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High Performance Associative Memory and Weight Dilution

机译:高性能关联记忆和重量稀释

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The consequences of diluting the weights of the standard Hopfield architecture associative memory model, trained using perceptron like learning rules, is examined. A proportion of the weights of the network are removed; this can be done in a symmetric and asymmetric way and both methods are investigated. This paper reports experimental investigations into the consequences of dilution in terms of: capacity, training times and size of basins of attraction. It is concluded that these networks maintain a reasonable performance at fairly high dilution rates.
机译:审查使用Perceptron等学习规则训练的标准Hopfield架构关联记忆模型重量的后果。删除网络的重量比例;这可以以对称和不对称的方式进行,并研究两种方法。本文向稀释后果报告了实验调查:吸引力的能力,培训时间和大小。结论是,这些网络以相当高的稀释率保持合理的性能。

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