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Preference Elicitation and Query Learning

机译:偏好启发和查询学习

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摘要

In this paper we initiate an exploration of relationships between "preference elicitation", a learning-style problem that arises in combinatorial auctions, and the problem of learning via queries studied in computational learning theory. Preference elicitation is the process of asking questions about the preferences of bidders so as to best divide some set of goods. As a learning problem, it can be thought of as a setting in which there are multiple target concepts that can each be queried separately, but where the goal is not so much to learn each concept as it is to produce an "optimal example". In this work, we prove a number of similarities and differences between preference elicitation and query learning, giving both separation results and proving some connections between these problems.
机译:在本文中,我们开始探索“偏好激发”(组合拍卖中出现的一种学习风格问题)与通过计算学习理论研究的查询学习问题之间的关系。偏好激发是询问有关投标人偏好的过程,以便最好地划分一组商品。作为一个学习问题,可以将其视为一种环境,在该环境中可以分别查询多个目标概念,但是学习目标并不是为了学习每个概念而产生一个“最佳示例”。在这项工作中,我们证明了偏好启发和查询学习之间的许多相似之处和不同之处,给出了分离结果并证明了这些问题之间的某些联系。

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