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Bayesian modelling of community-based multidimensional trust in participatory sensing under data sparsity

机译:数据稀疏性下基于社区的参与式感知多维信任的贝叶斯模型

摘要

We propose a new Bayesian model for reliable aggregation of crowdsourced estimates of real-valued quantities in participatory sensing applications. Existing approaches focus on probabilistic modelling of user’s reliability as the key to accurate aggregation. However, these are either limited to estimating discrete quantities, or require a significant number of reports from each user to accurately model their reliability. To mitigate these issues, we adopt a community-based approach, which reduces the data required to reliably aggregate real-valued estimates, by leveraging correlations between the re- porting behaviour of users belonging to different communities. As a result, our method is up to 16.6% more accurate than existing state-of-the-art methods and is up to 49% more effective under data sparsity when used to estimate Wi-Fi hotspot locations in a real-world crowdsourcing application.
机译:我们提出了一种新的贝叶斯模型,用于在参与式传感应用中可靠汇总实际值的众包估计值。现有方法侧重于对用户可靠性进行概率建模,这是准确聚合的关键。但是,这些限制仅限于估计离散量,或者需要每个用户提供大量报告才能准确地对其可靠性进行建模。为了缓解这些问题,我们采用了基于社区的方法,该方法通过利用属于不同社区的用户的报告行为之间的相关性,减少了可靠地汇总实际价值估算所需的数据。因此,当用于估算实际众包应用中的Wi-Fi热点位置时,我们的方法比现有的最新技术提高了16.6%的精度,在数据稀疏情况下的效率提高了49%。 。

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