Sequential Naive Learning

Itai Arieli, Y. Babichenko, Manuel Mueller-Frank
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引用次数: 2

Abstract

We analyze boundedly rational updating from aggregate statistics in a model with binary actions and binary states. Agents each take an irreversible action in sequence after observing the unordered set of previous actions. Each agent first forms her prior based on the aggregate statistic, then incorporates her signal with the prior based on Bayes rule, and finally applies a decision rule that assigns a (mixed) action to each belief. If priors are formed according to a discretized DeGroot rule, then actions converge to the state (in probability), i.e., asymptotic learning, in any informative information structure if and only if the decision rule satisfies probability matching. This result generalizes to unspecified information settings where information structures differ across agents and agents know only the information structure generating their own signal. Also, the main result extends to the case of n states and n actions.
顺序朴素学习
我们分析了具有二元动作和二元状态的模型的有界理性更新。每个代理在观察无序的先前动作集合后依次采取不可逆的动作。每个智能体首先根据聚合统计量形成自己的先验,然后根据贝叶斯规则将自己的信号与先验合并,最后应用决策规则为每个信念分配(混合)动作。如果先验是根据离散化的DeGroot规则形成的,那么当且仅当决策规则满足概率匹配时,动作在任何信息结构中收敛于状态(在概率上),即渐近学习。这个结果推广到未指定的信息设置,其中不同代理的信息结构不同,代理只知道生成它们自己信号的信息结构。同样,主要结果扩展到n个状态和n个动作的情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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