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A Lazy Learning Approach to Explaining Case-Based Reasoning Solutions

机译:一种基于案例的推理解决方案的懒惰学习方法

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We present an approach to explanation in case-based reasoning (CBR) based on demand-driven (or lazy) discovery of explanation rules for CBR solutions. The explanation rules discovered in our approach resemble the classification rules traditionally targeted by rule learning algorithms, and the learning process is adapted from one such algorithm (PRISM). The explanation rule learned for a CBR solution is required to cover both the target problem and the most similar case, and is used together with the most similar case to explain the solution, thus integrating two approaches to explanation traditionally associated with different reasoning modalities. We also show how the approach can be generalized to enable the discovery of explanation rules for CBR solutions based on k-NN. Evaluation of the approach on a variety of classification tasks demonstrates its ability to provide easily understandable explanations by exploiting the generalizing power of rule learning, while maintaining the benefits of CBR as the problem-solving method.
机译:我们提出了一种基于案例的推理(CBR)中的解释方法,该方法基于CBR解决方案的解释规则的需求驱动(或惰性)发现。在我们的方法中发现的解释规则类似于规则学习算法传统上针对的分类规则,并且学习过程是从一种这样的算法(PRISM)改编而来的。为CBR解决方案学习的解释规则需要涵盖目标问题和最相似的案例,并且与最相似的案例一起使用以解释解决方案,从而集成了传统上与不同推理方式相关联的两种解释方法。我们还展示了如何将该方法通用化,以发现基于k-NN的CBR解决方案的解释规则。对各种分类任务的方法进行评估表明,它能够通过利用规则学习的泛化能力提供易于理解的解释,同时保持CBR作为解决问题的方法的优势。

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