In pattern classification problem, one trains a classifier to recognize future unseen samples using a training dataset. Practically, one should not expect the trained classifier could correctly recognize samples dissimilar to the training dataset. Therefore, finding the generalization capability of a classifier for those unseen samples may not help in improving the classifiers accuracy. The localized generalization error model was proposed to bound above the generalization mean square error for those unseen samples similar to the training dataset only. This error model is derived based on the stochastic sensitivity measure(ST-SM)of the classifiers. We present the ST-SMS for various Gaussian based classifiers: radial basis function neural ne...
We derive new margin-based inequalities for the probability of error of classifiers. The main featur...
International audienceIn this paper we propose a general framework to study the generalization prope...
In this paper, we bound the generalization error of a class of Radial Basis Function networks, for...
The generalization error bounds for the entire input space found by current error models using the n...
Abstract: It is well known that the generalization capability is one of the most important criterion...
A pattern classification problem usually involves using high-dimensional features that make the clas...
AbstractThe studies of generalization error give possible approaches to estimate the performance of ...
We present a learning algorithm for decision lists which allows features that are constructed from t...
Pattern selection methods have been traditionally developed with a dependency on a specific classifi...
Thesis (Ph. D.)--University of Rochester. Dept. of Computer Science, 1995. Simultaneously published ...
Support Vector Machines (SVM) and K-Nearest Neighborhood (k-NN) are two most popular classifiers in ...
International audienceThis paper addresses the issue of supporting the end-user of a classifier, whe...
This paper presents a novel approach to the analysis of the overtraining phenomenon in pattern class...
Recent theoretical results for pattern classification with thresholded real-valued functions (such a...
This thesis presents a new theory of generalization in neural network types of learning machines. Th...
We derive new margin-based inequalities for the probability of error of classifiers. The main featur...
International audienceIn this paper we propose a general framework to study the generalization prope...
In this paper, we bound the generalization error of a class of Radial Basis Function networks, for...
The generalization error bounds for the entire input space found by current error models using the n...
Abstract: It is well known that the generalization capability is one of the most important criterion...
A pattern classification problem usually involves using high-dimensional features that make the clas...
AbstractThe studies of generalization error give possible approaches to estimate the performance of ...
We present a learning algorithm for decision lists which allows features that are constructed from t...
Pattern selection methods have been traditionally developed with a dependency on a specific classifi...
Thesis (Ph. D.)--University of Rochester. Dept. of Computer Science, 1995. Simultaneously published ...
Support Vector Machines (SVM) and K-Nearest Neighborhood (k-NN) are two most popular classifiers in ...
International audienceThis paper addresses the issue of supporting the end-user of a classifier, whe...
This paper presents a novel approach to the analysis of the overtraining phenomenon in pattern class...
Recent theoretical results for pattern classification with thresholded real-valued functions (such a...
This thesis presents a new theory of generalization in neural network types of learning machines. Th...
We derive new margin-based inequalities for the probability of error of classifiers. The main featur...
International audienceIn this paper we propose a general framework to study the generalization prope...
In this paper, we bound the generalization error of a class of Radial Basis Function networks, for...