Flexible non-parametric regression models for compositional data
Michail Tsagris, Abdulaziz Alenazi, Connie Stewart

TL;DR
This paper introduces an alpha-k-NN regression method for compositional data that is flexible, handles zeros naturally, and offers improved prediction accuracy and computational efficiency over existing models.
Contribution
It extends classical k-NN regression with an alpha-transformation, enabling a non-parametric, zero-inclusive approach for compositional data analysis.
Findings
Outperforms existing models in prediction accuracy.
Handles zero values without modification.
Offers high computational efficiency for large datasets.
Abstract
Compositional data arise in many real-life applications and versatile methods for properly analyzing this type of data in the regression context are needed. When parametric assumptions do not hold or are difficult to verify, non-parametric regression models can provide a convenient alternative method for prediction. To this end, we consider an extension to the classical -- regression, termed ---- regression, that yields a highly flexible non-parametric regression model for compositional data through the use of the -transformation. Unlike many of the recommended regression models for compositional data, zeros values (which commonly occur in practice) are not problematic and they can be incorporated into the proposed models without modification. Extensive simulation studies and real-life data analyses highlight the advantage of using these non-parametric…
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Taxonomy
TopicsGeochemistry and Geologic Mapping · Hydrocarbon exploration and reservoir analysis
