Applying mobile phone data to travel behaviour research: A literature review
暂无分享,去创建一个
[1] J. Jucker,et al. An Empirical Study of Travel Time Variability and Travel Choice Behavior , 1982 .
[2] Peter R. Stopher,et al. Processing GPS data from travel surveys , 2005 .
[3] C. Bhat,et al. Comparative Analysis of Global Positioning System–Based and Travel Survey–Based Data: , 2006 .
[4] Emilio Frazzoli,et al. A review of urban computing for mobile phone traces: current methods, challenges and opportunities , 2013, UrbComp '13.
[5] Chandra R. Bhat,et al. Modeling intra-household interactions and group decision-making , 2005 .
[6] Sylvia Y. He. Effect of School Quality and Residential Environment on Mode Choice of School Trips , 2011 .
[7] Arnaud Browet,et al. Social Event Detection in Massive Mobile Phone Data Using Probabilistic Location Inference , 2011, 2011 IEEE Third Int'l Conference on Privacy, Security, Risk and Trust and 2011 IEEE Third Int'l Conference on Social Computing.
[8] Reid Ewing,et al. Travel and the Built Environment: A Synthesis , 2001 .
[9] Yu Zheng,et al. Trajectory Data Mining , 2015, ACM Trans. Intell. Syst. Technol..
[10] L. Capra,et al. Ubiquitous Sensing for Mapping Poverty in Developing Countries , 2013 .
[11] Yu Liu,et al. The promises of big data and small data for travel behavior (aka human mobility) analysis , 2016, Transportation research. Part C, Emerging technologies.
[12] Axel Küpper,et al. OpenMobileNetwork: extending the web of data by a dataset for mobile networks and devices , 2012, I-SEMANTICS '12.
[13] Pavlos S. Kanaroglou,et al. Activity–Travel Behaviour Research: Conceptual Issues, State of the Art, and Emerging Perspectives on Behavioural Analysis and Simulation Modelling , 2007 .
[14] Georgios K. Ouzounis,et al. Smart cities of the future , 2012, The European Physical Journal Special Topics.
[15] Xiaofang Zhou,et al. From trajectories to activities: a spatio-temporal join approach , 2009, LBSN '09.
[16] M. Boarnet,et al. The gender gap in non-work travel: The relative roles of income earning potential and land use , 2015 .
[17] Sylvia Y. He. Will you escort your child to school? The effect of spatial and temporal constraints of parental employment , 2013 .
[18] William G. Griswold,et al. Mobility Detection Using Everyday GSM Traces , 2006, UbiComp.
[19] Peter Vovsha,et al. Applying GPS Data to Understand Travel Behavior, Volume II: Guidelines , 2014 .
[20] Billy M. Williams,et al. Comparative Evaluation of Reported Speeds from Corresponding Fixed-Point and Probe-Based Detection Systems , 2012 .
[21] Vincent D. Blondel,et al. A survey of results on mobile phone datasets analysis , 2015, EPJ Data Science.
[22] Petter Holme,et al. Predictability of population displacement after the 2010 Haiti earthquake , 2012, Proceedings of the National Academy of Sciences.
[23] Joseph M. Hellerstein,et al. MAD Skills: New Analysis Practices for Big Data , 2009, Proc. VLDB Endow..
[24] Agachai Sumalee,et al. Probabilistic Fusion of Vehicle Features for Reidentification and Travel Time Estimation Using Video Image Data , 2012 .
[25] Peter Nijkamp,et al. Mobile phone data from GSM networks for traffic parameter and urban spatial pattern assessment: a review of applications and opportunities , 2011, GeoJournal.
[26] Vitaly Shmatikov,et al. Robust De-anonymization of Large Sparse Datasets , 2008, 2008 IEEE Symposium on Security and Privacy (sp 2008).
[27] Jari Saramäki,et al. Inferring human mobility using communication patterns , 2014, Scientific Reports.
[28] Deborah Estrin,et al. SensLoc: sensing everyday places and paths using less energy , 2010, SenSys '10.
[29] E. I. Pas,et al. Intrapersonal variability in daily urban travel behavior: Some additional evidence , 1995 .
[30] Martin Raubal,et al. Correlating mobile phone usage and travel behavior - A case study of Harbin, China , 2012, Comput. Environ. Urban Syst..
[31] Yihong Yuan,et al. Analyzing and geo-visualizing individual human mobility patterns using mobile call records , 2010, 2010 18th International Conference on Geoinformatics.
[32] Liang Liu,et al. Estimating Origin-Destination Flows Using Mobile Phone Location Data , 2011, IEEE Pervasive Computing.
[33] Ryosuke Shibasaki,et al. Activity-Aware Map: Identifying Human Daily Activity Pattern Using Mobile Phone Data , 2010, HBU.
[34] Marta C. González,et al. Origin-destination trips by purpose and time of day inferred from mobile phone data , 2015 .
[35] T. Tettamanti,et al. Mobile Phone Location Area Based Traffic Flow Estimation in Urban Road Traffic , 2014 .
[36] Peter R. Stopher,et al. Review of GPS Travel Survey and GPS Data-Processing Methods , 2014 .
[37] J. Manyika. Big data: The next frontier for innovation, competition, and productivity , 2011 .
[38] Norbert Brändle,et al. Supporting large-scale travel surveys with smartphones – A practical approach , 2014 .
[39] Jure Leskovec,et al. Friendship and mobility: user movement in location-based social networks , 2011, KDD.
[40] Darren M. Scott,et al. An integrated spatio-temporal GIS toolkit for exploring intra-household interactions , 2008 .
[41] Francis K. H. Quek,et al. Sensor-fusion walking-in-place interaction technique using mobile devices , 2012, 2012 IEEE Virtual Reality Workshops (VRW).
[42] Yuwei Chen,et al. Human Behavior Cognition Using Smartphone Sensors , 2013, Sensors.
[43] P. Nijkamp,et al. Data from mobile phone operators , 2015 .
[44] Miguel A. Labrador,et al. Automating mode detection for travel behaviour analysis by using global positioning systemsenabled mobile phones and neural networks , 2010 .
[45] Robert M. Groves,et al. Total Survey Error: Past, Present, and Future , 2010 .
[46] F. Witlox,et al. Key research themes on travel behavior, lifestyle, and sustainable urban mobility , 2016 .
[47] Chaogui Kang,et al. Intra-urban human mobility patterns: An urban morphology perspective , 2012 .
[48] Marta C. González,et al. Analyzing Cell Phone Location Data for Urban Travel , 2015 .
[49] Brian D. Taylor,et al. Gender, Race, and Travel Behavior: Analysis of Household-Serving Travel and Commuting in San Francisco Bay Area , 1998 .
[50] Zbigniew Smoreda,et al. Passive Mobile Phone Dataset to Construct Origin-destination Matrix: Potentials and Limitations , 2015 .
[51] Soora Rasouli,et al. Activity-based models of travel demand: promises, progress and prospects , 2014 .
[52] Jie Yang,et al. Indoor Localization Using Improved RSS-Based Lateration Methods , 2009, GLOBECOM 2009 - 2009 IEEE Global Telecommunications Conference.
[53] Genevieve Giuliano,et al. Factors affecting children’s journeys to school: a joint escort-mode choice model , 2017 .
[54] Peter Widhalm,et al. Transport mode detection with realistic Smartphone sensor data , 2012, Proceedings of the 21st International Conference on Pattern Recognition (ICPR2012).
[55] R. Noland,et al. Travel time variability: A review of theoretical and empirical issues , 2002 .
[56] Martin Lanzendorf,et al. Mobility Styles and Travel Behavior: Application of a Lifestyle Approach to Leisure Travel , 2002 .
[57] Albert-László Barabási,et al. Understanding individual human mobility patterns , 2008, Nature.
[58] J. Cox,et al. Quantifying travel behavior for infectious disease research: a comparison of data from surveys and mobile phones , 2014, Scientific Reports.
[59] Michel Bierlaire,et al. Route choice modeling with network-free data , 2008 .
[60] E. I. Pas,et al. Socio-demographics, activity participation and travel behavior , 1999 .
[61] Albert-László Barabási,et al. Limits of Predictability in Human Mobility , 2010, Science.
[62] Moustafa Youssef,et al. The Horus location determination system , 2008 .
[63] Fernando García,et al. Identifying and Tracking Pedestrians Based on Sensor Fusion and Motion Stability Predictions , 2010, Sensors.
[64] Antonio Lima,et al. Personalized routing for multitudes in smart cities , 2015, EPJ Data Science.
[65] C. Bhat,et al. A Comparative Analysis of GPS-Based and Travel Survey-based Data , 2006 .
[66] Deborah Estrin,et al. Using mobile phones to determine transportation modes , 2010, TOSN.
[67] Randall Guensler,et al. Elimination of the Travel Diary: Experiment to Derive Trip Purpose from Global Positioning System Travel Data , 2001 .
[68] L. Taylor. No place to hide? The ethics and analytics of tracking mobility using mobile phone data , 2016 .
[69] Jeffrey M Casello,et al. Classification of automobile and transit trips from Smartphone data: Enhancing accuracy using spatial statistics and GIS , 2016 .
[70] Ling Liu,et al. Protecting Location Privacy with Personalized k-Anonymity: Architecture and Algorithms , 2008, IEEE Transactions on Mobile Computing.
[71] Stefano Mizzaro,et al. Where do you Roll Today? Trajectory Prediction by SpaceRank and Physics Models , 2009 .
[72] Carlo Ratti,et al. Understanding individual mobility patterns from urban sensing data: A mobile phone trace example , 2013 .
[73] K. Axhausen,et al. Activity‐based approaches to travel analysis: conceptual frameworks, models, and research problems , 1992 .
[74] Philip S. Yu,et al. Transportation mode detection using mobile phones and GIS information , 2011, GIS.
[75] István Varga,et al. Route Choice Estimation Based on Cellular Signaling Data , 2012 .
[76] Tom Morton,et al. Cell Phone Data and Travel Behavior Research: Symposium Summary Report , 2014 .
[77] Ling Bian,et al. From traces to trajectories: How well can we guess activity locations from mobile phone traces? , 2014 .
[78] Michael Batty,et al. The discrete dynamics of small-scale spatial events: agent-based models of mobility in carnivals and street parades , 2003, Int. J. Geogr. Inf. Sci..
[79] Hjp Harry Timmermans,et al. Extracting activity-travel diaries from GPS data: towards integrated semi-automatic imputation , 2014 .
[80] Pamela Murray-Tuite,et al. Model of Household Trip-Chain Sequencing in Emergency Evacuation , 2003 .
[81] Carme Miralles-Guasch,et al. Walking short distances. The socioeconomic drivers for the use of proximity in everyday mobility in Barcelona , 2014 .
[82] Chris Bachmann,et al. Multisensor Data Integration and Fusion in Traffic Operations and Management , 2012 .
[83] Tian Lan,et al. Zooming into individuals to understand the collective: A review of trajectory-based travel behaviour studies , 2014 .
[84] Daladier Jabba,et al. Evaluation of Location Obfuscation techniques for privacy in location based information systems , 2011, 2011 IEEE Third Latin-American Conference on Communications.
[85] Torsten Hägerstraand. WHAT ABOUT PEOPLE IN REGIONAL SCIENCE , 1970 .
[86] Laura Ferrari,et al. Urban Sensing Using Mobile Phone Network Data: A Survey of Research , 2014, ACM Comput. Surv..
[87] Emiliano Miluzzo,et al. A survey of mobile phone sensing , 2010, IEEE Communications Magazine.
[88] Carlos Carmona,et al. Travel Time Forecasting and Dynamic Origin-Destination Estimation for Freeways Based on Bluetooth Traffic Monitoring , 2010 .
[89] Arefeh A. Nasri,et al. How built environment affects travel behavior: A comparative analysis of the connections between land use and vehicle miles traveled in US cities , 2012 .
[90] Darren M. Scott,et al. Impact of different criteria for identifying intra-household interactions: a case study of household time allocation , 2011 .
[91] Gaetano Borriello,et al. Mobile Context Inference Using Low-Cost Sensors , 2005, LoCA.
[92] Michel Bierlaire,et al. A Probabilistic Map Matching Method for Smartphone GPS data , 2013 .
[93] Mark Birkin,et al. Estimating Individual Behaviour from Massive Social Data for an Urban Agent-Based Model , 2012 .
[94] N. McGuckin,et al. Examining Trip-Chaining Behavior: Comparison of Travel by Men and Women , 1999 .
[95] Hjp Harry Timmermans,et al. Transportation mode recognition using GPS and accelerometer data , 2013 .
[96] Jie Li,et al. Rethinking big data: A review on the data quality and usage issues , 2016 .
[97] Darren M. Scott,et al. Modeling constrained destination choice for shopping: a GIS-based, time-geographic approach , 2012 .
[98] Joseph S. Chen,et al. VACATION LIFESTYLE AND TRAVEL BEHAVIORS , 2009 .
[99] José J. Ramasco,et al. Exploring the potential of phone call data to characterize the relationship between social network and travel behavior , 2015 .
[100] Qingquan Li,et al. Activity identification from GPS trajectories using spatial temporal POIs' attractiveness , 2010, LBSN '10.
[101] Hani S. Mahmassani,et al. A complex network perspective for characterizing urban travel demand patterns: graph theoretical analysis of large-scale origin–destination demand networks , 2017 .
[102] Xuelong Li,et al. When Location Meets Social Multimedia , 2015, ACM Transactions on Intelligent Systems and Technology.
[103] Yusak O. Susilo,et al. Day-to-Day Interpersonal and Intrapersonal Variability of Individuals' Activity Spaces in a Developing Country , 2014 .
[104] J. Wolf. Applications of New Technologies in Travel Surveys , 2006 .
[105] Pu Wang,et al. Development of origin–destination matrices using mobile phone call data , 2014 .
[106] Mirco Musolesi,et al. Sensing meets mobile social networks: the design, implementation and evaluation of the CenceMe application , 2008, SenSys '08.
[107] Lingqian Hu,et al. Telecommuting, income, and out-of-home activities , 2015 .
[108] Feng Zhao,et al. Location and Mobility in a Sensor Network of Mobile Phones , 2007 .
[109] Sourav Bhattacharya,et al. Identifying Meaningful Places: The Non-parametric Way , 2009, Pervasive.
[110] César A. Hidalgo,et al. Unique in the Crowd: The privacy bounds of human mobility , 2013, Scientific Reports.
[111] Sylvia Y. He. Does flexitime affect choice of departure time for morning home-based commuting trips? Evidence from two regions in California , 2013 .
[112] Tim Ryley,et al. Use of non-motorised modes and life stage in Edinburgh , 2006 .
[113] Margaret Martonosi,et al. Ranges of human mobility in Los Angeles and New York , 2011, 2011 IEEE International Conference on Pervasive Computing and Communications Workshops (PERCOM Workshops).
[114] Michael G. McNally,et al. The Four Step Model , 2007 .
[115] N Taylor,et al. The transport data revolution: investigation into the data required to support and drive intelligent mobility , 2015 .
[116] Alex Pentland,et al. Predicting Personality Using Novel Mobile Phone-Based Metrics , 2013, SBP.
[117] Billur Barshan,et al. Human Activity Recognition Using Inertial/Magnetic Sensor Units , 2010, HBU.
[118] Ramón Cáceres,et al. Route classification using cellular handoff patterns , 2011, UbiComp '11.
[119] Tom Thomas,et al. Automatic trip and mode detection with MoveSmarter: first results from the Dutch Mobile Mobility Panel , 2015 .
[120] H. R. Miller,et al. The Data Avalanche is Here: Shouldn’t We Be Digging? , 2010 .
[121] Balázs Csanád Csáji,et al. Exploring the Mobility of Mobile Phone Users , 2012, ArXiv.
[122] Peter Widhalm,et al. Discovering urban activity patterns in cell phone data , 2015, Transportation.
[123] Marlon G. Boarnet,et al. Travel by design : the influence of urban form on travel , 2001 .
[124] Haijun Huang,et al. A combined trip distribution and assignment model for multiple user classes , 1992 .
[125] Kentaro Toyama,et al. Project Lachesis: Parsing and Modeling Location Histories , 2004, GIScience.
[126] Chaoming Song,et al. Modelling the scaling properties of human mobility , 2010, 1010.0436.
[127] Jan Westerholm,et al. Methods for deriving and calibrating privacy-preserving heat maps from mobile sports tracking application data , 2015 .
[128] Hui Zang,et al. Bayesian Inference for Localization in Cellular Networks , 2010, 2010 Proceedings IEEE INFOCOM.
[129] Craig R. Rindt,et al. The Activity-Based Approach , 2008 .
[130] Sachin Katti,et al. SpotFi: Decimeter Level Localization Using WiFi , 2015, SIGCOMM.
[131] Reid Ewing,et al. Travel and the Built Environment , 2010 .
[132] Rein Ahas,et al. Evaluating passive mobile positioning data for tourism surveys: An Estonian case study , 2008 .
[133] O. Järv,et al. Understanding monthly variability in human activity spaces: A twelve-month study using mobile phone call detail records , 2014 .
[134] Ryuichi Kitamura,et al. The Optimal Duration for a Travel Survey: Empirical Observations , 2009 .
[135] Roya Etminani-Ghasrodashti,et al. Modeling travel behavior by the structural relationships between lifestyle, built environment and non-working trips , 2015 .
[136] Xing Xie,et al. Mining Individual Life Pattern Based on Location History , 2009, 2009 Tenth International Conference on Mobile Data Management: Systems, Services and Middleware.
[137] Darren M. Scott,et al. GIS-based Map-matching: Development and Demonstration of a Postprocessing Map-matching Algorithm for Transportation Research , 2011, AGILE Conf..
[138] Daqiang Zhang,et al. NextCell: Predicting Location Using Social Interplay from Cell Phone Traces , 2015, IEEE Transactions on Computers.
[139] Takuya Maruyama,et al. Behavioural data collection using mobile phones , 2014 .
[140] Menglin Wang,et al. Understanding Activity Location Choice with Mobile Phone Data , 2014 .