Training classifiers on large databases is computationally demand-ing. It is desirable to develop efficient procedures for a reliable prediction of a classifier's suitability for implementing a given task, so that resources can be assigned to the most promising candidates or freed for exploring new classifier candidates. We propose such a practical and principled predictive method. Practical because it avoids the costly procedure of training poor classifiers on the whole training set, and principled because of its theoretical foundation. The effectiveness of the proposed procedure is demonstrated for both single- and multi-layer networks. 1 Introd uction Training classifiers on large data.bases is computationally demanding. It is desir...
In this paper, we first explore an intrinsic problem that exists in the theories induced by learning...
We examine the learning-curve sampling method, an approach for applying machinelearning algorithms t...
Most standard algorithms for prediction with expert advice depend on a parameter called the learning...
One of the fundamental machine learning tasks is that of predictive classification. Given that organ...
When designing a two-alternative classifier, one ordinarily aims to maximize the classifier’s abilit...
One of the challenges in Machine Learning to find a classifier and parameter settings that work well...
Learning curves show how a neural network is improved as the number of training examples increases a...
Abstract. Besides the classification performance, the training time is a second important factor tha...
Several predictive algorithms are described. Highlighted are variants that make predictions by super...
An algorithm to estimate the evolution of learning curves on the whole of a training data base, base...
Thesis (Ph. D.)--University of Rochester. Dept. of Computer Science, 1995. Simultaneously published ...
Classification is a well-studied problem in machine learning and data mining. Classifier performance...
In practical applications, machine learning algorithms are often needed to learn classifiers that op...
Much research has been conducted in the area of machine learning algorithms; however, the question o...
Determining the conditions for which a given learning algorithm is appropriate is an open problem in...
In this paper, we first explore an intrinsic problem that exists in the theories induced by learning...
We examine the learning-curve sampling method, an approach for applying machinelearning algorithms t...
Most standard algorithms for prediction with expert advice depend on a parameter called the learning...
One of the fundamental machine learning tasks is that of predictive classification. Given that organ...
When designing a two-alternative classifier, one ordinarily aims to maximize the classifier’s abilit...
One of the challenges in Machine Learning to find a classifier and parameter settings that work well...
Learning curves show how a neural network is improved as the number of training examples increases a...
Abstract. Besides the classification performance, the training time is a second important factor tha...
Several predictive algorithms are described. Highlighted are variants that make predictions by super...
An algorithm to estimate the evolution of learning curves on the whole of a training data base, base...
Thesis (Ph. D.)--University of Rochester. Dept. of Computer Science, 1995. Simultaneously published ...
Classification is a well-studied problem in machine learning and data mining. Classifier performance...
In practical applications, machine learning algorithms are often needed to learn classifiers that op...
Much research has been conducted in the area of machine learning algorithms; however, the question o...
Determining the conditions for which a given learning algorithm is appropriate is an open problem in...
In this paper, we first explore an intrinsic problem that exists in the theories induced by learning...
We examine the learning-curve sampling method, an approach for applying machinelearning algorithms t...
Most standard algorithms for prediction with expert advice depend on a parameter called the learning...