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Target-Dependent Twitter Sentiment Classification with Rich Automatic Features

机译:目标相关的Twitter情绪分类,具有丰富的自动功能

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Target-dependent sentiment analysis on Twitter has attracted increasing research attention. Most previous work relies on syntax, such as automatic parse trees, which are subject to noise for informal text such as tweets. In this paper, we show that competitive results can be achieved without the use of syntax, by extracting a rich set of automatic features. In particular, we split a tweet into a left context and a right context according to a given target, using distributed word representations and neural pooling functions to extract features. Both sentiment-driven and standard embeddings are used, and a rich set of neural pooling functions are explored. Sentiment lexicons are used as an additional source of information for feature extraction. In standard evaluation, the conceptually simple method gives a 4.8% absolute improvement over the state-of-the-art on three-way targeted sentiment classification, achieving the best reported results for this task.
机译:对Twitter的目标依赖情绪分析引起了越来越越来越多的研究人身。最先前的工作依赖于语法,例如自动解析树,这可能会受到噪声的非正式文本,例如推文。在本文中,我们表明,通过提取丰富的自动功能,可以在不使用语法的情况下实现竞争结果。特别地,我们根据给定的目标将推文分成左上文和右侧上下文,使用分布式字表示和神经池函数来提取特征。使用了两种情绪驱动和标准嵌入,探索了丰富的神经池功能。情绪词典用作特征提取的额外信息来源。在标准评估中,概念上简单的方法在三方目标情绪分类上对最先进的最先进的方法提供了4.8%的绝对改善,实现了这项任务的最佳报告结果。

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