一种新的基于社交媒体的情感分析数据适应性方法

M. Jeyakarthic, A. Leoraj
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引用次数: 0

摘要

由于其互动性和实时性,通过分析大量社会数据来收集民意受到了人们的广泛关注。最近的研究利用情绪分析和社交媒体来监测人们的行为,从而跟踪重大事件。在本文中,我们提供了一种灵活的情感分析方法,可以立即从社交媒体帖子中提取用户意见并对其进行评估。建议的方法需要首先根据与某个主题相关的选定标签集合创建一个动态词汇极性字典,然后通过添加额外的特征将tweet分类为许多类别,这些特征可以大幅微调帖子的极性程度。我们对2022年法国总统选举的推文进行了分类,以验证我们的方法。原型测试的结果表明,在识别类以及类的子类方面具有很高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Social Media-Based Adaptable Approach for Sentiment Analysis Data
Due to its interactive and real-time character, gathering public opinion through the analysis of massive social data has received considerable interest. Recent research has used sentiment analysis and social media to do this to follow major events by monitoring people's behaviour. In this article, we provide a flexible approach to sentiment analysis that instantly pulls user opinions from social media postings and evaluates them. The suggested method entails first creating a dynamic dictionary of words' polarity based on a chosen collection of hashtags associated with a certain topic, then categorizing the tweets into many classifications by adding additional characteristics that sharply fine-tune the polarity degree of a post. We categorized the tweets on the 2022 French presidential election to verify our methodology. The prototype tests' findings demonstrated high accuracy in identifying classes as well classes' subclasses.
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