A Comparison of Word-Embeddings in Emotion Detection from Text using BiLSTM, CNN and Self-Attention

Marco Polignano, Pierpaolo Basile, M. Degemmis, G. Semeraro
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引用次数: 50

Abstract

User profiling is becoming increasingly holistic by including aspects of the user that until a few years ago seemed irrelevant. The content that users produce on the Internet and social networks is an essential source of information about their habits, preferences, and behaviors in many situations. One factor that has proved to be very important for obtaining a complete user profile that includes her psychological traits are the emotions experienced. Therefore, it is of great interest to the research community to develop approaches for identifying emotions from the text that are accurate and robust in situations of everyday writing. In this work, we propose a classification approach based on deep neural networks, Bi-LSTM, CNN, and self-attention demonstrating its effectiveness on different datasets. Moreover, we compare three pre-trained word-embeddings for words encoding. The encouraging results obtained on state-of-the-art datasets allow us to confirm the validity of the model and to discuss what are the best word embeddings to adopt for the task of emotion detection. As a consequence of the great importance of deep learning in the research community, we promote our model as a starting point for further investigations in the domain.
基于BiLSTM、CNN和自注意的文本情感检测中的词嵌入比较
通过包括几年前看起来无关紧要的用户方面,用户分析正变得越来越全面。用户在互联网和社交网络上产生的内容是关于他们在许多情况下的习惯、偏好和行为的重要信息来源。事实证明,要获得包括心理特征在内的完整用户档案,一个非常重要的因素是所经历的情绪。因此,在日常写作的情况下,开发从文本中识别准确而稳健的情感的方法是研究界非常感兴趣的。在这项工作中,我们提出了一种基于深度神经网络、Bi-LSTM、CNN和自关注的分类方法,证明了它在不同数据集上的有效性。此外,我们比较了三种预训练词嵌入的词编码。在最先进的数据集上获得的令人鼓舞的结果使我们能够确认模型的有效性,并讨论用于情感检测任务的最佳词嵌入。由于深度学习在研究界的重要性,我们将我们的模型作为该领域进一步研究的起点。
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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