A framework for knowledge base refinement through multistrategy learning and knowledge acquisition

Gheorghe Tecuci, David Duff
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引用次数: 14

Abstract

This paper presents a general approach to knowledge base refinement which integrates multistrategy learning, active experimentation and guided knowledge elicitation. Three main features characterize this approach. First, knowledge base refinement is based on a multistrategy learning method that dynamically integrates the elementary inferences (such as deduction, analogy, abduction, generalization, specialization, abstraction and concretion) that are employed by the single-strategy learning methods. Second, much of the knowledge needed by the system to refine its knowledge base is generated by the system itself. Therefore, most of the time, the human expert will need only to confirm or reject system-generated hypotheses. Third, the knowledge base refinement process is efficient due to the ability of the multistrategy learner to reuse its reasoning process. The paper illustrates a cooperation between a learning system and a human expert in which the learner performs most of the tasks and the expert helps it in solving the problems that are intrinsically difficult for a learner and relatively easy for an expert.

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基于多策略学习和知识获取的知识库精化框架
本文提出了一种综合多策略学习、主动实验和引导知识获取的知识库精化方法。这种方法有三个主要特点。首先,知识库精化是基于多策略学习方法的,该方法动态集成了单策略学习方法所使用的基本推断(如推理、类比、推理、泛化、专业化、抽象和具体化)。其次,系统完善其知识库所需的大部分知识是由系统本身生成的。因此,大多数时候,人类专家只需要确认或拒绝系统生成的假设。第三,由于多策略学习者能够重用其推理过程,因此知识库精化过程是有效的。本文阐述了学习系统和人类专家之间的合作,在这种合作中,学习者执行大部分任务,专家帮助它解决对学习者来说本质上困难而对专家来说相对容易的问题。
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