论LRAAM的内容访问能力

A. Sperduti, A. Starita
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引用次数: 5

摘要

标记RAAM (LRAAM)是一种能够以固定大小模式对数据结构进行编码的神经网络,从而允许将神经网络应用于结构化领域。此外,存储在LRAAM中的结构既可以通过指针访问,也可以通过内容访问。本文简要讨论了LRAAM的基本和广义关联访问过程。通过将LRAAM网络转换为BAM,得到了基本过程。根据用于检索信息的键,使用不同的约束版本的BAM。广义Hopfield网络(Generalized Hopfield network, GHN)是一种基于LRAAM的权重子集组合和基于检索信息的查询构建的网络。给出了一些广义过程的例子。
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On the access by content capabilities of the LRAAM
The labeling RAAM (LRAAM) is a neural network able to encode data structures in fixed size patterns, thus allowing the application of neural networks to structured domains. Moreover, the structures stored into an LRAAM can be accessed both by pointer and by content. In this paper we briefly discuss basic and generalized associative access procedures for the LRAAM. Basic procedures are obtained by transforming the LRAAM network into a BAM. Different constrained versions of the BAM are used depending on the key(s) used to retrieve information. Generalized procedures are implemented by generalized Hopfield networks (GHN) which are built both by composing the subset of weights compounding the LRAAM and according to the query used to retrieve information. Some examples for generalized procedures are given.<>
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