带有比较查询的主动分类

D. Kane, Shachar Lovett, S. Moran, Jiapeng Zhang
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引用次数: 64

摘要

我们研究了主动学习的扩展,其中学习算法可能会要求注释者比较两个示例到其标签类边界的距离。例如,在推荐系统应用程序(比如餐馆)中,可能会询问注释者是否喜欢或不喜欢特定的餐馆(标签查询);或者她更喜欢两家餐厅中的哪一家(一个比较查询)。我们关注半空间类,并表明在自然假设下,例如输入示例的大边距或有界位描述,使用大约O(log n)查询可以显示大小为n的样本的所有标签。这意味着与只允许标签查询的经典主动学习相比,有了指数级的改进。我们通过显示如果删除这些假设中的任何一个,那么在最坏的情况下,需要查询来补充这些结果。我们的研究结果来自一个带有附加查询的主动学习的新通用框架。我们确定了一个组合维,称为推理维,当每个附加查询由O(1)个示例确定时(例如比较查询,每个查询由两个被比较的示例确定),它捕获查询复杂性。在上面讨论的情况下,我们对半空间的结果是通过限定推理维来实现的。
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Active Classification with Comparison Queries
We study an extension of active learning in which the learning algorithm may ask the annotator to compare the distances of two examples from the boundary of their label-class. For example, in a recommendation system application (say for restaurants), the annotator may be asked whether she liked or disliked a specific restaurant (a label query); or which one of two restaurants did she like more (a comparison query).We focus on the class of half spaces, and show that under natural assumptions, such as large margin or bounded bit-description of the input examples, it is possible to reveal all the labels of a sample of size n using approximately O(log n) queries. This implies an exponential improvement over classical active learning, where only label queries are allowed. We complement these results by showing that if any of these assumptions is removed then, in the worst case, Ω(n) queries are required.Our results follow from a new general framework of active learning with additional queries. We identify a combinatorial dimension, called the inference dimension, that captures the query complexity when each additional query is determined by O(1) examples (such as comparison queries, each of which is determined by the two compared examples). Our results for half spaces follow by bounding the inference dimension in the cases discussed above.
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