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Recursive Implementation of a Two-Step Nonparametric Decision Rule | IEEE Journals & Magazine | IEEE Xplore

Recursive Implementation of a Two-Step Nonparametric Decision Rule


Abstract:

The two-step approach to nonparametric discrimination is that of estimating class-conditional densities and deriving the Bayes decision rule as if the estimates were true...Show More

Abstract:

The two-step approach to nonparametric discrimination is that of estimating class-conditional densities and deriving the Bayes decision rule as if the estimates were true. Direct implementation of such a decision rule ecounters two computational problems. Complexity increases with sample size, and finite precision limits the decision rule domain. Here a recursive algorithm to reduce the expected number of operations and word-length limitations below that of the direct approach is developed. A special case of the formulation reduces to the weighted k-nearest-neighbor rule.
Published in: IEEE Transactions on Pattern Analysis and Machine Intelligence ( Volume: PAMI-1, Issue: 1, January 1979)
Page(s): 90 - 94
Date of Publication: 31 January 1979

ISSN Information:

PubMed ID: 21868836

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References

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