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A Knowledge-Intensive Method for Conversational CBR

机译:对话式CBR的知识密集型方法

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摘要

In conversational case-based reasoning (CCBR), a main problem is how to select the most discriminative questions and display them to users in a natural way to alleviate users' cognitive load. This is referred to as the question selection task. Current question selection methods are knowledge-poor, that is, only statistical metrics are taken into account. In this paper, we identify four computational tasks of a conversation process: feature inferencing, question ranking, consistent question clustering and coherent question sequencing. We show how general domain knowledge is able to improve these processes. A knowledge representation system suitable for capturing both cases and general knowledge has been extended with meta-level relations for controlling a CCBR process. An "explanation-boosted" reasoning approach, designed to accomplish the knowledge-intensive question selection tasks, is presented. An application of our implemented system is illustrated in the car fault detection domain.
机译:在基于对话的案例推理(CCBR)中,一个主要问题是如何选择最具区分性的问题,并以自然的方式向用户显示这些问题,以减轻用户的认知负担。这称为问题选择任务。当前的问题选择方法是知识匮乏的,也就是说,仅考虑统计指标。在本文中,我们确定了对话过程的四个计算任务:特征推理,问题排名,一致问题聚类和连贯问题排序。我们展示了一般领域知识如何能够改善这些过程。适用于捕获案例和常识的知识表示系统已经扩展了元级别的关系,用于控制CCBR过程。提出了一种“增强解释”的推理方法,旨在完成知识密集型的问题选择任务。在汽车故障检测领域中说明了我们已实现系统的应用。

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