联想记忆中学习阶段的简化

Catalán Salgado, Edgar A, Argüelles Cruz, Amadeo José
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引用次数: 3

摘要

联想记忆是一种将输入模式和输出模式联系起来的系统,并且能够在输入模式被某种噪声污染的情况下恢复相关的输出向量。α - β联想记忆对减法和加性噪声具有较强的鲁棒性,是记忆速度最快的联想记忆之一。在本文中,我们展示了一种减少学习阶段操作数量的方法。在学习阶段使用的alpha操作允许我们提出8个定理;有了这些定理,就有可能构建另一种学习方法。通过这种方法,减少了学习每个模式所需的alpha操作的数量,并将其替换为赋值,并且我们还消除了最小和最大操作。这大大减少了使用大维度模式或大量模式的学习时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simplification of the Learning Phase in the Alpha-Beta Associative Memories
An associative memory is a system that relates input patterns and output patterns, furthermore is able to recover the output vector associated although the input pattern was contaminated by some kind of noise. Alpha beta associative memories are robust to subtractive and additive noise and are one of the fastest associative memories besides other qualities. In this paper we show a way to reduce the number of operations in the learning phase. The operation alpha used in the learning phase allow us to propose 8 theorems; with those theorems is possible to construct an alternative learning method. By this method, the number of alpha operations needed to learning each pattern is reduced and replaced by assignations, furthermore we also eliminate the min and max operations. This reduces the learning time drastically with either big dimension patterns or a big number of patterns.
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