基于双向LSTM和CNN模型的多任务情感分析。

T. Tran, Ha Hoang Thi Thanh, Phuong Hoai Dang, M. Riveill
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引用次数: 5

摘要

情感分析涉及建立意见收集和分类系统。基于方面的情感分析侧重于提取和总结情感文档中实体特定方面的意见的能力。在本文中,我们提出了一种新的监督学习方法,该方法使用深度学习技术用于多任务基于方面的意见挖掘系统,该系统支持四个主要子任务:提取意见目标,对方面-实体(类别)进行分类,并在每个提取的实体方面估计意见极性(积极,中立,消极)。利用额外的POS层来识别词的形态特征,结合BiLSTM和CNN的堆叠架构,并通过在SemEval 2016基准数据集的Restaurant域评论上训练GloVe实现词嵌入,我们提出的方法旨在提高模型的准确性。实验结果表明,我们的多任务面向情感分析模型能够同时提取和分类上述主要子任务,并取得了显著优于现有方法的准确率。
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Multitask Aspect_Based Sentiment Analysis with Integrated Bidirectional LSTM & CNN Model.
Sentiment analysis involves building the opinion collection and classification system. Aspect-based sentiment analysis focuses on the ability to extract and summarize opinions on specific aspects of entities within sentiment document. In this paper, we propose a novel supervised learning approach using deep learning techniques for multitask aspect-based opinion mining system that support four main subtasks: extract opinion target, classify aspect-entity (category), and estimate opinion polarity (positive, neutral, negative) on each extracted aspect of entity. Using extra POS layer to identify morphological features of words combines with stacking architecture of BiLSTM and CNN with word embeddings achieved by training GloVe on Restaurant domain reviews of the SemEval 2016 benchmark dataset in our proposed method is aimed at increasing the accuracy of the model. Experimental results showed that our multitask aspect-based sentiment analysis model has extracted and classified main above subtasks concurrently and achieved significantly better accuracy than the state-of-the-art methods.
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