Universal Bayes Consistency in Metric Spaces

Steve Hanneke, A. Kontorovich, Sivan Sabato, Roi Weiss
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引用次数: 45

Abstract

We show that a recently proposed 1-nearest-neighbor-based multiclass learning algorithm is universally strongly Bayes consistent in all metric spaces where such Bayes consistency is possible, making it an "optimistically universal" Bayes-consistent learner. This is the first learning algorithm known to enjoy this property; by comparison, k-NN and its variants are not generally universally Bayes consistent, except under additional structural assumptions, such as an inner product, a norm, finite doubling dimension, or a Besicovitch-type property.The metric spaces in which universal Bayes consistency is possible are the "essentially separable" ones — a new notion that we define, which is more general than standard separability. The existence of metric spaces that are not essentially separable is independent of the ZFC axioms of set theory. We prove that essential separability exactly characterizes the existence of a universal Bayes-consistent learner for the given metric space. In particular, this yields the first impossibility result for universal Bayes consistency.Taken together, these positive and negative results resolve the open problems posed in Kontorovich, Sabato, Weiss (2017).
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度量空间中的普遍贝叶斯一致性
我们证明了最近提出的基于1-近邻的多类学习算法在所有可能存在贝叶斯一致性的度量空间中是普遍强贝叶斯一致性的,使其成为“乐观普遍”贝叶斯一致性学习者。这是已知的第一个具有这种特性的学习算法;相比之下,k-NN及其变体通常不是普遍的贝叶斯一致的,除非在额外的结构假设下,例如内积,范数,有限倍维或besicovitch型性质。可能具有全称贝叶斯一致性的度量空间是“本质可分”的度量空间——这是我们定义的一个新概念,它比标准可分性更一般。非本质可分度量空间的存在性与集合论的ZFC公理无关。我们证明了对于给定度量空间,本质可分性精确地表征了普遍贝叶斯一致学习者的存在性。特别地,这产生了普遍贝叶斯一致性的第一个不可能结果。综上所述,这些积极和消极的结果解决了Kontorovich, Sabato, Weiss(2017)提出的开放性问题。
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