grantor: University of TorontoWe propose a new model for network heavy-traffic approximation) based on Ã-Stable self-similar processes, namely the skewed Linear Fractional Stable Noise. The model is long-range dependent and demonstrates more flexibility than existing models in fitting different levels of burstiness and dependence in the data. Nonetheless, it is parsimonious in the number of parameters, which have a direct physical meaning. The marginal distribution of the model is Ã-Stable, and therefore the Generalized Central Limit Theorem can be applied to provide a physical interpretation on how aggregate effects in traffic appear as a superposition of traffic from independent sources. We present an algorithm for the estimatio...
Fluctuations of aggregated connectionless traffic are modelled with the fractional Brownian motion. ...
The paper presents the analysis of the applicability of alpha-stable processes in traffic modelling....
This thesis studies the effect of the traffic bursts in the queue. Knowledge of the queueing behavio...
grantor: University of TorontoWe propose a new model for network heavy-traffic approximati...
The paper analyzes the applicability of α-stable processes in traffic modelling. This study is sugge...
In this paper, we consider parsimonious Gaussian and Stable (heavy-tailed) models, which best captur...
Recent studies suggest that networks should be designed taking into account the long-range dependenc...
The paper describes a new class of stochastic processes, which generalizes the concept of self-simil...
The paper describes a new class of stochastic processes, which generalizes the concept of self-simil...
It has been reported that high-speed communication network traffic exhibits both long-range dependen...
It has been reported that high-speed communication network traffic exhibits both long-range dependen...
It has been reported that high-speed communication network traffic exhibits both long-range dependen...
The paper describes a new class of stochastic processes, which generalizes the concept of self-simil...
The particular statistical properties found in network measurements, namely self-similarity and long...
Fluctuations of aggregated connectionless traffic are modelled with the fractional Brownian motion. ...
Fluctuations of aggregated connectionless traffic are modelled with the fractional Brownian motion. ...
The paper presents the analysis of the applicability of alpha-stable processes in traffic modelling....
This thesis studies the effect of the traffic bursts in the queue. Knowledge of the queueing behavio...
grantor: University of TorontoWe propose a new model for network heavy-traffic approximati...
The paper analyzes the applicability of α-stable processes in traffic modelling. This study is sugge...
In this paper, we consider parsimonious Gaussian and Stable (heavy-tailed) models, which best captur...
Recent studies suggest that networks should be designed taking into account the long-range dependenc...
The paper describes a new class of stochastic processes, which generalizes the concept of self-simil...
The paper describes a new class of stochastic processes, which generalizes the concept of self-simil...
It has been reported that high-speed communication network traffic exhibits both long-range dependen...
It has been reported that high-speed communication network traffic exhibits both long-range dependen...
It has been reported that high-speed communication network traffic exhibits both long-range dependen...
The paper describes a new class of stochastic processes, which generalizes the concept of self-simil...
The particular statistical properties found in network measurements, namely self-similarity and long...
Fluctuations of aggregated connectionless traffic are modelled with the fractional Brownian motion. ...
Fluctuations of aggregated connectionless traffic are modelled with the fractional Brownian motion. ...
The paper presents the analysis of the applicability of alpha-stable processes in traffic modelling....
This thesis studies the effect of the traffic bursts in the queue. Knowledge of the queueing behavio...