AbstractThis paper provides a systematic study of inductive inference of indexable concept classes in learning scenarios where the learner is successful if its final hypothesis describes a finite variant of the target concept, i.e., learning with anomalies. Learning from positive data only and from both positive and negative data is distinguished.The following learning models are studied: learning in the limit, finite identification, set-driven learning, conservative inference, and behaviorally correct learning.The attention is focused on the case that the number of allowed anomalies is finite but not a priori bounded. However, results for the special case of learning with an a priori bounded number of anomalies are presented, too. Characte...
AbstractIn this paper we survey some results in inductive inference showing how learnability of a cl...
AbstractThis paper is concerned with the algorithmic learning, by example in the limit, of programs ...
Important refinements of concept learning in the limit from positive data considerably restricting t...
This paper provides a systematic study of inductive inference of indexable concept classes in learni...
Ph.D. ThesisInductive inference is a process of hypothesizing a general rule from examples. As a suc...
AbstractIn the past 40 years, research on inductive inference has developed along different lines, e...
The present paper deals with the learnability of indexed families of uniformly recursive languages b...
AbstractIn the past 40 years, research on inductive inference has developed along different lines, e...
AbstractStudying the learnability of classes of recursive functions has attracted considerable inter...
AbstractThis paper surveys developments in probabilistic inductive inference (learning) of recursive...
AbstractThe present paper investigates identification of indexed families L of recursively enumerabl...
AbstractThe present paper deals with a systematic study of incremental learning algorithms. The gene...
AbstractThe present paper deals with a systematic study of incremental learning algorithms. The gene...
AbstractIt is shown that allowing a bounded number of anomalies (mistakes) in the final programs lea...
AbstractThe usual information in inductive inference available for the purposes of identifying an un...
AbstractIn this paper we survey some results in inductive inference showing how learnability of a cl...
AbstractThis paper is concerned with the algorithmic learning, by example in the limit, of programs ...
Important refinements of concept learning in the limit from positive data considerably restricting t...
This paper provides a systematic study of inductive inference of indexable concept classes in learni...
Ph.D. ThesisInductive inference is a process of hypothesizing a general rule from examples. As a suc...
AbstractIn the past 40 years, research on inductive inference has developed along different lines, e...
The present paper deals with the learnability of indexed families of uniformly recursive languages b...
AbstractIn the past 40 years, research on inductive inference has developed along different lines, e...
AbstractStudying the learnability of classes of recursive functions has attracted considerable inter...
AbstractThis paper surveys developments in probabilistic inductive inference (learning) of recursive...
AbstractThe present paper investigates identification of indexed families L of recursively enumerabl...
AbstractThe present paper deals with a systematic study of incremental learning algorithms. The gene...
AbstractThe present paper deals with a systematic study of incremental learning algorithms. The gene...
AbstractIt is shown that allowing a bounded number of anomalies (mistakes) in the final programs lea...
AbstractThe usual information in inductive inference available for the purposes of identifying an un...
AbstractIn this paper we survey some results in inductive inference showing how learnability of a cl...
AbstractThis paper is concerned with the algorithmic learning, by example in the limit, of programs ...
Important refinements of concept learning in the limit from positive data considerably restricting t...