Towards Reliable Hypothesis Validation in Social Sensing Applications

Dong Wang, D. Zhang, Chao Huang
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引用次数: 2

Abstract

Social sensing has become a new crowdsourcing application paradigm where humans function as sensors to report their observations about the physical world. While many previous studies in social sensing focus on the problem of ascertaining the reliability of data sources and the truthfulness of their reported claims (often known as truth discovery), this paper investigates a new problem of hypothesis validation where the goal is to validate some high-level statements (referred to as hypotheses) from the low-level statements (referred to as claims) embedded in the social sensing data. The truthfulness of hypotheses cannot be directly obtained from the truth discovery results and two key challenges are involved in solving the hypothesis validation problem: (i) how to match the hypotheses generated by end users to the relevant claims generated by social sensors? (ii) How to accurately validate the truthfulness of the hypotheses given the unknown reliability of data sources and unvetted truthfulness of the claims? This paper proposes a Reliable Hypothesis Validation (RHV) scheme to address the above challenges. In particular, we develop a critical claim selection approach to match the hypotheses with the relevant claims and derive an optimal solution to validate their truthfulness by exploring the complex relationship between hypotheses and claims. The performance of RHV scheme is evaluated on three datasets collected from real- world social sensing applications. The results show that the RHV scheme significantly outperformed the state-of-the-art baselines in terms of validating the truthfulness of hypotheses.
面向社会传感应用中的可靠假设验证
社会感知已经成为一种新的众包应用范例,人类作为传感器来报告他们对物理世界的观察。以往的许多社会感知研究都关注于确定数据源的可靠性及其报告主张的真实性(通常称为真相发现)的问题,而本文研究了假设验证的新问题,其目标是从嵌入在社会感知数据中的低级陈述(称为主张)中验证一些高级陈述(称为假设)。假设的真实性不能直接从真相发现结果中获得,解决假设验证问题涉及两个关键挑战:(i)如何将最终用户产生的假设与社会传感器产生的相关主张相匹配?(二)在数据源的可靠性未知和主张的真实性未经检验的情况下,如何准确地验证假设的真实性?本文提出了一种可靠假设验证(RHV)方案来解决上述问题。特别是,我们开发了一种关键主张选择方法,通过探索假设和主张之间的复杂关系,将假设与相关主张相匹配,并推导出验证其真实性的最优解。在实际社会传感应用中收集了三个数据集,对RHV方案的性能进行了评估。结果表明,在验证假设的真实性方面,RHV方案显着优于最先进的基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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