peer reviewedNetwork Coordinate Systems (NCS) are promising techniques to predict unknown network distances from a limited number of measurements. Most NCS algorithms are based on metric space embedding and suffer from the inability to represent distance asymmetries and Triangle Inequality Violations (TIVs). To overcome these drawbacks, we formulate the problem of network distance prediction as guessing the missing elements of a distance matrix and solve it by matrix factorization. A distinct feature of our approach, called Decentralized Matrix Factorization (DMF), is that it is fully decentralized. The factorization of the incomplete distance matrix is collaboratively and iteratively done at all nodes with each node retrieving on...
Part 7: Network MappingInternational audienceNetwork Coordinate System (NCS) is an efficient and sca...
In large-scale networks, full-mesh active probing of end-to-end performance metrics is infeasible. M...
Abstract — Predictive methods for learning network distances are often more desirable than direct pe...
International audienceNetwork Coordinate Systems (NCS) are promising techniques to predict unknown n...
The knowledge of end-to-end network distances is essential to many Internet applications. As active...
Abstract—The knowledge of end-to-end network distances is essential to many Internet applications. A...
Abstract—The knowledge of end-to-end network distances is essential to many Internet applications. A...
In this paper, we propose a model for representing and predicting distances in large-scale networks ...
In this paper, we propose a model for representing and predicting distances in large-scale networks ...
This is the author accepted manuscript. The final version is available from IEEE via the DOI in this...
Many distributed applications, such as BitTorrent, need to know the distance between each pair of ne...
PublishedKnowledge of end-to-end network distances is essential to many service-oriented application...
Network distance, measured as round-trip latency be-tween hosts, is important for the performance of...
Abstract—Network coordinates (NC) system is an efficient mechanism for Internet distance prediction ...
Landmark-based architecture has been commonly adopted in the networking community as a mechanism to ...
Part 7: Network MappingInternational audienceNetwork Coordinate System (NCS) is an efficient and sca...
In large-scale networks, full-mesh active probing of end-to-end performance metrics is infeasible. M...
Abstract — Predictive methods for learning network distances are often more desirable than direct pe...
International audienceNetwork Coordinate Systems (NCS) are promising techniques to predict unknown n...
The knowledge of end-to-end network distances is essential to many Internet applications. As active...
Abstract—The knowledge of end-to-end network distances is essential to many Internet applications. A...
Abstract—The knowledge of end-to-end network distances is essential to many Internet applications. A...
In this paper, we propose a model for representing and predicting distances in large-scale networks ...
In this paper, we propose a model for representing and predicting distances in large-scale networks ...
This is the author accepted manuscript. The final version is available from IEEE via the DOI in this...
Many distributed applications, such as BitTorrent, need to know the distance between each pair of ne...
PublishedKnowledge of end-to-end network distances is essential to many service-oriented application...
Network distance, measured as round-trip latency be-tween hosts, is important for the performance of...
Abstract—Network coordinates (NC) system is an efficient mechanism for Internet distance prediction ...
Landmark-based architecture has been commonly adopted in the networking community as a mechanism to ...
Part 7: Network MappingInternational audienceNetwork Coordinate System (NCS) is an efficient and sca...
In large-scale networks, full-mesh active probing of end-to-end performance metrics is infeasible. M...
Abstract — Predictive methods for learning network distances are often more desirable than direct pe...