We study an information aggregation setting in which a decision maker makes an informed binary decision by merging together information from several symmetric agents. Each agent provides the decision maker with a recommendation, which depends on her information about the hidden state of nature. While the decision maker has a prior distribution over the hidden state and knows the marginal distribution of each agent's recommendation, the correlation between the recommendations is chosen adversarially. The decision maker's goal is to choose an information aggregation rule that is robustly optimal. We prove that for a sufficiently large number of agents, for the three standard robustness paradigms - minimax, regret and approximation ratio - the robustly-optimal aggregation rule is identical. Specifically, the optimal aggregation rule is the random dictator rule, which chooses an agent uniformly at random and adopts her recommendation. For a small number of agents, this result no longer holds - the random dictator rule can be suboptimal for minimizing the regret even for two agents. We further characterize the minimal regret for any number of agents through the notion of concavification, and demonstrate how to utilize this characterization in the case of two agents.
翻译:我们研究的是信息汇总设置,其中决策者通过将若干对称剂的信息合并,作出知情的二进制决定。每个代理人向决策者提供建议,这取决于她关于自然隐藏状态的信息。虽然决策者事先在隐藏状态上进行分配,并知道每个代理人的建议的边际分布,但建议之间的关联是以对称方式选择的。决策者的目标是选择一个稳健最佳的信息汇总规则。我们证明,对于数量足够多的代理人来说,对于三个标准的稳健性模式(迷你、遗憾和近似比率)而言,三个强健的聚合规则是相同的。具体地说,最佳汇总规则是随机任意选择一个代理人并采纳她的建议的随机独裁规则。对于少数代理人来说,这一结果不再有效,随机独裁规则对于即使是两个代理人来说也是最不理想的。我们进一步说明,通过调和化概念,对任何数目的代理人来说,如何在两种代理人的案件中利用这种定性,我们对任何代理人都表示最小的遗憾。