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Omissions in Constraint Acquisition

机译:遗漏收购

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摘要

Interactive constraint acquisition is a special case of query-directed learning, also known as "exact" learning. It is used to assist non-expert users in modeling a constraint problem automatically by posting examples to the user that have to be classified as solutions or non-solutions. One significant issue that has not been addressed in the literature of constraint acquisition is the possible presence of uncertainty in the answers of the users. We address this by introducing Limited Membership Queries, where the user has the option of replying "I don't know", corresponding to "omissions" in exact learning. We present two algorithms for handling omissions. The first one deals with omissions that are independent events, while the second assumes that omissions are related to gaps in the user's knowledge. We present theoretical results about both methods and we evaluate them on benchmark problems. Importantly, our second algorithm can not only learn (a part of) the target network, but also the constraints that cause the user's uncertainty.
机译:互动约束采集是一个特殊的查询导向学习的情况,也称为“精确”学习。它用于帮助非专家用户通过将例子发布到必须被分类为解决方案或非解决方案的用户自动建立约束问题。在约束收购文献中尚未解决的一个重要问题是在用户答案中可能存在不确定性。我们通过引入有限的会员查询来解决此问题,用户可以选择回复“我不知道”,对应于确切学习中的“遗漏”。我们提出了两个用于处理遗漏的算法。第一个涉及遗漏,即独立事件,而第二个涉及遗漏与用户知识中的差距有关。我们对两种方法提供理论结果,我们在基准问题上评估它们。重要的是,我们的第二算法不仅可以学习(目标网络的一部分),还可以吸取导致用户不确定性的约束。

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