This chapter offers an accessible introduction to the channel-based approach to Bayesian probability theory. This framework rests on algebraic and logical foundations, inspired by the methodologies of programming language semantics. It offers a uniform, structured and expressive language for describing Bayesian phenomena in terms of familiar programming concepts, like channel, predicate transformation and state transformation. The introduction also covers inference in Bayesian networks, which will be modelled by a suitable calculus of string diagrams
Several models combining Bayesian networks with logic exist. The two most developed models are Proba...
© Springer-Verlag Berlin Heidelberg 2001. Recently, new representation languages that integrate firs...
Foundations of Bayesianism is an authoritative collection of papers addressing the key challenges th...
Bayesian networks provide an elegant formalism for representing and reasoning about uncertainty usin...
I present a formalism that combines two methodologies: *objective Bayesianism* and *Bayesian nets*. ...
I examine the idea of incorporating probability into logic for a logic of practical reasoning. I int...
We review Logical Bayesian Networks, a language for probabilistic logical modelling, and discuss its...
A significant part of current research on (inductive) logic programming deals with probabilistic log...
A significant part of current research on (inductive) logic programming deals with probabilistic log...
Given the complexity of the domains for which we would like to use computers as reasoning engines, ...
Uncertainty is a fundamental and irreducible aspect of our knowledge about the world. Probability is...
By identifying and pursuing analogies between causal and logical in uence I show how the Bayesian ne...
This talk consists of two parts. In the first part we analyze Bayesian Logic Programs from a knowled...
In recent years, there has been a significant interest in integrating probability theory with first ...
Bayesian nets are widely used in artificial intelligence as a calculus for casual reasoning, enablin...
Several models combining Bayesian networks with logic exist. The two most developed models are Proba...
© Springer-Verlag Berlin Heidelberg 2001. Recently, new representation languages that integrate firs...
Foundations of Bayesianism is an authoritative collection of papers addressing the key challenges th...
Bayesian networks provide an elegant formalism for representing and reasoning about uncertainty usin...
I present a formalism that combines two methodologies: *objective Bayesianism* and *Bayesian nets*. ...
I examine the idea of incorporating probability into logic for a logic of practical reasoning. I int...
We review Logical Bayesian Networks, a language for probabilistic logical modelling, and discuss its...
A significant part of current research on (inductive) logic programming deals with probabilistic log...
A significant part of current research on (inductive) logic programming deals with probabilistic log...
Given the complexity of the domains for which we would like to use computers as reasoning engines, ...
Uncertainty is a fundamental and irreducible aspect of our knowledge about the world. Probability is...
By identifying and pursuing analogies between causal and logical in uence I show how the Bayesian ne...
This talk consists of two parts. In the first part we analyze Bayesian Logic Programs from a knowled...
In recent years, there has been a significant interest in integrating probability theory with first ...
Bayesian nets are widely used in artificial intelligence as a calculus for casual reasoning, enablin...
Several models combining Bayesian networks with logic exist. The two most developed models are Proba...
© Springer-Verlag Berlin Heidelberg 2001. Recently, new representation languages that integrate firs...
Foundations of Bayesianism is an authoritative collection of papers addressing the key challenges th...