DICE: Deep Intelligent Contextual Embedding for Twitter Sentiment Analysis

Usman Naseem, Katarzyna Musial
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引用次数: 23

Abstract

The sentiment analysis of the social media-based short text (e.g., Twitter messages) is very valuable for many good reasons, explored increasingly in different communities such as text analysis, social media analysis, and recommendation. However, it is challenging as tweet-like social media text is often short, informal and noisy, and involves language ambiguity such as polysemy. The existing sentiment analysis approaches are mainly for document and clean textual data. Accordingly, we propose a Deep Intelligent Contextual Embedding (DICE), which enhances the tweet quality by handling noises within contexts, and then integrates four embeddings to involve polysemy in context, semantics, syntax, and sentiment knowledge of words in a tweet. DICE is then fed to a Bi-directional Long Short Term Memory (BiLSTM) network with attention to determine the sentiment of a tweet. The experimental results show that our model outperforms several baselines of both classic classifiers and combinations of various word embedding models in the sentiment analysis of airline-related tweets.
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DICE: Twitter情感分析的深度智能上下文嵌入
基于社交媒体的短文本(例如Twitter消息)的情感分析非常有价值,有很多很好的理由,在文本分析、社交媒体分析和推荐等不同的社区中得到了越来越多的探索。然而,这是一个挑战,因为类似推特的社交媒体文本通常简短、非正式、嘈杂,并且涉及语言歧义,如一词多义。现有的情感分析方法主要针对文档和干净文本数据。因此,我们提出了一种深度智能上下文嵌入(DICE),该方法通过处理上下文中的噪声来提高推文质量,然后集成四种嵌入,包括上下文中的多义性、语义、语法和推文中单词的情感知识。然后将DICE与注意力一起输入双向长短期记忆(BiLSTM)网络,以确定tweet的情绪。实验结果表明,我们的模型在航空公司相关推文的情感分析中优于经典分类器和各种词嵌入模型组合的几个基线。
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