This paper introduces hybrid random fields, which are a class of probabilistic graphical models aimed at allowing for efficient structure learning in high-dimensional domains. Hybrid random fields, along with the learning algorithm we develop for them, are especially useful as a pseudo-likelihood estimation technique (rather than a technique for estimating strict joint probability distributions). In order to assess the generality of the proposed model, we prove that the class of pseudo-likelihood distributions representable by hybrid random fields strictly includes the class of joint probability distributions representable by Bayesian networks. Once we establish this result, we develop a scalable algorithm for learning the structure of hybr...
This thesis considers the problem of performing inference on undirected graphical models with contin...
A combinatorial random variable is a discrete random variable defined over a combinatorial set (e.g....
A fundamental challenge in developing high-impact machine learning technologies is balancing the abi...
This paper introduces hybrid random fields, which are a class of probabilistic graphical models aime...
Learning probabilistic graphical models from high-dimensional datasets is a computationally challeng...
Hybrid random fields are a recently proposed graphical model for pseudo-likelihood estimation in dis...
This paper develops a maximum pseudo-likelihood algorithm for learning the structure of the dynamic ...
Probabilistic graphical modeling via Hybrid Random Fields (HRFs) was introduced recently, and shown ...
Many applications require predicting not a just a single variable, but multiple variables that depen...
The paper introduces a dynamic extension of the hybrid random field (HRF), called dynamic HRF (D-HRF...
In the Probabilistic Graphical Model (PGM) community there is an interest around tractable models, i...
<p>Conditional Random Fields (CRFs) [Lafferty et al., 2001] can offer computational and statistical ...
Abstract. Conditional Random Fields (CRFs) are widely known to scale poorly, particularly for tasks ...
In this paper we introduce an algorithm for learning hybrid Bayesian networks from data. The result ...
This thesis considers the problem of performing inference on undirected graphical models with contin...
A combinatorial random variable is a discrete random variable defined over a combinatorial set (e.g....
A fundamental challenge in developing high-impact machine learning technologies is balancing the abi...
This paper introduces hybrid random fields, which are a class of probabilistic graphical models aime...
Learning probabilistic graphical models from high-dimensional datasets is a computationally challeng...
Hybrid random fields are a recently proposed graphical model for pseudo-likelihood estimation in dis...
This paper develops a maximum pseudo-likelihood algorithm for learning the structure of the dynamic ...
Probabilistic graphical modeling via Hybrid Random Fields (HRFs) was introduced recently, and shown ...
Many applications require predicting not a just a single variable, but multiple variables that depen...
The paper introduces a dynamic extension of the hybrid random field (HRF), called dynamic HRF (D-HRF...
In the Probabilistic Graphical Model (PGM) community there is an interest around tractable models, i...
<p>Conditional Random Fields (CRFs) [Lafferty et al., 2001] can offer computational and statistical ...
Abstract. Conditional Random Fields (CRFs) are widely known to scale poorly, particularly for tasks ...
In this paper we introduce an algorithm for learning hybrid Bayesian networks from data. The result ...
This thesis considers the problem of performing inference on undirected graphical models with contin...
A combinatorial random variable is a discrete random variable defined over a combinatorial set (e.g....
A fundamental challenge in developing high-impact machine learning technologies is balancing the abi...