It has recently been shown that a Bayesian agent with a universal hypothesis class resolves most induction problems discussed in the philosophy of science. These ideal agents are, however, neither practical nor a good model for how real science works. We here introduce a framework for learning based on implicit beliefs over all possible hypotheses and limited sets of explicit theories sampled from an implicit distribution represented only by the process by which it generates new hypotheses. We address the questions of how to act based on a limited set of theories as well as what an ideal sampling process should be like. Finally, we discuss topics in philosophy of science and cognitive science from the perspective of this framework
People reason about uncertainty with deliberately incomplete models, including only the most relevan...
Adaptive behavior in even the simplest decision-making tasks requires predicting future events in an...
Higher-level cognition depends on the ability to learn models of the world. We can characterize this...
Complex constraints like conditionals ('If A, then B') and probabilistic constraints ('The probabili...
Humans display astonishing skill in learning about the environment in which they operate. They assim...
Decision theory formally solves the problem of rational agents in uncertain worlds if the true envir...
Higher-level cognition depends on the ability to learn models of the world. We can characterize this...
This paper outlines a procedure for performing induction under uncertainty. This procedure uses a pr...
Methods for learning optimal policies often assume that the way the domain is conceptualised— the p...
Inductive inference allows humans to make powerful generalizations from sparse data when learning ab...
Why are human inferences sometimes remarkably close to the Bayesian ideal and other times systematic...
This paper addresses the problem that Bayesian statistical inference cannot accommodate theory chang...
We analyze a model of learning and belief formation in networks in which agents follow Bayes rule ye...
Abstract. We introduce a new formal model in which a learning algorithm must combine a collection of...
Bayesian models of human learning are becoming increasingly popular in cognitive science. We argue t...
People reason about uncertainty with deliberately incomplete models, including only the most relevan...
Adaptive behavior in even the simplest decision-making tasks requires predicting future events in an...
Higher-level cognition depends on the ability to learn models of the world. We can characterize this...
Complex constraints like conditionals ('If A, then B') and probabilistic constraints ('The probabili...
Humans display astonishing skill in learning about the environment in which they operate. They assim...
Decision theory formally solves the problem of rational agents in uncertain worlds if the true envir...
Higher-level cognition depends on the ability to learn models of the world. We can characterize this...
This paper outlines a procedure for performing induction under uncertainty. This procedure uses a pr...
Methods for learning optimal policies often assume that the way the domain is conceptualised— the p...
Inductive inference allows humans to make powerful generalizations from sparse data when learning ab...
Why are human inferences sometimes remarkably close to the Bayesian ideal and other times systematic...
This paper addresses the problem that Bayesian statistical inference cannot accommodate theory chang...
We analyze a model of learning and belief formation in networks in which agents follow Bayes rule ye...
Abstract. We introduce a new formal model in which a learning algorithm must combine a collection of...
Bayesian models of human learning are becoming increasingly popular in cognitive science. We argue t...
People reason about uncertainty with deliberately incomplete models, including only the most relevan...
Adaptive behavior in even the simplest decision-making tasks requires predicting future events in an...
Higher-level cognition depends on the ability to learn models of the world. We can characterize this...