This paper explores the why and what of statistical learning from a computational modelling perspective. We suggest that Bayesian techniques can be useful for understanding what kinds of learners and assumptions are necessary for successful statistical learning. The inferences that can be made by a learner are driven by both the units that such learning operates over and the levels of abstraction it includes. Other assumptions made by the learner have non-trivial affects as well, including assumptions about the process in the world generating the data, as well as whether it is more reasonable to make inferences on the basis of types, tokens, or a mixture of the two. Finally, of course, any learner must incorporate –whether explicitly or imp...
Unlike most other statistical frameworks, Bayesian statistical inference is wedded to a particular a...
Statistical learning theory provides the theoretical basis for many of today's machine learning algo...
The methods of teaching statistical inference vary and too often, insufficient links are made to the...
This chapter provides a overview of Bayesian inference, mostly emphasising that it is a universal me...
This paper argues that Bayesian probability theory is a general method for machine learning. From tw...
This book describes how Bayesian methods work. Its primary aim is to demystify them, and to show rea...
This article focuses on presenting the possibilities of Bayesian modelling (Finite Mixture Modelling...
Wide-ranging digitalization has made it possible to capture increasingly larger amounts of data. In ...
This is a 20 page chapter for the upcoming Handbook of Statistical Systems Biology (D. Balding, M. S...
Bayesian models of cognition are typically used to describe human learning and inference at the comp...
The Bayesian researcher should know the basic ideas underlying Bayesian methodology and the computat...
This chapter reviews research on the learning of statistical inference, focusing in particular on re...
Bayesian statistics is an approach to data analysis based on Bayes’ theorem, where available knowled...
We present an introduction to Bayesian inference as it is used in probabilistic models of cognitive ...
We examine a graphical representation of uncertain knowledge called a Bayesian network. The represen...
Unlike most other statistical frameworks, Bayesian statistical inference is wedded to a particular a...
Statistical learning theory provides the theoretical basis for many of today's machine learning algo...
The methods of teaching statistical inference vary and too often, insufficient links are made to the...
This chapter provides a overview of Bayesian inference, mostly emphasising that it is a universal me...
This paper argues that Bayesian probability theory is a general method for machine learning. From tw...
This book describes how Bayesian methods work. Its primary aim is to demystify them, and to show rea...
This article focuses on presenting the possibilities of Bayesian modelling (Finite Mixture Modelling...
Wide-ranging digitalization has made it possible to capture increasingly larger amounts of data. In ...
This is a 20 page chapter for the upcoming Handbook of Statistical Systems Biology (D. Balding, M. S...
Bayesian models of cognition are typically used to describe human learning and inference at the comp...
The Bayesian researcher should know the basic ideas underlying Bayesian methodology and the computat...
This chapter reviews research on the learning of statistical inference, focusing in particular on re...
Bayesian statistics is an approach to data analysis based on Bayes’ theorem, where available knowled...
We present an introduction to Bayesian inference as it is used in probabilistic models of cognitive ...
We examine a graphical representation of uncertain knowledge called a Bayesian network. The represen...
Unlike most other statistical frameworks, Bayesian statistical inference is wedded to a particular a...
Statistical learning theory provides the theoretical basis for many of today's machine learning algo...
The methods of teaching statistical inference vary and too often, insufficient links are made to the...