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Main Authors: Xu, Fan, Chen, Wuyang, Gao, Wei
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.09294
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author Xu, Fan
Chen, Wuyang
Gao, Wei
author_facet Xu, Fan
Chen, Wuyang
Gao, Wei
contents Decision trees and forests have achieved successes in various real applications, most working with all testing classes known in training data. In this work, we focus on learning with augmented class via forests, where an augmented class may appear in testing data yet not in training data. We incorporate information of augmented class into trees' splitting, that is, augmented Gini impurity, a new splitting criterion is introduced to exploit some unlabeled data from testing distribution. We then develop the Learning with Augmented Class via Forests (short for LACForest) approach, which constructs shallow forests according to the augmented Gini impurity and then splits forests with pseudo-labeled augmented instances for better performance. We also develop deep neural forests via an optimization objective based on our augmented Gini impurity, which essentially utilizes the representation power of neural networks for forests. Theoretically, we present the convergence analysis for our augmented Gini impurity, and we finally conduct experiments to evaluate our approaches. The code is available at https://github.com/nju-xuf/LACForest.
format Preprint
id arxiv_https___arxiv_org_abs_2505_09294
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle On the Learning with Augmented Class via Forests
Xu, Fan
Chen, Wuyang
Gao, Wei
Machine Learning
Decision trees and forests have achieved successes in various real applications, most working with all testing classes known in training data. In this work, we focus on learning with augmented class via forests, where an augmented class may appear in testing data yet not in training data. We incorporate information of augmented class into trees' splitting, that is, augmented Gini impurity, a new splitting criterion is introduced to exploit some unlabeled data from testing distribution. We then develop the Learning with Augmented Class via Forests (short for LACForest) approach, which constructs shallow forests according to the augmented Gini impurity and then splits forests with pseudo-labeled augmented instances for better performance. We also develop deep neural forests via an optimization objective based on our augmented Gini impurity, which essentially utilizes the representation power of neural networks for forests. Theoretically, we present the convergence analysis for our augmented Gini impurity, and we finally conduct experiments to evaluate our approaches. The code is available at https://github.com/nju-xuf/LACForest.
title On the Learning with Augmented Class via Forests
topic Machine Learning
url https://arxiv.org/abs/2505.09294