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Residual-Based Graph Convolutional Network for Emotion Recognition in Conversation for Smart Internet of Things

机译:基于残余的图表卷积网络,用于智能互联网谈话中的情感认同

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摘要

Recently, emotion recognition in conversation (ERC) has become more crucial in the development of diverse Internet of Things devices, especially closely connected with users. The majority of deep learning-based methods for ERC combine the multilayer, bidirectional, recurrent feature extractor and the attention module to extract sequential features. In addition to this, the latest model utilizes speaker information and the relationship between utterances through the graph network. However, before the input is fed into the bidirectional recurrent module, detailed intrautterance features should be obtained without variation of characteristics. In this article, we propose a residual-based graph convolution network (RGCN) and a new loss function. Our RGCN contains the residual network (ResNet)-based, intrautterance feature extractor and the GCN-based, interutterance feature extractor to fully exploit the intra–inter informative features. In the intrautterance feature extractor based on ResNet, the elaborate context feature for each independent utterance can be produced. Then, the condensed feature can be obtained through an additional GCN-based, interutterance feature extractor with the neighboring associated features for a conversation. The proposed loss function reflects the edge weight to improve effectiveness. Experimental results demonstrate that the proposed method achieves superior performance compared with state-of-the-art methods.
机译:最近,在谈话中的情感认可(ERC)在开发各种事物互联网的发展方面变得更加重要,特别是与用户密切相关。 ERC的大部分基于深度学习的方法组合了多层,双向,经常性特征提取器和注意模块来提取顺序特征。除此之外,最新型号还利用扬声器信息和通过图形网络的话语之间的关系。然而,在输入进入双向反复模块之前,应获得详细的intrautance特征而无需特性变化。在本文中,我们提出了一种基于残余的图形卷积网络(RGCN)和新的损失功能。我们的RGCN包含基于残留的网络(Resnet),intraine特征提取器和基于GCN的对话功能提取器,以充分利用内部信息性功能。在基于RESET的intrautance特征提取器中,可以产生每个独立话语的精心上下文特征。然后,可以通过额外的GCN基础的对话特征提取器获得冷凝特征,其中具有与相邻的相关特征进行对话。所提出的损失函数反映了边缘重量以提高有效性。实验结果表明,该方法与最先进的方法相比,卓越的性能。

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