Application of machine learning to the maintenance of knowledge-based performance

L. Holder
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Abstract

Integration of machine learning methods into knowledge-based systems requires greater control over the application of the learning methods. Recent research in machine learning has shown that isolated and unconstrained application of learning methods can eventually degrade performance. This paper presents an approach called performance-driven knowledge transformation for controlling the application of learning methods. The primary guidance for the control is performance of the knowledge base. The approach is implemented in the PEAK system. Two experiments with PEAK illustrate how the knowledge base is transformed using different learning methods to maintain performance goals. Results demonstrate the ability of performance-driven knowledge transformation to control the application of learning methods and maintain knowledge base performance.
机器学习在基于知识的性能维护中的应用
将机器学习方法集成到基于知识的系统中需要对学习方法的应用进行更好的控制。最近的机器学习研究表明,孤立和不受约束的学习方法的应用最终会降低性能。本文提出了一种绩效驱动的知识转换方法来控制学习方法的应用。控制的主要指导是知识库的性能。该方法在PEAK系统中得到了实现。PEAK的两个实验说明了如何使用不同的学习方法转换知识库以保持性能目标。结果表明,绩效驱动的知识转换能够控制学习方法的应用,维护知识库的性能。
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