A variety of measures exist to assess the accuracy of predictive models in data mining and several aspects should be considered when evaluating the performance of learning algorithms. In this article, the most common accuracy and error scores for classification and regression are reviewed and compared. Moreover, the standard approaches to model selection and assessment are presented, together with an introduction to ensemble methods for improving the accuracy of single classifiers
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
We study the notions of bias and variance for classification rules. Following Efron (1978) we develo...
(a) and (b) show the box plot of the five-class classification accuracy with RF and SVM, respectivel...
A variety of measures exist to assess the accuracy of predictive models in data mining and several a...
Abstract — The selection of the best classification algorithm for a given dataset is a very widespre...
Abstract — The selection of the best classification algorithm for a given dataset is a very widespre...
Predictive accuracy claims should give explicit descriptions of the steps followed, with access to t...
The research describes the use of both descriptive and predictive algorithms for better accurate pre...
Data mining involves the computational process to find patterns from large data sets. Classification...
Abstract: In the context of data mining the feature size is very large and it is believed that it ne...
Predictive power of classification models can be evaluated by various measures. The most popular mea...
Decision Tree (DT) typically splitting criteria using one variable at a time. In this way, the final...
In today’s world,enormous amount of data is available in every field including science, industry, bu...
Growing popularity of the Internet and innovative storage technology have caused a true data explosi...
Binary decision making is a topic of great interest for many fields, including biomedical science, e...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
We study the notions of bias and variance for classification rules. Following Efron (1978) we develo...
(a) and (b) show the box plot of the five-class classification accuracy with RF and SVM, respectivel...
A variety of measures exist to assess the accuracy of predictive models in data mining and several a...
Abstract — The selection of the best classification algorithm for a given dataset is a very widespre...
Abstract — The selection of the best classification algorithm for a given dataset is a very widespre...
Predictive accuracy claims should give explicit descriptions of the steps followed, with access to t...
The research describes the use of both descriptive and predictive algorithms for better accurate pre...
Data mining involves the computational process to find patterns from large data sets. Classification...
Abstract: In the context of data mining the feature size is very large and it is believed that it ne...
Predictive power of classification models can be evaluated by various measures. The most popular mea...
Decision Tree (DT) typically splitting criteria using one variable at a time. In this way, the final...
In today’s world,enormous amount of data is available in every field including science, industry, bu...
Growing popularity of the Internet and innovative storage technology have caused a true data explosi...
Binary decision making is a topic of great interest for many fields, including biomedical science, e...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
We study the notions of bias and variance for classification rules. Following Efron (1978) we develo...
(a) and (b) show the box plot of the five-class classification accuracy with RF and SVM, respectivel...