This paper provides a principled probabilistic co-clustering frame-work for missing value prediction and pattern discovery in users' preference data. We extend the original dyadic formulation of the Block Mixture Model(BMM) in order to take into account explicit users' preferences. BMM simultaneously identifies user communities and item categories: each user is modeled as a mixture over user communities, which is computed by taking into account users' preferences on similar items. Dually, item categories are detected by considering preferences given by similar minded users. This recursive formulation highlights the mutual relationships between items and user, which are then used to uncover the hidden block-structure of the data. We next show how to characterize and summarize each block cluster by exploiting additional meta data information and by analyzing the underlying topic distribution, proving the effectiveness of the approach in pattern discovery tasks. © Springer-Verlag Berlin Heidelberg 2013.

A Block Coclustering Model for Pattern Discovering in Users' Preference Data

Costa Gianni;Manco Giuseppe;
2013

Abstract

This paper provides a principled probabilistic co-clustering frame-work for missing value prediction and pattern discovery in users' preference data. We extend the original dyadic formulation of the Block Mixture Model(BMM) in order to take into account explicit users' preferences. BMM simultaneously identifies user communities and item categories: each user is modeled as a mixture over user communities, which is computed by taking into account users' preferences on similar items. Dually, item categories are detected by considering preferences given by similar minded users. This recursive formulation highlights the mutual relationships between items and user, which are then used to uncover the hidden block-structure of the data. We next show how to characterize and summarize each block cluster by exploiting additional meta data information and by analyzing the underlying topic distribution, proving the effectiveness of the approach in pattern discovery tasks. © Springer-Verlag Berlin Heidelberg 2013.
2013
Istituto di Calcolo e Reti ad Alte Prestazioni - ICAR
9783642371851
Block clustering
Co-clustering
Collaborative Filtering
Recommender systems
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/287947
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