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BEXA: set covering vs. neural network knowledge acquisition-a comparative review

机译:BEXA:涵盖内容与神经网络知识获取的对比回顾

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Machine learning approaches to knowledge acquisition usually employ a symbolic method based on search, heuristically guided through the concept space to avoid the combinatorial explosion of possible concept descriptions to be examined. Neural networks, on the other hand usually employ gradient based minimization of a cost function to acquire classificational knowledge. This paper presents a new symbolic set covering algorithm for rule induction, reviews five learning paradigms and compares that to knowledge acquisition by a neural network classifier.
机译:机器学习的知识获取方法通常采用基于搜索的符号方法,在概念空间中进行启发式引导,以避免可能要检查的概念描述的组合爆炸式增长。另一方面,神经网络通常采用基于梯度的成本函数最小化来获取分类知识。本文提出了一种新的用于规则归纳的符号集覆盖算法,回顾了五个学习范式,并将其与神经网络分类器的知识获取进行了比较。

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