一种普遍无偏的综合观测分类方法

Zixi Wei, Lei Feng, Bo Han, Tongliang Liu, Gang Niu, Xiaofeng Zhu, H. Shen
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引用次数: 1

摘要

在传统的监督分类中,单个实例需要真实标签。然而,由于隐私问题或无法负担的注释成本,收集单个实例的真实标签可能是令人望而却步的。这激发了从总体观察(CFAO)中进行分类的研究,其中监督提供给实例组,而不是单个实例。CFAO是一个广义的学习框架,它包含多种学习问题,如多实例学习和标签比例学习。本文的目标是提出一种新的通用的CFAO方法,该方法具有任意损失分类风险的无偏估计量,以往的研究未能实现这一目标。实际上,我们的方法通过权衡组中每个实例的每个标签的重要性来工作,这为分类器的学习提供了纯粹的监督。从理论上讲,由于风险估计量无偏,我们提出的方法不仅保证了风险一致性,而且可以兼容任意损失。在各种CFAO问题上的大量实验证明了我们提出的方法的优越性。
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A Universal Unbiased Method for Classification from Aggregate Observations
In conventional supervised classification, true labels are required for individual instances. However, it could be prohibitive to collect the true labels for individual instances, due to privacy concerns or unaffordable annotation costs. This motivates the study on classification from aggregate observations (CFAO), where the supervision is provided to groups of instances, instead of individual instances. CFAO is a generalized learning framework that contains various learning problems, such as multiple-instance learning and learning from label proportions. The goal of this paper is to present a novel universal method of CFAO, which holds an unbiased estimator of the classification risk for arbitrary losses -- previous research failed to achieve this goal. Practically, our method works by weighing the importance of each label for each instance in the group, which provides purified supervision for the classifier to learn. Theoretically, our proposed method not only guarantees the risk consistency due to the unbiased risk estimator but also can be compatible with arbitrary losses. Extensive experiments on various problems of CFAO demonstrate the superiority of our proposed method.
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