AbstractIn many areas of scientific inquiry, the phenomena under investigation are viewed as functions on the real numbers. Since observational precision is limited, it makes sense to view these phenomena as bounded functions on the rationals. One may translate the basic notions of recursion theory into this framework by first interpreting a partial recursive function as a function on Q. The standard notions of inductive inference carry over as well, with no change in the theory.When considering the class of computable functions on Q, there are a number of natural ways in which to define the distance between two functions. We utilize standard metrics to explore notions of approximate inference — our inference machines will attempt to guess ...
This paper provides a systematic study of inductive inference of indexable concept classes in learni...
AbstractThis paper is concerned with the algorithmic learning, by example in the limit, of programs ...
AbstractThis paper is concerned with the algorithmic learning, by example in the limit, of programs ...
A new identification criterion, motivated by notions of successively improving approximations in th...
This paper presents a method of inductive inference of real-valued functions from given pairs of obs...
Introduction The starting point for studies in inductive inference is the model of learning by exam...
AbstractA new identification criterion, motivated by notions of successively improving approximation...
AbstractIn this paper we investigate the inductive inference of recursive real-valued functions from...
Abst rac t This survey contains both old and very recent results in non-quantitative aspects of indu...
Abst rac t This survey contains both old and very recent results in non-quantitative aspects of indu...
Inductive inference machines are algorithmic devices which attempt to synthesize (in the limit) prog...
In this paper we investigate inductive inference identification criteria which permit infinitely man...
AbstractWe combine traditional studies of inductive inference and classical continuous mathematics t...
Ph.D. ThesisInductive inference is a process of hypothesizing a general rule from examples. As a suc...
AbstractThis paper surveys developments in probabilistic inductive inference (learning) of recursive...
This paper provides a systematic study of inductive inference of indexable concept classes in learni...
AbstractThis paper is concerned with the algorithmic learning, by example in the limit, of programs ...
AbstractThis paper is concerned with the algorithmic learning, by example in the limit, of programs ...
A new identification criterion, motivated by notions of successively improving approximations in th...
This paper presents a method of inductive inference of real-valued functions from given pairs of obs...
Introduction The starting point for studies in inductive inference is the model of learning by exam...
AbstractA new identification criterion, motivated by notions of successively improving approximation...
AbstractIn this paper we investigate the inductive inference of recursive real-valued functions from...
Abst rac t This survey contains both old and very recent results in non-quantitative aspects of indu...
Abst rac t This survey contains both old and very recent results in non-quantitative aspects of indu...
Inductive inference machines are algorithmic devices which attempt to synthesize (in the limit) prog...
In this paper we investigate inductive inference identification criteria which permit infinitely man...
AbstractWe combine traditional studies of inductive inference and classical continuous mathematics t...
Ph.D. ThesisInductive inference is a process of hypothesizing a general rule from examples. As a suc...
AbstractThis paper surveys developments in probabilistic inductive inference (learning) of recursive...
This paper provides a systematic study of inductive inference of indexable concept classes in learni...
AbstractThis paper is concerned with the algorithmic learning, by example in the limit, of programs ...
AbstractThis paper is concerned with the algorithmic learning, by example in the limit, of programs ...