Deep Learning-Based Sentiment Analysis for Social Media

Zhe Wang, Ying Liu, Jie Fang, Da-xiang Li
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Abstract

Due to the continuous popularization of the Internet and mobile phones, people have gradually entered a participatory network era, and the rapid growth of social networks has caused an explosion of digital information content. It has turned online opinions, blogs, tweets and posts into highly valuable assets, allowing governments and businesses to gain insights from the data and make their strategies. Business organizations need to process and analyze these sentiments to investigate the data and gain business insights. In recent years, deep learning techniques have been very successful in performing sentiment analysis, which offers automatic feature extraction, rich representation capabilities and better performance compared with traditional feature-based techniques. The core idea is to extract complex features automatically from large amounts of data by building deep neural networks to generate up-to-date predictions. This paper reviews social media sentiment analysis methods based on deep learning. Firstly, it introduces the process of single-modal text sentiment analysis on social media. Then it summarizes the multimodal sentiment analysis algorithms for social media, and divides the algorithm into feature layer fusion, decision layer fusion and linear regression model according to different fusion strategies. finally, the difficulties of social media sentiment analysis based on deep learning and future research directions are discussed.
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基于深度学习的社交媒体情感分析
由于互联网和手机的不断普及,人们逐渐进入了参与式网络时代,社交网络的快速增长导致了数字信息内容的爆炸式增长。它将网上的观点、博客、推文和帖子变成了非常有价值的资产,使政府和企业能够从数据中获得洞察力并制定战略。业务组织需要处理和分析这些情绪,以调查数据并获得业务洞察力。近年来,深度学习技术在情感分析方面取得了很大的成功,与传统的基于特征的技术相比,深度学习技术提供了自动特征提取、丰富的表征能力和更好的性能。其核心思想是通过构建深度神经网络,从大量数据中自动提取复杂特征,从而生成最新的预测。本文综述了基于深度学习的社交媒体情感分析方法。首先,介绍了社交媒体上单模态文本情感分析的过程。然后总结了社交媒体的多模态情感分析算法,并根据融合策略的不同将算法分为特征层融合、决策层融合和线性回归模型。最后,讨论了基于深度学习的社交媒体情感分析的难点和未来的研究方向。
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