Modelling HTM Learning and Prediction for Robotic Path-Learning

Kaustab Pal, Sakyajit Bhattacharya, S. Dey, A. Mukherjee
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引用次数: 3

Abstract

Various machine learning models have so far been used for training robots to perform different tasks in the context of Industry 4.0. However, following the advances in neuroscience, new models are being pursued which are biologically inspired. One such model is the Hierarchical Temporal Memory (HTM) which models a neural network by drawing inspirations from human neocortex. This model is however a theoretical one, though its performance in multiple scenarios is worth taking note of. In this paper, the authors model the deviation in learning for HTM when applied to a robotic path learning scenario and investigated different parameters which influence the learning.
机器人路径学习的建模、学习和预测
到目前为止,各种机器学习模型已被用于训练机器人在工业4.0背景下执行不同的任务。然而,随着神经科学的进步,人们正在追求受生物学启发的新模型。其中一个模型是分层时间记忆(HTM),它通过从人类新皮层中获取灵感来模拟神经网络。然而,这个模型是一个理论模型,尽管它在多种情况下的表现值得注意。在本文中,作者建立了HTM在机器人路径学习场景下的学习偏差模型,并研究了不同参数对学习的影响。
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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