Understanding Spatiotemporal Patterns of Human Convergence and Divergence Using Mobile Phone Location Data
暂无分享,去创建一个
Tao Zhang | Ling Yin | Zhixiang Fang | Shih-Lung Shaw | Zhiyuan Zhao | Yang Xu | Xiping Yang | Yunong Lin
[1] M. Kwan. Gis methods in time‐geographic research: geocomputation and geovisualization of human activity patterns , 2004 .
[2] Martin Raubal,et al. Extracting Dynamic Urban Mobility Patterns from Mobile Phone Data , 2012, GIScience.
[3] Johan Wideberg,et al. Deriving origin destination data from a mobile phone network , 2007 .
[4] S. Strogatz,et al. Redrawing the Map of Great Britain from a Network of Human Interactions , 2010, PloS one.
[5] Baichuan Lu,et al. Traffic Flow Prediction Based on Wavelet Analysis, Genetic Algorithm and Artificial Neural Network , 2009, 2009 International Conference on Information Engineering and Computer Science.
[6] Chenghu Zhou,et al. A new insight into land use classification based on aggregated mobile phone data , 2013, Int. J. Geogr. Inf. Sci..
[7] Zbigniew Smoreda,et al. Moving and Calling: Mobile Phone Data Quality Measurements and Spatiotemporal Uncertainty in Human Mobility Studies , 2013, AGILE Conf..
[8] Ling Yin,et al. Understanding the bias of call detail records in human mobility research , 2016, Int. J. Geogr. Inf. Sci..
[9] Zbigniew Smoreda,et al. Discovering urban and country dynamics from mobile phone data with spatial correlation patterns , 2015 .
[10] Rein Ahas,et al. Mobile Positioning in Space–Time Behaviour Studies: Social Positioning Method Experiments in Estonia , 2007 .
[11] Yixiang Chen,et al. A trajectory clustering approach based on decision graph and data field for detecting hotspots , 2017, Int. J. Geogr. Inf. Sci..
[12] Michael Wegener,et al. Land-Use Transport Interaction Models , 2019, Handbook of Regional Science.
[13] Liang Liu,et al. Estimating Origin-Destination Flows Using Mobile Phone Location Data , 2011, IEEE Pervasive Computing.
[14] Enrique Frías-Martínez,et al. Adaptive non-parametric identification of dense areas using cell phone records for urban analysis , 2013, Eng. Appl. Artif. Intell..
[15] Ian H. Witten,et al. The WEKA data mining software: an update , 2009, SKDD.
[16] Yu Liu,et al. Towards Estimating Urban Population Distributions from Mobile Call Data , 2012 .
[17] Carlo Ratti,et al. Real-Time Urban Monitoring Using Cell Phones: A Case Study in Rome , 2011, IEEE Transactions on Intelligent Transportation Systems.
[18] Shih-Lung Shaw,et al. Exploratory data analysis of activity diary data: a space-time GIS approach , 2011 .
[19] Markus Friedrich,et al. Generating Trajectories from Mobile Phone Data , 2010 .
[20] Song Gao,et al. Discovering Spatial Interaction Communities from Mobile Phone Data , 2013 .
[21] Jussara M. Almeida,et al. A comparison of Foursquare and Instagram to the study of city dynamics and urban social behavior , 2013, UrbComp '13.
[22] Günther Sagl,et al. A Visual Analytics Approach for Extracting Spatio-Temporal Urban Mobility Information from Mobile Network Traffic , 2012, ISPRS Int. J. Geo Inf..
[23] Fahui Wang,et al. Urban land uses and traffic 'source-sink areas': Evidence from GPS-enabled taxi data in Shanghai , 2012 .
[24] Andrew W. Moore,et al. X-means: Extending K-means with Efficient Estimation of the Number of Clusters , 2000, ICML.
[25] Catherine Morency,et al. Smart card data use in public transit: A literature review , 2011 .
[26] Xing Xie,et al. Discovering regions of different functions in a city using human mobility and POIs , 2012, KDD.
[27] Dietmar Bauer,et al. Inferring land use from mobile phone activity , 2012, UrbComp '12.
[28] Torsten Hägerstraand. WHAT ABOUT PEOPLE IN REGIONAL SCIENCE , 1970 .
[29] Albert-László Barabási,et al. Understanding individual human mobility patterns , 2008, Nature.
[30] Ling Yin,et al. Estimating Potential Demand of Bicycle Trips from Mobile Phone Data - An Anchor-Point Based Approach , 2016, ISPRS Int. J. Geo Inf..
[31] Albert-László Barabási,et al. Limits of Predictability in Human Mobility , 2010, Science.
[32] Eric Delmelle,et al. Mapping collective human activity in an urban environment based on mobile phone data , 2014 .
[33] Carlo Ratti,et al. The City Browser: Utilizing Massive Call Data to Infer City Mobility Dynamics , 2014 .
[34] Margaret Martonosi,et al. Identifying Important Places in People's Lives from Cellular Network Data , 2011, Pervasive.
[35] Emilian Necula,et al. Dynamic Traffic Flow Prediction Based on GPS Data , 2014, 2014 IEEE 26th International Conference on Tools with Artificial Intelligence.
[36] Francisco Antunes,et al. Inferring Passenger Travel Demand to Improve Urban Mobility in Developing Countries Using Cell Phone Data: A Case Study of Senegal , 2016, IEEE Transactions on Intelligent Transportation Systems.
[37] F. Webster,et al. Urban Land-Use and Transport Interaction: Policies and Models , 1989 .
[38] Diansheng Guo,et al. Mapping Large Spatial Flow Data with Hierarchical Clustering , 2014, Trans. GIS.
[39] Shaowen Wang,et al. Latent spatio-temporal activity structures: a new approach to inferring intra-urban functional regions via social media check-in data , 2016, Geo spatial Inf. Sci..
[40] Francesco Pinna,et al. Cagliari and smart urban mobility: Analysis and comparison , 2016 .
[41] Francesco Pinna,et al. Benchmarking Smart Urban Mobility: A Study on Italian Cities , 2015, ICCSA.
[42] Hillel Bar-Gera,et al. Evaluation of a Cellular Phone-Based System for Measurements of Traffic Speeds and Travel Times: A Case Study from Israel , 2007 .
[43] Yu Liu,et al. Pervasive location acquisition technologies: Opportunities and challenges for geospatial studies , 2012, Comput. Environ. Urban Syst..
[44] Carlo Ratti,et al. Mobile Landscapes: Using Location Data from Cell Phones for Urban Analysis , 2006 .
[45] Mei-Po Kwan,et al. Analysis of human spatial behavior in a GIS environment: Recent developments and future prospects , 2000, J. Geogr. Syst..
[46] Carlo Ratti,et al. Exploring Universal Patterns in Human Home-Work Commuting from Mobile Phone Data , 2013, PloS one.
[47] Song Gao,et al. Spatio-Temporal Analytics for Exploring Human Mobility Patterns and Urban Dynamics in the Mobile Age , 2015, Spatial Cogn. Comput..
[48] Hui Zang,et al. Are call detail records biased for sampling human mobility? , 2012, MOCO.
[49] Toivo Vajakas,et al. Trajectory reconstruction from mobile positioning data using cell-to-cell travel time information , 2015, Int. J. Geogr. Inf. Sci..
[50] K. Shadan,et al. Available online: , 2012 .
[51] Chaogui Kang,et al. Incorporating spatial interaction patterns in classifying and understanding urban land use , 2016, Int. J. Geogr. Inf. Sci..
[52] Stefano Secci,et al. Estimating human trajectories and hotspots through mobile phone data , 2014, Comput. Networks.
[53] Qingquan Li,et al. Understanding aggregate human mobility patterns using passive mobile phone location data: a home-based approach , 2015, Transportation.