We present a probabilistic model for tensor decomposition where one or more tensor modes may have side-information about the mode entities in form of their features and/or their adjacency network. We consider a Bayesian approach based on the Canonical PARAFAC (CP) decomposition and enrich this single-layer decomposition approach with a two-layer decomposition. The second layer fits a factor model for each layer-one factor matrix and models the factor matrix via the mode entities' features and/or the network between the mode entities. The second-layer decomposition of each factor matrix also learns a binary latent representation for the entities of that mode, which can be useful in its own right. Our model can handle both continuous as well...
The recent emergence of complex datasets in various disciplines presents a pressing need to devise r...
As tensors provide a natural and efficient representation of multidimensional structured data, in th...
Abstract. We present a Bayesian non-negative tensor factorization model for count-valued tensor data...
Matrix factorization algorithms are frequently used in the ma-chine learning community to find low d...
From data mining to computer vision, from visual surveillance to biometrics research, from biomedica...
Multivariate categorical data are routinely collected in several applications, including epidemiolog...
Conditional probability tables (CPTs) of discrete valued random variables may achieve high dimensi...
We introduce Bayesian multi-tensor factorization, a model that is the first Bayesian formulation for...
We introduce Bayesian multi-tensor factorization, a model that is the first Bayesian formulation for...
Abstract—We propose a generative model for robust tensor factorization in the presence of both missi...
It has become routine to collect data that are structured as multiway arrays (tensors). There is an ...
Probabilistic Latent Tensor Factorization (PLTF) is a recently proposed probabilistic framework for ...
Many machine learning applications use latent variable models to explain structure in data, whereby ...
is a recently proposed probabilistic framework for modelling multi-way data. Not only the common ten...
Probabilistic approaches for tensor factorization aim to extract meaningful struc-ture from incomple...
The recent emergence of complex datasets in various disciplines presents a pressing need to devise r...
As tensors provide a natural and efficient representation of multidimensional structured data, in th...
Abstract. We present a Bayesian non-negative tensor factorization model for count-valued tensor data...
Matrix factorization algorithms are frequently used in the ma-chine learning community to find low d...
From data mining to computer vision, from visual surveillance to biometrics research, from biomedica...
Multivariate categorical data are routinely collected in several applications, including epidemiolog...
Conditional probability tables (CPTs) of discrete valued random variables may achieve high dimensi...
We introduce Bayesian multi-tensor factorization, a model that is the first Bayesian formulation for...
We introduce Bayesian multi-tensor factorization, a model that is the first Bayesian formulation for...
Abstract—We propose a generative model for robust tensor factorization in the presence of both missi...
It has become routine to collect data that are structured as multiway arrays (tensors). There is an ...
Probabilistic Latent Tensor Factorization (PLTF) is a recently proposed probabilistic framework for ...
Many machine learning applications use latent variable models to explain structure in data, whereby ...
is a recently proposed probabilistic framework for modelling multi-way data. Not only the common ten...
Probabilistic approaches for tensor factorization aim to extract meaningful struc-ture from incomple...
The recent emergence of complex datasets in various disciplines presents a pressing need to devise r...
As tensors provide a natural and efficient representation of multidimensional structured data, in th...
Abstract. We present a Bayesian non-negative tensor factorization model for count-valued tensor data...