Hopfield联想记忆的最佳学习

Q4 Computer Science 模式识别与人工智能 Pub Date : 1992-08-30 DOI:10.1109/ICPR.1992.201801
X. Zhuang, Y. Huang
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引用次数: 0

摘要

基于三个公认的准则设计了Hopfield联想记忆(HAM)的最优学习规则,即所有期望的吸引子不仅必须是孤立稳定的,而且必须是渐近稳定的,并且伪稳定状态应尽可能少。为了构建一个令人满意的HAM,这些标准是至关重要的。本文首先分析了Hebb规则和许多其他现有的为HAMs设计的学习规则性能不理想的真正原因,然后表明三个准则实际上相当于在每个期望的吸引子周围广泛扩展吸引盆地。广泛扩展所有吸引子的吸引盆地的有效途径之一是适当挖掘它们各自陡峭的核心吸引盆地。为此,作者引入了一个叫做汉明稳定性的概念。所有期望吸引子的汉明稳定性可以简化为每个神经元上适度扩展的线性可分性条件,因此众所周知的Rosenblatt感知器学习规则是学习汉明稳定性的正确规则。进行了广泛而系统的实验,令人信服地表明所提出的感知器。汉明-稳定学习规则确实很好地处理了三个最优准则。
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Optimal learning for Hopfield associative memory
Designs the optimal learning rule for the Hopfield associative memories (HAM) based on three well recognized criteria, that is, all desired attractors must be made not only isolately stable but also asymptotically stable, and the spurious stable states should be the fewest possible. To construct a satisfactory HAM, those criteria are crucial. The paper first analyzes the real cause of the unsatisfactory performance of the Hebb rule and many other existing learning rules designed for HAMs and then show that three criteria actually amount to widely expanding the basin of attraction around each desired attractor. One effective way to widely expand basins of attraction of all desired attractors is to appropriately dig their respective steep kernal basin of attraction. For this, the authors introduce a concept called the Hamming-stability. The Hamming-stability for all desired attractors can be reduced to a moderately expansive linear separability condition at each neuron and thus the well known Rosenblatt's perceptron learning rule is the right one for learning the Hamming-stability. Extensive and systematic experiments were conducted, convincingly showing that the proposed perceptron. Hamming-stability learning rule did take a good care of three optimal criteria.<>
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来源期刊
模式识别与人工智能
模式识别与人工智能 Computer Science-Artificial Intelligence
CiteScore
1.60
自引率
0.00%
发文量
3316
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