基于知识推理的神经启发式集成

L. Fu
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引用次数: 104

摘要

仅给出摘要形式,如下。在救济网络和神经网络之间观察到的类比导致在基于知识的系统中引入神经网络方法下开发的启发式方法的合理性。已经开发了一种方法,将基于规则的系统映射到结构和行为方面的神经体系结构中。在这种方法下,知识库和推理引擎被映射成一个称为概念化的实体,其中节点表示一个概念,链接表示两个概念之间的关系。概念化中的推理涉及到激活的传播和组合,以及通过层最大化信息传递。学习是基于一种被称为反向传播的机制,它允许适当地修改连接强度以适应环境。最后,通过实验验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integration of neural heuristics into knowledge-based inference
Summary form only given, as follows. Analogies observed between relief networks and neural networks lead to the plausibility of introducing heuristics developed under the neural network approach into knowledge-based systems. An approach has been developed that maps a rule-based system into the neural architecture in both the structural and the behavioral aspects. Under this approach, the knowledge base and the inference engine are mapped into an entity called conceptualization, where a node represents a concept and a link represents a relation between two concepts. Inference in the conceptualization involves the propagation and combination of activations as well as maximizing information transmission through layers. Learning is based upon a mechanism called backpropagation, which allows proper modification of the connection strengths in order to be adapted to the environment. Finally, the validity of this approach has been demonstrated by experiments.<>
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