Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Efficient Fake News Detection Mechanism Using Enhanced Deep Learning Model

View through CrossRef
The spreading of accidental or malicious misinformation on social media, specifically in critical situations, such as real-world emergencies, can have negative consequences for society. This facilitates the spread of rumors on social media. On social media, users share and exchange the latest information with many readers, including a large volume of new information every second. However, updated news sharing on social media is not always true.In this study, we focus on the challenges of numerous breaking-news rumors propagating on social media networks rather than long-lasting rumors. We propose new social-based and content-based features to detect rumors on social media networks. Furthermore, our findings show that our proposed features are more helpful in classifying rumors compared with state-of-the-art baseline features. Moreover, we apply bidirectional LSTM-RNN on text for rumor prediction. This model is simple but effective for rumor detection. The majority of early rumor detection research focuses on long-running rumors and assumes that rumors are always false. In contrast, our experiments on rumor detection are conducted on real-world scenario data set. The results of the experiments demonstrate that our proposed features and different machine learning models perform best when compared to the state-of-the-art baseline features and classifier in terms of precision, recall, and F1 measures.
Title: Efficient Fake News Detection Mechanism Using Enhanced Deep Learning Model
Description:
The spreading of accidental or malicious misinformation on social media, specifically in critical situations, such as real-world emergencies, can have negative consequences for society.
This facilitates the spread of rumors on social media.
On social media, users share and exchange the latest information with many readers, including a large volume of new information every second.
However, updated news sharing on social media is not always true.
In this study, we focus on the challenges of numerous breaking-news rumors propagating on social media networks rather than long-lasting rumors.
We propose new social-based and content-based features to detect rumors on social media networks.
Furthermore, our findings show that our proposed features are more helpful in classifying rumors compared with state-of-the-art baseline features.
Moreover, we apply bidirectional LSTM-RNN on text for rumor prediction.
This model is simple but effective for rumor detection.
The majority of early rumor detection research focuses on long-running rumors and assumes that rumors are always false.
In contrast, our experiments on rumor detection are conducted on real-world scenario data set.
The results of the experiments demonstrate that our proposed features and different machine learning models perform best when compared to the state-of-the-art baseline features and classifier in terms of precision, recall, and F1 measures.

Related Results

An Empirical Study on Fake News Menace and Misinformation with Special Reference to India
An Empirical Study on Fake News Menace and Misinformation with Special Reference to India
Fake news are the news, cooked up stories or hoaxes that are created to deliberately misinform or deceive the consumers/readers. Usually, these stories are created to either influe...
Effects of Intervention Timing on Health-Related Fake News: Simulation Study
Effects of Intervention Timing on Health-Related Fake News: Simulation Study
Background Fake health-related news has spread rapidly through the internet, causing harm to individuals and society. Despite interventions, a fenbendazole scan...
Effects of Intervention Timing on Health-Related Fake News: Simulation Study (Preprint)
Effects of Intervention Timing on Health-Related Fake News: Simulation Study (Preprint)
BACKGROUND Fake health-related news has spread rapidly through the internet, causing harm to individuals and society. Despite interventions, a fenbendazole ...
DISCOURSE: KNOWLEDGE, NEWS, AND FAKE INTERTWINED
DISCOURSE: KNOWLEDGE, NEWS, AND FAKE INTERTWINED
Discourse has been a focal point for linguists over an extended period. The multidisciplinary character of the term ‘discourse’ has resulted in diverse approaches aiming to define ...
Hold On! Your Emotion and Behaviour when Falling for Fake News in Social Media
Hold On! Your Emotion and Behaviour when Falling for Fake News in Social Media
Researchers are concerned about the impact of fake news on democracy, while it could also escalate to life-threatening problems. Fake news continues to spread, so does people's beh...
Analisis Saddu Dzari’ah terhadap Penggunaan Aplikasi Fake Global Positioning System (GPS) pada Shopeefood Driver
Analisis Saddu Dzari’ah terhadap Penggunaan Aplikasi Fake Global Positioning System (GPS) pada Shopeefood Driver
Abstract. Shopee is a company engaged in online-based buying and selling services. One of the latest features of Shopee is the ShopeeFood service and has standard rules that must b...
NEURAL NETWORKS FOR DETECTING FAKE NEWS AND MISINFORMATION: AN AI-POWERED FRAMEWORK FOR SECURING DIGITAL MEDIA AND SOCIAL PLATFORMS
NEURAL NETWORKS FOR DETECTING FAKE NEWS AND MISINFORMATION: AN AI-POWERED FRAMEWORK FOR SECURING DIGITAL MEDIA AND SOCIAL PLATFORMS
The growing concern of fake news and information in contemporary society threatens the integrity of democracy and global security. Social media and on-line news websites are now co...
Fake News Detection using Machine Learning Algorithms and Recurrent Neural Networks
Fake News Detection using Machine Learning Algorithms and Recurrent Neural Networks
<p>In recent years, fake news has been surfacing in enormous numbers and spreading on the internet world for various political and commercial purposes. One major reason for t...

Back to Top