Limiting values of large deviation probabilities of quadratic statistics
Application of exact Bahadur efficiencies in testing theory or exact inaccuracy rates in estimation theory needs evaluation of large deviation probabilities. Because of the complexity of the expressions, frequently a local limit of the nonlocal measure is considered. Local limits of large deviation probabilities of general quadratic statistics are obtained by relating them to large deviation probabilities of sums of k-dimensional random vectors. The results are applied, e.g., to generalized Cramér-von Mises statistics, including the Anderson-Darling statistic, Neyman's smooth tests, and likelihood ratio tests.
Year of publication: |
1990
|
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Authors: | Jeurnink, G. A. M. ; Kallenberg, W. C. M. |
Published in: |
Journal of Multivariate Analysis. - Elsevier, ISSN 0047-259X. - Vol. 35.1990, 2, p. 168-185
|
Publisher: |
Elsevier |
Keywords: | exact Bahadur efficiency large deviations generalized Cramer-von Mises statistics quadratic statistics Hilbert-Schmidt operator eigenvalues eigenfunctions Neyman's smooth tests likelihood ratio tests |
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