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Open AccessJournal ArticleDOI

Variance and Covariance of Distributions on Graphs

- 01 May 2022 - 
- Vol. 64, Iss: 2, pp 343-359
TLDR
In this article , the authors developed a theory to measure the variance and covariance of probability distributions defined on the nodes of a graph, which takes into account the distance between nodes.
Abstract
We develop a theory to measure the variance and covariance of probability distributions defined on the nodes of a graph, which takes into account the distance between nodes. Our approach generalizes the usual (co)variance to the setting of weighted graphs and retains many of its intuitive and desired properties. Interestingly, we find that a number of famous concepts in graph theory and network science can be reinterpreted in this setting as variances and covariances of particular distributions. As a particular application, we define the maximum variance problem on graphs with respect to the effective resistance distance, and we characterize the solutions to this problem both numerically and theoretically. We show how the maximum variance distribution is concentrated on the boundary of the graph, and illustrate this in the case of random geometric graphs. Our theoretical results are supported by a number of experiments on a network of mathematical concepts, where we use the variance and covariance as analytical tools to study the (co)occurrence of concepts in scientific papers with respect to the (network) relations between these concepts.

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Citations
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Generalized Euclidean Measure to Estimate Distances on Multilayer Networks

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References
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TL;DR: The field of signal processing on graphs merges algebraic and spectral graph theoretic concepts with computational harmonic analysis to process high-dimensional data on graphs as discussed by the authors, which are the analogs to the classical frequency domain and highlight the importance of incorporating the irregular structures of graph data domains when processing signals on graphs.
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A user's guide to functional diversity indices

TL;DR: This study closely examine functional diversity indices to clarify their accuracy, consistency, and independence, and recommends using the new functional richness indices that consider intraspecific variability and thus empty space in the functional niche space.