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学习做出集体决策:信心升级的影响。

Learning to make collective decisions: the impact of confidence escalation.

机构信息

Cognitive Systems Lab, Control and Intelligent Processing Centre of Excellence, School of Electrical and Computer Engineering, College of Engineering, University of Tehran, Tehran, Iran ; School of Cognitive Science, Institute for Research in Fundamental Sciences (IPM), Tehran, Iran.

出版信息

PLoS One. 2013 Dec 6;8(12):e81195. doi: 10.1371/journal.pone.0081195. eCollection 2013.

Abstract

Little is known about how people learn to take into account others' opinions in joint decisions. To address this question, we combined computational and empirical approaches. Human dyads made individual and joint visual perceptual decision and rated their confidence in those decisions (data previously published). We trained a reinforcement (temporal difference) learning agent to get the participants' confidence level and learn to arrive at a dyadic decision by finding the policy that either maximized the accuracy of the model decisions or maximally conformed to the empirical dyadic decisions. When confidences were shared visually without verbal interaction, RL agents successfully captured social learning. When participants exchanged confidences visually and interacted verbally, no collective benefit was achieved and the model failed to predict the dyadic behaviour. Behaviourally, dyad members' confidence increased progressively and verbal interaction accelerated this escalation. The success of the model in drawing collective benefit from dyad members was inversely related to confidence escalation rate. The findings show an automated learning agent can, in principle, combine individual opinions and achieve collective benefit but the same agent cannot discount the escalation suggesting that one cognitive component of collective decision making in human may involve discounting of overconfidence arising from interactions.

摘要

人们对于如何学会在共同决策中考虑他人意见知之甚少。为了解决这个问题,我们结合了计算和实证方法。人类对偶体进行了个体和联合视觉感知决策,并对他们的决策信心进行了评估(先前已发表的数据)。我们训练了一个强化学习(时间差分)代理来获取参与者的置信水平,并通过找到最大化模型决策准确性或最大程度符合经验性对偶体决策的策略来学习做出对偶体决策。当信心在没有口头互动的情况下以视觉方式共享时,RL 代理成功地进行了社会学习。当参与者以视觉方式交流信心并进行口头互动时,没有实现集体利益,并且模型无法预测对偶体行为。行为上,对偶体成员的信心逐渐增加,口头互动加速了这种升级。模型从对偶体成员中获得集体利益的成功与信心升级率呈反比。研究结果表明,原则上,自动化学习代理可以组合个人意见并实现集体利益,但同一代理无法对信心升级进行贴现,这表明人类集体决策的一个认知组成部分可能涉及对来自互动的过度自信的贴现。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e26f/3855698/58a631395230/pone.0081195.g001.jpg

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