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Eliciting Categorical Data for Optimal Aggregation

机译:筛选分类数据以获得最佳汇总

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Models for collecting and aggregating categorical data on crowdsourcing platforms typically fall into two broad categories: those assuming agents honest and consistent but with heterogeneous error rates, and those assuming agents strategic and seek to maximize their expected reward. The former often leads to tractable aggregation of elicited data, while the latter usually focuses on optimal elicitation and does not consider aggregation. In this paper, we develop a Bayesian model, wherein agents have differing quality of information, but also respond to incentives. Our model generalizes both categories and enables the joint exploration of optimal elicitation and aggregation. This model enables our exploration, both analytically and experimentally, of optimal aggregation of categorical data and optimal multiple-choice interface design.
机译:在众包平台上收集和汇总分类数据的模型通常分为两大类:假定代理商诚实且始终如一但具有不同错误率的模型,以及假定代理商具有战略意义并寻求最大化其预期报酬的模型。前者通常会导致引出数据的易处理汇总,而后者通常会集中在最佳引出上,而不考虑汇总。在本文中,我们开发了一种贝叶斯模型,其中,主体具有不同的信息质量,但也能对激励做出反应。我们的模型概括了这两个类别,并可以共同探索最佳诱导和聚集。该模型使我们能够在分析和实验上探索分类数据的最佳聚合和最佳的多项选择界面设计。

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