Elicitation complexity of statistical properties

Rafael M. Frongillo, Ian A. Kash
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引用次数: 28

Abstract

A property, or statistical functional, is said to be elicitable if it minimizes expected loss for some loss function. The study of which properties are elicitable sheds light on the capabilities and limitations of point estimation and empirical risk minimization. While recent work asks which properties are elicitable, we instead advocate for a more nuanced question: how many dimensions are required to indirectly elicit a given property? This number is called the elicitation complexity of the property. We lay the foundation for a general theory of elicitation complexity, including several basic results about how elicitation complexity behaves, and the complexity of standard properties of interest. Building on this foundation, our main result gives tight complexity bounds for the broad class of Bayes risks. We apply these results to several properties of interest, including variance, entropy, norms, and several classes of financial risk measures. We conclude with discussion and open directions.
统计性质的引出复杂性
如果一种性质或统计泛函使某些损失函数的预期损失最小化,就说它是可得的。对哪些属性是可引出的研究揭示了点估计和经验风险最小化的能力和局限性。虽然最近的工作问哪些属性是可引出的,但我们提倡一个更微妙的问题:需要多少维度才能间接引出给定的属性?这个数字称为属性的引出复杂度。我们为引出复杂性的一般理论奠定了基础,包括引出复杂性如何表现的几个基本结果,以及感兴趣的标准性质的复杂性。在此基础上,我们的主要结果给出了广义贝叶斯风险的严格复杂度界限。我们将这些结果应用于几个感兴趣的属性,包括方差、熵、规范和几类金融风险度量。我们以讨论和开放的方向结束。
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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