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In this article we tackle the problem of inverse non linear ill-posed
problems from a statistical point of view. We discuss the problem
of estimating an indirectly observed function, without prior
knowledge of its regularity,
based on noisy observations. For this we
consider two
approaches: one based on the Tikhonov regularization procedure, and
another one based on model selection methods for both ordered and non
ordered subsets. In each case
we prove consistency of the estimators and show...
Let be a distribution function (d.f) in the domain of attraction of an extreme value distribution ; it is well-known that , where is the d.f of the excesses over , converges, when tends to , the end-point of , to , where is the d.f. of the Generalized Pareto Distribution. We provide conditions that ensure that there exists, for , a function which verifies and is such that converges to faster than .
Let F be a distribution function (d.f) in the domain of attraction of an extreme value distribution ; it is well-known that Fu(x), where Fu is the d.f of the excesses over u, converges, when u tends to s+(F), the end-point of F, to , where is the d.f. of the Generalized Pareto Distribution.
We provide conditions that ensure that there exists, for , a function Λ which verifies and is such that
converges to 0 faster than
.
Approximations to the critical values for tests for multiple changes in location models are obtained through permutation tests principle. Theoretical results say that the approximations based on the limit distribution and the permutation distribution of the test statistics behave in the same way in the limit. However, the results of simulation study show that the permutation tests behave considerably better than the corresponding tests based on the asymptotic critical value.
This paper deals with the problem of estimating the level sets L(c) = {F(x) ≥ c}, with c ∈ (0,1), of an unknown distribution function F on ℝ+2. A plug-in approach is followed. That is, given a consistent estimator Fn of F, we estimate L(c) by Ln(c) = {Fn(x) ≥ c}. In our setting, non-compactness property is a priori required for the level sets to estimate. We state consistency results with respect to the Hausdorff distance and the volume of the symmetric difference. Our results are motivated by...
In this paper we obtain root-n consistency and functional central limit
theorems in weighted L1-spaces for plug-in estimators of the
two-step transition density in the classical stationary linear autoregressive
model of order one, assuming essentially only
that the innovation density has bounded variation.
We also show that plugging in a properly weighted residual-based
kernel estimator for the unknown innovation density
improves on plugging in an unweighted residual-based kernel estimator....
Consider testing whether F = F0 for a continuous cdf on R = (-∞,∞)
and for a random sample X1,..., Xn from F.
We derive expansions of the associated asymptotic power based
on the Cramer-von Mises, Kolmogorov-Smirnov and Kuiper statistics. We provide numerical illustrations using a double-exponential example with a shifted alternative.
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