Instance independence is a critical assumption of traditional machine learning methods contradicted by many relational datasets. For example, in scientific literature datasets there are dependencies among the references of a paper. Recent work on graphical models for relational data has demonstrated significant performance gains for models that exploit the dependencies among instances. In this paper, we present relational dependency networks (RDNs), a new form of graphical model capable of reasoning with such dependencies in a relational setting. We describe the details of RDN models and outline their strengths, most notably the ability to learn and reason with cyclic relational dependencies. We present RDN models learned on a number of rea...
To simplify modeling procedures, traditional statistical machine learning methods always assume that...
Relational data is ubiquitous in modern-day computing, and drives several key applications across mu...
Statistical Relational Learning (SRL) is concerned with developing formalisms for representing and l...
Recent work on graphical models for relational data has demonstrated significant improvements in cla...
Instance independence is a critical assumption of tra-ditional machine learning methods contradicted...
Recent work on graphical models for relational data has demonstrated significant improvements in cla...
Abstract. A Relational Dependency Network (RDN) is a directed graph-ical model widely used for multi...
Many data sets routinely captured by organizations are relational in nature— from marketing and sale...
Many data sets routinely captured by organizations are relational in nature---from marketing and sal...
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...
Dependency networks approximate a joint probability distribution over multiple random variables as a...
Dependency networks approximate a joint probability distribution over multiple random variables as a...
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...
To simplify modeling procedures, traditional statistical machine learning methods always assume that...
Relational data is ubiquitous in modern-day computing, and drives several key applications across mu...
Statistical Relational Learning (SRL) is concerned with developing formalisms for representing and l...
Recent work on graphical models for relational data has demonstrated significant improvements in cla...
Instance independence is a critical assumption of tra-ditional machine learning methods contradicted...
Recent work on graphical models for relational data has demonstrated significant improvements in cla...
Abstract. A Relational Dependency Network (RDN) is a directed graph-ical model widely used for multi...
Many data sets routinely captured by organizations are relational in nature— from marketing and sale...
Many data sets routinely captured by organizations are relational in nature---from marketing and sal...
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...
Dependency networks approximate a joint probability distribution over multiple random variables as a...
Dependency networks approximate a joint probability distribution over multiple random variables as a...
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...
To simplify modeling procedures, traditional statistical machine learning methods always assume that...
Relational data is ubiquitous in modern-day computing, and drives several key applications across mu...
Statistical Relational Learning (SRL) is concerned with developing formalisms for representing and l...