EXTENSIONS OF THE SUFFICIENT DIMENSION REDUCTION

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  The talk will cover two extensions of the sufficient dimensional reduction method.In one project,we develop a semiparametric functional single index model to study the relation between a univariate response and multiple functional covariates.
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