Unsupervised Feature Selection via Orthogonal Basis Clustering and Local Structure Preserving
Autor: | Xiaochang Lin, Bilian Chen, Yifeng Zeng, Jiewen Guan |
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Rok vydání: | 2022 |
Předmět: |
Optimization problem
Computational complexity theory Artificial neural network G500 Computer Networks and Communications Computer science business.industry Feature extraction G900 Feature selection Pattern recognition Orthogonal basis Computer Science Applications Artificial Intelligence Artificial intelligence business Cluster analysis Software Curse of dimensionality |
Zdroj: | IEEE Transactions on Neural Networks and Learning Systems. 33:6881-6892 |
ISSN: | 2162-2388 2162-237X |
Popis: | Due to the ``curse of dimensionality'' issue, how to discard redundant features and select informative features in high-dimensional data has become a critical problem, hence there are many research studies dedicated to solving this problem. Unsupervised feature selection technique, which does not require any prior category information to conduct with, has gained a prominent place in preprocessing high-dimensional data among all feature selection techniques, and it has been applied to many neural networks and learning systems related applications, e.g., pattern classification. In this article, we propose an efficient method for unsupervised feature selection via orthogonal basis clustering and reliable local structure preserving, which is referred to as OCLSP briefly. Our OCLSP method consists of an orthogonal basis clustering together with an adaptive graph regularization, which realizes the functionality of simultaneously achieving excellent cluster separation and preserving the local information of data. Besides, we exploit an efficient alternative optimization algorithm to solve the challenging optimization problem of our proposed OCLSP method, and we perform a theoretical analysis of its computational complexity and convergence. Eventually, we conduct comprehensive experiments on nine real-world datasets to test the validity of our proposed OCLSP method, and the experimental results demonstrate that our proposed OCLSP method outperforms many state-of-the-art unsupervised feature selection methods in terms of clustering accuracy and normalized mutual information, which indicates that our proposed OCLSP method has a strong ability in identifying more important features. |
Databáze: | OpenAIRE |
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