Dependency networks approximate a joint probability distribution over multiple random variables as a product of conditional distributions. Relational Dependency Networks (RDNs) are graphical models that extend dependency networks to relational domains. This higher expressivity, however, comes at the expense of a more complex model-selection problem: an unbounded number of relational abstraction levels might need to be explored. Whereas current learning approaches for RDNs learn a single probability tree per random variable, we propose to turn the problem into a series of relational function-approximation problems using gradient-based boosting. In doing so, one can easily induce highly complex features over several iterations and in turn est...
Recent work on graphical models for relational data has demonstrated significant improvements in cla...
Statistical Relational Learning (SRL) is concerned with developing formalisms for representing and l...
To simplify modeling procedures, traditional statistical machine learning methods always assume that...
Dependency networks approximate a joint probability distribution over multiple random variables as a...
Relational Dependency Networks (RDNs) are graphical models that extend dependency networks to relati...
Abstract. Relational Dependency Networks (RDNs) are graphical mod-els that extend dependency network...
We consider the problem of incrementally learning models from relational data. Most existing learnin...
Abstract. A Relational Dependency Network (RDN) is a directed graph-ical model widely used for multi...
Statistical Relational Learning is a new branch of machine learning that aims to model a joint distr...
Recent years have seen a surge of interest in learning the structure of Statistical Rela-tional Lear...
Recent work on graphical models for relational data has demonstrated significant improvements in cla...
Abstract—The prevalence of datasets that can be represented as networks has recently fueled a great ...
Abstract—The prevalence of datasets that can be represented as networks has recently fueled a great ...
Many domains exhibit natural relational structures—from the world wide web to scientific publication...
Recent years have seen a surge of interest in Statistical Relational Learning (SRL) models that comb...
Recent work on graphical models for relational data has demonstrated significant improvements in cla...
Statistical Relational Learning (SRL) is concerned with developing formalisms for representing and l...
To simplify modeling procedures, traditional statistical machine learning methods always assume that...
Dependency networks approximate a joint probability distribution over multiple random variables as a...
Relational Dependency Networks (RDNs) are graphical models that extend dependency networks to relati...
Abstract. Relational Dependency Networks (RDNs) are graphical mod-els that extend dependency network...
We consider the problem of incrementally learning models from relational data. Most existing learnin...
Abstract. A Relational Dependency Network (RDN) is a directed graph-ical model widely used for multi...
Statistical Relational Learning is a new branch of machine learning that aims to model a joint distr...
Recent years have seen a surge of interest in learning the structure of Statistical Rela-tional Lear...
Recent work on graphical models for relational data has demonstrated significant improvements in cla...
Abstract—The prevalence of datasets that can be represented as networks has recently fueled a great ...
Abstract—The prevalence of datasets that can be represented as networks has recently fueled a great ...
Many domains exhibit natural relational structures—from the world wide web to scientific publication...
Recent years have seen a surge of interest in Statistical Relational Learning (SRL) models that comb...
Recent work on graphical models for relational data has demonstrated significant improvements in cla...
Statistical Relational Learning (SRL) is concerned with developing formalisms for representing and l...
To simplify modeling procedures, traditional statistical machine learning methods always assume that...