J. Geogr. Inf. Sci..
[425] Ioannis G. Tollis,et al. Algorithms for Drawing Graphs: an Annotated Bibliography , 1988, Comput. Geom..
[426] George Nagy,et al. Modelling and Visualization of Spatial Data in GIS , 2002 .
[427] L. Tsimring,et al. The analysis of observed chaotic data in physical systems , 1993 .
[428] Ramon Oliver,et al. On the asymmetry of solar activity , 1993 .
[429] E. Ott. Chaos in Dynamical Systems: Contents , 1993 .
[430] J. Zbilut,et al. Embeddings and delays as derived from quantification of recurrence plots , 1992 .
[431] Werner Ebeling,et al. Word frequency and entropy of symbolic sequences: a dynamical perspective , 1992 .
[432] J. Meiss. Symplectic maps, variational principles, and transport , 1992 .
[433] A. Lichtenberg,et al. Regular and Chaotic Dynamics , 1992 .
[434] H. Abarbanel,et al. Determining embedding dimension for phase-space reconstruction using a geometrical construction. , 1992, Physical review. A, Atomic, molecular, and optical physics.
[435] Wentian Li,et al. Long-range correlation and partial 1/fα spectrum in a noncoding DNA sequence , 1992 .
[436] James Theiler,et al. Testing for nonlinearity in time series: the method of surrogate data , 1992 .
[437] A. J. Lawrance,et al. Directionality and Reversibility in Time Series , 1991 .
[438] H. Tong. Non-linear time series. A dynamical system approach , 1990 .
[439] E. Kostelich,et al. Characterization of an experimental strange attractor by periodic orbits. , 1989, Physical review. A, General physics.
[440] Young,et al. Inferring statistical complexity. , 1989, Physical review letters.
[441] Cvitanovic,et al. Invariant measurement of strange sets in terms of cycles. , 1988, Physical review letters.
[442] Grebogi,et al. Unstable periodic orbits and the dimensions of multifractal chaotic attractors. , 1988, Physical review. A, General physics.
[443] D. Ruelle,et al. Recurrence Plots of Dynamical Systems , 1987 .
[444] Theiler,et al. Spurious dimension from correlation algorithms applied to limited time-series data. , 1986, Physical review. A, General physics.
[445] P. Grassberger. Toward a quantitative theory of self-generated complexity , 1986 .
[446] Fraser,et al. Independent coordinates for strange attractors from mutual information. , 1986, Physical review. A, General physics.
[447] P. Grassberger,et al. Generating partitions for the dissipative Hénon map , 1985 .
[448] D. Ruelle,et al. Ergodic theory of chaos and strange attractors , 1985 .
[449] A. Wolf,et al. Determining Lyapunov exponents from a time series , 1985 .
[450] Terry A. Welch,et al. A Technique for High-Performance Data Compression , 1984, Computer.
[451] P. Grassberger. Generalized dimensions of strange attractors , 1983 .
[452] P. Grassberger,et al. Characterization of Strange Attractors , 1983 .
[453] F. Takens. Detecting strange attractors in turbulence , 1981 .
[454] James P. Crutchfield,et al. Geometry from a Time Series , 1980 .
[455] A. Robock. The "Little Ice Age": Northern Hemisphere Average Observations and Model Calculations , 1979, Science.
[456] Tomás Lozano-Pérez,et al. An algorithm for planning collision-free paths among polyhedral obstacles , 1979, CACM.
[457] J. Schnakenberg. Network theory of microscopic and macroscopic behavior of master equation systems , 1976 .
[458] O. Rössler. An equation for continuous chaos , 1976 .
[459] John A. Eddy,et al. The Maunder Minimum , 1976, Science.
[460] G. Weiss,et al. Time-reversibility of linear stochastic processes , 1975, Journal of Applied Probability.
[461] R G Sachs,et al. Time reversal. , 1972, Science.
[462] C. Granger. Investigating causal relations by econometric models and cross-spectral methods , 1969 .
[463] Sharon L. Milgram,et al. The Small World Problem , 1967 .
[464] E. Lorenz. Deterministic nonperiodic flow , 1963 .
[465] N. Rashevsky. Life, information theory, and topology , 1955 .
[466] A. Milsom,et al. Note on the observed differences in spottedness of the Sun's northern and southern hemispheres , 1955 .
[467] R. Macarthur. Fluctuations of Animal Populations and a Measure of Community Stability , 1955 .
[468] S. Brereton. Life , 1876, The Indian medical gazette.