Flow Metrics on Graphs

12/10/2021
by   Lior Kalman, et al.
0

Given a graph with non-negative edge weights, there are various ways to interpret the edge weights and induce a metric on the vertices of the graph. A few examples are shortest-path, when interpreting the weights as lengths; resistance distance, when thinking of the graph as an electrical network and the weights are resistances; and the inverse of minimum st-cut, when thinking of the weights as capacities. It is known that the 3 above-mentioned metrics can all be derived from flows, when formalizing them as convex optimization problems. This key observation led us to studying a family of metrics that are derived from flows, which we call flow metrics, that gives a natural interpolation between the above metrics using a parameter p. We make the first steps in studying the flow metrics, and mainly focus on two aspects: (a) understanding basic properties of the flow metrics, either as an optimization problem (e.g. finding relations between the flow problem and the dual potential problem) and as a metric function (e.g. understanding their structure and geometry); and (b) considering methods for reducing the size of graphs, either by removing vertices or edges while approximating the flow metrics, and thus attaining a smaller instance that can be used to accelerate running time of algorithms and reduce their storage requirements. Our main result is a lower bound for the number of edges required for a resistance sparsifier in the worst case. Furthermore, we present a method for reducing the number of edges in a graph while approximating the flow metrics, by utilizing a method of [Cohen and Peng, 2015] for reducing the size of matrices. In addition, we show that the flow metrics satisfy a stronger version of the triangle inequality, which gives some information about their structure and geometry.

READ FULL TEXT
research
07/05/2022

Width Helps and Hinders Splitting Flows

Minimum flow decomposition (MFD) is the NP-hard problem of finding a sma...
research
10/26/2018

Probabilistic Analysis of Optimization Problems on Generalized Random Shortest Path Metrics

Simple heuristics often show a remarkable performance in practice for op...
research
07/15/2020

A family of metrics from the truncated smoothing of Reeb graphs

In this paper, we introduce an extension of smoothing on Reeb graphs, wh...
research
01/31/2022

Max Flow Vitality of Edges and Vertices in Undirected Planar Graphs

We study the problem of computing the vitality with respect to max flow ...
research
12/25/2018

On (1+ε)-approximate problem kernels for the Rural Postman Problem

Given a graph G=(V,E) with edge weights ω E→ N∪{0} and a subset R⊆ E of ...
research
12/13/2021

Factorization and pseudofactorization of weighted graphs

For unweighted graphs, finding isometric embeddings is closely related t...
research
11/17/2022

More Effective Centrality-Based Attacks on Weighted Networks

Only when understanding hackers' tactics, can we thwart their attacks. W...

Please sign up or login with your details

Forgot password? Click here to reset