This thesis represents a synthesis of relational learning and causal discovery, two subjects at the frontier of machine learning research. Relational learning investigates algorithms for constructing statistical models of data drawn from of multiple types of interrelated entities, and causal discovery investigates algorithms for constructing causal models from observational data. My work demonstrates that there exists a natural, methodological synergy between these two areas of study, and that despite the sometimes onerous nature of each, their combination (perhaps counterintuitively) can provide advances in the state of the art for both. Traditionally, propositional (or flat ) data representations have dominated the statistical sciences. ...
We present a cognitive model of the human ability to acquire causal relationships. We report on expe...
Many applications call for learning causal models from relational data. We investigate Relational Ca...
Discovering causal dependence is central to understanding the behavior of complex systems and to sel...
This thesis represents a synthesis of relational learning and causal discovery, two subjects at the ...
Methods for discovering causal knowledge from observational data have been a persistent topic of AI ...
Many domains are currently experiencing the growing trend to record and analyze massive, observation...
Many domains are currently experiencing the growing trend to record and analyze massive, observation...
Discovering statistical representations and relations among random variables is a very important tas...
The two fields of machine learning and graphical causality arose and are developed separately. Howev...
This article explores the combined application of inductive learning algorithms and causal inference...
Blocking is a technique commonly used in manual statistical analysis to account for confounding vari...
Blocking is a technique commonly used in manual sta-tistical analysis to account for confounding var...
In real-world phenomena which involve mutual influence or causal effects between interconnected unit...
Relational learning refers to learning from data that have a complex structure. This structure may ...
We present a cognitive model of the human ability to acquire causal relationships. We report on expe...
We present a cognitive model of the human ability to acquire causal relationships. We report on expe...
Many applications call for learning causal models from relational data. We investigate Relational Ca...
Discovering causal dependence is central to understanding the behavior of complex systems and to sel...
This thesis represents a synthesis of relational learning and causal discovery, two subjects at the ...
Methods for discovering causal knowledge from observational data have been a persistent topic of AI ...
Many domains are currently experiencing the growing trend to record and analyze massive, observation...
Many domains are currently experiencing the growing trend to record and analyze massive, observation...
Discovering statistical representations and relations among random variables is a very important tas...
The two fields of machine learning and graphical causality arose and are developed separately. Howev...
This article explores the combined application of inductive learning algorithms and causal inference...
Blocking is a technique commonly used in manual statistical analysis to account for confounding vari...
Blocking is a technique commonly used in manual sta-tistical analysis to account for confounding var...
In real-world phenomena which involve mutual influence or causal effects between interconnected unit...
Relational learning refers to learning from data that have a complex structure. This structure may ...
We present a cognitive model of the human ability to acquire causal relationships. We report on expe...
We present a cognitive model of the human ability to acquire causal relationships. We report on expe...
Many applications call for learning causal models from relational data. We investigate Relational Ca...
Discovering causal dependence is central to understanding the behavior of complex systems and to sel...