层次时间记忆(HTM)理论中空间池的鲁棒实现

Ashley Liddiard, J. Tapson, R. Verrinder
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引用次数: 4

摘要

在本研究中,研究了空间池的学习强化和噪声抑制,这是分层时间记忆(HTM)网络的第一学习阶段。层次时间记忆(HTM)是神经形态工程领域提出的一个模型。它描述了一种自上而下的方法来理解人类大脑如何进行高级推理,并将其应用于机器学习算法。最终结果显示,与输入伪感觉信号的学习相关的永久性值有所增加,并且系统能够准确识别输入信号,其中多达20%的二进制数据被随机修改。这些结果表明,当机器智能是一个系统需求时,HTM是一个可能的选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A robust implementation of the spatial pooler within the theory of Hierarchical Temporal Memory (HTM)
In this study learning reinforcement and noise rejection of a spatial pooler was examined, the first learning stage in a Hierarchical Temporal Memory (HTM) network. Hierarchical Temporal Memory (HTM) is a proposed model within the field of neuromorphic engineering. It describes a top down approach to understanding how the human brain performs higher reasoning and has application as a machine-learning algorithm. Final results displayed an increase in permanence values associated with the learning of the input pseudo-sensory signal and the system was able to accurately recognize the input signal with up to twenty percent of the binary data randomly modified. These results demonstrated conclusive evidence that HTM is a possible choice when machine intelligence is a system requirement.
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