Adaptive Feature Selection of Unbalanced Data for Skiing Teaching

In skiing teaching, the data may show an unbalanced distribution. For example, the sample size of some common movements (such as straight downhill) may be much larger than that of some difficult movements (such as aerial spins). If the features are not selected, the model may overly rely on the feat...

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Bibliographic Details
Main Author: Tao Feng
Format: Article
Language:English
Published: Tamkang University Press 2025-06-01
Series:Journal of Applied Science and Engineering
Subjects:
Online Access:http://jase.tku.edu.tw/articles/jase-202603-29-03-0006
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Summary:In skiing teaching, the data may show an unbalanced distribution. For example, the sample size of some common movements (such as straight downhill) may be much larger than that of some difficult movements (such as aerial spins). If the features are not selected, the model may overly rely on the features of common actions and ignore the features of difficult actions. Through the feature selection of unbalanced data, features that have significant influences on different actions (especially a few types of actions) can be screened out, thereby enhancing the recognition ability and generalization ability for various actions. The high-dimensional characteristics of the skiing dataset will reduce the classification effect of unbalanced learning. Aiming at the classification problem of high-dimensional unbalanced data, this paper proposes an adaptive feature selection method. This new algorithm combines embedded and wrapped feature selection methods and is capable of adaptively selecting the optimal features to form the feature space. Finally, the experimental results on the public imbalanced dataset show that the proposed algorithm effectively improves the classification performance of imbalanced data.
ISSN:2708-9967
2708-9975