RecoLibry Suite: a set of intelligent tools for the development of recommender systems

作者:Jose Luis Jorro-Aragoneses, Belén Díaz-Agudo, Juan A. Recio-García, Guillermo Jimenez-Díaz

摘要

Recommendation systems are a key part of almost every modern consumer website. Recommender systems include techniques to filter, explore and rank a huge amount of information and items according to the user’s current interests, and the similarity among users and items. Designing and implementing a recommender system usually requires high programming and machine learning skills. To alleviate these processes we present RecoLibry Suite: a set of intelligent tools to assist different types of users on the development of recommender systems. RecoLibry Suite supports not only the design and development of recommender systems but also its deployment as software as a service. We have evaluated the usability of the proposed tools with real users.

论文关键词:Recommender systems, Dependency injection, Framework suite, Components architecture, Ontology

论文评审过程:

论文官网地址:https://doi.org/10.1007/s10515-020-00269-4