The last two years see the great advance in training general purpose language representation models using the enormous amount of unannotated text on the web, known as pre-training. The pre-trained model can then be fine-tuned on small-data NLP tasks, resulting in substantial accuracy improvements compared to training on these datasets from scratch. In this work we provide an overview of the challenging fake news detection problems viewed as a range of computational linguistic tasks and present the improved results of Fake News Detection Challenge (2017) obtained by leveraging publicly available pre-trained transformers like BERT, RoBERTa and XLNet
Widening popularity of social media platforms and the increasing number of users trigger the spreadi...
In the modern era of computing, the news ecosystem has transformed from old traditional print media ...
As the internet is becoming part of our daily routine there is sudden growth and popularity of onlin...
In recent years, there has been an increase in worry about the presence of false news on the interne...
Fake news has emerged as a critical problem for society and professional journalism. Many individual...
Efforts have been dedicated by researchers in the field of natural language processing (NLP) to dete...
abstract: In this paper, I introduce the fake news problem and detail how it has been exacerbated th...
With the pandemic of COVID-19, relevant fake news is spreading all over the sky throughout the socia...
Guided by a corpus linguistics approach, in this article we present a comparative evaluation of Stat...
The digital information age has generated new outlets for content creators to publish so-called “fak...
Fake news classification is one of the most interesting problems that has attracted huge attention t...
The uncontrolled growth of fake news creation and dissemination we observed in recent years causes c...
The uncontrolled growth of fake news creation and dissemi-nation we observed in recent years causes ...
News is an important source of information for people.Identifying the inaccurate news is a difficult...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Widening popularity of social media platforms and the increasing number of users trigger the spreadi...
In the modern era of computing, the news ecosystem has transformed from old traditional print media ...
As the internet is becoming part of our daily routine there is sudden growth and popularity of onlin...
In recent years, there has been an increase in worry about the presence of false news on the interne...
Fake news has emerged as a critical problem for society and professional journalism. Many individual...
Efforts have been dedicated by researchers in the field of natural language processing (NLP) to dete...
abstract: In this paper, I introduce the fake news problem and detail how it has been exacerbated th...
With the pandemic of COVID-19, relevant fake news is spreading all over the sky throughout the socia...
Guided by a corpus linguistics approach, in this article we present a comparative evaluation of Stat...
The digital information age has generated new outlets for content creators to publish so-called “fak...
Fake news classification is one of the most interesting problems that has attracted huge attention t...
The uncontrolled growth of fake news creation and dissemination we observed in recent years causes c...
The uncontrolled growth of fake news creation and dissemi-nation we observed in recent years causes ...
News is an important source of information for people.Identifying the inaccurate news is a difficult...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Widening popularity of social media platforms and the increasing number of users trigger the spreadi...
In the modern era of computing, the news ecosystem has transformed from old traditional print media ...
As the internet is becoming part of our daily routine there is sudden growth and popularity of onlin...