We introduce binary matrix factorization, a novel model for unsupervised matrix decomposition. The decomposition is learned by fitting a non-parametric Bayesian probabilistic model with binary latent variables to a matrix of dyadic data. Unlike bi-clustering models, which assign each row or column to a single cluster based on a categorical hidden feature, our binary feature model reflects the prior belief that items and attributes can be associated with more than one latent cluster at a time. We provide simple learning and inference rules for this new model and show how to extend it to an infinite model in which the number of features is not a priori fixed but is allowed to grow with the size of the data
In unsupervised learning, dimensionality reduction is an important tool for data exploration and vis...
We present a probabilistic model for tensor decomposition where one or more tensor modes may have si...
One desirable property of machine learning algorithms is the ability to balance the number of p...
We introduce binary matrix factorization, a novel model for unsupervised ma-trix decomposition. The ...
We present a non-negative inductive latent factor model for binary- and count-valued matrices contai...
Factor analysis and related models for probabilistic matrix factorisation are of central importance ...
Latent variable models are used extensively in unsupervised learning within the Bayesian paradigm, t...
In this paper, we consider a class of models for two-way matrices with binary entries of 0 and l. Fi...
International audienceThis paper tackles the problem of decomposing binary data using matrix factori...
Matrix factorization is a fundamental technique in machine learning that is applicable to collaborat...
Nonnegative matrix factorization (NMF) has been widely exploited in many computational intelligence ...
International audienceBinary data matrices can represent many types of data such as social networks,...
We propose a mixture of latent trait models with common slope parameters (MCLT) for model-based clus...
Abstract We address the problem of factorial learning which associates a set of latent causesor feat...
Logical Factorisation Machines (LFMs) are a class of latent feature models, that aim to decompose bi...
In unsupervised learning, dimensionality reduction is an important tool for data exploration and vis...
We present a probabilistic model for tensor decomposition where one or more tensor modes may have si...
One desirable property of machine learning algorithms is the ability to balance the number of p...
We introduce binary matrix factorization, a novel model for unsupervised ma-trix decomposition. The ...
We present a non-negative inductive latent factor model for binary- and count-valued matrices contai...
Factor analysis and related models for probabilistic matrix factorisation are of central importance ...
Latent variable models are used extensively in unsupervised learning within the Bayesian paradigm, t...
In this paper, we consider a class of models for two-way matrices with binary entries of 0 and l. Fi...
International audienceThis paper tackles the problem of decomposing binary data using matrix factori...
Matrix factorization is a fundamental technique in machine learning that is applicable to collaborat...
Nonnegative matrix factorization (NMF) has been widely exploited in many computational intelligence ...
International audienceBinary data matrices can represent many types of data such as social networks,...
We propose a mixture of latent trait models with common slope parameters (MCLT) for model-based clus...
Abstract We address the problem of factorial learning which associates a set of latent causesor feat...
Logical Factorisation Machines (LFMs) are a class of latent feature models, that aim to decompose bi...
In unsupervised learning, dimensionality reduction is an important tool for data exploration and vis...
We present a probabilistic model for tensor decomposition where one or more tensor modes may have si...
One desirable property of machine learning algorithms is the ability to balance the number of p...