Majority dynamics and aggregation of information in social networks

Consider $$n$$n individuals who, by popular vote, choose among $$q \ge 2$$q≥2 alternatives, one of which is “better” than the others. Assume that each individual votes independently at random, and that the probability of voting for the better alternative is larger than the probability of voting for any other. It follows from the law of large numbers that a plurality vote among the $$n$$n individuals would result in the correct outcome, with probability approaching one exponentially quickly as $$n \rightarrow \infty $$n→∞. Our interest in this article is in a variant of the process above where, after forming their initial opinions, the voters update their decisions based on some interaction with their neighbors in a social network. Our main example is “majority dynamics”, in which each voter adopts the most popular opinion among its friends. The interaction repeats for some number of rounds and is then followed by a population-wide plurality vote. The question we tackle is that of “efficient aggregation of information”: in which cases is the better alternative chosen with probability approaching one as $$n \rightarrow \infty $$n→∞? Conversely, for which sequences of growing graphs does aggregation fail, so that the wrong alternative gets chosen with probability bounded away from zero? We construct a family of examples in which interaction prevents efficient aggregation of information, and give a condition on the social network which ensures that aggregation occurs. For the case of majority dynamics we also investigate the question of unanimity in the limit. In particular, if the voters’ social network is an expander graph, we show that if the initial population is sufficiently biased towards a particular alternative then that alternative will eventually become the unanimous preference of the entire population.

[1]  Elchanan Mossel,et al.  Asymptotic learning on Bayesian social networks , 2012, Probability Theory and Related Fields.

[2]  Johannes Gehrke,et al.  Gossip-based computation of aggregate information , 2003, 44th Annual IEEE Symposium on Foundations of Computer Science, 2003. Proceedings..

[3]  N. Alon,et al.  The Probabilistic Method: Alon/Probabilistic , 2008 .

[4]  Eric Goles Ch.,et al.  Periodic behaviour of generalized threshold functions , 1980, Discret. Math..

[5]  Gil Kalai Social Choice and Threshold Phenomena , 2001 .

[6]  Elchanan Mossel,et al.  From Agreement to Asymptotic Learning , 2011, 1105.4765.

[7]  Matthew O. Jackson,et al.  Naïve Learning in Social Networks and the Wisdom of Crowds , 2010 .

[8]  Colin McDiarmid,et al.  Surveys in Combinatorics, 1989: On the method of bounded differences , 1989 .

[9]  Elchanan Mossel,et al.  Sharp Thresholds for Monotone Non-Boolean Functions and Social Choice Theory , 2010, Math. Oper. Res..

[10]  C. D. Howard,et al.  Zero-temperature ising spin dynamics on the homogeneous tree of degree three , 2000, Journal of Applied Probability.

[11]  Eli Berger Dynamic Monopolies of Constant Size , 2001, J. Comb. Theory, Ser. B.

[12]  Gil Kalai,et al.  NOTES AND COMMENTS: SOCIAL INDETERMINACY , 2004 .

[13]  L. Russo An approximate zero-one law , 1982 .

[14]  S. Goyal,et al.  Learning from neighbours , 1998 .

[15]  M. Degroot Reaching a Consensus , 1974 .

[16]  M. Birkner,et al.  Blow-up of semilinear PDE's at the critical dimension. A probabilistic approach , 2002 .

[17]  A. Montanari,et al.  Majority dynamics on trees and the dynamic cavity method , 2009, 0907.0449.

[18]  Nicolas de Condorcet Essai Sur L'Application de L'Analyse a la Probabilite Des Decisions Rendues a la Pluralite Des Voix , 2009 .

[19]  G. Kalai,et al.  Every monotone graph property has a sharp threshold , 1996 .

[20]  R. Schonmann,et al.  Stretched Exponential Fixation in Stochastic Ising Models at Zero Temperature , 2002 .

[21]  B. Efron,et al.  The Jackknife Estimate of Variance , 1981 .

[22]  Rajeev Motwani,et al.  Estimating Aggregates on a Peer-to-Peer Network , 2003 .

[23]  Noga Alon,et al.  The Probabilistic Method , 2015, Fundamentals of Ramsey Theory.

[24]  M - Estimating Aggregates on a Peer-to-Peer Network , 2003 .

[25]  Elchanan Mossel,et al.  Complete characterization of functions satisfying the conditions of Arrow’s theorem , 2009, Soc. Choice Welf..

[26]  Devavrat Shah,et al.  Gossip Algorithms , 2009, Found. Trends Netw..

[27]  Nathan Linial,et al.  The influence of variables on Boolean functions , 1988, [Proceedings 1988] 29th Annual Symposium on Foundations of Computer Science.

[28]  M. Talagrand On Russo's Approximate Zero-One Law , 1994 .

[29]  N. Linial,et al.  Expander Graphs and their Applications , 2006 .