In studying the scale invariance of an empirical time series a twofold problem arises: it is necessary to test the series for self-similarity and, once passed such a test, the goal becomes to estimate the parameter H0 of self-similarity. The estimation is therefore correct only if the sequence is truly self-similar but in general this is just assumed and not tested in advance. In this paper we suggest a solution for this problem. Given the process {X(t)}, we propose a new test based on the diameter d of the space of the rescaled probability distribution functions of X(t). Two necessary conditions are deduced which contribute to discriminate self-similar processes and a closed formula is provided for the diameter of the fractional Brownian m...
The object of this note is to parallel two properties of stochastic processes: self-similarity (ss) ...
International audienceSelf-similarity has been widely used to model scale-free dynamics, with signif...
Self similarity has taken great interest in computer networks since modeling of Ethernet traffic via...
In studying the scale invariance of an empirical time series a twofold problem arises: it is necessa...
In studying the scale invariance of an empirical time series a twofold problem arises: it is necessa...
A new method is proposed to estimate the self-similarity exponent. Instead of applying finite moment...
This work is concerned with the analysis of self-similar stochastic pro-cesses, where statistical se...
Self-similarity, fractal behaviour and long-range dependence are observed in various branches of phy...
Self-similar stochastic processes are used for stochastic modeling whenever it is expected that long...
Introduction A stochastic process Y (t) is defined as self-similar with self-similarity parameter H...
Introduction A self-similar process is loosely defined as a stochastic process which generates a sa...
on the occasion of his 70th birthday Selfsimilar processes such as fractional Brownian motion are st...
AbstractA self-similar process Z(t) has stationary increments and is invariant in law under the tran...
In a companion paper (see Self-Similarity: Part I—Splines and Operators), we characterized the class...
A stochastic process Y (t) is defined as self-similar with self-similarity parameter H if for any po...
The object of this note is to parallel two properties of stochastic processes: self-similarity (ss) ...
International audienceSelf-similarity has been widely used to model scale-free dynamics, with signif...
Self similarity has taken great interest in computer networks since modeling of Ethernet traffic via...
In studying the scale invariance of an empirical time series a twofold problem arises: it is necessa...
In studying the scale invariance of an empirical time series a twofold problem arises: it is necessa...
A new method is proposed to estimate the self-similarity exponent. Instead of applying finite moment...
This work is concerned with the analysis of self-similar stochastic pro-cesses, where statistical se...
Self-similarity, fractal behaviour and long-range dependence are observed in various branches of phy...
Self-similar stochastic processes are used for stochastic modeling whenever it is expected that long...
Introduction A stochastic process Y (t) is defined as self-similar with self-similarity parameter H...
Introduction A self-similar process is loosely defined as a stochastic process which generates a sa...
on the occasion of his 70th birthday Selfsimilar processes such as fractional Brownian motion are st...
AbstractA self-similar process Z(t) has stationary increments and is invariant in law under the tran...
In a companion paper (see Self-Similarity: Part I—Splines and Operators), we characterized the class...
A stochastic process Y (t) is defined as self-similar with self-similarity parameter H if for any po...
The object of this note is to parallel two properties of stochastic processes: self-similarity (ss) ...
International audienceSelf-similarity has been widely used to model scale-free dynamics, with signif...
Self similarity has taken great interest in computer networks since modeling of Ethernet traffic via...