Fake News Detection on Social Media Data using Community Notes with Machine Learning
Künye
BOZKUŞ, Mehmetcan, Elifnaz ARICI & Sultan ZEYBEK. "Fake News Detection on Social Media Data using Community Notes with Machine Learning". 2025 9th International Symposium on Innovative Approaches in Smart Technologies (ISAS), (2025): 1-6.Özet
The spread of misinformation on digital platforms
has become a critical issue that requires the development of
effective detection mechanisms. This study explores the use of
machine learning techniques to classify fake and real news using
data sourced from Platform X and the Disinformation Combat
Center (DMM). The data set consists of approximately 7,000 fake
and 17,000 real news samples, which are processed through data
cleaning, labeling, and transformation techniques such as TFIDF
vectorization. Various classification models, including Naive
Bayes, Random Forest, Support Vector Machine (SVM), and
Logistic Regression, are employed to evaluate the effectiveness
of different approaches. The study further examines the impact
of class balance on model performance, comparing results from
balanced and imbalanced datasets. The findings contribute to
ongoing research on misinformation detection by providing
insight into the most effective methodologies for automated fake
news classification.



















