In this paper we introduce and investigate a mathematically rigorous theory of learning curves that is based on ideas from statistical mechanics. The advantage of our theory over the well-established Vapnik-Chervonenkis theory is that our bounds can be considerably tighter in many cases, and are also more re ective of the true behavior (functional form) of learning curves. This behavior can often exhibit dramatic properties such as phase transitions, as well as power law asymptotics not explained by the VC theory. The disadvantages of our theory are that its application requires knowledge of the input distribution, and it is limited so far to nite cardinality function classes. We illustrate our results with many concrete examples of learnin...
We present new tools from probability theory that can be applied to the analysis of learning algorit...
A mathematical theory of the dynamics of a class of trainable signal detectors is described. Among t...
Statistical learning theory provides the theoretical basis for many of today's machine learning algo...
In this paper we introduce and investigate a mathematically rigorous theory of learning curves that ...
. In this paper we introduce and investigate a mathematically rigorous theory of learning curves tha...
The exchange of ideas between computer science and statistical physics has advanced the understandin...
The present paper elucidates a universal property of learning curves, which shows how the generaliza...
The exchange of ideas between computer science and statistical physics has advanced the understandin...
Abstract—In this paper, a mathematical theory of learning is proposed that has many parallels with i...
26 pages, 10 figuresTypical learning curves for Soft Margin Classifiers (SMCs) learning both realiza...
It has frequently been claimed that learning performance improves with practice according to the so-...
We examine the issue of evaluation of model specific parameters in a modified VC-formalism. Two exam...
AbstractWe consider the standard problem of learning a concept from random examples. Here alearning ...
A summary is presented of the statistical mechanical theory of learning a rule with a neural network...
AbstractSome basic issues in the statistical mechanics of learning from examples are reviewed. The a...
We present new tools from probability theory that can be applied to the analysis of learning algorit...
A mathematical theory of the dynamics of a class of trainable signal detectors is described. Among t...
Statistical learning theory provides the theoretical basis for many of today's machine learning algo...
In this paper we introduce and investigate a mathematically rigorous theory of learning curves that ...
. In this paper we introduce and investigate a mathematically rigorous theory of learning curves tha...
The exchange of ideas between computer science and statistical physics has advanced the understandin...
The present paper elucidates a universal property of learning curves, which shows how the generaliza...
The exchange of ideas between computer science and statistical physics has advanced the understandin...
Abstract—In this paper, a mathematical theory of learning is proposed that has many parallels with i...
26 pages, 10 figuresTypical learning curves for Soft Margin Classifiers (SMCs) learning both realiza...
It has frequently been claimed that learning performance improves with practice according to the so-...
We examine the issue of evaluation of model specific parameters in a modified VC-formalism. Two exam...
AbstractWe consider the standard problem of learning a concept from random examples. Here alearning ...
A summary is presented of the statistical mechanical theory of learning a rule with a neural network...
AbstractSome basic issues in the statistical mechanics of learning from examples are reviewed. The a...
We present new tools from probability theory that can be applied to the analysis of learning algorit...
A mathematical theory of the dynamics of a class of trainable signal detectors is described. Among t...
Statistical learning theory provides the theoretical basis for many of today's machine learning algo...