Balancing Prediction and Recommendation Accuracy: Hierarchical Latent Factors for Preference Data
Conference Paper
Publication Date:
2012
abstract:
Recent works in Recommender Systems (RS) have investigated
the relationships between the prediction accuracy,
i.e. the ability of a RS to minimize a cost function
(for instance the RMSE measure) in estimating
users' preferences, and the accuracy of the recommendation
list provided to users. State-of-the-art recommendation
algorithms, which focus on the minimization of
RMSE, have shown to achieve weak results from the recommendation
accuracy perspective, and vice versa. In
this work we present a novel Bayesian probabilistic hierarchical
approach for users' preference data, which is
designed to overcome the limitation of current methodologies
and thus to meet both prediction and recommendation
accuracy. According to the generative semantics
of this technique, each user is modeled as a random mixture
over latent factors, which identify users community
interests. Each individual user community is then modeled
as a mixture of topics, which capture the preferences
of the members on a set of items. We provide two
different formalization of the basic hierarchical model:
BH-Forced focuses on rating prediction, while BH-Free
models both the popularity of items and the distribution
over item ratings. The combined modeling of item
popularity and rating provides a powerful framework
for the generation of highly accurate recommendations.
An extensive evaluation over two popular benchmark
datasets reveals the effectiveness and the quality of the
proposed algorithms, showing that BH-Free realizes the
most satisfactory compromise between prediction and
recommendation accuracy with respect to several state-of-the-art
competitors.
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
Recommender Systems; Probabilistic Hierarchical Co-clustering; Recommendation Accuracy
List of contributors:
Ritacco, Ettore; Manco, Giuseppe; Ortale, Riccardo
Book title:
Proceedings of the 2012 SIAM International Conference on Data Mining