Active Learning for Classification with Abstention

S. Shekhar, M. Ghavamzadeh, T. Javidi
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引用次数: 14

Abstract

We consider the problem of binary classification with the caveat that the learner can abstain from declaring a label incurring a cost λ ∈ [0,1/2] in the process. This is referred to as the problem of binary classification with a fixed-cost of abstention. For this problem, we propose an active learning strategy that constructs a non-uniform partition of the input space and focuses sampling in the regions near the decision boundaries. Our proposed algorithm can work in all the commonly used active learning query models, namely membership-query, pool-based and stream-based. We obtain an upper bound on the excess risk of our proposed algorithm under standard smoothness and margin assumptions and demonstrate its minimax near-optimality by deriving a matching (modulo poly-logarithmic factors) lower bound. The achieved minimax rates are always faster than the corresponding rates in the passive setting, and furthermore the improvement increases with larger values of the smoothness and margin parameters.
基于弃权的分类主动学习
我们考虑二元分类问题的前提是,学习器可以避免声明一个标签,在这个过程中会产生代价λ∈[0,1/2]。这被称为具有固定弃权成本的二元分类问题。针对这一问题,我们提出了一种主动学习策略,该策略构建了输入空间的非均匀划分,并将采样集中在决策边界附近的区域。我们提出的算法适用于所有常用的主动学习查询模型,即成员查询模型、基于池的模型和基于流的模型。在标准平滑和边际假设下,我们得到了该算法的超额风险的上界,并通过推导匹配的(模多对数因子)下界证明了其极小极大近最优性。在被动条件下,所获得的极大极小速率总是快于相应的速率,并且随着平滑度和裕度参数值的增大,所获得的极大极小速率也随之增大。
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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