Probability theory can be studied synthetically as the computational effect embodied by a commutative monad. In the recently proposed Markov categories, one works with an abstraction of the Kleisli category and then defines deterministic morphisms equationally in terms of copying and discarding. The resulting difference between 'pure' and 'deterministic' leads us to investigate the 'sober' objects for a probability monad, for which the two concepts coincide. We propose natural conditions on a probability monad which allow us to identify the sober objects and define an idempotent sobrification functor. Our framework applies to many examples of interest, including the Giry monad on measurable spaces, and allows us to sharpen a previously give...
AbstractEffectuses have recently been introduced as categorical models for quantum computation, with...
Markov categories are a recent categorical approach to the mathematical foundations of probability a...
Markov categories are a recent categorical approach to the mathematical foundations of probability a...
International audienceA long-standing open problem in the semantics of programming languages support...
Probabilities are understood abstractly as forming a monoid in the category of effect algebras. They...
AbstractProbabilities are understood abstractly as forming a monoid in the category of effect algebr...
Probabilities are understood abstractly as forming a monoid in the category of effect algebras. They...
Probabilities are understood abstractly as forming a monoid in the category of effect algebras. They...
We consider a bag (multiset) monad on the category of standard Borel spaces, and show that it gives ...
AbstractIn this paper, we introduce a monad of random choice for domains that does not suffer from t...
Probabilities are understood abstractly as forming a monoid in the category of effect algebras. They...
Markov categories have recently turned out to be a powerful high-level framework for probability and...
Probabilities are understood abstractly as forming a monoid in the category of effect algebras. They...
Probabilities are understood abstractly as forming a monoid in the category of effect algebras. They...
AbstractEffectuses have recently been introduced as categorical models for quantum computation, with...
AbstractEffectuses have recently been introduced as categorical models for quantum computation, with...
Markov categories are a recent categorical approach to the mathematical foundations of probability a...
Markov categories are a recent categorical approach to the mathematical foundations of probability a...
International audienceA long-standing open problem in the semantics of programming languages support...
Probabilities are understood abstractly as forming a monoid in the category of effect algebras. They...
AbstractProbabilities are understood abstractly as forming a monoid in the category of effect algebr...
Probabilities are understood abstractly as forming a monoid in the category of effect algebras. They...
Probabilities are understood abstractly as forming a monoid in the category of effect algebras. They...
We consider a bag (multiset) monad on the category of standard Borel spaces, and show that it gives ...
AbstractIn this paper, we introduce a monad of random choice for domains that does not suffer from t...
Probabilities are understood abstractly as forming a monoid in the category of effect algebras. They...
Markov categories have recently turned out to be a powerful high-level framework for probability and...
Probabilities are understood abstractly as forming a monoid in the category of effect algebras. They...
Probabilities are understood abstractly as forming a monoid in the category of effect algebras. They...
AbstractEffectuses have recently been introduced as categorical models for quantum computation, with...
AbstractEffectuses have recently been introduced as categorical models for quantum computation, with...
Markov categories are a recent categorical approach to the mathematical foundations of probability a...
Markov categories are a recent categorical approach to the mathematical foundations of probability a...