10.55041/ISJEM01502

Aishwarya .S
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Abstract

The proposed solution for detecting false news involves a combination of Natural Language Processing (NLP) techniques, Reinforcement Learning (RL), and blockchain technology. The process begins with the collection of a comprehensive dataset of news articles and their associated metadata, followed by NLP-based pre-processing to clean and tokenize the text. Relevant features, such as word frequencies and readability, are then extracted and used to train an RL agent. The agent is trained to distinguish between true and false news using a reward and punishment system for learning. Once trained, the RL agent can classify new articles as true or false based on their extracted features. Although the potential role of blockchain technology is mentioned, further elaboration is required. This innovative approach is aimed at combating the dissemination of false information and misinformation in the digital news. Keywords: Natural Language Processing (NLP), Block chain, Fake Media
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10.55041/isjem01502
所提出的虚假新闻检测解决方案结合了自然语言处理(NLP)技术、强化学习(RL)和区块链技术。这一过程首先是收集新闻文章及其相关元数据的综合数据集,然后进行基于 NLP 的预处理,对文本进行清理和标记化。然后提取相关特征,如词频和可读性,用于训练 RL 代理。利用奖惩学习系统训练代理区分真假新闻。训练完成后,RL 代理就可以根据提取的特征将新文章分为真假。虽然提到了区块链技术的潜在作用,但还需要进一步阐述。这一创新方法旨在打击数字新闻中虚假信息和错误信息的传播。关键词:自然语言处理(NLP自然语言处理(NLP)、区块链、虚假媒体
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