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On the Performance of Kernel Estimators for High-Dimensional, Sparse Binary Data

โœ Scribed by B. Grund; P. Hall


Publisher
Elsevier Science
Year
1993
Tongue
English
Weight
741 KB
Volume
44
Category
Article
ISSN
0047-259X

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โœฆ Synopsis


We develop mathematical models for high-dimensional binary distributions, and apply them to the study of smoothing methods for sparse binary data. Specifically, we treat the kernel-type estimator developed by Aitchison and Aitken (Biometrika 63 (1976), 413-420). Our analysis is of an asymptotic nature. It permits a concise account of the way in which data dimension. data sparseness, and distribution smoothness interact to determine the over-all performance of smoothing methods. Previous work on this problem has been hampered by the requirement that the data dimension be fixed. Our approach allows dimension to increase with sample size. so that the theoretical model may accurately reflect the situations encountered in practice; e.g., approximately 20 dimensions and 40 data points. We compare the performance of kernel estimators with that of the cell frequency estimator, and describe the effectiveness of cross-validation. ' 1993 Academic Press. Inc


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