Pengfei Wang, Dian Jiao, Leyou Yang, Bin Wang, Ruiyun Yu
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引用次数: 0
摘要
移动众感应利用庞大的参与者群体来收集感官数据,从而为数据收集提供了一种经济的解决方案。然而,由于参与者之间存在差异,感官数据的质量也大不相同,因此从不同质量的感官数据中提取真实信息至关重要。此外,考虑到参与者的固定时间和金钱成本,他们通常只执行部分任务。因此,在现实世界中收集到的数据集通常比较稀少。当前的真相发现方法很难适应不同稀疏度的数据集,尤其是在处理稀疏数据集时。在本文中,我们提出了一种基于超图的自适应 EM 真相发现方法 HGEM。HGEM 算法利用超图的拓扑特性对稀疏数据集进行建模,从而提高了其在评估参与者可靠性和待观察事件真实值方面的性能。基于模拟和真实世界场景的实验证明,HGEM 始终能达到更高的预测准确性。
Hypergraph-based Truth Discovery for Sparse Data in Mobile Crowdsensing
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 paper, 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.
期刊介绍:
ACM Transactions on Sensor Networks (TOSN) is a central publication by the ACM in the interdisciplinary area of sensor networks spanning a broad discipline from signal processing, networking and protocols, embedded systems, information management, to distributed algorithms. It covers research contributions that introduce new concepts, techniques, analyses, or architectures, as well as applied contributions that report on development of new tools and systems or experiences and experiments with high-impact, innovative applications. The Transactions places special attention on contributions to systemic approaches to sensor networks as well as fundamental contributions.