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Enhancing Case Adaptation with Introspective Reasoning and Web Mining

机译:通过内省性推理和Web挖掘增强案例适应

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Case-based problem-solving systems reason by retrieving relevant prior cases and adapting their solutions to fit new circumstances. The ability of case-based reasoning (CBR) to reason from ungeneral-ized episodes can benefit knowledge acquisition, but acquiring the needed case adaptation knowledge has proven challenging. This paper presents a method for alleviating this problem with just-in-time gathering of case adaptation knowledge, based on introspective reasoning and mining of Web knowledge sources. The approach combines knowledge planning with introspective reasoning to guide recovery from case adaptation failures and reinforcement learning to guide selection of knowledge sources. The failure recovery and knowledge source selection methods have been tested in three highly different domains with encouraging results. The paper closes with a discussion of limitations and future steps.
机译:基于案例的问题解决系统通过检索相关的先前案例并调整其解决方案以适应新情况来进行推理。基于案例的推理(CBR)从非通用情节中进行推理的能力可以使知识获取受益,但是事实证明,获取所需的案例适应性知识具有挑战性。本文提出了一种基于内省性推理和Web知识源挖掘的,通过案例自适应知识的及时收集来缓解此问题的方法。该方法将知识规划与内省性推理相结合,以指导从案例适应失败中恢复,并通过强化学习来指导知识源的选择。故障恢复和知识来源选择方法已在三个高度不同的领域中进行了测试,结果令人鼓舞。最后,本文讨论了局限性和未来的步骤。

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