Nonparametric estimation of the conditional distribution of a response given high-dimensional features is a challenging problem. It is important to allow not only the mean but also the variance and shape of the response density to change flexibly with features, which are massive-dimensional. We propose a multiscale dictionary learning model, which expresses the conditional response density as a convex combination of dictionary den-sities, with the densities used and their weights dependent on the path through a tree decomposition of the feature space. A fast graph partition-ing algorithm is applied to obtain the tree decomposition, with Bayesian methods then used to adaptively prune and average over different sub-trees in a soft probabilist...
The goal in domain adaptation is to train a model using labeled data sampled from a domain different...
We propose a new approach to conditional probability estimation for ordinal labels. First, we presen...
<p>Analyzing the ever-increasing data of unprecedented scale, dimensionality, diversity, and complex...
<p>F Petralia, JT Vogelstein, D Dunson. Multiscale Dictionary Learning for Estimating Conditional Di...
Joint distributions over many variables are frequently modeled by decomposing them into products of ...
The objective of multi-dimensional classification is to learn a function that accurately maps each d...
We consider multi-class classification where the predictor has a hierarchical structure that allows ...
This paper introduces a new method to automatically, rapidly and reliably evaluate the class conditi...
The curse of dimensionality is severe when modeling high-dimensional discrete data: the number of po...
Learning a distribution conditional on a set of discrete-valued features is a commonly en-countered ...
Algorithms for data-driven learning of domain-specific overcomplete dictionaries are developed to ob...
International audienceIn this work we explore the Perturb and Combine idea, celebrated in supervised...
International audienceSolving inverse problems usually calls for adapted priors such as the definiti...
Machine learning has made incredible advances in the last couple of decades. Notwithstanding,a lot o...
The paper introduces a robust connectionist technique for the empirical nonparametric estimation of ...
The goal in domain adaptation is to train a model using labeled data sampled from a domain different...
We propose a new approach to conditional probability estimation for ordinal labels. First, we presen...
<p>Analyzing the ever-increasing data of unprecedented scale, dimensionality, diversity, and complex...
<p>F Petralia, JT Vogelstein, D Dunson. Multiscale Dictionary Learning for Estimating Conditional Di...
Joint distributions over many variables are frequently modeled by decomposing them into products of ...
The objective of multi-dimensional classification is to learn a function that accurately maps each d...
We consider multi-class classification where the predictor has a hierarchical structure that allows ...
This paper introduces a new method to automatically, rapidly and reliably evaluate the class conditi...
The curse of dimensionality is severe when modeling high-dimensional discrete data: the number of po...
Learning a distribution conditional on a set of discrete-valued features is a commonly en-countered ...
Algorithms for data-driven learning of domain-specific overcomplete dictionaries are developed to ob...
International audienceIn this work we explore the Perturb and Combine idea, celebrated in supervised...
International audienceSolving inverse problems usually calls for adapted priors such as the definiti...
Machine learning has made incredible advances in the last couple of decades. Notwithstanding,a lot o...
The paper introduces a robust connectionist technique for the empirical nonparametric estimation of ...
The goal in domain adaptation is to train a model using labeled data sampled from a domain different...
We propose a new approach to conditional probability estimation for ordinal labels. First, we presen...
<p>Analyzing the ever-increasing data of unprecedented scale, dimensionality, diversity, and complex...