An improved robust algorithms for fisher discriminant model with high dimensional data
Shaojuan Ma1,2, Yubing Duan1,3
1School of Mathematics and Information Science, North Minzu University, YinChuan, China.
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Summary
This study introduces a robust Fisher discriminant method using the Minimum Regularized Covariance Determinant (MRCD) algorithm to effectively analyze high-dimensional data with outliers. The new MRCD-Fisher model enhances accuracy and stability for complex datasets.
Area of Science:
- Statistical Analysis
- Machine Learning
- Data Science
Background:
- Traditional Fisher discriminant methods struggle with high-dimensional data and are sensitive to outliers.
- Outliers can significantly degrade the performance of standard discriminant analysis techniques.
- Robust statistical methods are needed for reliable analysis of complex datasets.
Purpose of the Study:
- To develop an improved robust Fisher discriminant method for high-dimensional data.
- To enhance the performance of Fisher discriminant analysis in the presence of outliers.
- To introduce a computationally stable and accurate method for outlier-prone datasets.
Main Methods:
- Integration of the Minimum Regularized Covariance Determinant (MRCD) algorithm into the Fisher discriminant framework.
- Development of the MRCD-Fisher discriminant model.
- Comparative experiments with existing robust discriminant methods.
Main Results:
- The MRCD-Fisher discriminant model demonstrated superior robustness and accuracy compared to other methods.
- The method effectively handles high-dimensional data where variables exceed observations.
- The MRCD-Fisher discriminant ensures high data cleanliness and computational stability.
Conclusions:
- The MRCD-Fisher discriminant offers a practical and reliable solution for analyzing high-dimensional, outlier-prone datasets.
- This method contributes significantly to the field of robust statistical analysis.
- The MRCD-Fisher discriminant is a valuable tool for complex data analysis challenges.