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Learning Minimum Volume Sets

机译:学习最小音量集

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摘要

Given a probability measure P and a reference measure μ, one is often interested in the minimum μ-measure set with P-measure at least α. Minimum volume sets of this type summarize the regions of greatest probability mass of P, and are useful for detecting anomalies and constructing confidence regions. This paper addresses the problem of estimating minimum volume sets based on independent samples distributed according to P. Other than these samples, no other information is available regarding P, but the reference measure μ is assumed to be known. We introduce rules for estimating minimum volume sets that parallel the empirical risk minimization and structural risk minimization principles in classification. As in classification, we show that the performances of our estimators are controlled by the rate of uniform convergence of empirical to true probabilities over the class from which the estimator is drawn. Thus we obtain finite sample size performance bounds in terms of VC dimension and related quantities. We also demonstrate strong universal consistency and an oracle inequality. Estimators based on histograms and dyadic partitions illustrate the proposed rules.
机译:给定一个概率测度P和一个参考测度μ,通常对最小测度设置为P测度至少为α感兴趣。这种类型的最小体积集总结了P的最大概率质量的区域,对于检测异常和构造置信区域很有用。本文解决了基于根据P分布的独立样本估算最小体积集的问题。除这些样本外,没有其他有关P的信息,但假定参考度量μ为已知。我们引入了与最小化经验风险最小化和结构风险最小化原则平行的最小数量集估计规则。正如在分类中一样,我们证明了估计器的性能受得出估计器的类上经验概率与真实概率的均匀收敛速度的控制。因此,我们根据VC维数和相关数量获得了有限的样本大小性能范围。我们还展示了强大的通用一致性和预言性。基于直方图和二元划分的估计量说明了所建议的规则。

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