Bags of Projected Nearest Neighbours : Competitors to Random Forests?

Hofmeyr, David P. (2025) Bags of Projected Nearest Neighbours : Competitors to Random Forests? Other. Arxiv.

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Abstract

In this paper we introduce a simple and intuitive adaptive k nearest neighbours classifier, and explore its utility within the context of bootstrap aggregating ("bagging"). The approach is based on finding discriminant subspaces which are computationally efficient to compute, and are motivated by enhancing the discrimination of classes through nearest neighbour classifiers. This adaptiveness promotes diversity of the individual classifiers fit across different bootstrap samples, and so further leverages the variance reducing effect of bagging. Extensive experimental results are presented documenting the strong performance of the proposed approach in comparison with Random Forest classifiers, as well as other nearest neighbours based ensembles from the literature, plus other relevant benchmarks. Code to implement the proposed approach is available in the form of an R package from https://github.com/DavidHofmeyr/BOPNN.

Item Type:
Monograph (Other)
Additional Information:
Currently under submission for potential publication by IEEE
Subjects:
?? cs.lgstat.ml ??
ID Code:
231569
Deposited By:
Deposited On:
03 Dec 2025 10:10
Refereed?:
No
Published?:
Published
Last Modified:
10 Dec 2025 14:05