An Information Theoretic Approach to Modeling Neural Network Expert Systems

R. Goodman, J. W. Miller, Padhraic Smyth
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引用次数: 1

Abstract

In this paper we propose several novel techniques for mapping rule bases, such as are used in rule based expert systems, onto neural network architectures. Our objective in doing this is to achieve a system capable of incremental learning, and distributed probabilistic inference. Such a system would be capable of performing inference many orders of magnitude faster than current serial rule based expert systems, and hence be capable of true real time operation. In addition, the rule based formalism gives the system an explicit knowledge representation, unlike current neural models. We propose an information-theoretic approach to this problem, which really has two aspects: firstly learning the model and, secondly, performing inference using this model. We will show a clear pathway to implementing an expert system starting from raw data, via a learned rule-based model, to a neural network that performs distributed inference.
神经网络专家系统建模的信息理论方法
在本文中,我们提出了几种将规则库映射到神经网络架构的新技术,例如在基于规则的专家系统中使用的规则库。我们这样做的目标是实现一个能够增量学习和分布式概率推理的系统。这样的系统将能够执行推理比当前基于串行规则的专家系统快许多个数量级,因此能够实现真正的实时操作。此外,与当前的神经模型不同,基于规则的形式主义为系统提供了明确的知识表示。我们提出了一种信息论的方法来解决这个问题,它实际上有两个方面:首先是学习模型,其次是使用该模型进行推理。我们将展示一个清晰的途径来实现一个专家系统,从原始数据开始,通过一个基于规则的学习模型,到一个执行分布式推理的神经网络。
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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