Artículos de revistas
Learning and adapting user criteria for recommending followees in social networks
Fecha
2017-08Registro en:
Tommasel, Antonela; Godoy, Daniela Lis; Learning and adapting user criteria for recommending followees in social networks; John Wiley & Sons Inc; Journal of the Association for Information Science and Technology; 68; 8; 8-2017; 1863-1874
2330-1643
CONICET Digital
CONICET
Autor
Tommasel, Antonela
Godoy, Daniela Lis
Resumen
The accurate suggestion of interesting friends arises as a crucial issue in recommendation systems. The selection of friends or followees responds to several reasons whose importance might differ according to the characteristics and preferences of each user. Furthermore, those preferences might also change over time. Consequently, understanding how friends or followees are selected emerges as a key design factor of strategies for personalized recommendations. In this work, we argue that the criteria for recommending followees needs to be adapted and combined according to each user's behavior, preferences, and characteristics. A method is proposed for adapting such criteria to the characteristics of the previously selected followees. Moreover, the criteria can evolve over time to adapt to changes in user behavior, and broaden the diversity of the recommendation of potential followees based on novelty. Experimental evaluation showed that the proposed method improved precision results regarding static criteria weighting strategies and traditional rank aggregation techniques.