We construct n-consistent and asymptotically normal estimates for
the finite dimensional regression parameter in the current status linear
regression model, which do not require any smoothing device and are based on
maximum likelihood estimates (MLEs) of the infinite dimensional parameter. We
also construct estimates, again only based on these MLEs, which are arbitrarily
close to efficient estimates, if the generalized Fisher information is finite.
This type of efficiency is also derived under minimal conditions for estimates
based on smooth non-monotone plug-in estimates of the distribution function.
Algorithms for computing the estimates and for selecting the bandwidth of the
smooth estimates with a bootstrap method are provided. The connection with
results in the econometric literature is also pointed out.Comment: 64 pages, 6 figure