Time-Aware Evaluation of Methods for Identifying Active Household Members in Recommender Systems

Corchado, JM; AlonsoBetanzos, A; Campos, Pedro G.; Hidalgo, JI; Cantador, Ivan; Martínez, L; Bielza, C; troncoso, a; Bellogin, Alejandro; Corchado, E; Salmeron, A; Diez, Fernando

Abstract

Online services are usually accessed via household accounts. A household account is typically shared by various users who live in the same house. This represents a problem for providing personalized services, such as recommendation. Identifying the household members who are interacting with an online system (e.g. an on-demand video service) in a given moment, is thus an interesting challenge for the recommender systems research community. Previous work has shown that methods based on the analysis of temporal patterns of users are highly accurate in the above task when they use randomly sampled test data. However, such evaluation methodology may not properly deal with the evolution of the users' preferences and behavior through time. In this paper we evaluate several methods' performance using time-aware evaluation methodologies. Results from our experiments show that the discrimination power of different time features varies considerably, and moreover, the accuracy achieved by the methods can be heavily penalized when using a more realistic evaluation methodology.

Más información

Título según WOS: Time-Aware Evaluation of Methods for Identifying Active Household Members in Recommender Systems
Título de la Revista: EDUCATING FOR A NEW FUTURE: MAKING SENSE OF TECHNOLOGY-ENHANCED LEARNING ADOPTION, EC-TEL 2022
Volumen: 8109
Editorial: SPRINGER INTERNATIONAL PUBLISHING AG
Fecha de publicación: 2013
Página de inicio: 22
Página final: 31
Notas: ISI