International audienceSparse matrix factorization is a popular tool to obtain interpretable data decompositions, which are also effective to perform data completion or denoising. Its applicability to large datasets has been addressed with online and randomized methods, that reduce the complexity in one of the matrix dimension, but not in both of them. In this paper, we tackle very large matrices in both dimensions. We propose a new factorization method that scales gracefully to terabyte-scale datasets, that could not be processed by previous algorithms in a reasonable amount of time. We demonstrate the efficiency of our approach on massive functional Magnetic Resonance Imaging (fMRI) data, and on matrix completion problems for recommender s...
The last decade has witnessed explosive growth in data. The ultrahigh-dimensional and large volume d...
The goal of this thesis is to extend the theory and practice of matrix completion algorithms, and ho...
Abstract—Due to the popularity of nonnegative matrix factorization and the increasing availability o...
International audienceSparse matrix factorization is a popular tool to obtain interpretable data dec...
International audienceWe present a matrix-factorization algorithm that scales to input matrices with...
revised version.International audienceSparse coding---that is, modelling data vectors as sparse line...
International audienceWe present a method for fast resting-state fMRI spatial decompositions of very...
Abstract. Matrix factorization, when the matrix has missing values, has become one of the leading te...
International audienceWe present a matrix factorization algorithm that scales to input matrices that...
International audience—The applicability of many signal processing and data analysis techniques is l...
Low rank matrix factorization is an important step in many high dimensional machine learning algorit...
to appearInternational audienceMany modern tools in machine learning and signal processing, such as ...
As Web 2.0 and enterprise-cloud applications have proliferated, data mining algorithms increasingly ...
International audienceWe propose a multivariate online dictionary-learning method for obtaining de-c...
As Web 2.0 and enterprise-cloud applications have proliferated, data mining algorithms increasingly ...
The last decade has witnessed explosive growth in data. The ultrahigh-dimensional and large volume d...
The goal of this thesis is to extend the theory and practice of matrix completion algorithms, and ho...
Abstract—Due to the popularity of nonnegative matrix factorization and the increasing availability o...
International audienceSparse matrix factorization is a popular tool to obtain interpretable data dec...
International audienceWe present a matrix-factorization algorithm that scales to input matrices with...
revised version.International audienceSparse coding---that is, modelling data vectors as sparse line...
International audienceWe present a method for fast resting-state fMRI spatial decompositions of very...
Abstract. Matrix factorization, when the matrix has missing values, has become one of the leading te...
International audienceWe present a matrix factorization algorithm that scales to input matrices that...
International audience—The applicability of many signal processing and data analysis techniques is l...
Low rank matrix factorization is an important step in many high dimensional machine learning algorit...
to appearInternational audienceMany modern tools in machine learning and signal processing, such as ...
As Web 2.0 and enterprise-cloud applications have proliferated, data mining algorithms increasingly ...
International audienceWe propose a multivariate online dictionary-learning method for obtaining de-c...
As Web 2.0 and enterprise-cloud applications have proliferated, data mining algorithms increasingly ...
The last decade has witnessed explosive growth in data. The ultrahigh-dimensional and large volume d...
The goal of this thesis is to extend the theory and practice of matrix completion algorithms, and ho...
Abstract—Due to the popularity of nonnegative matrix factorization and the increasing availability o...