资源论文Improved Large-Scale Graph Learning through Ridge Spectral Sparsification

Improved Large-Scale Graph Learning through Ridge Spectral Sparsification

2020-03-20 | |  54 |   45 |   0

Abstract

The representation and learning benefits of methods based on graph Laplacians, such as Laplacian smoothing or harmonic function solution for semi-supervised learning (SSL), are empirically and theoretically well supported. Nonetheless, the exact versions of these methods scale poorly with the number of nodes n of the graph. In this paper, we combine a spectral sparsification routine with Laplacian learning. Given a graph G as input, our algorithm computes a sparsifier in a distributed way in O(n log3 (n)) time, O(m log3 (n)) work and O(n log(n)) memory, using only log(n) rounds of communication. Furthermore, motivated by the regularization often employed in learning algorithms, we show that constructing sparsifiers that preserve the spectru of the Laplacian only up to the regularization lev may drastically reduce the size of the final graph By constructing a spectrally-similar graph, we are able to bound the error induced by the sparsification for a variety of downstream tasks (e.g., SSL) We empirically validate the theoretical guarantees on Amazon co-purchase graph and compare to the state-of-the-art heuristics.

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