As examples such as the Monty Hall puzzle show, applying conditioning to update a probability distribution on a 'naive space', which does not take into account the protocol used, can often lead to counterintuitive results. Here we examine why. A criterion known as CAR ('coarsening at random') in the statistical literature characterizes when 'naive' conditioning in a naive space works. We show that the CAR condition holds rather infrequently, and we provide a procedural characterization of it, by giving a randomized algorithm that generates all and only distributions for which CAR holds. This substantially extends previous characterizations of CAR. We also consider more generalized notions of update such as Jeffrey conditioning and minimizin...
AbstractBayesian-style conditioning of an exact probability distribution can be done incrementally b...
International audienceProgram sensitivity, also known as Lipschitz continuity, describes how small c...
ABSTRACT In a companion paper we described what intuitively would seem to be the most general possib...
As examples such as the Monty Hall puzzle show, applying conditioning to update a probability distr...
We show that the class of conditional distributions satisfying the coarsening at random (CAR) proper...
We show that the class of conditional distributions satisfying the Coarsening at Random (CAR) proper...
When dealing with incomplete data in statistical learning, or incomplete observations in probabilist...
In recent years a popular nonparametric model for coarsened data is an assumption on the coarsening ...
When dealing with incomplete data in statistical learning, or incomplete observations in probabilist...
We show that the class of conditional distributions satisfying the Coarsening at Random (CAR) proper...
The concept of updating a probability distribution in the light of newevidence lies at the heart of ...
Jeffrey conditioning is said to provide a more general method of assimilating uncertain evidence tha...
The Principle of Maximum Entropy is often used to update probabilities due to evidence instead of pe...
The Method of Maximum (relative) Entropy (ME) has been designed for updating from a prior distributi...
Richard Jeffrey espoused an antifoundationalist variant of Bayesian thinking that he termed ‘Radical...
AbstractBayesian-style conditioning of an exact probability distribution can be done incrementally b...
International audienceProgram sensitivity, also known as Lipschitz continuity, describes how small c...
ABSTRACT In a companion paper we described what intuitively would seem to be the most general possib...
As examples such as the Monty Hall puzzle show, applying conditioning to update a probability distr...
We show that the class of conditional distributions satisfying the coarsening at random (CAR) proper...
We show that the class of conditional distributions satisfying the Coarsening at Random (CAR) proper...
When dealing with incomplete data in statistical learning, or incomplete observations in probabilist...
In recent years a popular nonparametric model for coarsened data is an assumption on the coarsening ...
When dealing with incomplete data in statistical learning, or incomplete observations in probabilist...
We show that the class of conditional distributions satisfying the Coarsening at Random (CAR) proper...
The concept of updating a probability distribution in the light of newevidence lies at the heart of ...
Jeffrey conditioning is said to provide a more general method of assimilating uncertain evidence tha...
The Principle of Maximum Entropy is often used to update probabilities due to evidence instead of pe...
The Method of Maximum (relative) Entropy (ME) has been designed for updating from a prior distributi...
Richard Jeffrey espoused an antifoundationalist variant of Bayesian thinking that he termed ‘Radical...
AbstractBayesian-style conditioning of an exact probability distribution can be done incrementally b...
International audienceProgram sensitivity, also known as Lipschitz continuity, describes how small c...
ABSTRACT In a companion paper we described what intuitively would seem to be the most general possib...