AbstractDeveloping models to describe observable systems is a challenge because it can be difficult to assess and control the discrepancy between the two entities. We consider the situation of an ensemble of candidate models claiming to accurately describe system features of interest, and ask the question how beliefs about the accuracy of these models can be updated in the light of observations. We show that naive Bayesian updating of these beliefs can lead to spurious results, since the application of Bayes’ rule presupposes the existence of at least one accurate model in the ensemble. We present a framework in which this assumption can be dropped. The basic idea is to extend Bayes’ rule to the exhaustive, but unknown space of all models, ...
Bayes’ rule is introduced as a coherent strategy for multiple recomputations of classifier system ou...
mass 1 concentrated on the true process, provided that the prior probability measure has full suppor...
In Bayesian statistics, one's prior beliefs about underlying model parameters are revised with the i...
AbstractDeveloping models to describe observable systems is a challenge because it can be difficult ...
In statistical inference, a discrepancy between the parameter-to-observable map that generates the d...
People reason about uncertainty with deliberately incomplete models, including only the most relevan...
We analyze the behavior of approximate Bayesian computation (ABC) when the model generating the simu...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer S...
We present Bayesian updating of an imprecise probability measure, represented by a class of precise ...
We model inter-temporal ambiguity as the scenario in which a Bayesian learner holds more than one pr...
Much is now known about the consistency of Bayesian updating on infinite-dimensional parameter space...
We investigate a computer model calibration technique inspired by the wellknown Bayesian framework o...
This thesis explores how a Bayesian should update their beliefs in the knowledge that any model ava...
This is the final version of the article. Available from AMS via the DOI in this record.Predictabili...
Bayesian modeling helps applied researchers articulate assumptions about their data and develop mode...
Bayes’ rule is introduced as a coherent strategy for multiple recomputations of classifier system ou...
mass 1 concentrated on the true process, provided that the prior probability measure has full suppor...
In Bayesian statistics, one's prior beliefs about underlying model parameters are revised with the i...
AbstractDeveloping models to describe observable systems is a challenge because it can be difficult ...
In statistical inference, a discrepancy between the parameter-to-observable map that generates the d...
People reason about uncertainty with deliberately incomplete models, including only the most relevan...
We analyze the behavior of approximate Bayesian computation (ABC) when the model generating the simu...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer S...
We present Bayesian updating of an imprecise probability measure, represented by a class of precise ...
We model inter-temporal ambiguity as the scenario in which a Bayesian learner holds more than one pr...
Much is now known about the consistency of Bayesian updating on infinite-dimensional parameter space...
We investigate a computer model calibration technique inspired by the wellknown Bayesian framework o...
This thesis explores how a Bayesian should update their beliefs in the knowledge that any model ava...
This is the final version of the article. Available from AMS via the DOI in this record.Predictabili...
Bayesian modeling helps applied researchers articulate assumptions about their data and develop mode...
Bayes’ rule is introduced as a coherent strategy for multiple recomputations of classifier system ou...
mass 1 concentrated on the true process, provided that the prior probability measure has full suppor...
In Bayesian statistics, one's prior beliefs about underlying model parameters are revised with the i...