首页> 外国专利> METHOD FOR CLASSIFYING EMOTIONS OF SPEECH IN CONVERSATION BY USING SEMI-SUPERVISED LEARNING-BASED WORD-BY-WORD EMOTION EMBEDDING AND LONG SHORT-TERM MEMORY MODEL

METHOD FOR CLASSIFYING EMOTIONS OF SPEECH IN CONVERSATION BY USING SEMI-SUPERVISED LEARNING-BASED WORD-BY-WORD EMOTION EMBEDDING AND LONG SHORT-TERM MEMORY MODEL

机译:通过使用半监督基于学习的词语情感嵌入和长短短期记忆模型来对谈话中言语情绪进行分类的方法

摘要

A method for classifying emotions of a speech in a conversation by using semi-supervised learning-based word-by-word emotion embedding and a long short-term memory (LSTM) model, according to an embodiment of the present invention, comprises: a word-by-word emotion embedding step for tagging an emotion to each word in an input speech of conversation data by referring to a word emotion dictionary in which a corresponding basic emotion is tagged to each word for learning; a step for extracting an emotion value of the input speech; and a step for classifying emotions of the speech in consideration of changes in emotions in a conversation occurring in a messenger client, on the basis of the LSTM model, by using the extracted emotion value of the speech as an input value for the LSTM model. According to the present invention, appropriate emotions can be classified by recognizing changes in emotions in a conversation using natural language.
机译:根据本发明的实施例,通过使用基于半监督的基于学习的基于学习的词语情感嵌入和长短期存储器(LSTM)模型来对话中语音中的情绪的方法包括:a通过参考一个词情感词典将关于对话数据的输入语音标记为每个单词标记情绪的单词情感嵌入步骤,其中将相应的基本情绪标记为学习的每个词;提取输入语音的情绪值的步骤;以及考虑在Messenger客户端在Messenger客户端中发生的对话中的情绪变化,通过使用语音提取的情感值作为LSTM模型的输入值,逐步对演讲的变化进行分类。根据本发明,可以通过识别使用自然语言的对话中的情绪的变化来归类适当的情绪。

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