激励相容实验设计

Panos Toulis, D. Parkes, Elery Pfeffer, James Y. Zou
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引用次数: 6

摘要

我们考虑设计实验来评估由自利主体实施的治疗,每个主体都寻求获得最高评价并赢得实验。例如,在一个广告实验中,一家公司希望评估两个营销代理在病毒式营销中的效果,并将合同分配给获胜的代理。与传统的实验设计相反,这个问题有两个新的含义。首先,该实验诱导了agent之间的博弈,其中每个agent可以从它所执行的多个治疗版本中进行选择。其次,一种制剂的作用——治疗方案的选择——可能影响另一种制剂的作用,由此产生的战略干扰使制剂的评估复杂化。一个激励相容的实验设计是一个具有均衡的实验设计,其中每个代理选择其自然行为,即在没有竞争的情况下使代理的表现最大化的行为(例如,如果代理分配了广告合同,则预期的转换数量)。在块实验设计的一般公式下,我们确定了保证激励相容实验的充分条件。这些条件依赖于统计数据的存在,这些统计数据可以估计代理在没有竞争的情况下的表现,以及它们在构建分数函数以评估代理时的使用。在没有策略干扰的情况下,我们还研究了设计的力量,即最优代理获胜的概率,并展示了如何提高激励相容设计的力量。从技术方面来看,我们的理论使用了一系列统计方法,如假设检验、方差稳定变换和Delta方法,所有这些都依赖于渐近性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incentive-Compatible Experimental Design
We consider the design of experiments to evaluate treatments that are administered by self-interested agents, each seeking to achieve the highest evaluation and win the experiment. For example, in an advertising experiment, a company wishes to evaluate two marketing agents in terms of their efficacy in viral marketing, and assign a contract to the winner agent. Contrary to traditional experimental design, this problem has two new implications. First, the experiment induces a game among agents, where each agent can select from multiple versions of the treatment it administers. Second, the action of one agent -- selection of treatment version -- may affect the actions of another agent, with the resulting strategic interference complicating the evaluation of agents. An incentive-compatible experiment design is one with an equilibrium where each agent selects its natural action, which is the action that maximizes the performance of the agent without competition (e.g., expected number of conversions if agent is assigned the advertising contract). Under a general formulation of block experiment designs, we identify sufficient conditions that guarantee incentive-compatible experiments.These conditions rely on the existence of statistics that can estimate how agents would perform without competition,and their use in constructing score functions to evaluate the agents. In the setting with no strategic interference, we also study the power of the design, i.e., the probability that the best agent wins, and show how to improve the power of incentive-compatible designs.From the technical side, our theory uses a range of statistical methods such as hypothesis testing, variance-stabilizing transformations and the Delta method, all of which rely on asymptotics.
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