Shared-Endpoint Correlations and Hierarchy in Random Flows on Graphs
Joshua Richland, Alexander Strang

TL;DR
This paper investigates how shared-endpoint correlations in random edge weights influence flow organization in directed graphs, using Gaussian processes to model relationships and deriving exact and approximate correlations for different kernels.
Contribution
It introduces a novel framework linking endpoint attributes, Gaussian process kernels, and flow organization, with exact correlation calculations for squared exponential kernels and approximations for Matérn kernels.
Findings
Smoother attribute-flow relationships lead to more organized flows.
Exact shared-endpoint correlation computed for squared exponential kernel.
Asymptotic behavior characterized for smooth and rough function regimes.
Abstract
We analyze the correlation between randomly chosen edge weights on neighboring edges in a directed graph. This shared-endpoint correlation controls the expected organization of randomly drawn edge flows when the flow on each edge is conditionally independent of the flows on other edges given its endpoints. To model different relationships between endpoints and flow, we draw edge weights in two stages. First, assign a random description to the vertices by sampling random attributes at each vertex. Then, sample a Gaussian process (GP) and evaluate it on the pair of endpoints connected by each edge. We model different relationships between endpoint attributes and flow by varying the kernel associated with the GP. We then relate the expected flow structure to the smoothness class containing functions generated by the GP. We compute the exact shared-endpoint correlation for the squared…
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Taxonomy
TopicsComplex Network Analysis Techniques · Data Management and Algorithms
