Title of article :
Statistical learning theory for fitting multimodal distribution to rainfall data: an application
Author/Authors :
Himadri Ghosh&Prajneshu، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
The promising methodology of the “Statistical Learning Theory” for the estimation of multimodal distribution
is thoroughly studied. The “tail” is estimated through Hill’s, UH and moment methods. The threshold
value is determined by nonparametric bootstrap and the minimum mean square error criterion. Further, the
“body” is estimated by the nonparametric structural risk minimization method of the empirical distribution
function under the regression set-up. As an illustration, rainfall data for the meteorological subdivision of
Orissa, India during the period 1871–2006 are used. It is shown that Hill’s method has performed the best
for tail density. Finally, the combined estimated “body” and “tail” of the multimodal distribution is shown
to capture the multimodality present in the data.
Keywords :
multimodal rainfall distribution , statistical learningtheory , Structural risk minimization principle , Extreme value , Bootstrap technique
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS