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Collaborative information acquisition for data-driven decisions

机译:协作信息获取,以数据为依据的决策

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Data-driven predictive models are routinely used by government agencies and industry to improve the efficiency of their decision-making. In many cases, agencies acquire training data over time, incurring both direct and opportunity costs. Active learning can be used to acquire particularly informative training data that improve learning cost-effectively. However, when multiple models are used to inform decisions, prior work on active learning has significant limitations: either it improves the accuracy of predictive models without regard to how accuracy affects decision making or it addresses only decisions informed by a single predictive model. We propose that decisions informed by multiple models warrant a new kind of Collaborative Information Acquisition (CIA) policy that allows multiple learners to reason collaboratively about informative acquisitions. This paper focuses on tax audit decisions, which affect a vital revenue source for governments worldwide. Because audits are costly to conduct, active learning policies can help identify particularly informative audits to improve future decisions. However, existing active learning models are poorly suited to audit decisions, because audits are best informed by multiple predictive models. We develop a CIA policy to improve the decisions the models inform, and we demonstrate that CIA can substantially increase sales tax revenues. We also demonstrate that the CIA policy can improve decisions to target directly individuals in a donation campaign. Finally, we discuss and demonstrate the risks for decision making of the naive use of existing active learning policies.
机译:政府机构和行业通常使用数据驱动的预测模型来提高其决策效率。在许多情况下,代理机构会随着时间的推移获取培训数据,从而产生直接成本和机会成本。主动学习可用于获取特别有用的培训数据,从而有效地提高学习成本。但是,当使用多个模型来提供决策信息时,主动学习的先前工作有很多局限性:要么提高预测模型的准确性,要么不考虑准确性如何影响决策制定,或者仅处理由单个预测模型提供的决策。我们建议,由多种模型决定的决策需要一种新型的协作信息获取(CIA)策略,该策略允许多个学习者就信息获取进行协作性推理。本文重点讨论税收审计决策,这些决策会影响全球政府的重要收入来源。由于审核成本高昂,因此积极的学习策略可以帮助您识别内容特别丰富的审核,以改善未来的决策。但是,现有的主动学习模型不太适合审计决策,因为审计可以通过多种预测模型获得最佳信息。我们制定了CIA政策,以改善模型所告知的决策,并证明CIA可以大幅增加营业税收入。我们还证明,中央情报局(CIA)政策可以改善直接针对捐赠活动中的个人的决策。最后,我们讨论并演示了天真的使用现有主动学习策略的决策风险。

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