A dual hybrid recommender system based on SCoR and the random forest
Author(s) -
Costas Panagiotakis,
Harris Papadakis,
Paraskevi Fragopoulou
Publication year - 2020
Publication title -
computer science and information systems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.244
H-Index - 24
eISSN - 2406-1018
pISSN - 1820-0214
DOI - 10.2298/csis200515046p
Subject(s) - movielens , computer science , recommender system , random forest , dual (grammatical number) , set (abstract data type) , training set , exploit , machine learning , artificial intelligence , training system , hybrid system , data mining , collaborative filtering , programming language , economics , economic growth , art , literature , computer security
We propose a Dual Hybrid Recommender System based on SCoR, the Synthetic Coordinate Recommendation system, and the Random Forest method. By combining user ratings and user/item features, SCoR is initially employed to provide a recommendation which is fed into the Random Forest. The two systems are initially combined by splitting the training set into two “equivalent” parts, one of which is used to train SCoR while the other is used to train the Random Forest. This initial approach does not exhibit good performance due to reduced training. The resulted drawback is alleviated by the proposed dual training system which, using an innovative splitting method, exploits the entire training set for SCoR and the Random Forest, resulting to two recommender systems that are subsequently efficiently combined. Experimental results demonstrate the high performance of the proposed system on the Movielens datasets.
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