Jackknifing in Categorical Data Analysis |
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Authors: | William C. Parr H. Dennis Tolley |
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Affiliation: | Institute of Statistics, Texas A&M University College Station, Texas;Statistics Section, Battelle Northwest, Richland, Washington |
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Abstract: | Estimation of nonlinear functions of a multinomial parameter vector is necessary in many categorical data problems. The first and second order jackknife are explored for the purpose of reduction of bias. The second order jackknife of a function g(.) of a multinomial parameter is shown to be asymptotically normal if all second order partials ?2g( p )?dpi?pj obey a Hölder condition with exponent α>1/2. Numerical results for the estimation of the log odds ratio in a 2times2 table demonstrate the efficiency of the jackknife method for reduction of mean-square-error and the construction of approximate confidence intervals. |
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Keywords: | Log odds ratio Bias reduction Variance estimation Approximate confidence intervals Multinomial parameters |
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