Binary decision making is a topic of great interest for many fields, including biomedical science, economics, management, politics, medicine, natural science and social science, and much effort has been spent for developing novel computational methods to address problems arising in the aforementioned fields. However, in order to evaluate the effectiveness of any prediction method for binary decision making, the choice of the most appropriate error measures is of paramount importance. Due to the variety of error measures available, the evaluation process of binary decision making can be a complex task. The main objective of this study is to provide a comprehensive survey of error measures for evaluating the outcome of binary decision making ...
Decision trees are one of the most powerful and commonly used supervised learning algorithms in the ...
International audienceApplications based on machine learning models have now become an indispensable...
Binary classification is a fundamental task in machine learning, with applications spanning various ...
Making binary decisions is a common data analytical task in scientific research and industrial appli...
A variety of measures exist to assess the accuracy of predictive models in data mining and several a...
The paper describes results of analytical and experimental analysis of seventeen functions used for ...
Decision Tree (DT) typically splitting criteria using one variable at a time. In this way, the final...
Binary classification accuracy comparing each algorithm for predicting “high” risk of mortality in t...
Data science techniques are revolutionizing decision making processes and facilitating data driven i...
This dissertation contains three manuscripts related to each other. The first manuscript is a review...
This paper considers estimation of success probabilities of categorical binary data subject to miscl...
Binary tests classify items into two categories such as reject/accept, positive/negative or guilty/i...
We investigated the effect of the factors Reward Type (points vs. money) and Reward Schedule (consta...
Abstract: Decision Tree is a classification method used in Machine Learning and Data Mining. One maj...
Applications based on machine learning models have now become an indispensable part of the everyday ...
Decision trees are one of the most powerful and commonly used supervised learning algorithms in the ...
International audienceApplications based on machine learning models have now become an indispensable...
Binary classification is a fundamental task in machine learning, with applications spanning various ...
Making binary decisions is a common data analytical task in scientific research and industrial appli...
A variety of measures exist to assess the accuracy of predictive models in data mining and several a...
The paper describes results of analytical and experimental analysis of seventeen functions used for ...
Decision Tree (DT) typically splitting criteria using one variable at a time. In this way, the final...
Binary classification accuracy comparing each algorithm for predicting “high” risk of mortality in t...
Data science techniques are revolutionizing decision making processes and facilitating data driven i...
This dissertation contains three manuscripts related to each other. The first manuscript is a review...
This paper considers estimation of success probabilities of categorical binary data subject to miscl...
Binary tests classify items into two categories such as reject/accept, positive/negative or guilty/i...
We investigated the effect of the factors Reward Type (points vs. money) and Reward Schedule (consta...
Abstract: Decision Tree is a classification method used in Machine Learning and Data Mining. One maj...
Applications based on machine learning models have now become an indispensable part of the everyday ...
Decision trees are one of the most powerful and commonly used supervised learning algorithms in the ...
International audienceApplications based on machine learning models have now become an indispensable...
Binary classification is a fundamental task in machine learning, with applications spanning various ...