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关联私人价值拍卖的Copula-分位数密度方法

A copula-quantile density approach to affiliated private value auctions

Economics Letters · 2026
被引 0 · 同刊同年前 7%
人大 BABS 3

中文导读

提出一个半参数框架,结合Copula和分位数密度函数估计关联私人价值拍卖模型,通过两阶段估计器分解逆投标函数,蒙特卡洛模拟显示优于现有方法。

Abstract

We develop a tractable semiparametric framework for estimating affiliated private value (APV) models in first-price sealed-bid auctions by combining copula-based dependence modeling with quantile density function (QDF) methods. Building on the identification results of Li, Perrigne, and Vuong (2002), we propose a two-stage estimator that (i) uses nonparametric QDF methods (Doosti et al., 2025) to estimate marginal distributions, achieving superior boundary performance, and (ii) employs parametric Archimedean copulas to model affiliation, ensuring computational tractability while respecting the equilibrium structure. Our approach decomposes the inverse bid function into an affiliation component (copula multiplier ψ ( u ) ) and a marginal component (quantile density q ( u ) ), providing both theoretical insights and practical advantages. We extend this framework by developing a fully nonparametric estimator of the copula multiplier, enabling specification tests for parametric copula assumptions. Monte Carlo simulations demonstrate that our estimators substantially outperform existing methods.

拍卖理论计量经济学非参数估计Copula模型