In this paper, we study latent factor models with dependency structure in the la-tent space. We propose a general learning framework which induces sparsity on the undirected graphical model imposed on the vector of latent factors. A novel latent factor model SLFA is then proposed as a matrix factorization problem with a special regularization term that encourages collaborative reconstruction. The main benefit (novelty) of the model is that we can simultaneously learn the lower-dimensional representation for data and model the pairwise relationships between latent factors explicitly. An on-line learning algorithm is devised to make the model feasible for large-scale learning problems. Experimental results on two synthetic data and two real-w...
We propose a method for learning the dependency structure between latent variables in deep latent va...
Factor analysis (FA) provides linear factors that describe the relationships between individual vari...
Factor analysis and related models for probabilistic matrix factorisation are of central importance ...
Real world data is not random: The variability in the data-sets that arise in computer vision, sign...
In this paper I present a general framework for regression in the presence of complex dependence str...
This paper considers the problem of learning, from samples, the de-pendency structure of a system of...
Abstract—Factor analysis provides linear factors that describe relation-ships between individual var...
To simplify modeling procedures, traditional statistical machine learning methods always assume that...
Probabilistic modeling is one of the foundations of modern machine learning and artificial intellige...
Factor analysis is a widely used method for modeling a set of observed variables by a set of unobser...
Matrices that can be factored into a product of two simpler matricescan serve as a useful and often ...
The growing capabilities in generating and collecting data has risen unique opportunities and challe...
Factor and sparse models are two widely used methods to impose a low-dimensional structure in high-d...
Latent factor models (LFMs) are a set of unsupervised methods that model observed high-dimensional d...
An inherently non-negative latent factor model is proposed to extract non-negative latent factors fr...
We propose a method for learning the dependency structure between latent variables in deep latent va...
Factor analysis (FA) provides linear factors that describe the relationships between individual vari...
Factor analysis and related models for probabilistic matrix factorisation are of central importance ...
Real world data is not random: The variability in the data-sets that arise in computer vision, sign...
In this paper I present a general framework for regression in the presence of complex dependence str...
This paper considers the problem of learning, from samples, the de-pendency structure of a system of...
Abstract—Factor analysis provides linear factors that describe relation-ships between individual var...
To simplify modeling procedures, traditional statistical machine learning methods always assume that...
Probabilistic modeling is one of the foundations of modern machine learning and artificial intellige...
Factor analysis is a widely used method for modeling a set of observed variables by a set of unobser...
Matrices that can be factored into a product of two simpler matricescan serve as a useful and often ...
The growing capabilities in generating and collecting data has risen unique opportunities and challe...
Factor and sparse models are two widely used methods to impose a low-dimensional structure in high-d...
Latent factor models (LFMs) are a set of unsupervised methods that model observed high-dimensional d...
An inherently non-negative latent factor model is proposed to extract non-negative latent factors fr...
We propose a method for learning the dependency structure between latent variables in deep latent va...
Factor analysis (FA) provides linear factors that describe the relationships between individual vari...
Factor analysis and related models for probabilistic matrix factorisation are of central importance ...