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Analyzing the memory of BLSTM Neural Networks for enhanced emotion classification in dyadic spoken interactions

机译:分析BLSTM神经网络的记忆以增强二进位口语互动中的情感分类

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Recent studies indicate that bidirectional Long Short-Term Memory (BLSTM) recurrent neural networks are well-suited for automatic emotion recognition systems and may lead to better results than systems applying other widely used classifiers such as Support Vector Machines or feedforward Neural Networks. The good performance of BLSTM emotion recognition systems could be attributed to their ability to model and exploit contextual information self-learned via recurrently connected memory blocks which allows them to incorporate information about how emotion evolves over time. However, the actual amount of bidirectional context that a BLSTM classifier takes into account when classifying an observation has not been investigated so far. This paper presents a methodology to systematically investigate the number of past and future utterance-level observations that are considered to generate an emotion prediction for a given utterance, and to examine to what extent this temporal bidirectional context contributes to the overall BLSTM performance.
机译:最近的研究表明,双向长短期记忆(BLSTM)递归神经网络非常适合于自动情感识别系统,并且与应用其他广泛使用的分类器(如支持向量机或前馈神经网络)的系统相比,可能会导致更好的结果。 BLSTM情绪识别系统的良好性能可归因于其通过循环连接的内存块对自学习的上下文信息进行建模和开发的能力,这使它们能够结合有关情绪如何随时间演变的信息。但是,到目前为止,尚未对BLSTM分类器在对观察结果进行分类时考虑到的双向上下文的实际数量进行研究。本文提供了一种方法,可以系统地研究过去和将来的话语水平观察的数量,这些观察被认为可以针对给定的话语生成情绪预测,并研究这种时间双向上下文在多大程度上有助于整体BLSTM性能。

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