Estimation of flow volumes in computer networks involves the use of data that are either highly aggregated or fairly noisy. We address several conceptual and practical aspects of the use of such data for flow volume estimation in this work. The results presented are often of general statistical interest in addition to their application in computer networks context. First, we study the problem of identifiability of joint distribution of flow volumes in a computer network from aggregate (lower dimensional) measurements collected on its edges. Conceptually, this is a canonical example of a statistical inverse problem. In a significant departure from previous approaches we investigate settings where flow-volumes exhibit dependence. We introduc...
Knowing the distribution of the sizes of traffic flows passing through a network link helps a networ...
International audienceIn the context of network traffic analysis, we address the problem of estimati...
Abstract: Network tomography has been regarded as one of the most promis-ing methodologies for perfo...
Estimation of flow volumes in computer networks involves the use of data that are either highly aggr...
We study the problem of identifiability of distributions of flows on a graph from aggregate measurem...
Understanding the characteristics of traffic flows is crucial for allocating the necessary resources...
textThe primary aim of network tomography is to infer properties of networks from network traffic m...
In the Internet, a statistical perspective of global traffic flows has been considered as an importa...
Social and computer networks permeate our lives. Large networks, such as the Internet, the World Wid...
In this paper, we develop a framework to estimate network flow length distributions in terms of the ...
Statistical information about the flow sizes in the traffic passing through a network link helps a n...
In the context of network traffic analysis, we address the problem of estimating the tail index of f...
This work considers a diffusion network responding to streaming data, and studies the problem of ide...
In a network where the cost of flow across an edge is nonlinear in the volume of flow, and where sou...
The histogram of network flow sizes is an important yet difficult metric to estimate in network moni...
Knowing the distribution of the sizes of traffic flows passing through a network link helps a networ...
International audienceIn the context of network traffic analysis, we address the problem of estimati...
Abstract: Network tomography has been regarded as one of the most promis-ing methodologies for perfo...
Estimation of flow volumes in computer networks involves the use of data that are either highly aggr...
We study the problem of identifiability of distributions of flows on a graph from aggregate measurem...
Understanding the characteristics of traffic flows is crucial for allocating the necessary resources...
textThe primary aim of network tomography is to infer properties of networks from network traffic m...
In the Internet, a statistical perspective of global traffic flows has been considered as an importa...
Social and computer networks permeate our lives. Large networks, such as the Internet, the World Wid...
In this paper, we develop a framework to estimate network flow length distributions in terms of the ...
Statistical information about the flow sizes in the traffic passing through a network link helps a n...
In the context of network traffic analysis, we address the problem of estimating the tail index of f...
This work considers a diffusion network responding to streaming data, and studies the problem of ide...
In a network where the cost of flow across an edge is nonlinear in the volume of flow, and where sou...
The histogram of network flow sizes is an important yet difficult metric to estimate in network moni...
Knowing the distribution of the sizes of traffic flows passing through a network link helps a networ...
International audienceIn the context of network traffic analysis, we address the problem of estimati...
Abstract: Network tomography has been regarded as one of the most promis-ing methodologies for perfo...