Relational learning analyzes the probabilistic constraints between the attributes of entities and relationships. We extend the expressiveness of relational models by introducing for each entity (or object) an infinite-state latent variable as part of a Dirichlet process (DP) mixture model. It can be viewed as a relational generalization of hidden Markov random field. The information propagates in the intern-connected network via latent variables, reducing the necessary for extensive structure learning. For inference, we explore a Gibbs sampling method based on the Chinese restaurant process. The performance of our model is demonstrated in three applications: the movie recommendation, the function prediction of genes and a medical recommenda...
In this paper we propose to apply the Information Bottleneck (IB) approach to the sub-class of...
Thesis (Ph.D.)--University of Washington, 2015One of the central challenges of statistical relationa...
We introduce a Gaussian process (GP) framework, stochastic relational models (SRM), for learning soc...
Relational learning analyzes the probabilistic constraints between the attributes of entities and re...
Relational learning is an area of growing interest in machine learning (Dzeroski & Lavrac, 2001;...
Statistical relational learning analyzes the probabilistic constraints between the entities, their a...
To simplify modeling procedures, traditional statistical machine learning methods always assume that...
When predicting class labels for objects within a relational database, it is often helpful to consid...
Statistical Relational Learning is a new branch of machine learning that aims to model a joint distr...
Typical approaches to relational MDPs consider only discrete variables or else discretize the contin...
We live in a richly interconnected world and, not surprisingly, we generate richly interconnected da...
Statistical relational learning (SRL) provides effective techniques to analyze social network data w...
The primary difference between propositional (attribute-value) and relational data is the existence ...
Relational learning refers to learning from data that have a complex structure. This structure may ...
My research activity focuses on the field of Machine Learning. Two key challenges in most machine l...
In this paper we propose to apply the Information Bottleneck (IB) approach to the sub-class of...
Thesis (Ph.D.)--University of Washington, 2015One of the central challenges of statistical relationa...
We introduce a Gaussian process (GP) framework, stochastic relational models (SRM), for learning soc...
Relational learning analyzes the probabilistic constraints between the attributes of entities and re...
Relational learning is an area of growing interest in machine learning (Dzeroski & Lavrac, 2001;...
Statistical relational learning analyzes the probabilistic constraints between the entities, their a...
To simplify modeling procedures, traditional statistical machine learning methods always assume that...
When predicting class labels for objects within a relational database, it is often helpful to consid...
Statistical Relational Learning is a new branch of machine learning that aims to model a joint distr...
Typical approaches to relational MDPs consider only discrete variables or else discretize the contin...
We live in a richly interconnected world and, not surprisingly, we generate richly interconnected da...
Statistical relational learning (SRL) provides effective techniques to analyze social network data w...
The primary difference between propositional (attribute-value) and relational data is the existence ...
Relational learning refers to learning from data that have a complex structure. This structure may ...
My research activity focuses on the field of Machine Learning. Two key challenges in most machine l...
In this paper we propose to apply the Information Bottleneck (IB) approach to the sub-class of...
Thesis (Ph.D.)--University of Washington, 2015One of the central challenges of statistical relationa...
We introduce a Gaussian process (GP) framework, stochastic relational models (SRM), for learning soc...