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Exploring Author Profiling for Fake News Detection
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The proliferation of online media allows for the rapid dissemination of
unmoderated news, unfortunately including fake news. The extensive
spread of fake news poses a potent threat to both individuals and
society. This paper focuses on designing author profiles to detect
authors who are primarily engaged in publishing fake news articles. We
build on the hypothesis that authors who write fake news repeatedly
write only fake news articles, at least in short-term periods. Fake news
authors have a distinct writing style compared to real news authors, who
naturally want to maintain trustworthiness. We explore the potential to
detect fake news authors by designing authors’ profiles based on writing
style, sentiment, and co-authorship patterns. We evaluate our approach
using a publicly available dataset with over 5000 authors and 20000
articles. For our evaluation, we build and compare different classes of
supervised machine learning models. We find that the K-NN model
performed the best, and it could detect authors who are prone to writing
fake news with an 83% true positive rate with only a 5% false positive
rate.
Title: Exploring Author Profiling for Fake News Detection
Description:
The proliferation of online media allows for the rapid dissemination of
unmoderated news, unfortunately including fake news.
The extensive
spread of fake news poses a potent threat to both individuals and
society.
This paper focuses on designing author profiles to detect
authors who are primarily engaged in publishing fake news articles.
We
build on the hypothesis that authors who write fake news repeatedly
write only fake news articles, at least in short-term periods.
Fake news
authors have a distinct writing style compared to real news authors, who
naturally want to maintain trustworthiness.
We explore the potential to
detect fake news authors by designing authors’ profiles based on writing
style, sentiment, and co-authorship patterns.
We evaluate our approach
using a publicly available dataset with over 5000 authors and 20000
articles.
For our evaluation, we build and compare different classes of
supervised machine learning models.
We find that the K-NN model
performed the best, and it could detect authors who are prone to writing
fake news with an 83% true positive rate with only a 5% false positive
rate.
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