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Open AccessJournal ArticleDOI

Latent grouping models for user preference prediction

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TLDR
A probabilistic latent grouping model for predicting the relevance of a document to a user and compares it against a state-of-the-art method, the User Rating Profile model, where only the users have a latent group structure.
Abstract
We tackle the problem of new users or documents in collaborative filtering. Generalization over users by grouping them into user groups is beneficial when a rating is to be predicted for a relatively new document having only few observed ratings. Analogously, generalization over documents improves predictions in the case of new users. We show that if either users and documents or both are new, two-way generalization becomes necessary. We demonstrate the benefits of grouping of users, grouping of documents, and two-way grouping, with artificial data and in two case studies with real data. We have introduced a probabilistic latent grouping model for predicting the relevance of a document to a user. The model assumes a latent group structure for both users and items. We compare the model against a state-of-the-art method, the User Rating Profile model, where only the users have a latent group structure. We compute the posterior of both models by Gibbs sampling. The Two-Way Model predicts relevance more accurately when the target consists of both new documents and new users. The reason is that generalization over documents becomes beneficial for new documents and at the same time generalization over users is needed for new users.

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Proceedings ArticleDOI

A social recommendation framework based on multi-scale continuous conditional random fields

TL;DR: A novel model, Multi-scale Continuous Conditional Random Fields (MCCRF), is proposed as a framework to solve above problems for social recommendations, where relational dependency within predictions is modeled by the Markov property, thus predictions are generated simultaneously and can help each other.
Journal ArticleDOI

Predictive Approach for User Long-Term Needs in Content-Based Image Suggestion

TL;DR: This paper formalizes content-based image suggestion (CBIS) as a Bayesian prediction problem and offers efficient means to select highly rated and diversified suggestions in conformance with theories in consumer psychology.
Proceedings ArticleDOI

Region-Based Correspondence Between 3D Shapes via Spatially Smooth Biclustering

TL;DR: This work proposes a novel biclustering approach, called S4B (spatially smooth spike and slab bic Lustering), which casts the problem in a probabilistic low-rank matrix factorization perspective, and is enriched with a spatial smoothness prior, based on geodesic distances, encouraging nearby vertices to belong to the same bicluster.
Journal ArticleDOI

Spike and slab biclustering

TL;DR: A novel generative model, where biclustering is approached from a sparse low-rank matrix factorization perspective, and the use of a spike and slab sparsity-inducing prior is named SSBi, which compares favorably with the state-of-the-art.
Book ChapterDOI

Two-Way Grouping by One-Way Topic Models

TL;DR: This work suggests approximating the Two-Way Model with two URP models; one that groups users and one thatgroups documents, which achieves even better prediction performance than the original Two- Way Model.
References
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Proceedings Article

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Journal ArticleDOI

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