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首页> 外文期刊>Computational intelligence and neuroscience >A Fast Spatial Pool Learning Algorithm of Hierarchical Temporal Memory Based on Minicolumn’s Self-Nomination
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A Fast Spatial Pool Learning Algorithm of Hierarchical Temporal Memory Based on Minicolumn’s Self-Nomination

机译:基于Minicolumn的自我提名的分层时间记忆快速空间池学习算法

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As a new type of artificial neural network model, HTM has become the focus of current research and application. The sparse distributed representation is the basis of the HTM model, but the existing spatial pool learning algorithms have high training time overhead and may cause the spatial pool to become unstable. To overcome these disadvantages, we propose a fast spatial pool learning algorithm of HTM based on minicolumn’s nomination, where the minicolumns are selected according to the load-carrying capacity and the synapses are adjusted using compressed encoding. We have implemented the prototype of the algorithm and carried out experiments on three datasets. It is verified that the training time overhead of the proposed algorithm is almost unaffected by the encoding length, and the spatial pool becomes stable after fewer iterations of training. Moreover, the training of the new input does not affect the already trained results.
机译:作为一种新型的人工神经网络模型,HTM已成为当前研究和应用的重点。 稀疏分布式表示是HTM模型的基础,但现有的空间池学习算法具有高训练时间开销,并且可能导致空间池变得不稳定。 为了克服这些缺点,我们提出了一种基于Minicolumn的提名的HTM的快速空间池学习算法,其中根据负载承载能力选择Minicolumns,并且使用压缩编码调整突触。 我们已经实现了算法的原型,并在三个数据集中进行了实验。 验证所提出的算法的训练时间几乎不受编码长度的影响,并且在训练次数较少迭代后,空间池变得稳定。 此外,新输入的培训不会影响已训练的结果。

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