DMFSGD: A Decentralized Matrix Factorization Algorithm for Network Distance Prediction
Yongjun Liao, Wei Du, Pierre Geurts, Guy Leduc

TL;DR
This paper introduces DMFSGD, a decentralized matrix factorization algorithm for network distance prediction, which efficiently predicts unmeasured network distances using local measurements without centralized infrastructure.
Contribution
It proposes a novel decentralized matrix factorization method using stochastic gradient descent for network distance prediction, overcoming limitations of Euclidean embedding approaches.
Findings
High accuracy in network delay prediction
Scalability demonstrated on large datasets
Effective in real Internet scenarios
Abstract
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 Factorization by Stochastic Gradient Descent (DMFSGD), is proposed to solve the network distance prediction problem. By letting network nodes exchange…
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