2021
DOI: 10.1177/09622802211032712
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Distance-based Classification and Regression Trees for the analysis of complex predictors in health and medical research

Abstract: Predicting patient outcomes based on patient characteristics and care processes is a common task in medical research. Such predictive features are often multifaceted and complex, and are usually simplified into one or more scalar variables to facilitate statistical analysis. This process, while necessary, results in a loss of important clinical detail. While this loss may be prevented by using distance-based predictive methods which better represent complex healthcare features, the statistical literature on su… Show more

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Cited by 8 publications
(5 citation statements)
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“…The average audio features of the frames were used as input features of the fatigue level classifiers. By using P300 as ground truth, we trained several commonly used classifiers, including linear regression (LR) ( Nguyen et al, 2021 ), linear discriminant analysis (LDA) ( Dornaika and Khoder, 2020 ), K-nearest neighbor (KNN) ( Abu Alfeilat et al, 2019 ), classification and regression trees (CART) ( Johns et al, 2021 ), naive Bayes classifier (NB) ( Sugahara and Ueno, 2021 ), support vector machine (SVM) ( Huang et al, 2018 ), and multilayer perceptron (MLP) ( Panghal and Kumar, 2021 ), to classify the fatigue level of each audio input. Leave-one-out (LOO) cross-validation ( Luo et al, 2015 ) was used to guarantee the generalization performance of our models.…”
Section: Methodsmentioning
confidence: 99%
“…The average audio features of the frames were used as input features of the fatigue level classifiers. By using P300 as ground truth, we trained several commonly used classifiers, including linear regression (LR) ( Nguyen et al, 2021 ), linear discriminant analysis (LDA) ( Dornaika and Khoder, 2020 ), K-nearest neighbor (KNN) ( Abu Alfeilat et al, 2019 ), classification and regression trees (CART) ( Johns et al, 2021 ), naive Bayes classifier (NB) ( Sugahara and Ueno, 2021 ), support vector machine (SVM) ( Huang et al, 2018 ), and multilayer perceptron (MLP) ( Panghal and Kumar, 2021 ), to classify the fatigue level of each audio input. Leave-one-out (LOO) cross-validation ( Luo et al, 2015 ) was used to guarantee the generalization performance of our models.…”
Section: Methodsmentioning
confidence: 99%
“…The CART was first introduced by Breiman et al (1984). It is an algorithm used for both classification and regression tasks (Johns et al 2021). CART builds binary trees recursively by splitting the dataset into subsets based on the feature values (Tang and Zhang 2020).…”
Section: Machine Learning Approach For Hazard Susceptibility Modellingmentioning
confidence: 99%
“…Due to the binary segmentation performed by the classification and regression tree, for multiple different partitions of the attributes in step 3 above, if the values are discrete values such as a, b and c, there are three situations in the partition: ab, ac, and bc. If it is represented by continuous values, then the average of two adjacent values is used as the splitting point each time [18][19].…”
Section: Classification and Regression Tree Algorithmmentioning
confidence: 99%