代孕评分规则

IF 1.1 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Yang Liu, Juntao Wang, Yiling Chen
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引用次数: 0

摘要

当委托人在实现随机变量后可以奖励代理人时,严格适当的评分规则(SPSR)对于从战略代理人那里获取关于随机变量的信息是激励相容的。他们还量化了引发信息的质量,更准确的预测在预期中得分更高。在本文中,我们将这种评分规则扩展到主体引出私人概率信念但只能访问代理报告的环境中。我们将我们的解决方案命名为代孕评分规则(SSR)。SSR建立在使用代理报告定义的参考答案的偏差校正步骤和错误率估计程序的基础上。我们表明,在有少量关于随机变量先验分布的信息的情况下,多任务环境中的SSR在预期中恢复SPSR,就好像可以获得基本事实一样。因此,SSR的一个显著特征是,尽管缺乏基本事实,但它们还是量化了信息的质量,就像SPSR对有基本事实的环境所做的那样。作为一种副产品,SSR在报告中诱导了占主导地位的统一策略真实性。我们的方法在理论和经验上都得到了验证,使用的数据是从真实的人类预报员那里收集的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Surrogate Scoring Rules
Strictly proper scoring rules (SPSR) are incentive compatible for eliciting information about random variables from strategic agents when the principal can reward agents after the realization of the random variables. They also quantify the quality of elicited information, with more accurate predictions receiving higher scores in expectation. In this article, we extend such scoring rules to settings in which a principal elicits private probabilistic beliefs but only has access to agents’ reports. We name our solution Surrogate Scoring Rules (SSR). SSR is built on a bias correction step and an error rate estimation procedure for a reference answer defined using agents’ reports. We show that, with a little information about the prior distribution of the random variables, SSR in a multi-task setting recover SPSR in expectation, as if having access to the ground truth. Therefore, a salient feature of SSR is that they quantify the quality of information despite the lack of ground truth, just as SPSR do for the setting with ground truth. As a by-product, SSR induce dominant uniform strategy truthfulness in reporting. Our method is verified both theoretically and empirically using data collected from real human forecasters.
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来源期刊
ACM Transactions on Economics and Computation
ACM Transactions on Economics and Computation COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
3.80
自引率
0.00%
发文量
11
期刊介绍: The ACM Transactions on Economics and Computation welcomes submissions of the highest quality that concern the intersection of computer science and economics. Of interest to the journal is any topic relevant to both economists and computer scientists, including but not limited to the following: Agents in networks Algorithmic game theory Computation of equilibria Computational social choice Cost of strategic behavior and cost of decentralization ("price of anarchy") Design and analysis of electronic markets Economics of computational advertising Electronic commerce Learning in games and markets Mechanism design Paid search auctions Privacy Recommendation / reputation / trust systems Systems resilient against malicious agents.
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