Multi-category Angle-based Classifier Refit
Guo Xian Yau, Chong Zhang

TL;DR
This paper introduces a novel refit strategy for multicategory angle-based classifiers that improves probability estimation accuracy with minimal additional computation, addressing bias issues in high-dimensional classification tasks.
Contribution
It proposes a new refit method for multicategory angle-based classifiers that enhances probability estimation without sacrificing prediction accuracy.
Findings
Significant improvement in probability estimation accuracy.
Maintains prediction accuracy comparable to existing classifiers.
Method is computationally efficient.
Abstract
Classification is an important statistical learning tool. In real application, besides high prediction accuracy, it is often desirable to estimate class conditional probabilities for new observations. For traditional problems where the number of observations is large, there exist many well developed approaches. Recently, high dimensional low sample size problems are becoming increasingly popular. Margin-based classifiers, such as logistic regression, are well established methods in the literature. On the other hand, in terms of probability estimation, it is known that for binary classifiers, the commonly used methods tend to under-estimate the norm of the classification function. This can lead to biased probability estimation. Remedy approaches have been proposed in the literature. However, for the simultaneous multicategory classification framework, much less work has been done. We…
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Taxonomy
TopicsMachine Learning and Data Classification · Sparse and Compressive Sensing Techniques · Machine Learning and Algorithms
