AbstractWe present applications of domain theory in stochastic learning automata and in neural nets. We show that a basic probabilistic algorithm, the so-called linear reward-penalty scheme, for the binary-state stochastic learning automata can be modelled by the dynamics of an iterated function system on a probabilistic power domain and we compute the expected value of any continuous function in the learning process. We then consider a general class of, so-called forgetful, neural nets in which pattern learning takes place by a local iterative scheme, and we present a domain-theoretic framework for the distribution of synaptic couplings in these networks using the action of an iterated function system on a probabilistic power domain. We th...
Techniques for the construction of probabilistic expert systems comprising both discrete and contin...
In this paper we discuss Monte Carlo simulation based approximations of a stochastic programming pro...
Probabilistic programming is an emerging subfield of AI that extends traditional programming languag...
AbstractWe present applications of domain theory in stochastic learning automata and in neural nets....
We consider stochastic programming problems with probabilistic constraints involving integer-valued ...
Invited TalkProbabilistic logic programs [4] combine the power of a pro- gramming language with a po...
Domain theory has seen success as a semantic model for high-level programming languages, having devi...
We consider stochastic programming problems with probabilistic constraints involving random variable...
This paper presents an overview of the field of Stochastic Learning Automata (LA), and concentrates,...
AbstractIn [12] it is shown that the probabilistic powerdomain of a continuous domain is again conti...
invited talkProbabilistic programming is an emerging subfield of AI that extends traditional program...
AbstractIn Formal Methods we use mathematical structures to model real systems we want to build, or ...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
Probabilistic programming is an emerging subfield of AI that extends traditional programming languag...
We consider stochastic automata models of learning systems in this article. Such learning automata s...
Techniques for the construction of probabilistic expert systems comprising both discrete and contin...
In this paper we discuss Monte Carlo simulation based approximations of a stochastic programming pro...
Probabilistic programming is an emerging subfield of AI that extends traditional programming languag...
AbstractWe present applications of domain theory in stochastic learning automata and in neural nets....
We consider stochastic programming problems with probabilistic constraints involving integer-valued ...
Invited TalkProbabilistic logic programs [4] combine the power of a pro- gramming language with a po...
Domain theory has seen success as a semantic model for high-level programming languages, having devi...
We consider stochastic programming problems with probabilistic constraints involving random variable...
This paper presents an overview of the field of Stochastic Learning Automata (LA), and concentrates,...
AbstractIn [12] it is shown that the probabilistic powerdomain of a continuous domain is again conti...
invited talkProbabilistic programming is an emerging subfield of AI that extends traditional program...
AbstractIn Formal Methods we use mathematical structures to model real systems we want to build, or ...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
Probabilistic programming is an emerging subfield of AI that extends traditional programming languag...
We consider stochastic automata models of learning systems in this article. Such learning automata s...
Techniques for the construction of probabilistic expert systems comprising both discrete and contin...
In this paper we discuss Monte Carlo simulation based approximations of a stochastic programming pro...
Probabilistic programming is an emerging subfield of AI that extends traditional programming languag...