Learning to reproduce fluctuating behavioral sequences using a dynamic neural network model with time-varying variance estimation mechanism

Shingo Murata, Jun Namikawa, H. Arie, J. Tani, S. Sugano
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引用次数: 1

Abstract

This study shows that a novel type of recurrent neural network model can learn to reproduce fluctuating training sequences by inferring their stochastic structures. The network learns to predict not only the mean of the next input state, but also its time-varying variance. The network is trained through maximum likelihood estimation by utilizing the gradient descent method, and the likelihood function is expressed as a function of both the predicted mean and variance. In a numerical experiment, in order to evaluate the performance of the model, we first tested its ability to reproduce fluctuating training sequences generated by a known dynamical system that were perturbed by Gaussian noise with state-dependent variance. Our analysis showed that the network can reproduce the sequences by predicting the variance correctly. Furthermore, the other experiment showed that a humanoid robot equipped with the network can learn to reproduce fluctuating tutoring sequences by inferring latent stochastic structures hidden in the sequences.
学习用带有时变方差估计机制的动态神经网络模型再现波动行为序列
该研究表明,一种新型的递归神经网络模型可以通过推断训练序列的随机结构来学习再现波动训练序列。该网络不仅学习预测下一个输入状态的均值,还学习预测其时变方差。利用梯度下降法对网络进行极大似然估计训练,将似然函数表示为预测均值和方差的函数。在数值实验中,为了评估该模型的性能,我们首先测试了其再现由一个已知动力系统产生的波动训练序列的能力,该系统受到状态相关方差的高斯噪声的干扰。我们的分析表明,网络可以通过正确预测方差来复制序列。此外,另一个实验表明,配备该网络的人形机器人可以通过推断隐藏在序列中的潜在随机结构来学习再现波动辅导序列。
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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