RelationLines

Author:

Chen Wei1,Xia Jing2,Wang Xumeng1ORCID,Wang Yi1,Chen Jun3,Chang Liang4

Affiliation:

1. Zhejiang University, State Key Lab of CAD8CG, China

2. Zhejiang University, State Key Lab of CAD8CG and Alibaba Group, China

3. Zhejiang University, State Key Lab of CAD8CG, Guangzhou, China

4. Guilin University of Electronic Technology, China

Abstract

The increased accessibility of urban sensor data and the popularity of social network applications is enabling the discovery of crowd mobility and personal communication patterns. However, studying the egocentric relationships of an individual can be very challenging because available data may refer to direct contacts, such as phone calls between individuals, or indirect contacts, such as paired location presence. In this article, we develop methods to integrate three facets extracted from heterogeneous urban data (timelines, calls, and locations) through a progressive visual reasoning and inspection scheme. Our approach uses a detect-and-filter scheme such that, prior to visual refinement and analysis, a coarse detection is performed to extract the target individual and construct the timeline of the target. It then detects spatio-temporal co-occurrences or call-based contacts to develop the egocentric network of the individual. The filtering stage is enhanced with a line-based visual reasoning interface that facilitates a flexible and comprehensive investigation of egocentric relationships and connections in terms of time, space, and social networks. The integrated system, RelationLines, is demonstrated using a dataset that contains taxi GPS data, cell-base mobility data, mobile calling data, microblog data, and point-of-interest (POI) data from a city with millions of citizens. We examine the effectiveness and efficiency of our system with three case studies and user review.

Funder

National Natural Science Foundation of China

National 973 Program of China

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Theoretical Computer Science

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