Human collective intelligence as distributed Bayesian inference
Peter M. Krafft, Julia Zheng, Wei Pan, Nicol\'as Della Penna, Yaniv, Altshuler, Erez Shmueli, Joshua B. Tenenbaum, Alex Pentland

TL;DR
This paper introduces a new analytical framework suggesting that human groups form shared beliefs through distributed Bayesian inference, demonstrating how collective rationality emerges from individual decision mechanisms.
Contribution
The paper develops a novel model of human social decision-making based on distributed Bayesian inference, validated with a large dataset from an online trading platform.
Findings
People use popularity as a prior in decision-making.
The individual decision mechanism is boundedly rational.
Collective behavior approximates Thompson sampling, a Bayesian algorithm.
Abstract
Collective intelligence is believed to underly the remarkable success of human society. The formation of accurate shared beliefs is one of the key components of human collective intelligence. How are accurate shared beliefs formed in groups of fallible individuals? Answering this question requires a multiscale analysis. We must understand both the individual decision mechanisms people use, and the properties and dynamics of those mechanisms in the aggregate. As of yet, mathematical tools for such an approach have been lacking. To address this gap, we introduce a new analytical framework: We propose that groups arrive at accurate shared beliefs via distributed Bayesian inference. Distributed inference occurs through information processing at the individual level, and yields rational belief formation at the group level. We instantiate this framework in a new model of human social…
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Taxonomy
TopicsOpinion Dynamics and Social Influence · Complex Network Analysis Techniques · Complex Systems and Time Series Analysis
