There are many applications that benefit from computing the exact divergence between 2 discrete probability measures, including machine learning. Unfortunately, in the absence of any assumptions on the structure or independencies within these distributions, computing the divergence between them is an intractable problem in high dimensions. We show that we are able to compute a wide family of functionals and divergences, such as the alpha-beta divergence, between two decomposable models, i.e. chordal Markov networks, in time exponential to the treewidth of these models. The alpha-beta divergence is a family of divergences that include popular divergences such as the Kullback-Leibler divergence, the Hellinger distance, and the chi-squared div...
We show that the framework of topological data analysis can be extended from metrics to general Breg...
We show that the framework of topological data analysis can be extended from metrics to general Breg...
We propose new nonparametric, consistent Renyi-alpha and Tsallis-alpha divergence estimators for con...
There are many applications that benefit from computing the exact divergence between 2 discrete prob...
There are many applications that benefit from computing the exact divergence between 2 discrete prob...
Minimum divergence procedures based on the density power divergence and the logarithmic density powe...
Markov Chain Monte Carlo methods for sampling from complex distributions and estimating normalizatio...
summary:We establish a decomposition of the Jensen-Shannon divergence into a linear combination of a...
We show that the framework of topological data analysis can be extended from metrics to general Breg...
We study the problem of maximizing information divergence from a new perspective using logarithmic V...
Approximating a divergence between two probability distributions from their sam-ples is a fundamenta...
This paper proposes the minimization of α-divergences for approximate inference in the context of d...
The Jensen-Shannon divergence is a renown bounded symmetrization of the unbounded Kullback-Leibler d...
In this paper we integrate two essential processes, discretization of continuous data and learning o...
© 2018 by the authors. The Kullback-Leibler (KL) divergence is a fundamental measure of information ...
We show that the framework of topological data analysis can be extended from metrics to general Breg...
We show that the framework of topological data analysis can be extended from metrics to general Breg...
We propose new nonparametric, consistent Renyi-alpha and Tsallis-alpha divergence estimators for con...
There are many applications that benefit from computing the exact divergence between 2 discrete prob...
There are many applications that benefit from computing the exact divergence between 2 discrete prob...
Minimum divergence procedures based on the density power divergence and the logarithmic density powe...
Markov Chain Monte Carlo methods for sampling from complex distributions and estimating normalizatio...
summary:We establish a decomposition of the Jensen-Shannon divergence into a linear combination of a...
We show that the framework of topological data analysis can be extended from metrics to general Breg...
We study the problem of maximizing information divergence from a new perspective using logarithmic V...
Approximating a divergence between two probability distributions from their sam-ples is a fundamenta...
This paper proposes the minimization of α-divergences for approximate inference in the context of d...
The Jensen-Shannon divergence is a renown bounded symmetrization of the unbounded Kullback-Leibler d...
In this paper we integrate two essential processes, discretization of continuous data and learning o...
© 2018 by the authors. The Kullback-Leibler (KL) divergence is a fundamental measure of information ...
We show that the framework of topological data analysis can be extended from metrics to general Breg...
We show that the framework of topological data analysis can be extended from metrics to general Breg...
We propose new nonparametric, consistent Renyi-alpha and Tsallis-alpha divergence estimators for con...