AbstractWe consider the probability hierarchy for Popperian FINite learning and study the general properties of this hierarchy. We prove that the probability hierarchy is decidable, i.e. there exists an algorithm that receives p1 and p2 and answers whether PFIN-type learning with the probability of success p1 is equivalent to PFIN-type learning with the probability of success p2.To prove our result, we analyze the topological structure of the probability hierarchy. We prove that it is well-ordered in descending ordering and order-equivalent to ordinal ϵ0. This shows that the structure of the hierarchy is very complicated.Using similar methods, we also prove that, for PFIN-type learning, team learning and probabilistic learning are of the sa...
AbstractWe investigate learning of classes of distributions over a discrete domain in a PAC context....
This paper provides a study of probabilistic modelling, inference and learning in a logic-based sett...
We investigate hierarchical properties and log-space reductions of languages recognized by log-space...
AbstractWe consider the probability hierarchy for Popperian FINite learning and study the general pr...
AbstractA FIN-learning machine M receives successive values of the function f it is learning and at ...
We are concerned with probabilistic identification of indexed families of uniformly recursive langua...
We investigate algebraic, logical, and geometric properties of concepts recognized by various class...
AbstractWe show that for every probabilistic FIN-type learner with success ratio greater than 2449, ...
We investigate algebraic, logical, and geomet-ric properties of concepts recognized by vari-ous clas...
AbstractThe present paper deals with probabilistic identification of indexed families of uniformly r...
AbstractIn the setting of learning indexed families, probabilistic learning under monotonicity const...
This paper discusses the applications of certain combinatorial and probabilistic techniques to the a...
We investigate learning of classes of distributions over a discrete domain in a PAC context. We intr...
Many practical problems have random variables with a large number of values that can be hierarchical...
Probabilistic logic programming (PLP) combines logic programs and probabilities. Due to its expressi...
AbstractWe investigate learning of classes of distributions over a discrete domain in a PAC context....
This paper provides a study of probabilistic modelling, inference and learning in a logic-based sett...
We investigate hierarchical properties and log-space reductions of languages recognized by log-space...
AbstractWe consider the probability hierarchy for Popperian FINite learning and study the general pr...
AbstractA FIN-learning machine M receives successive values of the function f it is learning and at ...
We are concerned with probabilistic identification of indexed families of uniformly recursive langua...
We investigate algebraic, logical, and geometric properties of concepts recognized by various class...
AbstractWe show that for every probabilistic FIN-type learner with success ratio greater than 2449, ...
We investigate algebraic, logical, and geomet-ric properties of concepts recognized by vari-ous clas...
AbstractThe present paper deals with probabilistic identification of indexed families of uniformly r...
AbstractIn the setting of learning indexed families, probabilistic learning under monotonicity const...
This paper discusses the applications of certain combinatorial and probabilistic techniques to the a...
We investigate learning of classes of distributions over a discrete domain in a PAC context. We intr...
Many practical problems have random variables with a large number of values that can be hierarchical...
Probabilistic logic programming (PLP) combines logic programs and probabilities. Due to its expressi...
AbstractWe investigate learning of classes of distributions over a discrete domain in a PAC context....
This paper provides a study of probabilistic modelling, inference and learning in a logic-based sett...
We investigate hierarchical properties and log-space reductions of languages recognized by log-space...