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How Many Cases Do You Need? Assessing and Predicting Case-Base Coverage

机译:您需要多少个案例?评估和预测案例基础覆盖率

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Case acquisition is the primary learning method for case-based reasoning (CBR), and the ability of a CBR system's case-base to cover the problems it encounters is a crucial factor in its performance. Consequently, the ability to assess the current level of case-base coverage and to predict the incremental benefit of adding cases could play an important role in guiding the case acquisition process. This paper demonstrates that such tasks require different strategies from those of existing competence models, whose aim is to guide selection of competent cases from a known pool of cases. This paper presents initial steps on developing methods for predicting how unseen future cases will affect a system's case-base. It begins by discussing case coverage as defined in prior research, especially in methods based on the representativeness hypothesis. It then compares alternative methods for assessing case-base coverage, including a new Monte-Carlo method for prediction early in case-base growth. It evaluates the performance of these approaches for three tasks: estimating competence, predicting the incremental benefit of acquiring new cases, and predicting the total number of cases required to achieve maximal coverage.
机译:案例采集是基于案例的推理(CBR)的主要学习方法,以及CBR系统的案例基础涵盖其遇到问题的能力是其性能的关键因素。因此,评估当前案例基础覆盖率和预测添加案件的增量益处的能力可能在引导案例采集过程中发挥重要作用。本文表明,此类任务需要来自现有能力模型的不同策略,其目的是从已知的案例中指导各种能力案例。本文介绍了开发方法的初步步骤,以预测未来未来案例如何影响系统的基础。它首先讨论了在现有研究中定义的案例覆盖,特别是在基于代表性假设的方法中。然后比较用于评估壳体基础覆盖的替代方法,包括在碱基生长的早期预测的新蒙特卡罗方法。它评估了三项任务的这些方法的表现:估算能力,预测获取新案件的增量益处,并预测实现最大覆盖所需的案件总数。

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