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Hauptverfasser: Hay, Guy, Volk, Ohad
Format: Preprint
Veröffentlicht: 2023
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Online-Zugang:https://arxiv.org/abs/2311.17795
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author Hay, Guy
Volk, Ohad
author_facet Hay, Guy
Volk, Ohad
contents High-dimensional imbalanced data poses a machine learning challenge. In the absence of sufficient or high-quality labels, unsupervised feature selection methods are crucial for the success of subsequent algorithms. Therefore, we introduce a Marginal Laplacian Score (MLS), a modification of the well known Laplacian Score (LS) tailored to better address imbalanced data. We introduce an assumption that the minority class or anomalous appear more frequently in the margin of the features. Consequently, MLS aims to preserve the local structure of the dataset's margin. We propose its integration into modern feature selection methods that utilize the Laplacian score. We integrate the MLS algorithm into the Differentiable Unsupervised Feature Selection (DUFS), resulting in DUFS-MLS. The proposed methods demonstrate robust and improved performance on synthetic and public datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2311_17795
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Marginal Laplacian Score
Hay, Guy
Volk, Ohad
Machine Learning
I.5.0
High-dimensional imbalanced data poses a machine learning challenge. In the absence of sufficient or high-quality labels, unsupervised feature selection methods are crucial for the success of subsequent algorithms. Therefore, we introduce a Marginal Laplacian Score (MLS), a modification of the well known Laplacian Score (LS) tailored to better address imbalanced data. We introduce an assumption that the minority class or anomalous appear more frequently in the margin of the features. Consequently, MLS aims to preserve the local structure of the dataset's margin. We propose its integration into modern feature selection methods that utilize the Laplacian score. We integrate the MLS algorithm into the Differentiable Unsupervised Feature Selection (DUFS), resulting in DUFS-MLS. The proposed methods demonstrate robust and improved performance on synthetic and public datasets.
title Marginal Laplacian Score
topic Machine Learning
I.5.0
url https://arxiv.org/abs/2311.17795