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Quantile Methods for Stochastic Frontier Analysis (Paperback)
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Quantile Methods for Stochastic Frontier Analysis (Paperback)
Series: Foundations and Trends (R) in Econometrics
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Quantile Methods for Stochastic Frontier Analysis seeks to merge
two seemingly disparate econometric fields, quantile estimation and
stochastic frontier analysis (SFA). Why might these two fields be
viewed as disparate? Quantiles exist on a continuum of the
distribution; the frontier is a fixed object of it. As will be
seen, these two approaches can, when used properly, be merged to
provide a unified approach to studying a stochastic boundary.
Sections 1 to 5 present the current state of affairs. Section 1
details the very close link between the regression function and the
conditional quantile function, in order to show that the quantile
relation is not some disconnected statistical aspect that lives
independently of our regression specification. This section also
shows what the quantile approach and the Q-estimator actually do,
and we contrast this with what SFA models want to do, using also a
simulated example. Section 2 presents the main characteristics and
properties of the linear Q-estimator when the error term is
independent of the regressors, as a necessary preparation to move
to Section 3, where the authors show how some of these properties
are fundamentally incompatible with the goals and purposes of SFA.
Section 4 discusses recent advances that properly construct the
deterministic frontier. Section 5 moves away from quantile
regression and presents likelihood-based approaches that use
density functions that include as one of their parameters the
probability of the zero-quantile of their distributions. Sections 6
to 9 present a new estimator, but also metrics and insights that
allow to fruitfully use the quantile approach in SFA. Section 6
shows how one can use the Qestimator together with additional
assumptions in order to provide conceptually valid and useful
estimation and inference results in SFMs. Section 7 presents
quantile-dependent measures of efficiency both at the sample level,
and at the individual level, but also how the conditional quantiles
of the distribution of inefficiency can be used to offer a picture
of how individual efficiency scores are distributed around a chosen
quantile of the efficiency distribution. Section 8 proves a
fundamental result: that positive and high values of the composite
error term of production SFA models, are expected to co-exist with
low inefficiency, in a concrete probabilistic sense. Section 9
examines the case of dependence between the error term and the
regressors or other covariates. Section 10 provides an empirical
illustration that showcases the approach of the four previous
Sections, and functions as a guide for detailed applied studies.
Section 11 includes a list of the various open issues as well as
ideas and directions for future research, while Section 12 offers a
short summary and conclusions.
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