Abstract
Most work on the asymptotic properties of least absolute
deviations (LAD) estimators makes use of the assumption
that the common distribution of the disturbances has a
density that is both positive and finite at zero. We consider
the implications of weakening this assumption in a number
of regression settings, primarily with a time series orientation.
These models include ones with deterministic and stochastic
trends, and we pay particular attention to the case of
a simple unit root model. The way in which the conventional
assumption on the error distribution is modified is motivated
in part by N.V. Smirnov's work on domains of attraction
in the asymptotic theory of sample quantiles. The approach
adopted usually allows for simple characterizations (often
featuring a single parameter, γ), of both the shapes of
the limiting distributions of the LAD estimators and their
convergence rates. The present paper complements the closely
related recent work of K. Knight.
Publisher
Cambridge University Press (CUP)
Subject
Economics and Econometrics,Social Sciences (miscellaneous)
Cited by
15 articles.
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