Learning to Reproduce Fluctuating Time Series by Inferring Their Time-Dependent Stochastic Properties: Application in Robot Learning Via Tutoring

Shingo Murata, Jun Namikawa, H. Arie, S. Sugano, J. Tani
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引用次数: 62

Abstract

This study proposes a novel type of dynamic neural network model that can learn to extract stochastic or fluctuating structures hidden in time series data. The network learns to predict not only the mean of the next input state, but also its time-dependent variance. The training method is based on maximum likelihood estimation by using the gradient descent method and the likelihood function is expressed as a function of the estimated variance. Regarding the model evaluation, we present numerical experiments in which training data were generated in different ways utilizing Gaussian noise. Our analysis showed that the network can predict the time-dependent variance and the mean and it can also reproduce the target stochastic sequence data by utilizing the estimated variance. Furthermore, it was shown that a humanoid robot using the proposed network can learn to reproduce latent stochastic structures hidden in fluctuating tutoring trajectories. This learning scheme is essential for the acquisition of sensory-guided skilled behavior.
通过推断波动时间序列的随时间随机特性来学习再现波动时间序列:在机器人辅导学习中的应用
本文提出了一种新的动态神经网络模型,可以学习提取隐藏在时间序列数据中的随机或波动结构。该网络不仅学习预测下一个输入状态的均值,还学习预测其随时间变化的方差。该训练方法基于梯度下降法的极大似然估计,似然函数表示为估计方差的函数。关于模型评估,我们提出了利用高斯噪声以不同方式生成训练数据的数值实验。分析表明,该网络可以预测随时间变化的方差和均值,并可以利用估计的方差再现目标随机序列数据。此外,使用该网络的类人机器人可以学习再现隐藏在波动辅导轨迹中的潜在随机结构。这种学习方案对于获得感官引导的熟练行为是必不可少的。
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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来源期刊
IEEE Transactions on Autonomous Mental Development
IEEE Transactions on Autonomous Mental Development COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-ROBOTICS
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