Nonparametric prediction analysis for binary data |
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Authors: | Barry R. Davis |
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Affiliation: | The University of Texas School of Public Health , Houston, Texas, 77030 |
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Abstract: | A nonparametric inference algorithm developed by Davis and Geman (1983) is extended problem. The algorithm and applied to a medical prediction employs an estimation procedure for acquiring pairwise statistics among variables of a binary data set, allows for the data-driven creation of interaction terms among the variables, and employs a decision rule which asymptotically gives the minimum expected error. The inference procedure was designed for large data sets but has been extended via the method of cross-validation to encompass smaller data sets. |
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Keywords: | binary data cross-validation decision rule interaction variables multiple logistic regression nonparametric prediction |
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