Sentiment Polarity Identification of Social Media content using Artificial Neural Networks

K. Rajan, Brittney Jackson
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引用次数: 0

Abstract

Sentiment of people about consumer goods and government policies for decision making is normally collected through feedback forms, surveys etc. The social network sites and micro blogging sites are considered a very good source of information nowadays because people share and discuss their opinions about a certain topic freely. With the increased use of technology and social media, people proactively express their opinion through social media sites like Twitter, Facebook, Instagram etc. A social media sentiment analysis can help companies to understand how people feel about their products. On the other hand, extracting the sentiment from social media text is a challenging task due to the complexity of natural language processing of social media language. Often these messages reflect the emotion, opinion and sentiment of the public through a mix of text, image, emoticons etc. These statements are often called electronic Word of Mouth (eWOM) and are much prevalent in business and service industry to enable customers to share their point of view.
基于人工神经网络的社交媒体内容情感极性识别
人们对消费品和政府决策政策的看法通常通过反馈表、调查等方式收集。社交网站和微博网站被认为是一个很好的信息来源,因为人们可以自由地分享和讨论他们对某个话题的看法。随着科技和社交媒体使用的增加,人们通过Twitter、Facebook、Instagram等社交媒体网站主动表达自己的观点。社交媒体情绪分析可以帮助公司了解人们对其产品的感受。另一方面,由于社交媒体语言自然语言处理的复杂性,从社交媒体文本中提取情感是一项具有挑战性的任务。通常,这些信息通过文字、图像、表情符号等组合反映了公众的情感、观点和情绪。这些陈述通常被称为电子口碑(eom),在商业和服务行业中非常普遍,使客户能够分享他们的观点。
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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