International audienceWhile scale invariance is commonly observed in each component of real world multivariate signals, it is also often the case that the inter-component correlation structure is not fractally connected, i.e., its scaling behavior is not determined by that of the individual components. To model this situation in a versatile manner, we introduce a class of multivariate Gaussian stochastic processes called Hadamard fractional Brownian motion (HfBm). Its theoretical study sheds light on the issues raised by the joint requirement of entry-wise scaling and departures from fractal connectivity. An asymptotically normal wavelet-based estimator for its scaling parameter, called the Hurst matrix, is proposed, as well as asymptotical...
This review presents and compares different multiscale representations, based on either deterministi...
International audienceIn this paper, we construct the wavelet eigenvalue regression methodology (Abr...
International audienceUsing the multivariate long memory (LM) model and Taylor expansions, we find t...
International audienceWhile scale invariance is commonly observed in each component of real world mu...
International audienceScale-free dynamics commonly appear in individual components of multivariate d...
International audienceWithin the framework of long memory multivariate processes, fractal connectivi...
International audienceSince the pioneering work by Mandelbrot and Van Ness in 1968, the fractional B...
International audienceIn the modern world of "Big Data," dynamic signals are often multivariate and ...
Physicists and mathematicians are intensely studying fractal sets of fractal curves. Mandelbrot advo...
International audienceA variety of resting state neuroimaging data tend to exhibit fractal behavior ...
Abstract-The fractional Brownian motion (fBm) model has proven to be valuable in modeling many natur...
International audienceIn the modern world, systems are routinely monitored by multiple sensors, gene...
The multifractal spectrum characterizes the scaling and singularity structures of signals and proves...
Fractal behavior and long-range dependence have been observed in an astonishing number of physical, ...
In this paper we analyze a wavelet based method for the estimation of the Hurst parameter of synthet...
This review presents and compares different multiscale representations, based on either deterministi...
International audienceIn this paper, we construct the wavelet eigenvalue regression methodology (Abr...
International audienceUsing the multivariate long memory (LM) model and Taylor expansions, we find t...
International audienceWhile scale invariance is commonly observed in each component of real world mu...
International audienceScale-free dynamics commonly appear in individual components of multivariate d...
International audienceWithin the framework of long memory multivariate processes, fractal connectivi...
International audienceSince the pioneering work by Mandelbrot and Van Ness in 1968, the fractional B...
International audienceIn the modern world of "Big Data," dynamic signals are often multivariate and ...
Physicists and mathematicians are intensely studying fractal sets of fractal curves. Mandelbrot advo...
International audienceA variety of resting state neuroimaging data tend to exhibit fractal behavior ...
Abstract-The fractional Brownian motion (fBm) model has proven to be valuable in modeling many natur...
International audienceIn the modern world, systems are routinely monitored by multiple sensors, gene...
The multifractal spectrum characterizes the scaling and singularity structures of signals and proves...
Fractal behavior and long-range dependence have been observed in an astonishing number of physical, ...
In this paper we analyze a wavelet based method for the estimation of the Hurst parameter of synthet...
This review presents and compares different multiscale representations, based on either deterministi...
International audienceIn this paper, we construct the wavelet eigenvalue regression methodology (Abr...
International audienceUsing the multivariate long memory (LM) model and Taylor expansions, we find t...