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Continuity of Semantic Operators in Logic Programming and Their Approximation by Artificial Neural Networks

机译:逻辑编程中语义算子的连续性及其通过人工神经网络的逼近

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摘要

One approach to integrating first-order logic programming and neural network systems employs the approximation of semantic operators by feedforward networks. For this purpose, it is necessary to view these semantic operators as continuous functions on the reals. This can be accomplished by endowing the space of all interpretations of a logic program with topologies obtained from suitable embeddings. We will present such topologies which arise naturally out of the theory of logic programming, discuss continuity issues of several well-known semantic operators, and derive some results concerning the approximation of these operators by feedforward neural networks.
机译:集成一阶逻辑编程和神经网络系统的一种方法是使用前馈网络对语义运算符进行近似。为此,有必要将这些语义运算符视为实数上的连续函数。这可以通过在逻辑程序的所有解释空间中加上从适当嵌入中获得的拓扑结构来实现。我们将介绍从逻辑编程理论中自然产生的拓扑,讨论几种著名语义运算符的连续性问题,并得出一些与前馈神经网络对这些运算符的逼近有关的结果。

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