Attention-Based Neural Networks for Sentiment Attitude Extraction using Distant Supervision

Nicolay Rusnachenko, Natalia V. Loukachevitch
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引用次数: 1

Abstract

In the sentiment attitude extraction task, the aim is to identify «attitudes» - sentiment relations between entities mentioned in text. In this paper, we provide a study on attention-based context encoders in the sentiment attitude extraction task. For this task, we adapt attentive context encoders of two types: (1) feature-based; (2) self-based. In our study, we utilize the corpus of Russian analytical texts RuSentRel and automatically constructed news collection RuAttitudes for enriching the training set. We consider the problem of attitude extraction as two-class (positive, negative) and three-class (positive, negative, neutral) classification tasks for whole documents. Our experiments1 with the RuSentRel corpus show that the three-class classification models, which employ the RuAttitudes corpus for training, result in 10% increase and extra 3% by F1, when model architectures include the attention mechanism. We also provide the analysis of attention weight distributions in dependence on the term type.
基于注意力的远程监督情感态度提取神经网络
在情感态度提取任务中,目的是识别文本中提到的实体之间的“态度”-情感关系。本文研究了基于注意的情境编码器在情感态度提取任务中的应用。对于这个任务,我们采用了两种类型的关注上下文编码器:(1)基于特征的;(2)心理。在我们的研究中,我们利用俄语分析文本语料库RuSentRel和自动构建的新闻集合RuAttitudes来丰富训练集。我们将整个文档的态度提取问题视为两类(积极、消极)和三类(积极、消极、中性)分类任务。我们对RuSentRel语料库的实验1表明,当模型架构包含注意机制时,使用RuAttitudes语料库进行训练的三类分类模型的效率提高了10%,F1提高了3%。我们还提供了关注权重分布在依赖于术语类型的分析。
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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