Hypergraph-based Truth Discovery for Sparse Data in Mobile Crowdsensing
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Published:2024-04-23
Issue:3
Volume:20
Page:1-23
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ISSN:1550-4859
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Container-title:ACM Transactions on Sensor Networks
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language:en
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Short-container-title:ACM Trans. Sen. Netw.
Author:
Wang Pengfei1ORCID,
Jiao Dian1ORCID,
Yang Leyou2ORCID,
Wang Bin3ORCID,
Yu Ruiyun2ORCID
Affiliation:
1. Dalian University of Technology, Dalian, China
2. Northeastern University, Shenyang, China
3. Dalian University, Dalian, China
Abstract
Mobile crowdsensing leverages the power of a vast group of participants to collect sensory data, thus presenting an economical solution for data collection. However, due to the variability among participants, the quality of sensory data varies significantly, making it crucial to extract truthful information from sensory data of differing quality. Additionally, given the fixed time and monetary costs for the participants, they typically only perform a subset of tasks. As a result, the datasets collected in real-world scenarios are usually sparse. Current truth discovery methods struggle to adapt to datasets with varying sparsity, especially when dealing with sparse datasets. In this article, we propose an adaptive Hypergraph-based EM truth discovery method, HGEM. The HGEM algorithm leverages the topological characteristics of hypergraphs to model sparse datasets, thereby improving its performance in evaluating the reliability of participants and the true value of the event to be observed. Experiments based on simulated and real-world scenarios demonstrate that HGEM consistently achieves higher predictive accuracy.
Funder
National Natural Science Foundation of China
China Postdoctoral Science Foundation
Science and Technology Project of Liaoning Province
Dalian Science and Technology Talent Innovation Support Plan for Outstanding Young Scholars
Open Project of Key Laboratory for Advanced Design and Intelligent Computing of the Ministry of Education
Fundamental Research Funds for the Central Universities
Publisher
Association for Computing Machinery (ACM)
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