LGSIOct 29, 2024

Faster Local Solvers for Graph Diffusion Equations

arXiv:2410.21634v22 citationsh-index: 2NIPS
Originality Incremental advance
AI Analysis

This addresses the need for faster graph analysis in applications like clustering and neural network training, though it is an incremental improvement over existing local solvers.

The paper tackled the problem of slow computation for graph diffusion equations by introducing a novel local solver framework, achieving up to a 100-fold speed improvement in obtaining approximate diffusion vectors.

Efficient computation of graph diffusion equations (GDEs), such as Personalized PageRank, Katz centrality, and the Heat kernel, is crucial for clustering, training neural networks, and many other graph-related problems. Standard iterative methods require accessing the whole graph per iteration, making them time-consuming for large-scale graphs. While existing local solvers approximate diffusion vectors through heuristic local updates, they often operate sequentially and are typically designed for specific diffusion types, limiting their applicability. Given that diffusion vectors are highly localizable, as measured by the participation ratio, this paper introduces a novel framework for approximately solving GDEs using a local diffusion process. This framework reveals the suboptimality of existing local solvers. Furthermore, our approach effectively localizes standard iterative solvers by designing simple and provably sublinear time algorithms. These new local solvers are highly parallelizable, making them well-suited for implementation on GPUs. We demonstrate the effectiveness of our framework in quickly obtaining approximate diffusion vectors, achieving up to a hundred-fold speed improvement, and its applicability to large-scale dynamic graphs. Our framework could also facilitate more efficient local message-passing mechanisms for GNNs.

Code Implementations1 repo
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