Abstract

The increasing popularity of smartphones and location-based service (LBS) has brought us a new experience of mobile crowdsourcing marked by the characteristics of network-interconnection and information-sharing. However, these mobile crowdsourcing applications suffer from various inferential attacks based on mobile behavioral factors, such as location semantic, spatiotemporal correlation, etc. Unfortunately, most of the existing techniques protect the participant’s location-privacy according to actual trajectories. Once the protection fails, data leakage will directly threaten the participant’s location-related private information. It open the issue of participating in mobile crowdsourcing service without actual locations. In this paper, we propose a mobility-aware trajectory-prediction solution, TMarkov, for achieving privacy-preserving mobile crowdsourcing. Specifically, we introduce a time-partitioning concept into the Markov model to overcome its traditional limitations. A new transfer model is constructed to record the mobile user’s time-varying behavioral patterns. Then, an unbiased estimation is conducted according to Gibbs Sampling method, because of the data incompleteness. Finally, we have the TMarkov model which characterizes the participant’s dynamic mobile behaviors. With TMarkov in place, a mobility-aware spatiotemporal trajectory is predicted for the mobile user to participate in the crowdsourcing application. Extensive experiments with real-world dataset demonstrate that TMarkov well balances the trade-off between privacy preservation and data usability.

Highlights

  • The mobile Internet has promoted an era of “internet of everything”, bringing people a new modern life marked by information interconnection

  • There are three parties involved in a mobile crowdsourcing application, the task publisher, platform, and participant

  • Mobility-Aware Trajectory Prediction we describe the functional components of the main results including: Time-related mobility perception, the model’s unbiased estimation, future behavioral-trajectory prediction, and the solution’s complexity analysis

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Summary

Introduction

The mobile Internet has promoted an era of “internet of everything”, bringing people a new modern life marked by information interconnection. With the help of informationsharing, mobile crowdsourcing has increasingly become a kind of popular solution for large-scale real-time missions [1]. There are three parties involved in a mobile crowdsourcing application, the task publisher, platform, and participant ( named mobile user). The platform recruits mobile users and assigns crowdsourcing tasks. The mobile users complete the assigned tasks and obtain the corresponding rewards. As a new type of data perception and service model, mobile crowdsourcing provides massive low-cost high-flexibility multisource data. According to these data, crowdsourcing platforms provide various mobile services. Mobile crowdsourcing has been widely implemented in many fields, including environmental monitoring, treatment, intelligent transportation, social services, etc

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