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Deep Convolutional Neural Network Textual Features and Multiple Kernel Learning for Utterance-Level Multimodal Sentiment Analysis

机译:深度卷积神经网络文本特征与话语级多峰情绪分析的多核学习

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We present a novel way of extracting features from short texts, based on the activation values of an inner layer of a deep convolutional neural network. We use the extracted features in multimodal sentiment analysis of short video clips representing one sentence each. We use the combined feature vectors of textual, visual, and audio modalities to train a classifier based on multiple kernel learning, which is known to be good at heterogeneous data. We obtain 14% performance improvement over the state of the art and present a parallelizable decision-level data fusion method, which is much faster, though slightly less accurate.
机译:我们基于深度卷积神经网络的内层的激活值,提出了一种从短篇文本中提取特征的新方法。我们在多模式情绪分析中使用提取的特征,即每个代表一个句子的短视频剪辑。我们使用文本,视觉和音频模态的组合特征向量基于多个内核学习培训分类器,已知在异构数据中擅长。我们通过现有技术获得14%的性能改进,并提出了一种并行决策级数据融合方法,这更快,虽然略微不太准确。

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