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Efficient estimation of structural models via sieves 筛子对结构模型的有效估计
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-01-01 DOI: 10.1016/j.jeconom.2026.106184
Yao Luo , Peijun Sang
We propose a class of sieve-based efficient estimators for structural models (SEES), which approximate the solution using a linear combination of basis functions and impose equilibrium conditions as a penalty to determine the best-fitting coefficients. Our estimators circumvent repeated solution of the structural model, apply to a broad class of models, and are consistent, asymptotically normal, and asymptotically efficient. Moreover, they solve unconstrained optimization problems with fewer unknowns and offer convenient standard error calculations. As an illustration, we apply our method to an entry game between Walmart and Kmart.
我们提出了一类基于筛子的结构模型有效估计器(SEES),它使用基函数的线性组合近似解,并施加平衡条件作为惩罚来确定最佳拟合系数。我们的估计绕过了结构模型的重复解,适用于广泛的模型类别,并且是一致的,渐近正态的和渐近有效的。此外,它们用较少的未知数解决无约束优化问题,并提供方便的标准误差计算。作为一个例子,我们将我们的方法应用于沃尔玛和凯马特之间的进入博弈。
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引用次数: 0
Nonparametric treatment effect identification in school choice 择校中的非参数治疗效果识别
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-01-01 DOI: 10.1016/j.jeconom.2025.106172
Jiafeng Chen
This paper studies nonparametric identification and estimation of causal effects in centralized school assignment. In many centralized assignment algorithms, students face both lottery-driven variation and regression discontinuity- (RD) driven variation. We characterize the full set of identified atomic treatment effects (aTEs), defined as the conditional average treatment effect between a pair of schools given student characteristics. Atomic treatment effects are the building blocks of more aggregated treatment contrasts, and common approaches to estimating aTE aggregations can mask important heterogeneity. In particular, many aggregations of aTEs put zero weight on aTEs driven by RD variation, and estimators of such aggregations put asymptotically vanishing weight on the RD-driven aTEs. We provide a diagnostic and recommend new aggregation schemes. Lastly, we provide estimators and asymptotic results for inference on these aggregations.
本文研究了集中式学校分配中因果效应的非参数辨识与估计。在许多集中式作业算法中,学生既面临彩票驱动的变异,也面临回归不连续(RD)驱动的变异。我们描述了整套确定的原子处理效果(aTEs),定义为一对给定学生特征的学校之间的条件平均处理效果。原子处理效果是更多聚合处理对比的构建块,估计aTE聚合的常用方法可以掩盖重要的异质性。特别是,许多由RD变化驱动的aTEs的聚集将权重为零,并且这种聚集的估计将权重渐近消失放在RD驱动的aTEs上。我们提供了一个诊断和推荐新的聚合方案。最后,我们给出了这些集合的估计量和渐近推断结果。
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引用次数: 0
Multi-horizon test for market frictions 市场摩擦的多视界检验
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-01-01 DOI: 10.1016/j.jeconom.2025.106171
Z. Merrick Li , Xiye Yang
We test for the presence of market frictions that induce transitory deviations of observed asset prices from the underlying efficient prices. Our test is based on the joint inference of return covariances across multiple horizons. We demonstrate that a small set of horizons suffices to identify a broad spectrum of frictions, both theoretically and practically. Our method works for high- and low-frequency data under different asymptotic regimes. Extensive simulations show our method outperforms widely used state-of-the-art tests. Our empirical studies indicate that intraday transaction prices from recent years can be considered effectively friction-free at significantly higher frequencies.
我们测试了市场摩擦的存在,这些摩擦会导致观察到的资产价格与潜在有效价格的短暂偏差。我们的检验是基于跨多个视界的回报协方差的联合推断。我们证明,一个小范围的视界足以识别广泛的摩擦,在理论上和实际上。我们的方法适用于不同渐近状态下的高频和低频数据。大量的模拟表明,我们的方法优于广泛使用的最先进的测试。我们的实证研究表明,近年来的日内交易价格在明显更高的频率下可以被认为是有效的无摩擦。
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引用次数: 0
Estimation and inference for causal functions with multi-way clustered data 基于多路聚类数据的因果函数估计与推理
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-01-01 DOI: 10.1016/j.jeconom.2025.106178
Nan Liu , Yanbo Liu , Yuya Sasaki
We propose methods for estimation and uniform inference for a broad class of causal functions, such as conditional average treatment effects and continuous treatment effects, under multi-way clustering. The causal function is identified as the conditional expectation of a Neyman-orthogonal signal that depends on high-dimensional nuisance parameters. We introduce a two-step procedure: the first step uses machine learning to estimate the nuisance parameters, and the second step projects the estimated Neyman-orthogonal signal onto a dictionary of basis functions whose dimension grows with the sample size. We consider both full-sample and multi-way cross-fitting approaches to this procedure and derive a functional limit theory for the resulting estimators. For uniform inference, we develop a novel resampling method, the multi-way cluster-robust sieve score bootstrap, which extends the sieve score bootstrap of Chen and Christensen (2018) to settings with multi-way clustering. Extensive simulations demonstrate that the proposed methods exhibit favorable finite-sample performance. We apply our approach to study the causal relationship between mistrust levels in Africa and historical exposure to the slave trade. Accounting for the two-way clustering by ethnicity and region, our inference method rejects the null hypothesis of uniformly zero effects and uncover heterogeneous treatment effects, with particularly strong impacts in regions with high historical trade intensity.
我们提出了在多向聚类条件平均处理效应和连续处理效应等大类因果函数的估计和一致推理方法。因果函数被确定为依赖于高维干扰参数的内曼正交信号的条件期望。我们引入了一个两步的过程:第一步使用机器学习来估计干扰参数,第二步将估计的内曼正交信号投影到一个基函数字典上,该基函数的维数随着样本量的增长而增长。我们考虑了这一过程的全样本和多路交叉拟合方法,并推导了结果估计量的泛函极限理论。为了均匀推理,我们开发了一种新的重采样方法,即多路聚类-鲁棒筛分bootstrap,它将Chen和Christensen(2018)的筛分bootstrap扩展到多路聚类的设置。大量的仿真表明,所提出的方法具有良好的有限样本性能。我们运用我们的方法来研究非洲的不信任程度与历史上对奴隶贸易的暴露之间的因果关系。考虑到种族和地区的双向聚类,我们的推理方法拒绝了均匀零效应的零假设,并揭示了异质性的治疗效应,在历史贸易强度高的地区影响特别强。
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引用次数: 0
Doubly-robust inference for conditional average treatment effects with high-dimensional controls 高维控制条件平均处理效果的双鲁棒推理
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-01-01 DOI: 10.1016/j.jeconom.2026.106180
Adam Baybutt , Manu Navjeevan
Plausible identification of conditional average treatment effects (CATEs) can rely on controlling for a large number of variables to account for confounding factors. In these high-dimensional settings, estimation of the CATE requires estimating first-stage models whose consistency relies on correctly specifying their parametric forms. While doubly-robust estimators of the CATE exist, inference procedures based on the second-stage CATE estimator are not doubly-robust. Using the popular augmented inverse propensity weighting signal, we propose an estimator for the CATE whose resulting Wald-type confidence intervals are doubly-robust. We assume a logistic model for the propensity score and a linear model for the outcome regression, and estimate the parameters of these models using an ℓ1 (Lasso) penalty to address the high-dimensional covariates. Inference based on this estimator remains valid even if one of the logistic propensity score or linear outcome regression models are misspecified.
条件平均治疗效果(CATEs)的合理识别可以依赖于控制大量变量来解释混杂因素。在这些高维设置中,CATE的估计需要估计第一阶段模型,其一致性依赖于正确指定其参数形式。虽然存在CATE的双鲁棒估计,但基于第二阶段CATE估计的推理过程不是双鲁棒的。利用广受欢迎的增广逆倾向加权信号,我们提出了一个估计量,其结果wald型置信区间是双鲁棒的。我们假设倾向得分为逻辑模型,结果回归为线性模型,并使用l_1 (Lasso)惩罚来估计这些模型的参数,以解决高维协变量。即使逻辑倾向评分或线性结果回归模型中的一个被错误指定,基于该估计量的推断仍然有效。
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引用次数: 0
Strategic network formation with many agents 战略网络形成与许多代理商
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-01-01 DOI: 10.1016/j.jeconom.2025.106174
Konrad Menzel
We derive asymptotic approximations for models of strategic network formation, where limits are taken as the number of nodes (agents) increases to infinity. Our framework assumes a random utility model where agents have heterogeneous tastes over links, and payoffs allow for anonymous and non-anonymous interaction effects, and the observed network is assumed to be pairwise stable. Our main results concern convergence of the link intensity from finite pairwise stable networks to the (many-player) limiting distribution. The set of possible limiting distributions is shown to have a fairly simple form and is characterized through aggregate equilibrium conditions, which may permit multiple solutions. We illustrate how these formal results can be used to analyze identification of link preferences and estimate or bound preference parameters. We also derive an analytical expression for agents’ welfare (expected surplus) from the structure of the network.
我们导出了策略网络形成模型的渐近逼近,其中节点(智能体)的数量增加到无穷大时取极限。我们的框架假设了一个随机的实用模型,其中代理对链接有异质的品味,并且回报允许匿名和非匿名交互效应,并且假设观察到的网络是两两稳定的。我们的主要结果是关于链路强度从有限对稳定网络到(多参与者)极限分布的收敛性。可能的极限分布集具有相当简单的形式,并通过可能允许多个解的总平衡条件来表征。我们说明了如何使用这些形式化结果来分析链接偏好的识别和估计或绑定偏好参数。我们还从网络的结构中推导出代理福利(期望剩余)的解析表达式。
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引用次数: 0
Estimation and inference for large-dimensional generalized matrix factor models 大维广义矩阵因子模型的估计与推理
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-01-01 DOI: 10.1016/j.jeconom.2025.106179
Xinbing Kong, Tong Zhang
This article introduces a nonlinear generalized matrix factor model, moving beyond the linear-Gaussian framework to accommodate a broader class of response models typically handled via logit, probit, Poisson, or Tobit structures. We introduce a novel Lagrange multiplier method carefully tailored to ensure that the penalized likelihood function is locally concave around the true factor and loading parameters. This leads to central limit theorems of the estimated factors and loadings which is nontrivial for nonlinear matrix factor modeling. We establish the convergence rates of the estimated factor and loading matrices for the generalized matrix factor model under general conditions that allow for correlations across samples, rows, and columns. We provide a model selection criterion to determine the numbers of row and column factors. Extensive simulation studies demonstrate the superiority in handling discrete and mixed-type variables of the generalized matrix factor model. An empirical data analysis of the company’s operating performance shows that the generalized matrix factor model does clustering and reconstruction well in the presence of discontinuous entries in the data matrix.
本文介绍了一个非线性广义矩阵因子模型,超越了线性-高斯框架,以适应通常通过logit、probit、泊松或Tobit结构处理的更广泛的响应模型。我们引入了一种新颖的拉格朗日乘子方法,以确保惩罚似然函数在真实因子和加载参数周围局部凹。这导致了估计因子和负荷的中心极限定理,这对于非线性矩阵因子建模是非平凡的。我们为广义矩阵因子模型在允许跨样本、行和列的相关性的一般条件下建立了估计因子和加载矩阵的收敛率。我们提供了一个模型选择标准来确定行和列因素的数量。大量的仿真研究证明了广义矩阵因子模型在处理离散变量和混合变量方面的优越性。对该公司经营业绩的实证数据分析表明,广义矩阵因子模型在数据矩阵中存在不连续条目的情况下,能够很好地进行聚类和重构。
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引用次数: 0
On generalized CCE estimation 关于广义CCE估计
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-01-01 DOI: 10.1016/j.jeconom.2026.106183
Xun Lu , Liangjun Su , Yinglong Ba
The widely-used common correlated effects (CCE) estimator, pioneered by Pesaran (2006), is computed using least squares applied to auxiliary regressions where the observed regressors are augmented with cross-sectional averages of the dependent variable and regressors. However, the CCE estimator requires a crucial rank condition and becomes inconsistent when this condition is violated and the factor loadings of the x- and y -equations are correlated, causing an endogeneity issue. This paper proposes a generalized CCE (GCCE) estimator by augmenting the regression with both cross-sectional and time-series averages of the regressors. We argue that the time-series average can serve as “control variables” to address the endogeneity issue. We show that the GCCE and CCE estimators are asymptotically equivalent when the rank condition holds, and the GCCE estimator remains consistent even when the rank condition is violated under our “control variable” condition. Therefore, our GCCE estimator is doubly robust, achieving consistency under either the rank condition or the “control variable” condition. Furthermore, we propose a leave-one-out jackknife method to conduct valid inferences regardless of whether the rank condition holds. Monte Carlo simulations demonstrate excellent performance of our estimators and inference methods in finite samples. We apply our new methods to two datasets to estimate the production function and gravity equation.
由Pesaran(2006)首创的广泛使用的共同相关效应(CCE)估计量是使用应用于辅助回归的最小二乘来计算的,其中观察到的回归量与因变量和回归量的横截面平均值相增强。然而,CCE估计器需要一个关键的秩条件,当这个条件被违反并且x-和y -方程的因子负载是相关的时,CCE估计器就会变得不一致,从而导致内质性问题。本文提出了一种广义CCE (GCCE)估计量,通过对回归量的横截面平均值和时间序列平均值进行扩充。我们认为时间序列平均值可以作为“控制变量”来解决内生性问题。我们证明了当秩条件成立时,GCCE和CCE估计量是渐近等价的,并且在我们的“控制变量”条件下,即使违反秩条件,GCCE估计量也保持一致。因此,我们的GCCE估计器是双鲁棒的,无论是在秩条件下还是在“控制变量”条件下都实现了一致性。此外,我们提出了一种不考虑秩条件是否成立的留一折刀方法来进行有效的推理。蒙特卡罗模拟证明了我们的估计器和推理方法在有限样本下的优异性能。我们将新方法应用于两个数据集来估计生产函数和重力方程。
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引用次数: 0
Identification in nonlinear dynamic panel models under partial stationarity 部分平稳下非线性动态面板模型的辨识
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-01-01 DOI: 10.1016/j.jeconom.2026.106185
Wayne Yuan Gao , Rui Wang
This paper provides a general identification approach for a wide range of nonlinear panel data models, including binary choice, ordered response, and other types of limited dependent variable models. Our approach accommodates dynamic models with any number of lagged dependent variables as well as other types of endogenous covariates. Our identification strategy relies on a partial stationarity condition, which allows for not only an unknown distribution of errors, but also temporal dependencies in errors. We derive partial identification results under flexible model specifications and establish sharpness of our identified set in the binary choice setting. We demonstrate the robust finite-sample performance of our approach using Monte Carlo simulations, and apply the approach to the empirical analysis of income categories using various ordered choice models.
本文为各种非线性面板数据模型提供了一种通用的识别方法,包括二元选择、有序响应和其他类型的有限因变量模型。我们的方法适应动态模型与任何数量的滞后因变量以及其他类型的内生协变量。我们的识别策略依赖于部分平稳条件,这不仅允许误差的未知分布,而且允许误差的时间依赖性。我们在灵活的模型规范下得到了部分识别结果,并在二元选择设置下建立了识别集的清晰度。我们使用蒙特卡罗模拟证明了我们方法的强大有限样本性能,并使用各种有序选择模型将该方法应用于收入类别的实证分析。
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引用次数: 0
Uncovering mild drift in asset prices with intraday high-frequency data 利用日内高频数据揭示资产价格的温和波动
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-01-01 DOI: 10.1016/j.jeconom.2025.106177
Shuping Shi , Peter C.B. Phillips
Asset prices are commonly represented as a drift-diffusion process, wherein the drift component denotes the anticipated return of the asset within some time frame, while the diffusion component accommodates random shocks. The drift component has substantial practical significance but accurate estimation is typically challenging and has met with limited success in the existing literature except over large time spans. This paper explores a comprehensive range of drift-diffusion models that include constant, linear, trending, and bursting drift. Conditions are identified under which realized squared drift RSD is a reliable tool for gauging integrated squared drift when the time span Tn is large enough. The recently introduced drift-robust quarticity estimator RiceQ is found to retain consistency under twin asymptotics with Tn → ∞ and infill Δn → 0, subject to some constraints on the divergence rate of Tn across different drift specifications. An inferential method of detecting nonzero drift using RSD and RiceQ is proposed and the drift tests are shown to be consistent under different data generating processes with various conditions on Tn. Simulation studies reveal excellent performance of the realized squared drift measure and the drift test in finite samples. The drift test is demonstrated empirically in real-time surveillance of market abnormalities in the Nasdaq Composite Index over two notable sample periods: the dotcom bubble (1996–2003) and the artificial intelligence boom (2016–2024), using intraday data.
资产价格通常被表示为一个漂移-扩散过程,其中漂移分量表示资产在某个时间框架内的预期收益,而扩散分量则适应随机冲击。漂移分量具有重要的实际意义,但准确的估计通常是具有挑战性的,并且在现有文献中除了在大的时间跨度之外取得了有限的成功。本文探讨了广泛的漂移-扩散模型,包括常数,线性,趋势和爆发漂移。确定了当时间跨度Tn足够大时,实现平方漂移RSD是测量积分平方漂移的可靠工具的条件。最近引入的漂移鲁棒量估计器RiceQ在Tn → ∞和填充Δn → 0的双渐近下保持一致性,但Tn在不同漂移规范上的发散率受到一定的约束。提出了一种基于RSD和RiceQ的非零漂移的推理检测方法,在Tn上不同条件下的不同数据生成过程中,漂移测试结果是一致的。仿真研究表明,所实现的平方漂移测量和有限样本漂移测试具有良好的性能。利用日内数据,在纳斯达克综合指数两个显著样本时期(互联网泡沫时期(1996-2003年)和人工智能繁荣时期(2016-2024年)的市场异常实时监测中,实证证明了漂移测试。
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引用次数: 0
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Journal of Econometrics
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