The K-fold Cross Validation (KCV) technique is one of the most used approaches by practitioners for model selection and error estimation of classifiers. The KCV consists in splitting a dataset into k subsets; then, iteratively, some of them are used to learn the model, while the others are exploited to assess its performance. However, in spite of the KCV success, only practical rule-of-thumb methods exist to choose the number and the cardinality of the subsets. We propose here an approach, which allows to tune the number of the subsets of the KCV in a data–dependent way, so to obtain a reliable, tight and rigorous estimation of the probability of misclassification of the chosen model
We review accuracy estimation methods and compare the two most common methods crossvalidation and bo...
AbstractThe rapid development of new learning algorithms increases the need for improved accuracy es...
Cross-validation (CV) is a common approach for determining the optimal number of components in a pri...
The K-fold Cross Validation (KCV) technique is one of the most used approaches by practitioners for ...
In the machine learning field the performance of a classifier is usually measured in terms of predic...
In this paper, we review the k\u2013Fold Cross Validation (KCV) technique, applied to the Support Ve...
In machine learning data usage is the most important criterion than the logic of the program. With v...
Abstract Background To estimate a classifier’s error in predicting future observations, bootstrap me...
The problem of how to effectively implement k-fold cross-validation for support vector machines is c...
Cross-validation is an established technique for estimating the accuracy of a classifier and is nor...
The inner loop performs cross-validation to identify the best features and model hyper-parameters us...
K-fold cross validation (CV) is a popular method for estimating the true performance of machine lear...
Abstract Background Cross-validation (CV) is an effective method for estimating the prediction error...
The rapid development of new learning algorithms increases the need for improved accuracy estimation...
This project investigates m-fold cross-validation algorithms for automatic selection of k with k-nea...
We review accuracy estimation methods and compare the two most common methods crossvalidation and bo...
AbstractThe rapid development of new learning algorithms increases the need for improved accuracy es...
Cross-validation (CV) is a common approach for determining the optimal number of components in a pri...
The K-fold Cross Validation (KCV) technique is one of the most used approaches by practitioners for ...
In the machine learning field the performance of a classifier is usually measured in terms of predic...
In this paper, we review the k\u2013Fold Cross Validation (KCV) technique, applied to the Support Ve...
In machine learning data usage is the most important criterion than the logic of the program. With v...
Abstract Background To estimate a classifier’s error in predicting future observations, bootstrap me...
The problem of how to effectively implement k-fold cross-validation for support vector machines is c...
Cross-validation is an established technique for estimating the accuracy of a classifier and is nor...
The inner loop performs cross-validation to identify the best features and model hyper-parameters us...
K-fold cross validation (CV) is a popular method for estimating the true performance of machine lear...
Abstract Background Cross-validation (CV) is an effective method for estimating the prediction error...
The rapid development of new learning algorithms increases the need for improved accuracy estimation...
This project investigates m-fold cross-validation algorithms for automatic selection of k with k-nea...
We review accuracy estimation methods and compare the two most common methods crossvalidation and bo...
AbstractThe rapid development of new learning algorithms increases the need for improved accuracy es...
Cross-validation (CV) is a common approach for determining the optimal number of components in a pri...