We propose an approach inspired by the diffusion of innovations theory to model and characterize fake news sharing in social media through the lens of the different levels of influential factors (users, networks, and news). We address the problem of predicting fake news sharing as a classification task and demonstrate the potentials of the proposed features by achieving an AUROC of 0.97 and an average precision of 0.88, consistently outperforming baseline models with a higher margin (about 30% of AUROC). Also, we show that news-based features are the most effective at predicting real and fake news sharing, followed by the user- and network-based features
Social media plays a fundamental role in the diffusion of information. There are two different ways ...
The growth of dynamism, the complexity of relationships in social networks requires a systematic app...
Why do we share fake news? Despite a growing body of freely-available knowledge and information fake...
We propose an approach inspired by the diffusion of innovations theory to model and characterize fak...
Online media is changing the traditional news industry and diminishing the role of journalists, news...
We study the problem of predicting the influence of a user in spreading fake (or real) news on socia...
In this paper, we discuss the current limitations of existing models for misinformation diffusion in...
Due to its rapid spread over social media and the societal threat of changing public opinion, fake n...
To alleviate the impact of fake news on our society, predicting the popularity of fake news posts on...
Fake news can have a significant negative impact on society because of the growing use of mobile dev...
Fake news has been considered one of the most challenging problems in the last few years. The effect...
Several researchers have attempted to investigate the processes that govern and support the spread o...
The authors discuss a new conceptual model to examine the phenomenon of fake news. Their model focus...
Fake news can have a significant negative impact on society because of the growing use of mobile dev...
Social media plays a fundamental role in the diffusion of information. There are two different ways ...
Social media plays a fundamental role in the diffusion of information. There are two different ways ...
The growth of dynamism, the complexity of relationships in social networks requires a systematic app...
Why do we share fake news? Despite a growing body of freely-available knowledge and information fake...
We propose an approach inspired by the diffusion of innovations theory to model and characterize fak...
Online media is changing the traditional news industry and diminishing the role of journalists, news...
We study the problem of predicting the influence of a user in spreading fake (or real) news on socia...
In this paper, we discuss the current limitations of existing models for misinformation diffusion in...
Due to its rapid spread over social media and the societal threat of changing public opinion, fake n...
To alleviate the impact of fake news on our society, predicting the popularity of fake news posts on...
Fake news can have a significant negative impact on society because of the growing use of mobile dev...
Fake news has been considered one of the most challenging problems in the last few years. The effect...
Several researchers have attempted to investigate the processes that govern and support the spread o...
The authors discuss a new conceptual model to examine the phenomenon of fake news. Their model focus...
Fake news can have a significant negative impact on society because of the growing use of mobile dev...
Social media plays a fundamental role in the diffusion of information. There are two different ways ...
Social media plays a fundamental role in the diffusion of information. There are two different ways ...
The growth of dynamism, the complexity of relationships in social networks requires a systematic app...
Why do we share fake news? Despite a growing body of freely-available knowledge and information fake...