基于知识代理的延迟规则优化

Cristina Boicu, G. Tecuci, Mihai Boicu
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引用次数: 4

摘要

本文介绍了开发学习型智能体的最新成果,这些智能体可以通过示例和解释,由主题专家教授如何解决问题。介绍了由专家对学习到的规则生成的实例进行修改的惰性规则改进方法。在这种情况下,智能体必须决定是修改规则(如果修改适用于所有之前的正例)还是学习新规则。但是,检查前面的示例将是破坏性的,甚至是不可能的。惰性规则细化方法为这个问题提供了一种优雅的解决方案,在这种方法中,代理延迟决定是修改规则还是学习新规则,直到在后续的问题解决过程中积累了足够的示例。该方法已被纳入门徒学习代理外壳,并用于重心分析和智能分析等复杂应用领域
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Lazy Rule Refinement by Knowledge-Based Agents
This paper presents recent results on developing learning agents that can be taught by subject matter experts how to solve problems, through examples and explanations. It introduces the lazy rule refinement method where the expert modifies an example generated by a learned rule. In this case the agent has to decide whether to modify the rule (if the modification applies to all the previous positive examples) or to learn a new rule. However, checking the previous examples would be disruptive or even impossible. The lazy rule refinement method provides an elegant solution to this problem, in which the agent delays the decision whether to modify the rule or to learn a new rule until it accumulated enough examples during the follow-on problem solving process. This method has been incorporated into the disciple learning agent shell and used in the complex application areas of center of gravity analysis and intelligence analysis
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