6533b82bfe1ef96bd128ce62
RESEARCH PRODUCT
“Anti-Bayesian” parametric pattern classification using order statistics criteria for some members of the exponential family
B. John OommenA. Thomassubject
Uniform distribution (continuous)classification by moments of order statisticsBayesian probabilityOrder statisticNonparametric statisticsVDP::Technology: 500::Information and communication technology: 550020206 networking & telecommunications02 engineering and technologyprototype reduction schemesBayes' theorempattern classificationVDP::Mathematics and natural science: 400::Information and communication science: 420Exponential familyArtificial IntelligenceSignal Processing0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingComputer Vision and Pattern RecognitionBeta distributionAlgorithmSoftwareMathematicsParametric statisticsdescription
This paper submits a comprehensive report of the use of order statistics (OS) for parametric pattern recognition (PR) for various distributions within the exponential family. Although the field of parametric PR has been thoroughly studied for over five decades, the use of the OS of the distributions to achieve this has not been reported. The pioneering work on using OS for classification was presented earlier for the uniform distribution and for some members of the exponential family, where it was shown that optimal PR can be achieved in a counter-intuitive manner, diametrically opposed to the Bayesian paradigm, i.e., by comparing the testing sample to a few samples distant from the mean. Apart from the results for the Gaussian and doubly exponential which are merely cited here, our new results include the Rayleigh, Gamma and certain Beta distributions. The new scheme, referred to as classification by moments of order statistics (CMOS), has an accuracy that attains Bayes' bound for symmetric distributions, and is, otherwise, very close to the optimal Bayes' bound, as has been shown both theoretically and by rigorous experimental testing. The results here also give a theoretical foundation for the families of border identification (BI) algorithms reported in the literature. Highlights? We present the results concerning "Anti-Bayesian" optimal PR for the exponential family. ? These new techniques use Order Statistics (OS) criteria in classification. ? These results have been proven for symmetric and asymmetric distributions. ? The experimental results justify the claims.
year | journal | country | edition | language |
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2013-01-01 | Pattern Recognition |