A hybrid PLSA approach for warmer cold start in folksonomy recommendation

Alan Said, Robert Wetzker, Winfried Umbrath, Leonhard Hennig. 2009, "A hybrid PLSA approach for warmer cold start in folksonomy recommendation". RecSys'09 Workshop on Recommender Systems and the Social Web.

Abstract

We investigate the problem of item recommendation during the first months of the collaborative tagging community CiteULike. CiteULike is a so-called folksonomy where users have the possibility to organize publications through annotations -tags. Making reliable recommendations during the initial phase of a folksonomy is a difficult task, since information about user preferences is meager. In order to improve recommendation results during this cold start period, we present a probabilistic approach to item recommendation. Our model extends previously proposed models such as probabilistic latent semantic analysis (PLSA) by merging both user-item as well as item-tag observations into a unified representation. We find that bringing tags into play reduces the risk of overfitting and increases overall recommendation quality. Experiments show that our approach outperforms other types of recommenders.

Publication
RecSys'09 Workshop on Recommender Systems and the Social Web