XFlow: Benchmarking Flow Behaviors over Graphs
Zijian Zhang, Zonghan Zhang, Zhiqian Chen

TL;DR
XFlow introduces a comprehensive benchmark suite and analytical framework for studying diffusion and flow behaviors on graphs, facilitating cross-disciplinary research and algorithm assessment.
Contribution
The paper presents a novel benchmark suite and a generalized analytical framework for flow behaviors on graphs, addressing the lack of unified evaluation tools in this domain.
Findings
Analysis of current models' strengths and weaknesses
Benchmark suite enables consistent algorithm evaluation
Framework supports diverse flow-related tasks
Abstract
The occurrence of diffusion on a graph is a prevalent and significant phenomenon, as evidenced by the spread of rumors, influenza-like viruses, smart grid failures, and similar events. Comprehending the behaviors of flow is a formidable task, due to the intricate interplay between the distribution of seeds that initiate flow propagation, the propagation model, and the topology of the graph. The study of networks encompasses a diverse range of academic disciplines, including mathematics, physics, social science, and computer science. This interdisciplinary nature of network research is characterized by a high degree of specialization and compartmentalization, and the cooperation facilitated by them is inadequate. From a machine learning standpoint, there is a deficiency in a cohesive platform for assessing algorithms across various domains. One of the primary obstacles to current…
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Taxonomy
TopicsComplex Network Analysis Techniques · Data Stream Mining Techniques · Advanced Graph Neural Networks
MethodsDiffusion
