We introduce a Gaussian process (GP) framework, stochastic relational models (SRM), for learning social, physical, and other relational phenomena where interactions between entities are observed. The key idea is to model the stochastic structure of entity relationships (i.e., links) via a tensor interaction of multiple GPs, each defined on one type of entities. These models in fact define a set of nonparametric priors on infinite dimensional tensor matrices, where each element represents a relationship between a tuple of entities. By maximizing the marginalized likelihood, information is exchanged between the participating GPs through the entire relational network, so that the dependency structure of links is messaged to the dependency of e...
Stochastic block models characterize observed network relationships via latent community memberships...
Relational learning analyzes the probabilistic constraints between the attributes of entities and re...
Link prediction in complex networks has found applications in a wide range of real-world domains inv...
Due to their flexible nonparametric nature, Gaussian process models are very effective at solving ha...
To simplify modeling procedures, traditional statistical machine learning methods always assume that...
Most real-world data is heterogeneous and richly interconnected. Examples include the Web, hypertext...
Link prediction is a fundamental task in such areas as social network analysis, information retrieva...
The world around us is composed of entities, each having various properties and participating in rel...
Many real-world domains are relational in nature, consisting of a set of objects related to each oth...
Abstract. This paper aims at the problem of link pattern prediction in collections of objects connec...
With the rising of Internet as well as modern social media, relational data has become ubiquitous, w...
In order to solve real-world tasks, intelligent machines need to be able to act in noisy worlds wher...
Correlation between instances is often modelled via a kernel function using in-put attributes of the...
Many domains exhibit natural relational structures—from the world wide web to scientific publication...
Statistical Relational Learning is a new branch of machine learning that aims to model a joint distr...
Stochastic block models characterize observed network relationships via latent community memberships...
Relational learning analyzes the probabilistic constraints between the attributes of entities and re...
Link prediction in complex networks has found applications in a wide range of real-world domains inv...
Due to their flexible nonparametric nature, Gaussian process models are very effective at solving ha...
To simplify modeling procedures, traditional statistical machine learning methods always assume that...
Most real-world data is heterogeneous and richly interconnected. Examples include the Web, hypertext...
Link prediction is a fundamental task in such areas as social network analysis, information retrieva...
The world around us is composed of entities, each having various properties and participating in rel...
Many real-world domains are relational in nature, consisting of a set of objects related to each oth...
Abstract. This paper aims at the problem of link pattern prediction in collections of objects connec...
With the rising of Internet as well as modern social media, relational data has become ubiquitous, w...
In order to solve real-world tasks, intelligent machines need to be able to act in noisy worlds wher...
Correlation between instances is often modelled via a kernel function using in-put attributes of the...
Many domains exhibit natural relational structures—from the world wide web to scientific publication...
Statistical Relational Learning is a new branch of machine learning that aims to model a joint distr...
Stochastic block models characterize observed network relationships via latent community memberships...
Relational learning analyzes the probabilistic constraints between the attributes of entities and re...
Link prediction in complex networks has found applications in a wide range of real-world domains inv...