%0 Journal Article %A Quijano Sánchez, Lara %A Recio García, Juan Antonio %A Díaz Agudo, María Belén %T An Architecture and Functional Description to IntegrateSocial Behaviour Knowledge Into Group Recommender Systems %D 2014 %@ 1573-7497 %U https://hdl.handle.net/20.500.14352/34761 %X In this paper we consider the research challenges of generating a set of recommendations that will satisfy a group of users, with potentially competing interests. We review diferent ways of combining the preferences of diferent users and propose an approach that takes into account the social behaviour within a group. Our method, named delegation-based prediction method, includes an analysis of the group characteristics, such as size, structure, personality of its members in conict situations, and trust between group members. A key element in this paper is the use of social information available in the Web to make enhanced recommendations to groups. We propose a generic architecture named arise (Architecture for Recommendations Including Social Elements) and describe, as a case study, our Facebook application HappyMovie: a group recommender system that is designed to provide assistance to a group of friends that might be selecting which movie to watch on a cinema outing. We evaluate the performance (compared with the real group decision) of diferent recommenders that use increasing levels of social behaviour knowledge. %~