Concept learning is about distilling interpretable rules and concepts from data, a prelude to more advanced knowledge discovery and problem solving in creative domains such as art and science. While concept learning is pervasive in humans, current artificial intelligent (AI) systems are mostly good at either applying human-distilled rules (rule-based AI) or capturing patterns in a task-driven fashion (pattern recognition), but not at learning concepts in a human-interpretable way similar to human-induced rules and theory. This thesis introduces a new learning problem---Automatic Concept Learning (ACL)---targeting self-explanation and self-exploration as the two principal pursuits; correspondingly, it proposes a new learning model---Informa...
Accounts of human and machine concept learning face a fundamental challenge. Some approaches, notabl...
Accounts of human and machine concept learning face a fundamental challenge. Some approaches, notabl...
This dissertation presents a process model of human learning in the context of supervised concept ac...
Concept learning is about distilling interpretable rules and concepts from data, a prelude to more a...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, 2...
This article attempts to make a conceptual and epistemological junction between human learning and m...
One of the tasks of Artificial Intelligence is to model abilities that are generally considered as h...
One of the tasks of Artificial Intelligence is to model abilities that are generally considered as h...
AbstractConcepts are the basic elements of propositions. Concepts can be best understood as constitu...
One of the tasks of Artificial Intelligence is to model abilities that are generally considered as h...
One of the tasks of Artificial Intelligence is to model abilities that are generally considered as h...
One of the tasks of Artificial Intelligence is to model abilities that are generally considered as h...
Weitnauer E. Interactions between perception and rule-construction in human and machine concept lear...
AbstractThis paper describes a concept formation approach to the discovery of new concepts and impli...
International audienceKnowledge discovery in large and complex datasets is one main topic addressed ...
Accounts of human and machine concept learning face a fundamental challenge. Some approaches, notabl...
Accounts of human and machine concept learning face a fundamental challenge. Some approaches, notabl...
This dissertation presents a process model of human learning in the context of supervised concept ac...
Concept learning is about distilling interpretable rules and concepts from data, a prelude to more a...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, 2...
This article attempts to make a conceptual and epistemological junction between human learning and m...
One of the tasks of Artificial Intelligence is to model abilities that are generally considered as h...
One of the tasks of Artificial Intelligence is to model abilities that are generally considered as h...
AbstractConcepts are the basic elements of propositions. Concepts can be best understood as constitu...
One of the tasks of Artificial Intelligence is to model abilities that are generally considered as h...
One of the tasks of Artificial Intelligence is to model abilities that are generally considered as h...
One of the tasks of Artificial Intelligence is to model abilities that are generally considered as h...
Weitnauer E. Interactions between perception and rule-construction in human and machine concept lear...
AbstractThis paper describes a concept formation approach to the discovery of new concepts and impli...
International audienceKnowledge discovery in large and complex datasets is one main topic addressed ...
Accounts of human and machine concept learning face a fundamental challenge. Some approaches, notabl...
Accounts of human and machine concept learning face a fundamental challenge. Some approaches, notabl...
This dissertation presents a process model of human learning in the context of supervised concept ac...