<p>Tree structured graphical models are powerful at expressing long range or hierarchical dependency among many variables, and have been widely applied in different areas of computer science and statistics. However, existing methods for parameter estimation, inference, and structure learning mainly rely on the Gaussian or discrete assumptions, which are restrictive under many applications. In this paper, we propose new nonparametric methods based on reproducing kernel Hilbert space embeddings of distributions that can recover the latent tree structures, estimate the parameters, and perform inference for high dimensional continuous and non-Gaussian variables. The usefulness of the proposed methods are illustrated by thorough numerical result...
We present a class of algorithms for learning the structure of graphical models from data. The algor...
<p>The problem of learning a latent model for sparse or low-dimensional representation of high-dimen...
Graphical models reveal the conditional dependence structure between random variables. By estimating...
Tree structured graphical models are powerful at expressing long range or hierarchical de-pendency a...
Latent tree graphical models are natural tools for expressing long range and hierarchical dependenci...
We present an integrated approach to structure and parameter estimation in latent tree graphical mod...
We present an integrated approach for structure and parameter estimation in latent tree graphical mo...
Spectral methods have greatly advanced the es-timation of latent variable models, generating a seque...
Spectral methods have greatly advanced the estimation of latent variable models, generating a sequen...
This work considers the problem of learning the structure of multivariate linear tree models, which ...
Spectral methods have greatly advanced the es-timation of latent variable models, generating a seque...
We study the problem of learning a latent tree graphical model where samples are available only from...
Gaussian graphical models (GGM) have been widely used in many high-dimensional applications ranging ...
Thesis (Ph.D.)--University of Washington, 2021This dissertation addresses nonparametric estimation a...
We study the problem of learning a latent tree graphical model where samples are available only from...
We present a class of algorithms for learning the structure of graphical models from data. The algor...
<p>The problem of learning a latent model for sparse or low-dimensional representation of high-dimen...
Graphical models reveal the conditional dependence structure between random variables. By estimating...
Tree structured graphical models are powerful at expressing long range or hierarchical de-pendency a...
Latent tree graphical models are natural tools for expressing long range and hierarchical dependenci...
We present an integrated approach to structure and parameter estimation in latent tree graphical mod...
We present an integrated approach for structure and parameter estimation in latent tree graphical mo...
Spectral methods have greatly advanced the es-timation of latent variable models, generating a seque...
Spectral methods have greatly advanced the estimation of latent variable models, generating a sequen...
This work considers the problem of learning the structure of multivariate linear tree models, which ...
Spectral methods have greatly advanced the es-timation of latent variable models, generating a seque...
We study the problem of learning a latent tree graphical model where samples are available only from...
Gaussian graphical models (GGM) have been widely used in many high-dimensional applications ranging ...
Thesis (Ph.D.)--University of Washington, 2021This dissertation addresses nonparametric estimation a...
We study the problem of learning a latent tree graphical model where samples are available only from...
We present a class of algorithms for learning the structure of graphical models from data. The algor...
<p>The problem of learning a latent model for sparse or low-dimensional representation of high-dimen...
Graphical models reveal the conditional dependence structure between random variables. By estimating...