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A Generalised Entropy based Associative Memory

机译:基于广义熵的联想记忆

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In this paper, a generalised entropy based associative memory model will be proposed and applied to memory retrievals with analogue embedded vectors instead of the binary ones in order to compare with the conventional autoassociative model with a quadratic Lyapunov functionals. In the present approach, the updating dynamics will be constructed on the basis of the entropy minimization strategy which may be reduced asymptotically to the autocorrelation dynamics as a special case. From numerical results, it will be found that the presently proposed novel approach realizes a relatively large memory capacity even for the analogue memory retrievals in comparison with the autocorrelation model based on dynamics such as associatron according to the higher-order correlation involved in the proposed dynamics.
机译:本文将提出一种基于广义熵的联想记忆模型,并将其应用于模拟嵌入向量而不是二进制向量的记忆检索中,以便与具有二次Lyapunov函数的常规自动联想模型进行比较。在本方法中,将基于熵最小化策略来构造更新动力学,该熵最小化策略可以作为特殊情况渐近地减小到自相关动力学。从数值结果可以发现,与提出的动力学涉及的高阶相关性相比,基于动力学的自相关模型(如关联子),即使是模拟存储检索,目前提出的新方法也实现了相对较大的存储容量。 。

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