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Online Reputation and Polling Systems: Data Incest, Social Learning, and Revealed Preferences

机译:在线声誉和投票系统:数据乱伦,社会学习和显性偏好

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This paper considers online reputation and polling systems where individuals make recommendations based on their private observations and recommendations of friends. Such interaction of individuals and their social influence is modeled as social learning on a directed acyclic graph. Data incest (misinformation propagation) occurs due to unintentional reuse of identical actions in the formation of public belief in social learning; the information gathered by each agent is mistakenly considered to be independent. This results in overconfidence and bias in estimates of the state. Necessary and sufficient conditions are given on the structure of information exchange graph to mitigate data incest. Incest removal algorithms are presented. Experimental results on human subjects are presented to illustrate the effect of social influence and data incest on decision-making. These experimental results indicate that social learning protocols require careful design to handle and mitigate data incest. The incest removal algorithms are illustrated in an expectation polling system where participants in a poll respond with a summary of their friends' beliefs. Finally, the principle of revealed preferences arising in microeconomics theory is used to parse Twitter datasets to determine if social sensors are utility maximizers and then determine their utility functions.
机译:本文考虑了在线声誉和民意测验系统,其中个人根据自己的私人观察和朋友的推荐来提出建议。个体的这种互动及其社会影响被建模为有向无环图上的社会学习。数据乱伦(错误信息传播)的发生是由于在社交学习中公众信仰形成过程中无意中重复使用了相同的动作;每个代理商收集的信息被错误地认为是独立的。这导致对状态估计的过度自信和偏见。在信息交换图的结构上给出了充要条件,以减轻数据乱伦。介绍了乱伦移除算法。提出了关于人类受试者的实验结果,以说明社会影响力和乱伦数据对决策的影响。这些实验结果表明,社交学习协议需要仔细设计才能处理和缓解数据乱伦。在期望轮询系统中说明了乱伦移除算法,在该系统中,参与调查的参与者以其朋友的信仰摘要作为响应。最后,微观经济学理论中出现的显性偏好原则被用于解析Twitter数据集,以确定社交传感器是否是效用最大化器,然后确定其效用函数。

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