Comparative Study of Filtering Methods for Scientific Research Article Recommendations.

Autor: El Alaoui, Driss, Riffi, Jamal, Sabri, Abdelouahed, Aghoutane, Badraddine, Yahyaouy, Ali, Tairi, Hamid
Zdroj: Big Data & Cognitive Computing; Dec2024, Vol. 8 Issue 12, p190, 16p
Abstrakt: Given the daily influx of scientific publications, researchers often face challenges in identifying relevant content amid the vast volume of available information, typically resorting to conventional methods like keyword searches or manual browsing. Utilizing a dataset comprising 1895 users and 3122 articles from the CI&T Deskdrop collection, as well as 7947 users and 25,975 articles from CiteULike-t, we examine the effectiveness of collaborative filtering and content-based and hybrid recommendation approaches in scientific literature recommendations. These methods automatically generate article suggestions by analyzing user preferences and historical behavior. Our findings, evaluated based on accuracy (Precision@K), ranking quality (NDCG@K), and novelty, reveal that the hybrid approach significantly outperforms other methods, tackling some challenges such as cold starts and sparsity problems. This research offers theoretical insights into recommendation model effectiveness and practical implications for developing tools that enhance content discovery and researcher productivity. [ABSTRACT FROM AUTHOR]
Databáze: Complementary Index