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Machine Learning: The Automation of Knowledge Acquition Using Kohonen Self-Organising Map Neural Network

机译:机器学习:使用Kohonen自组织地图神经网络的知识获取自动化

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In machine learning, a key aspect is the acquisition of knowledge. As problems become more complex, and experts become scarce, the manual extraction of knowledge becomes very difficult. Hence, it is important that the task of knowledge acquisition be automated. This paper proposes a novel method that integrates neural network and expert system paradigms to produce an automated knowledge acquisition system. A rule-generation algorithm is proposed, whereby symbolic rules are generated from a neural network that has been trained by an unsupervised Kohonen self-organising map (KSOM) learning algorithm. The generated rules are evaluated and verified using an expert system inference engine. To demonstrate the applicability of the proposed method to real-world problems, a case study in medical diagnosis is presented.
机译:在机器学习中,一个关键方面是知识的获取。随着问题变得越来越复杂,专家越来越少,手动提取知识变得非常困难。因此,重要的是知识获取的任务要自动化。本文提出了一种新的方法,该方法将神经网络和专家系统范型相集成以产生一个自动化的知识获取系统。提出了一种规则生成算法,从而从已经由无监督Kohonen自组织图(KSOM)学习算法训练的神经网络生成符号规则。使用专家系统推理引擎对生成的规则进行评估和验证。为了证明所提出的方法对实际问题的适用性,提出了医学诊断的案例研究。

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