Functional data analysis for density functions by transformation to a Hilbert space

Annals of Statistics - Tập 44 Số 1 - 2016
Alexander Petersen1,2, Hans‐Georg Müller1,2
1DEPARTMENT OF STATISTICS UNIVERSITY OF CALIFORNIA, DAVIS MATHEMATICAL SCIENCES BUILDING 4118 399 CROCKER LANE ONE SHIELDS AVENUE DAVIS, CALIFORNIA 95616 USA
2University of California, Davis

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