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Kernel-Free Quadratic Surface Regression for Multi-Class Classification.

Changlin Wang1,2, Zhixia Yang1,2, Junyou Ye1,2

  • 1College of Mathematics and Systems Science, Xinjiang University, Urumuqi 830046, China.

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|July 29, 2023
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Summary
This summary is machine-generated.

A new hard quadratic surface least squares regression (HQSLSR) classifier is introduced for multi-class problems. Its softened version (SQSLSR) enhances generalization by enlarging class distances, showing comparable performance to existing methods.

Keywords:
kernel-free trickleast squares regressionmulti-class classificationquadratic surfaceε-dragging technique

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Area of Science:

  • Machine Learning
  • Computer Science

Background:

  • Multi-class classification presents challenges in developing effective nonlinear classifiers.
  • Existing methods may lack generalization ability or have complex optimization problems.

Purpose of the Study:

  • Introduce a novel kernel-free nonlinear classifier, Hard Quadratic Surface Least Squares Regression (HQSLSR).
  • Propose a softened version (SQSLSR) to improve generalization performance.
  • Analyze the theoretical properties and experimental efficacy of the proposed methods.

Main Methods:

  • Developed HQSLSR by combining least squares loss with a quadratic kernel-free trick.
  • Introduced an ε-dragging technique in SQSLSR to enlarge between-class distances.
  • Employed an alteration iteration algorithm to solve the SQSLSR optimization problem.

Main Results:

  • HQSLSR offers a convex and unconstrained optimization problem.
  • SQSLSR demonstrated improved generalization ability and geometric diversity in regression functions.
  • Theoretical analysis confirmed convergence, interpretability, and computational efficiency.
  • Experimental results on benchmark datasets showed competitive performance against state-of-the-art classifiers.

Conclusions:

  • The proposed HQSLSR and SQSLSR methods provide effective solutions for multi-class classification.
  • The ε-dragging technique is beneficial for enhancing classifier generalization.
  • These kernel-free approaches offer a promising alternative for nonlinear classification tasks.