使用 RWS 算法对 Twitter 数据进行有效预处理和特征分析,以检测假新闻

M. Santhoshkumar, V. Divya
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引用次数: 0

摘要

网络小工具的迅猛发展使客户在虚拟转发联盟中的地位日益稳固。来自社会事务的个人可以随时获得有关新闻、娱乐、培训、商业和不同主题的通知。 基于人工智能的分类模型的发展在深入分析文本数据方面发挥了最佳作用。基于文本的通信的大规模增长也影响了社会决策。人们依赖于社交媒体和网络群组中的新闻和更新。推特、脸书等微博客尽可能快地操纵新闻。假新闻和真新闻的分类质量取决于处理步骤。本文的重点是推导出一种重要的方法,用于预处理数据集和独特数据的特征提取。数据集被视为分析假新闻是否存在的输入数据。使用相关标签包(BORT)提取和相关元词包(BORMW)从数据中提取独特特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effective preprocessing and feature analysis on Twitter data for Fake news detection using RWS algorithm
The tremendous headway of web empowered gadgets develops the clients dependably strong in virtual redirection affiliations. Individuals from social affairs getting moment notices with respect to news, amusement, training, business, and different themes.  The development of artificial intelligence-based classification models plays an optimum role in making deeper analysis of text data. The massive growth of text-based communication impacts the social decisions also. People rely on news and updates coming over in social media and networking groups. Micro blogs such as tweeter, facebooks manipulate the news as faster as possible. The quality of classification of fake news and real news depends on the processing steps. The proposed articles focused on deriving a significant method for pre-processing the dataset and feature extraction of the unique data. Dataset is considered as the input data for analyzing the presence of fake news. The extraction of unique features from the data is implemented using Bags of relevant tags (BORT) extraction and Bags of relevant meta words (BORMW).
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