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Structural Minimax Probability Machine

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TLDR
This paper uses two finite mixture models to capture the structural information of the data from binary classification and proposes a structural MPM, which can be interpreted as a large margin classifier and can be transformed to support vector machine and maxi–min margin machine under certain special conditions.
Abstract
Minimax probability machine (MPM) is an interesting discriminative classifier based on generative prior knowledge. It can directly estimate the probabilistic accuracy bound by minimizing the maximum probability of misclassification. The structural information of data is an effective way to represent prior knowledge, and has been found to be vital for designing classifiers in real-world problems. However, MPM only considers the prior probability distribution of each class with a given mean and covariance matrix, which does not efficiently exploit the structural information of data. In this paper, we use two finite mixture models to capture the structural information of the data from binary classification. For each subdistribution in a finite mixture model, only its mean and covariance matrix are assumed to be known. Based on the finite mixture models, we propose a structural MPM (SMPM). SMPM can be solved effectively by a sequence of the second-order cone programming problems. Moreover, we extend a linear model of SMPM to a nonlinear model by exploiting kernelization techniques. We also show that the SMPM can be interpreted as a large margin classifier and can be transformed to support vector machine and maxi–min margin machine under certain special conditions. Experimental results on both synthetic and real-world data sets demonstrate the effectiveness of SMPM.

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References
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Journal ArticleDOI

Discriminant Analysis by Gaussian Mixtures

TL;DR: This paper fits Gaussian mixtures to each class to facilitate effective classification in non-normal settings, especially when the classes are clustered.
Proceedings ArticleDOI

Determining the number of clusters/segments in hierarchical clustering/segmentation algorithms

TL;DR: This work proposes an efficient algorithm, the L method, that finds the "knee" in a '# of clusters vs. clustering evaluation metric' graph, using the knee is well-known, but is not a particularly well-understood method to determine the number of clusters.
Journal ArticleDOI

Incremental Support Vector Learning for Ordinal Regression

TL;DR: Numerical experiments on the several benchmark and real-world data sets show that the incremental algorithm can converge to the optimal solution in a finite number of steps, and is faster than the existing batch and incremental SVOR algorithms.
Journal ArticleDOI

A robust minimax approach to classification

TL;DR: This work considers a binary classification problem where the mean and covariance matrix of each class are assumed to be known, and addresses the issue of robustness with respect to estimation errors via a simple modification of the input data.
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