Many Statistical Learning (SL) regression methods have been developed over roughly the last two decades, but no one model has been found to be the best across all sets of data. It would be useful if guidance were available to help identify when each different method might be expected to provide more accurate or precise predictions than competitors. We speculate that certain measurable features of a data set might influence methods\u27 potential ability to provide relatively accurate predictions. This thesis explores the potential to use measurable characteristics of a data set to estimate the prediction performance of different SL regression methods. We demonstrate this process on an existing set of 42 benchmark data sets. We measure a vari...
Performance metrics of the prediction models using logistic regression and random forest methods wit...
<p>For each method, the accuracy, the sensitivity, the specificity and the Matthews correlation coef...
he standard deviation of prediction errors (SDEP) is used to evaluate and compare the predictive abi...
Abstract: We have comparatively assessed five regression performance metrics namely, Mean Absolute E...
The thesis discuses reliability estimation of individual predictions in the supervised learning fram...
This study focuses on supervised learning, an aspect of statistical learning. The supervised learnin...
<p>The experiment was conducted 10 times using 10-fold cross-validation performed on the training se...
This textbook considers statistical learning applications when interest centers on the conditional d...
Prediction is widely researched area in data mining domain due to its applications. There are many t...
This thesis examines the application of machine learning algorithms to predict whether a student wil...
In recent years, statistical learning (SL) research has seen a growing interest in tracking individu...
Much research has been conducted in the area of machine learning algorithms; however, the question o...
Machine learning approaches are increasingly suggested as tools to improve prediction of clinical ou...
(a) and (b) show the box plot of the five-class classification accuracy with RF and SVM, respectivel...
This chapter aims to introduce the common methods and practices of statistical machine learning tech...
Performance metrics of the prediction models using logistic regression and random forest methods wit...
<p>For each method, the accuracy, the sensitivity, the specificity and the Matthews correlation coef...
he standard deviation of prediction errors (SDEP) is used to evaluate and compare the predictive abi...
Abstract: We have comparatively assessed five regression performance metrics namely, Mean Absolute E...
The thesis discuses reliability estimation of individual predictions in the supervised learning fram...
This study focuses on supervised learning, an aspect of statistical learning. The supervised learnin...
<p>The experiment was conducted 10 times using 10-fold cross-validation performed on the training se...
This textbook considers statistical learning applications when interest centers on the conditional d...
Prediction is widely researched area in data mining domain due to its applications. There are many t...
This thesis examines the application of machine learning algorithms to predict whether a student wil...
In recent years, statistical learning (SL) research has seen a growing interest in tracking individu...
Much research has been conducted in the area of machine learning algorithms; however, the question o...
Machine learning approaches are increasingly suggested as tools to improve prediction of clinical ou...
(a) and (b) show the box plot of the five-class classification accuracy with RF and SVM, respectivel...
This chapter aims to introduce the common methods and practices of statistical machine learning tech...
Performance metrics of the prediction models using logistic regression and random forest methods wit...
<p>For each method, the accuracy, the sensitivity, the specificity and the Matthews correlation coef...
he standard deviation of prediction errors (SDEP) is used to evaluate and compare the predictive abi...