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首页> 外文期刊>Audio, Speech, and Language Processing, IEEE/ACM Transactions on >Tree-Structured Regional CNN-LSTM Model for Dimensional Sentiment Analysis
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Tree-Structured Regional CNN-LSTM Model for Dimensional Sentiment Analysis

机译:尺寸情绪分析树结构区域CNN-LSTM模型

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摘要

Dimensional sentiment analysis aims to recognize continuous numerical values in multiple dimensions such as the valence-arousal (VA) space. Compared to the categorical approach that focuses on sentiment classification such as binary classification (i.e., positive and negative), the dimensional approach can provide a more fine-grained sentiment analysis. This article proposes a tree-structured regional CNN-LSTM model consisting of two parts: regional CNN and LSTM to predict the VA ratings of texts. Unlike a conventional CNN which considers a whole text as input, the proposed regional CNN uses a part of the text as a region, dividing an input text into several regions such that the useful affective information in each region can be extracted and weighted according to their contribution to the VA prediction. Such regional information is sequentially integrated across regions using LSTM for VA prediction. By combining the regional CNN and LSTM, both local (regional) information within sentences and long-distance dependencies across sentences can be considered in the prediction process. To further improve performance, a region division strategy is proposed to discover task-relevant phrases and clauses to incorporate structured information into VA prediction. Experimental results on different corpora show that the proposed method outperforms lexicon-, regression-, conventional NN and other structured NN methods proposed in previous studies.
机译:尺寸情绪分析旨在识别多维诸如价唤起(VA)空间的多维的连续数值。与专注于情绪分类的分类方法相比,例如二进制分类(即正负),尺寸方法可以提供更细粒度的情绪分析。本文提出了由两部分组成的树结构区域CNN-LSTM模型:区域CNN和LSTM,以预测文本的VA评级。与将整个文本作为输入的传统CNN不同,所提出的区域CNN使用文本的一部分作为区域,将输入文本划分为几个区域,使得可以根据其提取每个区域中的有用的情感信息对VA预测的贡献。这种区域信息在使用LSTM进行VA预测的区域横跨区域依次集成。通过组合区域CNN和LSTM,可以在预测过程中考虑句子中的句子中的本地(区域)信息和长距离依赖项。为了进一步提高性能,建议发现区域划分策略,以发现任务相关的短语和条款将结构化信息纳入VA预测。不同的Corpora的实验结果表明,所提出的方法优于先前研究中提出的词典,回归,常规NN和其他结构化NN方法。

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