scispace - formally typeset
Journal ArticleDOI

Unveiling the complexity of human mobility by querying and mining massive trajectory data

Reads0
Chats0
TLDR
This work presents the results of a large-scale experiment, based on the detailed trajectories of tens of thousands private cars with on-board GPS receivers, tracked during weeks of ordinary mobile activity, showing the striking analytical power of massive collections of trajectory data in unveiling the complexity of human mobility.
Abstract
The technologies of mobile communications pervade our society and wireless networks sense the movement of people, generating large volumes of mobility data, such as mobile phone call records and Global Positioning System (GPS) tracks. In this work, we illustrate the striking analytical power of massive collections of trajectory data in unveiling the complexity of human mobility. We present the results of a large-scale experiment, based on the detailed trajectories of tens of thousands private cars with on-board GPS receivers, tracked during weeks of ordinary mobile activity. We illustrate the knowledge discovery process that, based on these data, addresses some fundamental questions of mobility analysts: what are the frequent patterns of people's travels? How big attractors and extraordinary events influence mobility? How to predict areas of dense traffic in the near future? How to characterize traffic jams and congestions? We also describe M-Atlas, the querying and mining language and system that makes this analytical process possible, providing the mechanisms to master the complexity of transforming raw GPS tracks into mobility knowledge. M-Atlas is centered onto the concept of a trajectory, and the mobility knowledge discovery process can be specified by M-Atlas queries that realize data transformations, data-driven estimation of the parameters of the mining methods, the quality assessment of the obtained results, the quantitative and visual exploration of the discovered behavioral patterns and models, the composition of mined patterns, models and data with further analyses and mining, and the incremental mining strategies to address scalability.

read more

Content maybe subject to copyright    Report

Citations
More filters
Journal ArticleDOI

Smart cities of the future

TL;DR: The state of the art, explaining the science of smart cities is defined and seven project areas are proposed: Integrated Databases for the Smart City, Sensing, Networking and the Impact of New Social Media, Modelling Network Performance, Mobility and Travel Behaviour, Modelled Urban Land Use, Transport and Economic Interactions, Decision Support as Urban Intelligence, Participatory Governance and Planning Structures for the smart city.
Journal ArticleDOI

Semantic trajectories modeling and analysis

TL;DR: A survey of the approaches and techniques for constructing trajectories from movement tracks, enriching trajectories with semantic information to enable the desired interpretations of movements, and using data mining to analyze semantic trajectories to extract knowledge about their characteristics.
Journal ArticleDOI

Returners and explorers dichotomy in human mobility

TL;DR: It is shown that returners and explorers play a distinct quantifiable role in spreading phenomena and that a correlation exists between their mobility patterns and social interactions.
Journal ArticleDOI

From taxi GPS traces to social and community dynamics: A survey

TL;DR: In this article, the authors provide an exhaustive survey of the work on mining taxi traces and provide a formalization of the data sets, along with an overview of different mechanisms for preprocessing the data.

17 From Taxi GPS Traces to Social and Community Dynamics: A Survey

TL;DR: An exhaustive survey of the work on mining traces of taxis equipped with GPS localizers, which discusses the different problems currently being researched, the various approaches proposed, and suggest new avenues of research.
References
More filters
Proceedings Article

A density-based algorithm for discovering clusters a density-based algorithm for discovering clusters in large spatial databases with noise

TL;DR: In this paper, a density-based notion of clusters is proposed to discover clusters of arbitrary shape, which can be used for class identification in large spatial databases and is shown to be more efficient than the well-known algorithm CLAR-ANS.
Proceedings Article

A density-based algorithm for discovering clusters in large spatial Databases with Noise

TL;DR: DBSCAN, a new clustering algorithm relying on a density-based notion of clusters which is designed to discover clusters of arbitrary shape, is presented which requires only one input parameter and supports the user in determining an appropriate value for it.
Journal ArticleDOI

Understanding individual human mobility patterns

TL;DR: In this article, the authors study the trajectory of 100,000 anonymized mobile phone users whose position is tracked for a six-month period and find that the individual travel patterns collapse into a single spatial probability distribution, indicating that humans follow simple reproducible patterns.
Journal ArticleDOI

OPTICS: ordering points to identify the clustering structure

TL;DR: A new algorithm is introduced for the purpose of cluster analysis which does not produce a clustering of a data set explicitly; but instead creates an augmented ordering of the database representing its density-based clustering structure.
Journal ArticleDOI

Limits of Predictability in Human Mobility

TL;DR: Analysis of the trajectories of people carrying cell phones reveals that human mobility patterns are highly predictable, and a remarkable lack of variability in predictability is found, which is largely independent of the distance users cover on a regular basis.
Related Papers (5)