2022
DOI: 10.3390/app12031116
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Fake News Classification Based on Content Level Features

Abstract: Due to the openness and easy accessibility of online social media (OSM), anyone can easily contribute a simple paragraph of text to express their opinion on an article that they have seen. Without access control mechanisms, it has been reported that there are many suspicious messages and accounts spreading across multiple platforms. Accordingly, identifying and labeling fake news is a demanding problem due to the massive amount of heterogeneous content. In essence, the functions of machine learning (ML) and na… Show more

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Cited by 41 publications
(15 citation statements)
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“…By combining the usage of ML and NLP on a sizable and labeled corpus provided by Twitter, Chun-Ming Lai, Mei-Hua Chen, Endah Kristiani, Vinod Kumar Verma, and Chao-Tung Yang attempted to categorize the news data in another work. The conventional ML algorithms' accuracy was 85% and more than 90% with neural networks [21]. Abdulaziz Albahr and Marwan Albahr used the well-known "LIAR" dataset to create a model for detecting fake news.…”
Section: Related Workmentioning
confidence: 99%
“…By combining the usage of ML and NLP on a sizable and labeled corpus provided by Twitter, Chun-Ming Lai, Mei-Hua Chen, Endah Kristiani, Vinod Kumar Verma, and Chao-Tung Yang attempted to categorize the news data in another work. The conventional ML algorithms' accuracy was 85% and more than 90% with neural networks [21]. Abdulaziz Albahr and Marwan Albahr used the well-known "LIAR" dataset to create a model for detecting fake news.…”
Section: Related Workmentioning
confidence: 99%
“…It is critical to pick the proper feature reduction algorithm, as feature reduction has a significant impact on text classification performance [36]. For this reason, traditional machine learning-based methods perform poorly on high-dimensional features [37]. For the most part, neural network-based approaches have performed better than traditional machine learning-based methods, as they reduce the curse of dimensionality.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Extracting news article text features and processing them through a model consisting of machine learning and natural language processing (Jain et al, 2019). (Lai et al, 2022) used word vectorization to convert words into numeric values to be understood by their neural network model. The result of the models made can always be improved with many more methods and techniques (Aldwairi & Alwahedi, 2018;ArunKumar et al, 2020;Farokhian et al, 2022;Humayoun, 2022) helping to improvise the accuracy of information appearing on the internet.…”
Section: Literature Reviewmentioning
confidence: 99%