自适应学习专家系统

Sakchai Wiriyacoonkasem, A. Esterline
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引用次数: 17

摘要

本研究的目的是通过使用神经网络来提高专家系统的性能,从而使专家系统能够从经验中学习。尽管专家系统使用的知识表示方案使它们能够成功和扩散,但这些方案使它们变得脆弱。人类专家通常比专家系统使用更多的知识进行推理,并且经常在定量推理中使用经验,而专家系统则不能。我们的研究表明,当专家系统没有足够的知识进行推理时,神经网络可以从专家系统的经验中学习并指导专家系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive learning expert systems
The purpose of this research is to improve the performance of an expert system through the use of a neural network, thus allowing the expert system to learn from experience. Even though the knowledge representation schemes used by expert systems allow them to succeed and proliferate, these schemes cause them to be brittle. Human experts usually use more knowledge to reason than expert systems do and often use experience in quantitative reasoning whereas expert systems cannot. Our study shows that a neural network can learn from an expert system's experience and guide the expert system when the expert system does not have enough knowledge to reason.
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