Performance of a hierarchical temporal memory network in noisy sequence learning

Daniel E. Padilla, R. Brinkworth, M. McDonnell
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引用次数: 18

Abstract

As neurobiological evidence points to the neocortex as the brain region mainly involved in high-level cognitive functions, an innovative model of neocortical information processing has been recently proposed. Based on a simplified model of a neocortical neuron, and inspired by experimental evidence of neocortical organisation, the Hierarchical Temporal Memory (HTM) model attempts at understanding intelligence, but also at building learning machines. This paper focuses on analysing HTM's ability for online, adaptive learning of sequences. In particular, we seek to determine whether the approach is robust to noise in its inputs, and to compare and contrast its performance and attributes to an alternative Hidden Markov Model (HMM) approach. We reproduce a version of a HTM network and apply it to a visual pattern recognition task under various learning conditions. Our first set of experiments explore the HTM network's capability to learn repetitive patterns and sequences of patterns within random data streams. Further experimentation involves assessing the network's learning performance in terms of inference and prediction under different noise conditions. HTM results are compared with those of a HMM trained at the same tasks. Online learning performance results demonstrate the HTM's capacity to make use of context in order to generate stronger predictions, whereas results on robustness to noise reveal an ability to deal with noisy environments. Our comparisons also, however, emphasise a manner in which HTM differs significantly from HMM, which is that HTM generates predicted observations rather than hidden states, and each observation is a sparse distributed representation.
一种分层时间记忆网络在噪声序列学习中的性能
由于神经生物学证据表明新皮层是大脑中主要参与高级认知功能的区域,最近提出了一种创新的新皮层信息处理模型。基于新皮层神经元的简化模型,并受到新皮层组织实验证据的启发,分层时间记忆(HTM)模型试图理解智能,同时也试图构建学习机器。本文重点分析了HTM在线自适应序列学习的能力。特别是,我们试图确定该方法是否对其输入中的噪声具有鲁棒性,并将其性能和属性与另一种隐马尔可夫模型(HMM)方法进行比较和对比。我们复制了一个版本的HTM网络,并将其应用于各种学习条件下的视觉模式识别任务。我们的第一组实验探索HTM网络在随机数据流中学习重复模式和模式序列的能力。进一步的实验包括评估网络在不同噪声条件下的推理和预测方面的学习性能。HTM结果与HMM在相同任务下训练的结果进行了比较。在线学习性能结果表明HTM有能力利用上下文来产生更强的预测,而对噪声的鲁棒性结果显示了处理噪声环境的能力。然而,我们的比较也强调了HTM与HMM显著不同的方式,即HTM生成预测观测值而不是隐藏状态,并且每个观测值都是一个稀疏分布表示。
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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