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Registro 1 de 2, Base de información Bciucla |
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Información de existencia
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Idioma:
Inglés
Palabras Claves:
ASYMPTOTICALLY PIVOTAL,
COVARIANCE,
FULLY DISCRETE,
FULLY SYMMETRY,
SEPARABILITY |
Resumen
We propose a new nonparametric test to test for symmetry and separability of space-time covariance functions. Unlike the existing nonparametric tests, our test has the attractive convenience of being free of choosing any user-chosen number or smoothing parameter. The asymptotic null distributions of the test statistics are free of nuisance parameters and the critical values have been tabulated in the literature. From a practical point of view, our test is easy to implement and can be readily used by the practitioner. A Monte-Carlo experiment and real data analysis illustrate the finite sample performance of the new test. |
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Registro 2 de 2, Base de información Bciucla |
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Información de existencia
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Idioma:
Inglés
Palabras Claves:
APPROXIMATE DESIGN,
COVARIANCE FUNCTION,
EXACT DESIGN,
MULTIPLICATIVE ALGORITHM |
Resumen
We study a new approach to determine optimal designs, exact or approximate, both for the uncorrelated case and when the responses may be correlated. A simple version of this method is based on transforming design points on a finite interval to proportions of the interval. Methods for determining optimal design weights can therefore be used to determine optimal values of these proportions. We explore the potential of this method in a range of examples encompassing linear and non-linear models, some assuming a correlation structure and some with more than one design variable.
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