We present a framework for learning abstract relational knowledge with the aimof explaining how people acquire intuitive theories of physical, biological, orsocial systems. Our approach is based on a generative relational model withlatent classes, and simultaneously determines the kinds of entities that existin a domain, the number of these latent classes, and the relations betweenclasses that are possible or likely. This model goes beyond previouspsychological models of category learning, which consider attributesassociated with individual categories but not relationships between categories.We apply this domain-general framework to two specific problems: learning thestructure of kinship systems and learning causal theories
Relational learning refers to learning from data that have a complex structure. This structure may ...
This research project addresses the problem of statistical predicate invention in machine learning. ...
The objects in many real-world domains can be organized into hierarchies, where each internal node p...
We present a framework for learning abstract relational knowledge with the aim of explaining how peo...
Relationships between concepts account for a large proportion of semantic knowledge. We present a no...
Most models of categorization learn categories defined by characteristic features but some categorie...
Methods for discovering causal knowledge from observational data have been a persistent topic of AI ...
AbstractThis paper studies the connections between relational probabilistic models and reference cla...
This thesis represents a synthesis of relational learning and causal discovery, two subjects at the ...
Inductive learning of statistical models from relational data is a key problem in artificial intelli...
The primary difference between propositional (attribute-value) and relational data is the existence ...
This paper studies the connections between relational probabilistic models and reference classes, wi...
Relational learning, statistical relational models, statistical relational learning, relational data...
Much of human knowledge is organized into sophisticated systems that are often called intuitive theo...
Relation-based category learning is based on very different principles than feature-based category l...
Relational learning refers to learning from data that have a complex structure. This structure may ...
This research project addresses the problem of statistical predicate invention in machine learning. ...
The objects in many real-world domains can be organized into hierarchies, where each internal node p...
We present a framework for learning abstract relational knowledge with the aim of explaining how peo...
Relationships between concepts account for a large proportion of semantic knowledge. We present a no...
Most models of categorization learn categories defined by characteristic features but some categorie...
Methods for discovering causal knowledge from observational data have been a persistent topic of AI ...
AbstractThis paper studies the connections between relational probabilistic models and reference cla...
This thesis represents a synthesis of relational learning and causal discovery, two subjects at the ...
Inductive learning of statistical models from relational data is a key problem in artificial intelli...
The primary difference between propositional (attribute-value) and relational data is the existence ...
This paper studies the connections between relational probabilistic models and reference classes, wi...
Relational learning, statistical relational models, statistical relational learning, relational data...
Much of human knowledge is organized into sophisticated systems that are often called intuitive theo...
Relation-based category learning is based on very different principles than feature-based category l...
Relational learning refers to learning from data that have a complex structure. This structure may ...
This research project addresses the problem of statistical predicate invention in machine learning. ...
The objects in many real-world domains can be organized into hierarchies, where each internal node p...