Conditional hazard function estimate for functional data with missing at random
This paper deals with a scalar response missing at random (MAR) conditioned by a functional random variable. The main result is to construct the kernel type estimator of the conditional hazard function with the explanatory variable taking values in a semi-metric space and a scalar response missing at random, then we study the uniform almost complete convergence of such estimate under some regularity conditions.
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