基于推特展开法的情境感知情感分析

IF 0.5 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of ICT Research and Applications Pub Date : 2022-08-31 DOI:10.5614/itbj.ict.res.appl.2022.16.2.3
Bashar Tahayna, R. Ayyasamy, Rehan Akbar
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引用次数: 3

摘要

大量的社交媒体平台(尤其是微博)产生了大量的信息空间,催生了一系列新的应用,并推动了情绪分析研究的兴起和扩展。我们提出了一种情感分析技术,该技术可以识别描述tweet意图的主要部分,并使用相关的单词、短语甚至推断变量来丰富它们。我们采用了最先进的混合深度学习模型,将卷积神经网络(CNN)和长短期记忆网络(LSTM)结合起来,根据极性对tweet数据进行分类。为了保留tweet术语及其扩展表示之间的潜在关系,使用了句子编码和上下文化词嵌入。为了研究推文嵌入在情感分析任务上的性能,我们测试了几个无上下文模型(Word2Vec、Sentence2Vec、Glove和FastText)、一个动态嵌入模型(BERT)、深度上下文化词表示(ELMo)和一个基于实体的模型(Wikipedia)。本文提出的方法和实验结果表明,文本充实能显著提高情感极性分类的准确率。
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Context-Aware Sentiment Analysis using Tweet Expansion Method
The large source of information space produced by the plethora of social media platforms in general and microblogging in particular has spawned a slew of new applications and prompted the rise and expansion of sentiment analysis research. We propose a sentiment analysis technique that identifies the main parts to describe tweet intent and also enriches them with relevant words, phrases, or even inferred variables. We followed a state-of-the-art hybrid deep learning model to combine Convolutional Neural Network (CNN) and the Long Short-Term Memory network (LSTM) to classify tweet data based on their polarity. To preserve the latent relationships between tweet terms and their expanded representation, sentence encoding and contextualized word embeddings are utilized. To investigate the performance of tweet embeddings on the sentiment analysis task, we tested several context-free models (Word2Vec, Sentence2Vec, Glove, and FastText), a dynamic embedding model (BERT), deep contextualized word representations (ELMo), and an entity-based model (Wikipedia). The proposed method and results prove that text enrichment improves the accuracy of sentiment polarity classification with a notable percentage.
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来源期刊
Journal of ICT Research and Applications
Journal of ICT Research and Applications COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
1.60
自引率
0.00%
发文量
13
审稿时长
24 weeks
期刊介绍: Journal of ICT Research and Applications welcomes full research articles in the area of Information and Communication Technology from the following subject areas: Information Theory, Signal Processing, Electronics, Computer Network, Telecommunication, Wireless & Mobile Computing, Internet Technology, Multimedia, Software Engineering, Computer Science, Information System and Knowledge Management. Authors are invited to submit articles that have not been published previously and are not under consideration elsewhere.
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