The knowledge of end-to-end network distances is essential to many Internet applications. As active probing of all pairwise distances is infeasible in large-scale networks, a natural idea is to measure a few pairs and to predict the other ones without actually measuring them. This paper formulates the distance prediction problem as matrix completion where unknown entries of an incomplete matrix of pairwise distances are to be predicted. The problem is solvable because strong correlations among network distances exist and cause the constructed distance matrix to be low rank. The new formulation circumvents the well-known drawbacks of existing approaches based on Euclidean embedding. A new algorithm, so-called Decentralized Matrix Factoriza...
Network distance, measured as round-trip latency be-tween hosts, is important for the performance of...
An active line of research in the networking community studies the distance matrix defined by the n...
Low rank matrices approximations have been used in link prediction for networks, which are usually g...
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...
peer reviewedNetwork Coordinate Systems (NCS) are promising techniques to predict unknown network d...
In large-scale networks, full-mesh active probing of end-to-end performance metrics is infeasible. M...
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...
In large-scale networks, full-mesh active probing of end-to-end performance metrics is infeasible. M...
PublishedKnowledge of end-to-end network distances is essential to many service-oriented application...
Abstract — Predictive methods for learning network distances are often more desirable than direct pe...
Many distributed applications, such as BitTorrent, need to know the distance between each pair of ne...
Network distance, measured as round-trip latency be-tween hosts, is important for the performance of...
An active line of research in the networking community studies the distance matrix defined by the n...
Low rank matrices approximations have been used in link prediction for networks, which are usually g...
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...
peer reviewedNetwork Coordinate Systems (NCS) are promising techniques to predict unknown network d...
In large-scale networks, full-mesh active probing of end-to-end performance metrics is infeasible. M...
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...
In large-scale networks, full-mesh active probing of end-to-end performance metrics is infeasible. M...
PublishedKnowledge of end-to-end network distances is essential to many service-oriented application...
Abstract — Predictive methods for learning network distances are often more desirable than direct pe...
Many distributed applications, such as BitTorrent, need to know the distance between each pair of ne...
Network distance, measured as round-trip latency be-tween hosts, is important for the performance of...
An active line of research in the networking community studies the distance matrix defined by the n...
Low rank matrices approximations have been used in link prediction for networks, which are usually g...