Abstract

Identifying group movement patterns of crowds and understanding group behaviors are valuable for urban planners, especially when the groups are special such as tourist groups. In this paper, we present a framework to discover tourist groups and investigate the tourist behaviors using mobile phone call detail records (CDRs). Unlike GPS data, CDRs are relatively poor in spatial resolution with low sampling rates, which makes it a big challenge to identify group members from thousands of tourists. Moreover, since touristic trips are not on a regular basis, no historical data of the specific group can be used to reduce the uncertainty of trajectories. To address such challenges, we propose a method called group movement pattern mining based on similarity (GMPMS) to discover tourist groups. To avoid large amounts of trajectory similarity measurements, snapshots of the trajectories are firstly generated to extract candidate groups containing co-occurring tourists. Then, considering that different groups may follow the same itineraries, additional traveling behavioral features are defined to identify the group members. Finally, with Hainan province as an example, we provide a number of interesting insights of travel behaviors of group tours as well as individual tours, which will be helpful for tourism planning and management.

Highlights

  • With the progress of location-acquisition techniques, a large amount of spatio-temporal data can be acquired from GPS, Wi-Fi, cellular networks and Location-Based Social Networks(LBSN) in the form of trajectories

  • We proposed a method called Group Movement Pattern Mining based on Similarity (GMPMS) to solve this problem by calculating the similarity between objects from multiple dimensions and is able to identify tourist groups from sparse Call Detail Records (CDRs) data

  • We present a framework to identify tourist groups and analyze the travel behaviors of group and individual tourists by using call record details (CDRs) data

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Summary

Introduction

With the progress of location-acquisition techniques, a large amount of spatio-temporal data can be acquired from GPS, Wi-Fi, cellular networks and Location-Based Social Networks(LBSN) in the form of trajectories. The increasing trajectory data enables us to discover knowledge that is meaningful in aiding the research of human mobility. Scientists could get deep understanding of the migration patterns of animals. These patterns consider the number of the snapshots corresponding to the time when the objects stay together as the measurement to judge whether they constitute a group. These patterns perform well on high-quality GPS data. For some trajectory data with low spatial resolution and sampling rate, these patterns may not be discovered correctly

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