Litcius/Paper detail

Energy-based Collaborative Filtering Recommendation

Tu Cam Thi Tran, Lan Phuong Phan, Hiep Xuan Huynh

2022International Journal of Advanced Computer Science and Applications10 citationsDOIOpen Access PDF

Abstract

The core value of the recommendation model is the using of the measures to measure the difference between the jumps (e.g. pearson), some other studies based on the magnitude of the angle in space (e.g. cosine), or some other studies study the level of confusion (e.g. entropy) between users and users, between items and items. Recommendation model provides an important feature of suggesting the suitable items to user in common operations. However, the classical recommendation models are only concerned with linear problems, currently there is no research about nonlinear problems on the basis of potential/energy approach to apply for the recommendation model. In this work, we mainly focus on applying the energy distance measure according to the potential difference with the recommendation model to create a separate path for the recommendation problem. The theoretical properties of the energy distance and the incompatibility matrix are presented in this article. Two experiment scenarios are conducted on Jester5k, and Movielens datasets. The experiment result shows the feasibility of the energy distance measures/ the potential in the recommendation systems.

Topics & Concepts

Computer scienceRecommender systemCollaborative filteringMovieLensMeasure (data warehouse)Entropy (arrow of time)Energy (signal processing)Data miningInformation retrievalStatisticsMathematicsQuantum mechanicsPhysicsRecommender Systems and TechniquesNeural Networks and ApplicationsInformation Systems and Technology Applications