Author:
Stinchcombe Maxwell B.,White Halbert
Abstract
The nonparametric and the nuisance parameter approaches
to consistently testing statistical models are both attempts
to estimate topological measures of distance between a
parametric and a nonparametric fit, and neither dominates
in experiments. This topological unification allows us
to greatly extend the nuisance parameter approach. How
and why the nuisance parameter approach works and how it
can be extended bear closely on recent developments in
artificial neural networks. Statistical content is provided
by viewing specification tests with nuisance parameters
as tests of hypotheses about Banach-valued random elements
and applying the Banach central limit theorem and law of
iterated logarithm, leading to simple procedures that can
be used as a guide to when computationally more elaborate
procedures may be warranted.
Publisher
Cambridge University Press (CUP)
Subject
Economics and Econometrics,Social Sciences (miscellaneous)
Cited by
224 articles.
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