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Echo State Networks for Feature Selection in Affective Computing

机译:回声状态网络在情感计算中的特征选择

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The Echo State Networks (ESNs) are dynamical structures designed initially to facilitate learning in Recurrent Neural Networks which are normally applied for time series modeling. In this paper we show that the ESN reservoirs can serve as an effective feature selection procedure that improved the discrimination of human emotion valence from EEG signals, a task that belongs to the research field of affective computing. A number of supervised and unsupervised machine learning techniques provided with the new feature vector extracted from ESN reservoir states were comparatively studied with respect to their discrimination accuracy. This novel application serves as a proof of concept for the possibility of extending the usability of the ESNs in classification or clustering frameworks.
机译:回声状态网络(ESN)是动态结构,最初设计用于促进在递归神经网络中进行学习,而递归神经网络通常用于时间序列建模。本文表明,ESN储层可以作为一种有效的特征选择过程,改善人们对EEG信号的情感价态的辨别力,属于情感计算研究领域。对于从ESN储层状态中提取的新特征向量提供的许多有监督和无监督机器学习技术,就其识别精度而言,进行了比较研究。这个新颖的应用作为概念证明,证明了在分类或聚类框架中扩展ESN可用性的可能性。

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