On Comparing and Classifying Several Independent Linear and Non-Linear Regression Models with Symmetric Errors
Date
2019
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Publisher
MDPI
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Abstract
In many real world problems, science fields such as biology, computer science, data mining, electrical and mechanical engineering, and signal processing, researchers aim to compare and classify several regression models. In this paper, a computational approach, based on the non-parametric methods, is used to investigate the similarities, and to classify several linear and non-linear regression models with symmetric errors. The ability of each given approach is then evaluated using simulated and real world practical datasets.
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Keywords
Comparison, Friedman Test, Linear Regression, Nonlinear Regression, Sign Test, Symmetric Errors, Wilcoxon Test
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Citation
Pan, Ji-Jun...et al. (2019). "On Comparing and Classifying Several Independent Linear and Non-Linear Regression Models with Symmetric Errors", Symmetry-Basel, Vol. 11, No. 6.
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Source
Symmetry-Basel
Volume
11
Issue
6