Title of article :
Leveraging hybrid recommenders with multifaceted implicit feedback
Author/Authors :
manzato, Marcelo G. sao paulo university (icmc-usp) - institute of mathematics and computer science, Brazil , santos junior, Edson B. sao paulo university (icmc-usp) - institute of mathematics and computer science, Brazil , goularte, Rudinei sao paulo university (icmc-usp) - institute of mathematics and computer science, Brazil
From page :
223
To page :
247
Abstract :
Research into recommender systems has focused on the importance of con- sidering a variety of users’ inputs for an efficient capture of their main interests. How- ever,most collaborative filtering efforts are related to latent factors and implicit feed- back,which do not consider the metadata associated with both items and users. This article proposes a hybrid recommender model which exploits implicit feedback from users by considering not only the latent space of factors that describes the user and item,but also the available metadata associated with content and individuals. Such de- scriptions are an important source for the construction of a user’s profile that contains relevant and meaningful information about his/her preferences. The proposed model is generic enough to be used with many descriptions and types and characterizes users and items with distinguished features that are part of the whole recommendation process. The model was evaluated with the well-known MovieLens dataset and its composing modules were compared against other approaches reported in the literature. The results show its effectiveness in terms of prediction accuracy.
Keywords :
recommender systems , implicit feedback , metadata awareness , user demographic , latent factors
Journal title :
Journal of J.UCS (Journal of Universal Computer Science)
Journal title :
Journal of J.UCS (Journal of Universal Computer Science)
Record number :
2715331
Link To Document :
بازگشت