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MR ZblVíšek, Jan Ámos. Adaptive estimation in linear regression model. II. Asymptotic normality. Kybernetika, Tome 28 (1992) no. 2, pp. 100-119. http://geodesic.mathdoc.fr/item/KYB_1992_28_2_a2/
@article{KYB_1992_28_2_a2,
author = {V{\'\i}\v{s}ek, Jan \'Amos},
title = {Adaptive estimation in linear regression model. {II.} {Asymptotic} normality},
journal = {Kybernetika},
pages = {100--119},
year = {1992},
volume = {28},
number = {2},
mrnumber = {1169213},
zbl = {0792.62034},
language = {en},
url = {http://geodesic.mathdoc.fr/item/KYB_1992_28_2_a2/}
}
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