Neural Feature Extraction for Contextual Emotion Detection

E. Mohammadi, Hessam Amini, Leila Kosseim
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引用次数: 7

Abstract

This paper describes a new approach for the task of contextual emotion detection. The approach is based on a neural feature extractor, composed of a recurrent neural network with an attention mechanism, followed by a classifier, that can be neural or SVM-based. We evaluated the model with the dataset of the task 3 of SemEval 2019 (EmoContext), which includes short 3-turn conversations, tagged with 4 emotion classes. The best performing setup was achieved using ELMo word embeddings and POS tags as input, bidirectional GRU as hidden units, and an SVM as the final classifier. This configuration reached 69.93% in terms of micro-average F1 score on the main 3 emotion classes, a score that outperformed the baseline system by 11.25%.
上下文情感检测的神经特征提取
本文描述了一种新的情境情感检测方法。该方法基于神经特征提取器,由具有注意机制的递归神经网络和基于神经或支持向量机的分类器组成。我们使用SemEval 2019的任务3 (EmoContext)的数据集对模型进行了评估,该数据集包括简短的3轮对话,标记有4种情感类别。使用ELMo词嵌入和POS标签作为输入,双向GRU作为隐藏单元,支持向量机作为最终分类器,实现了最佳性能设置。该配置在主要3种情绪类别上的微平均F1得分达到69.93%,比基线系统高出11.25%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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