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Feature dimensionality reduction: a review

📅 Published: January 21, 2022 👤 Weikuan Jia, Meili Sun, Jian Lian et al. 📖 Complex & Intelligent Systems 📊 731 citations
AI-Generated Summary

Abstract As basic research, it has also received increasing attention from people that the “curse of dimensionality” will lead to increase the cost of data storage and computing; it also influences the efficiency and accuracy of dealing with problems. In this paper, two-dimensionality reduction methods, feature selection and feature extraction, are introduced; the current mainstream dimensionality reduction algorithms are analyzed, including the method for small sample and method based on deep l...

⚡ This is an original paraphrased summary — not copied from the abstract. Full paper available at the source link below.

Key Findings
  • 1 Feature dimensionality reduction as a key link in the process of pattern recognition has become one hot and difficulty spot in the field of pattern recognition, machine learning and data mining.
  • 2 It is one of the most challenging research fields, which has been favored by most of the scholars’ attention.
  • 3 How to implement “low loss” in the process of feature dimension reduction, keep the nature of the original data, find out the best mapping and get the optimal low dimensional data are the keys aims of the research.
Why It Matters

This research advances how AI systems learn, reason, and solve problems — with direct implications for automation and scientific discovery.

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Article Details
Source OpenAlex
Category 🤖 Artificial Intelligence
Published Jan 21, 2022
Journal Complex & Intelligent Systems
DOI 10.1007/s40747-021-00637-x
Citations 731
Authors Weikuan Jia, Meili Sun, Jian Lian, Sujuan Hou