AbstractWe study the asymptotic behavior of wavelet coefficients of random processes with long memory. These processes may be stationary or not and are obtained as the output of non-linear filter with Gaussian input. The wavelet coefficients that appear in the limit are random, typically non-Gaussian and belong to a Wiener chaos. They can be interpreted as wavelet coefficients of a generalized self-similar process
A particular class of strong non-Markovian stochastic processes have been studied by using a charact...
International audienceBy using chaos expansion into multiple stochastic integrals, we make a wavelet...
We consider nonparametric estimation of the parameter functions a(i)(.), i = 1, ..., p, of a time-va...
International audienceWe study the asymptotic behavior of wavelet coefficients of random processes w...
We consider stationary processes with long memory which are non-Gaussian and represented a...
International audienceWe consider stationary processes with long memory which are non-Gaussian and r...
By using chaos expansion into multiple stochastic integrals, we make a wavelet analysis of two self-...
This paper addresses the limit distribution of wavelet packet coefficients obtained by decomposing b...
I. Int rod uct io n1) The wavelet transform have been used mainly in the fields of signal processing...
International audienceThis paper is a contribution to the analysis of the statistic al correla- tion...
We study the statistics of wavelet coefficients of non-Gaussian images, focusing mainly on the behav...
. We consider nonparametric estimation of the parameter functions a i (\Delta) , i = 1; : : : ; p ,...
Long memory models have received a significant amount of attention in the theoretical literature as ...
Some convergence issues concerning wavelet multiresolution approximation of random processes are inv...
International audienceMultivariate processes with long-range dependence properties can be encountere...
A particular class of strong non-Markovian stochastic processes have been studied by using a charact...
International audienceBy using chaos expansion into multiple stochastic integrals, we make a wavelet...
We consider nonparametric estimation of the parameter functions a(i)(.), i = 1, ..., p, of a time-va...
International audienceWe study the asymptotic behavior of wavelet coefficients of random processes w...
We consider stationary processes with long memory which are non-Gaussian and represented a...
International audienceWe consider stationary processes with long memory which are non-Gaussian and r...
By using chaos expansion into multiple stochastic integrals, we make a wavelet analysis of two self-...
This paper addresses the limit distribution of wavelet packet coefficients obtained by decomposing b...
I. Int rod uct io n1) The wavelet transform have been used mainly in the fields of signal processing...
International audienceThis paper is a contribution to the analysis of the statistic al correla- tion...
We study the statistics of wavelet coefficients of non-Gaussian images, focusing mainly on the behav...
. We consider nonparametric estimation of the parameter functions a i (\Delta) , i = 1; : : : ; p ,...
Long memory models have received a significant amount of attention in the theoretical literature as ...
Some convergence issues concerning wavelet multiresolution approximation of random processes are inv...
International audienceMultivariate processes with long-range dependence properties can be encountere...
A particular class of strong non-Markovian stochastic processes have been studied by using a charact...
International audienceBy using chaos expansion into multiple stochastic integrals, we make a wavelet...
We consider nonparametric estimation of the parameter functions a(i)(.), i = 1, ..., p, of a time-va...