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首页> 外文期刊>Neural computing & applications >A biologically plausible network model for pattern storage and recall inspired by Dentate Gyrus
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A biologically plausible network model for pattern storage and recall inspired by Dentate Gyrus

机译:一种用于模式存储和召回的生物合理的网络模型,由牙齿回忆启发

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摘要

In the race to achieve better performance, artificial intelligence has become more about the end rather than the means, which is general intelligence. This work aims to bridge the gap between the two by finding a complementary midline. The objective of this work is to project the role of Dentate Gyrus in enhancing the performance of an autoassociative network, paving the way to develop a biologically plausible neural network which, in the future, would help in simulating the network present in our brain. The proposed network imbibes biological similarities with respect to connectivity, weight updation, and activation function. Dentate Gyrus uses pre-integration lateral inhibition form of learning, and the autoassociative network is implemented using Hopfield network. The performance of the autoassociative network in the presence and absence of Dentate Gyrus is observed across multiple parameters. The results show an increase of 38% in storage capacity and a decrease of 15% in the error tolerance capability of the network in the presence of Dentate Gyrus.
机译:在实现更好的性能的比赛中,人工智能已经变得更加关于结束而不是普通情报的手段。这项工作旨在通过查找互补的中线来弥合两者之间的差距。这项工作的目的是将牙齿回谱的作用提升在提高自动关联网络的性能方面的作用,铺平了开发生物合理的神经网络的方式,将来会有助于模拟大脑中存在的网络。所提出的网络在连接性,重量更新和激活功能方面吸收生物相似度。齿状回形图使用预集成横向抑制学习形式,并且使用Hopfield网络实现了自动关联网络。在多个参数中观察到在存在和不存在牙齿过滤的情况下的自动关联网络的性能。结果表明,在齿状回物存在下,储存能力的增加38%,降低了网络的误差容差能力。

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