Wisdom of Crowds Through Myopic Self-Confidence Adaptation
Giacomo Como, Fabio Fagnani, Anton Proskurnikov

TL;DR
This paper explores how groups can improve collective decision accuracy through iterative opinion pooling, analyzing the influence of individual strategies and influence weights in a game-theoretic framework.
Contribution
It introduces a game-theoretic model of opinion dynamics with influence weights, characterizes Nash equilibria, and proves convergence of asynchronous best-response dynamics.
Findings
Characterization of Pareto frontier and Nash equilibria in influence weight game
Proof of convergence of asynchronous best-response dynamics to strict Nash equilibria
Insights into how influence weights affect collective estimate accuracy
Abstract
The wisdom of crowds is an umbrella term for phenomena suggesting that the collective judgment or decision of a large group can be more accurate than the individual judgments or decisions of the group members. A well-known example illustrating this concept is the competition at a country fair described by Galton, where the median value of the individual guesses about the weight of an ox resulted in an astonishingly accurate estimate of the actual weight. This phenomenon resembles classical results in probability theory and relies on independent decision-making. The accuracy of the group's final decision can be significantly reduced if the final agents' opinions are driven by a few influential agents. In this paper, we consider a group of agents who initially possess uncorrelated and unbiased noisy measurements of a common state of the world. Assume these agents iteratively update…
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Taxonomy
MethodsSparse Evolutionary Training
