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Generalized Associative Memory Models: Their Memory Capacities and Potential Application

机译:广义关联内存模型:它们的存储器能力和潜在应用

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摘要

The Hopfield and bi-directional associative memory (BAM) models are well developed and carefully studied models for associative memory that are patterned after the memory structure of the animal brain. Their basic limitation is that they can only perform associations between at most two sets of patterns. Several different models for generalized associative memory are proposed. These models are all extensions or generalizations of the Hopfield and BAM models that can perform multiple associations. Extensive software simulations are conducted to evaluate the different models, using the memory capacity as basis for comparing their performance. Lastly, potential application of these models as data fusion systems is explored.
机译:Hopfield和双向关联存储器(BAM)模型很好地开发并仔细研究了在动物脑的记忆结构之后被图案化的关联存储器的模型。 它们的基本限制是它们只能在最多两组模式之间执行关联。 提出了几种不同模型的广义关联记忆。 这些模型是可以执行多个关联的Hopfield和BAM模型的所有扩展或泛化。 进行广泛的软件模拟以评估不同的型号,使用内存容量作为比较其性能的基础。 最后,探讨了这些模型作为数据融合系统的潜在应用。

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