Alice (owner) has knowledge of the underlying quality of her items measured in grades. Given the noisy grades provided by an independent party, can Bob (appraiser) obtain accurate estimates of the ground-truth grades of the items by asking Alice a question about the grades? We address this when the payoff to Alice is additive convex utility over all her items. We establish that if Alice has to truthfully answer the question so that her payoff is maximized, the question must be formulated as pairwise comparisons between her items. Next, we prove that if Alice is required to provide a ranking of her items, which is the most fine-grained question via pairwise comparisons, she would be truthful. By incorporating the ground-truth ranking, we show that Bob can obtain an estimator with the optimal squared error in certain regimes based on any possible way of truthful information elicitation. Moreover, the estimated grades are substantially more accurate than the raw grades when the number of items is large and the raw grades are very noisy. Finally, we conclude the paper with several extensions and some refinements for practical considerations.
翻译:爱丽丝( 拥有者) 了解用等级衡量其物品的基本质量。 依据独立方提供的吵闹等级, 鲍勃( 评估者) 能否通过询问爱丽丝的等级问题来准确估计物品的地面真实等级? 当对爱丽丝的付款是对其所有物品的添加式的共鸣效用时, 我们就会解决这个问题。 我们确认, 如果爱丽丝必须诚实地回答问题, 以便她能最大限度地获得报酬, 这个问题必须作为对其物品的对等比较来拟订。 其次, 我们证明, 如果爱丽丝需要提供其物品的排名, 这是通过对称比较最精细的问题, 她会讲真话。 通过纳入地面真实等级的排名, 我们证明鲍勃可以在某些制度中以任何可能的真实信息查询方式获得最佳的折叠错误, 估计的等级比原始等级高得多, 当物品数量大, 原始等级非常吵闹的时候, 。 最后, 我们以若干扩展和一些改进来得出论文, 以便进行实际考虑 。