Simplifying Impact Prediction for Scientific Articles 
EDBT/ICDT Workshops 2021
2021
Συνέδριο/Workshop
- Πληροφορίες: Θανάσης Βεργούλης , Ηλίας Κανέλλος , Γιώργος Γιαννόπουλος , Θοδωρής Δαλαμάγκας
Περίληψη.
Estimating the expected impact of an article is valuable for various applications (e.g., article/cooperator recommendation). Most
existing approaches attempt to predict the exact number of citations each article will receive in the near future, however this
is a difficult regression analysis problem. Moreover, most approaches rely on the existence of rich metadata for each article, a
requirement that cannot be adequately fulfilled for a large number of them. In this work, we take advantage of the fact that
solving a simpler machine learning problem, that of classifying
articles based on their expected impact, is adequate for many real
world applications and we propose a simplified model that can be
trained using minimal article metadata. Finally, we examine various configurations of this model and evaluate their effectiveness
in solving the aforementioned classification problem.