Updating a hybrid rule base with new empirical source knowledge

J. Prentzas, I. Hatzilygeroudis, A. Tsakalidis
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引用次数: 9

Abstract

Neurules are a kind of hybrid rules that combine a symbolic (production rules) and a connectionist (adaline unit) representation. Each neurule is represented as an adaline unit. One way that the neurules can he produced is from training examples (empirical source knowledge). However, in certain application fields not all of the training examples are available a priori. A number of them become available over time. In these cases, updating the corresponding neurules is necessary. In this paper, methods for updating a hybrid rule base, consisting of neurules, to reflect the availability of new training examples are presented The methods are efficient, since they require the least possible retraining effort and the number of the produced neurules is kept as small as possible.
用新的经验源知识更新混合规则库
神经规则是一种混合规则,它结合了符号(生产规则)和连接(数值单位)表示。每个神经规则被表示为一个数值单位。产生神经规则的一种方法是通过训练实例(经验源知识)。然而,在某些应用领域,并非所有的训练样例都是先验的。随着时间的推移,它们中的许多变得可用。在这些情况下,更新相应的神经规则是必要的。本文提出了一种更新由神经规则组成的混合规则库的方法,以反映新训练样例的可用性。这种方法是有效的,因为它们需要尽可能少的再训练努力,并且产生的神经规则的数量尽可能少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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