International audienceSelf-similarity has become a well-established modeling framework in several fields of application and its multivariate formulation is of ever-increasing importance in the Big Data era. Multivariate Hurst exponent estimation has thus received a great deal of attention recently , with wavelet eigenvalue-based regression becoming a focal point. The present work tackles the issue of the presence of significant finite-sample bias in wavelet eigenvalue regression stemming from the eigenvalue repulsion effect, whose origin and impact are analyzed and quantified. Furthermore, an original wavelet domain bias reduction technique is developed assuming a single multivariate time series is available. The protocol consists of a boot...
In order to estimate the Hurst parameter of Internet traffic data, it has been recently proposed a l...
In this paper, we propose a method using continuous wavelets to study the multivariate fractio...
[INS-R9802] Searching for similarity in time series finds still broader applications in data mining....
International audienceSelf-similarity has become a well-established modeling framework in several fi...
Self-similarity has been widely used to model scale-free dynamics, with significant successes in num...
International audienceIn the modern world of "Big Data," dynamic signals are often multivariate and ...
International audienceThe self-similarity paradigm enables the analysis of scale-free temporal dynam...
Nowadays, because of the massive and systematic deployment of sensors, systems are routinely monitor...
International audienceBecause of the ever-increasing collections of multivariate data, multivariate ...
International audienceMultivariate selfsimilarity has become a classical tool to analyze collections...
Scale-free dynamics commonly appear in individual components of multivariate data. Yet, while the be...
While scale invariance is commonly observed in each component of real world multivariate signals, it...
International audienceIn the modern world, systems are routinely monitored by multiple sensors, gene...
In order to estimate the Hurst parameter of Internet traffic data, it has been recently proposed a l...
In this paper, we propose a method using continuous wavelets to study the multivariate fractio...
[INS-R9802] Searching for similarity in time series finds still broader applications in data mining....
International audienceSelf-similarity has become a well-established modeling framework in several fi...
Self-similarity has been widely used to model scale-free dynamics, with significant successes in num...
International audienceIn the modern world of "Big Data," dynamic signals are often multivariate and ...
International audienceThe self-similarity paradigm enables the analysis of scale-free temporal dynam...
Nowadays, because of the massive and systematic deployment of sensors, systems are routinely monitor...
International audienceBecause of the ever-increasing collections of multivariate data, multivariate ...
International audienceMultivariate selfsimilarity has become a classical tool to analyze collections...
Scale-free dynamics commonly appear in individual components of multivariate data. Yet, while the be...
While scale invariance is commonly observed in each component of real world multivariate signals, it...
International audienceIn the modern world, systems are routinely monitored by multiple sensors, gene...
In order to estimate the Hurst parameter of Internet traffic data, it has been recently proposed a l...
In this paper, we propose a method using continuous wavelets to study the multivariate fractio...
[INS-R9802] Searching for similarity in time series finds still broader applications in data mining....