Many machine learning applications use latent variable models to explain structure in data, whereby visible variables (= coordinates of the given datapoint) are explained as a probabilistic function of some hidden variables. Finding parameters with the maximum likelihood is NP-hard even in very simple settings. In recent years, provably efficient algorithms were nevertheless developed for models with linear structures: topic models, mixture models, hidden Markov models, etc. These algorithms use matrix or tensor decomposition, and make some reasonable assumptions about the parameters of the underlying model. But matrix or tensor decomposition seems of little use when the latent variable model has nonlinearities. The current paper shows how ...
We present a probabilistic model for tensor decomposition where one or more tensor modes may have si...
Modern machine learning algorithms can extract useful information from text, images and videos. All ...
A tensor network is a type of decomposition used to express and approximate large arrays of data. A ...
In the last decade, machine learning algorithms have been substantially developed and they have gain...
Unsupervised learning aims at the discovery of hidden structure that drives the observations in the ...
This note is a short version of that in [1]. It is intended as a survey for the 2015 Algorithmic Lea...
This work considers a computationally and statistically efficient parameter estimation method for a ...
Matrix factorizations have found two main applications in machine learning, namely for efficient dat...
International audienceSeveral machine learning problems such as latent variable model learning and c...
International audienceSeveral machine learning problems such as latent variable model learning and c...
International audienceSeveral machine learning problems such as latent variable model learning and c...
In recent years, probabilistic models have become fundamental techniques in machine learning. They a...
International audienceSeveral machine learning problems such as latent variable model learning and c...
International audienceSeveral machine learning problems such as latent variable model learning and c...
Thesis (Ph.D.)--University of Washington, 2016-08Machine learning has become part of our daily lives...
We present a probabilistic model for tensor decomposition where one or more tensor modes may have si...
Modern machine learning algorithms can extract useful information from text, images and videos. All ...
A tensor network is a type of decomposition used to express and approximate large arrays of data. A ...
In the last decade, machine learning algorithms have been substantially developed and they have gain...
Unsupervised learning aims at the discovery of hidden structure that drives the observations in the ...
This note is a short version of that in [1]. It is intended as a survey for the 2015 Algorithmic Lea...
This work considers a computationally and statistically efficient parameter estimation method for a ...
Matrix factorizations have found two main applications in machine learning, namely for efficient dat...
International audienceSeveral machine learning problems such as latent variable model learning and c...
International audienceSeveral machine learning problems such as latent variable model learning and c...
International audienceSeveral machine learning problems such as latent variable model learning and c...
In recent years, probabilistic models have become fundamental techniques in machine learning. They a...
International audienceSeveral machine learning problems such as latent variable model learning and c...
International audienceSeveral machine learning problems such as latent variable model learning and c...
Thesis (Ph.D.)--University of Washington, 2016-08Machine learning has become part of our daily lives...
We present a probabilistic model for tensor decomposition where one or more tensor modes may have si...
Modern machine learning algorithms can extract useful information from text, images and videos. All ...
A tensor network is a type of decomposition used to express and approximate large arrays of data. A ...