TY - JOUR
T1 - The impact of psycholinguistic patterns in discriminating between fake news spreaders and fact checkers
AU - Giachanou, Anastasia
AU - Ghanem, Bilal
AU - Ríssola, Esteban A.
AU - Rosso, Paolo
AU - Crestani, Fabio
AU - Oberski, Daniel
N1 - Funding Information:
The works of Anastasia Giachanou and Daniel Oberski were funded by the Dutch Research Council (grant VI.Vidi.195.152 ). The work of Paolo Rosso was in the framework of the XAI-DisInfodemics project on eXplainable AI for disinformation and conspiracy detection during infodemics (PLEC2021-007681), funded by the Spanish Ministry of Science and Innovation , as well as IBERIFIER, the Iberian Digital Media Research and Fact-Checking Hub funded by the European Digital Media Observatory ( 2020-EU-IA0252 ).
Publisher Copyright:
© 2021
PY - 2022/3
Y1 - 2022/3
N2 - Fake news is a threat to society. A huge amount of fake news is posted every day on social networks which is read, believed and sometimes shared by a number of users. On the other hand, with the aim to raise awareness, some users share posts that debunk fake news by using information from fact-checking websites. In this paper, we are interested in exploring the role of various psycholinguistic characteristics in differentiating between users that tend to share fake news and users that tend to debunk them. Psycholinguistic characteristics represent the different linguistic information that can be used to profile users and can be extracted or inferred from users’ posts. We present the CheckerOrSpreader model that uses a Convolution Neural Network (CNN) to differentiate between spreaders and checkers of fake news. The experimental results showed that CheckerOrSpreader is effective in classifying a user as a potential spreader or checker. Our analysis showed that checkers tend to use more positive language and a higher number of terms that show causality compared to spreaders who tend to use a higher amount of informal language, including slang and swear words.
AB - Fake news is a threat to society. A huge amount of fake news is posted every day on social networks which is read, believed and sometimes shared by a number of users. On the other hand, with the aim to raise awareness, some users share posts that debunk fake news by using information from fact-checking websites. In this paper, we are interested in exploring the role of various psycholinguistic characteristics in differentiating between users that tend to share fake news and users that tend to debunk them. Psycholinguistic characteristics represent the different linguistic information that can be used to profile users and can be extracted or inferred from users’ posts. We present the CheckerOrSpreader model that uses a Convolution Neural Network (CNN) to differentiate between spreaders and checkers of fake news. The experimental results showed that CheckerOrSpreader is effective in classifying a user as a potential spreader or checker. Our analysis showed that checkers tend to use more positive language and a higher number of terms that show causality compared to spreaders who tend to use a higher amount of informal language, including slang and swear words.
KW - Fake news
KW - Linguistic analysis
KW - Misinformation
UR - http://www.scopus.com/inward/record.url?scp=85121968007&partnerID=8YFLogxK
U2 - 10.1016/j.datak.2021.101960
DO - 10.1016/j.datak.2021.101960
M3 - Article
AN - SCOPUS:85121968007
SN - 0169-023X
VL - 138
JO - Data and Knowledge Engineering
JF - Data and Knowledge Engineering
M1 - 101960
ER -