MAX CUT in Weighted Random Intersection Graphs and Discrepancy of Sparse Random Set Systems

Let $V$ be a set of $n$ vertices, ${\cal M}$ a set of $m$ labels, and let $\mathbf{R}$ be an $m \times n$ matrix of independent Bernoulli random variables with success probability $p$. A random instance $G(V,E,\mathbf{R}^T\mathbf{R})$ of the weighted random intersection graph model is constructed by drawing an edge with weight $[\mathbf{R}^T\mathbf{R}]_{v,u}$ between any two vertices $u,v$ for which this weight is larger than 0. In this paper we study the average case analysis of Weighted Max Cut, assuming the input is a weighted random intersection graph, i.e. given $G(V,E,\mathbf{R}^T\mathbf{R})$ we wish to find a partition of $V$ into two sets so that the total weight of the edges having one endpoint in each set is maximized. We initially prove concentration of the weight of a maximum cut of $G(V,E,\mathbf{R}^T\mathbf{R})$ around its expected value, and then show that, when the number of labels is much smaller than the number of vertices, a random partition of the vertices achieves asymptotically optimal cut weight with high probability (whp). Furthermore, in the case $n=m$ and constant average degree, we show that whp, a majority type algorithm outputs a cut with weight that is larger than the weight of a random cut by a multiplicative constant strictly larger than 1. Then, we highlight a connection between the computational problem of finding a weighted maximum cut in $G(V,E,\mathbf{R}^T\mathbf{R})$ and the problem of finding a 2-coloring with minimum discrepancy for a set system $\Sigma$ with incidence matrix $\mathbf{R}$. We exploit this connection by proposing a (weak) bipartization algorithm for the case $m=n, p=\frac{\Theta(1)}{n}$ that, when it terminates, its output can be used to find a 2-coloring with minimum discrepancy in $\Sigma$. Finally, we prove that, whp this 2-coloring corresponds to a bipartition with maximum cut-weight in $G(V,E,\mathbf{R}^T\mathbf{R})$.

[1]  Nikhil Bansal,et al.  On the discrepancy of random low degree set systems , 2018, SODA.

[2]  Conrado Martínez,et al.  The MAX-CUT of sparse random graphs , 2012, SODA.

[3]  Zsolt Tuza,et al.  Maximum cuts and largest bipartite subgraphs , 1993, Combinatorial Optimization.

[4]  Paul G. Spirakis,et al.  Efficient Approximation Algorithms in Random Intersection Graphs , 2018, Handbook of Approximation Algorithms and Metaheuristics.

[5]  Rebecca Hoberg,et al.  A Fourier-Analytic Approach for the Discrepancy of Random Set Systems , 2018, SODA.

[6]  Katarzyna Rybarczyk,et al.  Equivalence of a random intersection graph and G(n,p) , 2009, Random Struct. Algorithms.

[7]  Mohammad Taghi Hajiaghayi,et al.  Random MAX SAT, random MAX CUT, and their phase transitions , 2003, SODA '03.

[8]  Shachar Lovett,et al.  On the Beck-Fiala Conjecture for Random Set Systems , 2015, Electron. Colloquium Comput. Complex..

[9]  Martin Grötschel,et al.  An Application of Combinatorial Optimization to Statistical Physics and Circuit Layout Design , 1988, Oper. Res..

[10]  James Allen Fill,et al.  Random intersection graphs when m= w (n): an equivalence theorem relating the evolution of the G ( n, m, p ) and G ( n,P /italic>) models , 2000 .

[11]  JOSEP DÍAZ,et al.  A survey of graph layout problems , 2002, CSUR.

[12]  Cristopher Moore,et al.  MAX k‐CUT and approximating the chromatic number of random graphs , 2003, Random Struct. Algorithms.

[13]  James Allen Fill,et al.  Random intersection graphs when m=omega(n): An equivalence theorem relating the evolution of the G(n, m, p) and G(n, p) models , 2000, Random Struct. Algorithms.

[14]  Mihalis Yannakakis,et al.  Optimization, approximation, and complexity classes , 1991, STOC '88.

[15]  Anusch Taraz,et al.  Coloring Random Intersection Graphs and Complex Networks , 2008, SIAM J. Discret. Math..

[16]  C. Stein Approximate computation of expectations , 1986 .

[17]  Thomas Zeugmann,et al.  Clustering Pairwise Distances with Missing Data: Maximum Cuts Versus Normalized Cuts , 2006, Discovery Science.

[18]  Andrea Montanari,et al.  Extremal Cuts of Sparse Random Graphs , 2015, ArXiv.

[19]  David Gamarnik,et al.  Combinatorial approach to the interpolation method and scaling limits in sparse random graphs , 2010, STOC '10.

[20]  Edward R. Scheinerman,et al.  On Random Intersection Graphs: The Subgraph Problem , 1999, Combinatorics, Probability and Computing.

[21]  Paul G. Spirakis,et al.  Simple and Efficient Greedy Algorithms for Hamilton Cycles in Random Intersection Graphs , 2005, ISAAC.

[22]  Erhard Godehardt,et al.  Recent Progress in Complex Network Analysis: Models of Random Intersection Graphs , 2013, ECDA.