Doubly modifiable synapses: a model of short and long term auto-associative memory.

A R Gardner-Medwin
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引用次数: 37

Abstract

Synapses that can be strengthened in temporary and persistent manners by two separate mechanisms are shown to have powerful advantages in neural networks that perform auto-associative recall and recognition. A multiplicative relation between the two weights allows the same set of connections to be used in a closely interactive way for short-term and long-term memory. Algorithms and simulations are described for the storage, consolidation and recall of patterns that have been presented only once to a network. With double modifiability, the short-term performance is dramatically improved, becoming almost independent of the amount of long-term experience. The high quality of short-term recall allows consolidation to take place, with benefits from the selection and optimization of long term engrams to take account of relations between stored patterns. Long-term capacity is greater than short-term capacity, with little or no deficit compared with that obtained with singly modifiable synapses. Long-term recall requires special, simply implemented, procedures for increasing the temporary weights of the synapses being used to initiate recall. A consolidation algorithm is described for improving long-term recall when there is overlap between patterns. Confusional errors are reduced by strengthening the associations between non-overlapping elements in the patterns, in a two-stage process that has several of the characteristics of sleep.

双重可修改突触:短期和长期自动联想记忆的模型。
可以通过两种不同的机制以暂时和持久的方式加强的突触在执行自动联想回忆和识别的神经网络中具有强大的优势。两个权重之间的乘法关系允许同一组连接以紧密交互的方式用于短期和长期记忆。算法和模拟描述了存储,整合和召回的模式,已经呈现给一个网络只一次。由于具有双重可修改性,短期性能得到显著改善,几乎与长期经验的数量无关。短期回忆的高质量允许巩固发生,从长期记忆的选择和优化中受益,考虑到存储模式之间的关系。长期能力大于短期能力,与单一可修改的突触相比,很少或没有缺陷。长期回忆需要特殊的、简单实施的程序来增加用于启动回忆的突触的临时权重。当模式之间存在重叠时,描述了一种用于提高长期召回的巩固算法。通过加强模式中不重叠元素之间的联系,可以减少混淆错误,这是一个两阶段的过程,具有睡眠的几个特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Proceedings of the Royal Society of London Series B-Containing Papers of Abiological Character
Proceedings of the Royal Society of London Series B-Containing Papers of Abiological Character 生命科学, 发育生物学与生殖生物学, 发育生物学
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