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Reprint of: Nonparametric estimation for high-frequency data incorporating trading information 转载自:包含交易信息的高频数据的非参数估计
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-03-01 Epub Date: 2026-01-30 DOI: 10.1016/j.jeconom.2026.106202
Wenhao Cui , Jie Hu , Jiandong Wang
We propose nonparametric estimators for the explicative part of the noise in a model where the market microstructure noise is an unknown function of the trading information while allowing for the presence of an additional residual noise component. Our method allows for dependence in the observable trading information and accommodates the presence of infinite variation jumps in the efficient price process. We establish the convergence and asymptotic normality of the proposed estimators. We also propose a two-step Laplace estimator of integrated volatility where we replace the observed price with the estimated price by removing the explicative part of the market microstructure noise. The finite sample properties of both the nonparametric estimators and the two-step Laplace estimator are examined through Monte Carlo simulations. We find that our method is robust to misspecification of the unknown functional form given finite sample size. Furthermore, an empirical application using high-frequency data demonstrates that our method outperforms commonly employed parametric methods.
在市场微观结构噪声是交易信息的未知函数的模型中,我们提出了非参数估计器,用于噪声的说明部分,同时允许存在额外的残余噪声成分。我们的方法考虑到可观察到的交易信息的依赖性,并适应有效价格过程中存在的无限变化跳跃。我们证明了所提估计量的收敛性和渐近正态性。我们还提出了一个积分波动率的两步拉普拉斯估计,其中我们通过去除市场微观结构噪声的解释性部分,将观察到的价格替换为估计价格。通过蒙特卡罗模拟研究了非参数估计量和两步拉普拉斯估计量的有限样本性质。结果表明,在给定有限样本量的情况下,该方法对未知函数形式的错误说明具有较强的鲁棒性。此外,使用高频数据的经验应用表明,我们的方法优于常用的参数方法。
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引用次数: 0
Robust realized integrated beta estimator with application to dynamic analysis of integrated beta 稳健的已实现综合贝塔估计器及其在综合贝塔动态分析中的应用
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-03-01 Epub Date: 2024-07-16 DOI: 10.1016/j.jeconom.2024.105810
Minseog Oh , Donggyu Kim , Yazhen Wang
In this paper, we develop a robust non-parametric realized integrated beta estimator using high-frequency financial data contaminated by microstructure noise, which is robust to the stylized features, such as the time-varying beta and the price-dependent and autocorrelated microstructure noise. With this robust realized integrated beta estimator, we investigate dynamic structures of integrated betas and find a persistent autoregressive structure. To model this dynamic structure, we utilize the autoregressive–moving-average (ARMA) model for daily integrated market betas. We call this the dynamic realized beta (DR Beta). Then, we propose a quasi-likelihood procedure for estimating the parameters of the ARMA model with the robust realized integrated beta estimator as the proxy. We establish asymptotic theorems for the proposed estimator and conduct a simulation study to check the performance of finite samples of the estimator. The proposed DR Beta model with the robust realized beta estimator is also illustrated by using data from the E-mini S&P 500 index futures and the top 50 large trading volume stocks from the S&P 500 and an application to constructing market-neutral portfolios.
本文利用受微观结构噪声污染的高频金融数据,开发了一种鲁棒的非参数实现集成β估计器,该估计器对时变的β和价格相关的自相关微观结构噪声等风格化特征具有鲁棒性。利用这个鲁棒实现的集成估计器,我们研究了集成的动态结构,并找到了一个持久的自回归结构。为了对这种动态结构建模,我们利用自回归移动平均(ARMA)模型来计算每日综合市场贝塔。我们称之为动态已实现的beta (DR beta)。然后,我们提出了一种拟似然方法来估计ARMA模型的参数,并以鲁棒实现的集成β估计量作为代理。我们为所提出的估计量建立了渐近定理,并进行了仿真研究以检验该估计量的有限样本性能。利用E-mini标准普尔500指数期货和标准普尔500指数前50大交易量股票的数据以及构建市场中性投资组合的应用,也说明了提出的DR贝塔模型和稳健的已实现贝塔估计量。
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引用次数: 0
High dimensional regression coefficient test with high frequency data 高频数据的高维回归系数测试
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-03-01 Epub Date: 2024-07-17 DOI: 10.1016/j.jeconom.2024.105812
Dachuan Chen , Long Feng , Per A. Mykland , Lan Zhang
This paper presents the first study on high-dimensional regression coefficient tests with high-frequency financial data. These tests allow the number of regressors to be larger than the number of observations within each estimation block and can grow to infinity in asymptotics. In this paper, the sum-type test and max-type test have been proposed, where the former is suitable for the dense alternative (many small betas) and the latter is suitable for the sparse alternative (a very small number of large betas). By showing the asymptotic independence between the sum-type test and max-type test, the paper proposes a third test – Fisher’s combination test, which is robust to both dense and sparse alternatives. The paper derives the limiting null distributions of the three proposed tests and analyzes the asymptotic behavior of their powers. Monte Carlo simulations demonstrate the validity of the theoretical results developed in this paper. Empirical study shows the impact of high frequency (HF) factors when being added to a Fama–French-style factor model. We found that the HF effects are time varying. The proposed tests can help identify those time periods when the HF factors carry (significant) incremental information for the test asset. Our tests could shed light on market timing in a trading strategy.
本文首次对高频金融数据的高维回归系数检验进行了研究。这些检验允许回归量的数量大于每个估计块内的观测值的数量,并且可以在渐近中增长到无穷大。本文提出了和型检验和最大型检验,其中和型检验适用于密集替代(许多小beta),最大型检验适用于稀疏替代(极少数大beta)。通过证明和型检验和最大型检验之间的渐近独立性,本文提出了第三种检验- Fisher组合检验,该检验对稠密和稀疏备选方案都具有鲁棒性。本文导出了这三种检验的极限零分布,并分析了它们幂的渐近性态。蒙特卡罗仿真验证了本文理论结果的有效性。实证研究表明,在Fama-French-style因子模型中加入高频因子(HF)会产生影响。我们发现HF效应是随时间变化的。当HF因子携带测试资产的(重要的)增量信息时,建议的测试可以帮助确定那些时间段。我们的测试可以揭示交易策略中的市场时机。
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引用次数: 0
To be or not to be: Roughness or long memory in volatility? 生存还是毁灭:波动中的粗糙还是长期记忆?
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-03-01 Epub Date: 2026-02-09 DOI: 10.1016/j.jeconom.2026.106193
Mikkel Bennedsen , Kim Christensen , Peter Korsbakke Christensen
We develop a framework for composite likelihood estimation of parametric continuous-time stationary Gaussian processes. We derive the asymptotic theory of the associated maximum composite likelihood estimator. We implement our approach on a pair of models that have been proposed to describe the random log-spot variance of financial asset returns. A simulation study shows that it delivers good performance in these settings and improves upon a method-of-moments estimation. In an empirical investigation, we inspect the dynamic of an intraday measure of the spot log-realized variance computed with high-frequency data from the cryptocurrency market. The evidence supports a mechanism, where the short- and long-term correlation structure of stochastic volatility are decoupled in order to capture its properties at different time scales. This is further backed by an analysis of the associated spot log-trading volume.
我们开发了一个参数连续时间平稳高斯过程的复合似然估计框架。给出了相关极大似然估计的渐近理论。我们在一对模型上实现了我们的方法,这些模型已被提出用于描述金融资产收益的随机对数点方差。仿真研究表明,该方法在这些情况下具有良好的性能,并对矩估计方法进行了改进。在一项实证调查中,我们用加密货币市场的高频数据计算了现货对数实现方差的日内测量动态。证据支持一种机制,其中随机波动的短期和长期相关结构解耦,以便在不同的时间尺度上捕获其特性。对相关现货交易量的分析进一步支持了这一观点。
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引用次数: 0
Convolution-t distributions Convolution-t分布
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-03-01 Epub Date: 2026-02-10 DOI: 10.1016/j.jeconom.2026.106212
Peter Reinhard Hansen , Chen Tong
We introduce a family of multivariate heavy-tailed distributions, termed convolution-t distributions, constructed as convolutions of heterogeneous multivariate t-distributions. Unlike commonly used heavy-tailed distributions, this family captures nonlinear dependencies, accommodates heterogeneous marginal distributions, and reveals cluster structures prevalent in economic data. Importantly, convolution-t distributions admit simple closed-form densities that facilitate estimation and likelihood-based inference. The characteristic features of convolution-t distributions are shown to be important in an empirical analysis of realized volatility measures and help uncover their underlying factor structure.
我们引入了一类多变量重尾分布,称为卷积-t分布,构造为异构多变量t分布的卷积。与常用的重尾分布不同,该家族捕获非线性依赖关系,适应异质边际分布,并揭示经济数据中普遍存在的聚类结构。重要的是,卷积-t分布允许简单的封闭形式密度,方便估计和基于似然的推断。卷积-t分布的特征特征在已实现波动率测度的实证分析中被证明是重要的,并有助于揭示其潜在的因素结构。
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引用次数: 0
The informativeness of combined experimental and observational data under dynamic selection 动态选择下实验与观测资料相结合的信息量
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-03-01 Epub Date: 2026-02-26 DOI: 10.1016/j.jeconom.2026.106219
Yechan Park , Yuya Sasaki
The Average Treatment Effect on the Treated Survivors (ATETS; Vikström et al., 2018) captures a composite effect of time-varying treatment and dynamic selection into the survivor population. We address the problem of identifying this treatment-effect parameter in the absence of long-term experimental data, utilizing available long-term observational data instead. This poses a nontrivial challenge in practice, as dynamic selection compounds static selection in observational data. We establish two theoretical results. First, it is impossible to obtain informative bounds without model restrictions or auxiliary data. Second, to overturn this negative result, we explore the recent econometric developments in combining experimental and observational data (e.g., Athey et al., 2025; 2024) as a promising avenue; we find that exploiting short-term experimental data can be informative without imposing classical model restrictions. Building on Chesher and Rosen (2017), we further explore how to systematically derive sharp identification bounds, leveraging both novel data-combination principles and classical model restrictions. Estimation and inference procedures are also provided. Applying the proposed method, we investigate what can be learned about the long-run effects of job training programs on employment in the absence of long-term experimental data.
对接受治疗的幸存者的平均治疗效果(ATETS; Vikström等人,2018)捕获了时变治疗和对幸存者群体动态选择的复合效应。我们解决了在缺乏长期实验数据的情况下识别这种治疗效果参数的问题,而是利用现有的长期观察数据。这在实践中构成了一个不小的挑战,因为动态选择在观测数据中混合了静态选择。我们建立了两个理论结果。首先,如果没有模型限制或辅助数据,就不可能获得信息边界。其次,为了推翻这一负面结果,我们探索了将实验和观测数据相结合的计量经济学最新发展(例如,Athey等人,2025;2024)作为一种有希望的途径;我们发现利用短期实验数据可以提供信息而不施加经典模型限制。在Chesher和Rosen(2017)的基础上,我们进一步探索了如何利用新的数据组合原则和经典模型限制,系统地推导出尖锐的识别边界。还提供了估计和推理程序。在缺乏长期实验数据的情况下,运用本文提出的方法,我们研究了职业培训计划对就业的长期影响。
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引用次数: 0
Estimating a conditional density ratio model for asset returns and option demand 估计资产收益和期权需求的条件密度比模型
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-03-01 Epub Date: 2026-02-11 DOI: 10.1016/j.jeconom.2026.106191
Jeroen Dalderop , Oliver Linton
Option-implied risk-neutral densities are widely used for constructing forward-looking risk measures. Meanwhile, risk aversion introduces a multiplicative pricing kernel between the risk-neutral and true conditional densities of the underlying asset’s return. This paper proposes a simple local estimator of the pricing kernel based on inverse density weighting. We characterize the asymptotic bias and variance of the estimator and its multiplicatively corrected density forecasts. A local exponential linear variant is proposed to include conditioning variables. The estimator performs well in a simulation study, even when the risk-neutral densities are noisy and/or have missing tails. We apply our estimator to a demand-based model for S&P 500 index options, and find U-shaped pricing kernels when end-users sell out-of-the-money options and volatility is high.
期权隐含的风险中性密度被广泛用于构建前瞻性风险度量。同时,风险厌恶引入了风险中性和真实资产回报条件密度之间的乘法定价核。提出了一种简单的基于逆密度加权的定价核局部估计方法。我们描述了估计量的渐近偏差和方差及其乘修正密度预测。提出了一个包含条件变量的局部指数线性变式。该估计器在模拟研究中表现良好,即使在风险中性密度有噪声和/或缺少尾部的情况下也是如此。我们将我们的估计器应用于标普500指数期权的基于需求的模型,并在最终用户卖出价外期权和波动性较高时找到u形定价内核。
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引用次数: 0
Time-varying macroeconomic announcement risk 时变宏观经济公告风险
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-03-01 Epub Date: 2026-02-03 DOI: 10.1016/j.jeconom.2026.106194
Michael Johannes , Norman J. Seeger , Jonathan R. Stroud
This paper examines an issue overlooked in the finance and economics literature: time variation in announcement volatility or event risk. To identify this, we combine long spans of high-frequency data with a flexible model of returns. The model allows us to separately identify conditional event risk from other factors like time-varying volatility, jumps and intraday periodicity, and long time spans of data are needed given the infrequency of most announcements. We focus on crude oil due to its economic importance, high volatility and complex announcement structure. Results indicate strong evidence for time-varying announcement volatility as announcement event risk varies by as much as a factor of 10 over time.
本文研究了财经文献中忽视的一个问题:公告波动率或事件风险的时间变化。为了确定这一点,我们将长时间的高频数据与一个灵活的回报模型结合起来。该模型允许我们从其他因素(如时变波动性、跳跃和日内周期性)中单独识别条件事件风险,并且由于大多数公告的频率不高,需要长时间的数据跨度。由于原油在经济上的重要性、高波动性和复杂的公告结构,我们关注原油。结果表明,随着时间的推移,公告事件风险的变化幅度可达10倍,因此有强有力的证据表明公告波动性随时间变化。
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引用次数: 0
Minimax rates of convergence for nonparametric location-Scale models 非参数位置尺度模型的极大极小收敛率
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-03-01 Epub Date: 2026-01-23 DOI: 10.1016/j.jeconom.2026.106187
Bingxin Zhao , Yuhong Yang
This paper studies minimax rates of convergence for nonparametric location-scale models, which include mean, quantile, expectile and momentile regression settings. Under Hellinger differentiability on the error distribution and other mild conditions, we show that the minimax rate of convergence for estimating the regression function under the squared L2 loss is determined by the metric entropy of the nonparametric function class. Different error distributions, including asymmetric Laplace distribution, asymmetric connected double truncated gamma distribution, connected normal-Laplace distribution, Cauchy distribution and asymmetric normal distribution are studied as examples. Applications on low order interaction models and multiple index models are also given.
本文研究了非参数位置尺度模型的极大极小收敛率,包括均值回归、分位数回归、期望回归和时刻回归。在误差分布的Hellinger可微性和其他温和条件下,我们证明了在L2损失的平方下估计回归函数的极大极小收敛速率是由非参数函数类的度量熵决定的。以不对称拉普拉斯分布、不对称连通双截尾伽马分布、连通正态拉普拉斯分布、柯西分布和不对称正态分布为例,研究了不同的误差分布。并给出了在低阶交互模型和多指标模型上的应用。
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引用次数: 0
GMM inference in the matrix exponential spatial specification 矩阵指数空间规范中的GMM推理
IF 4 3区 经济学 Q1 ECONOMICS Pub Date : 2026-03-01 Epub Date: 2026-01-22 DOI: 10.1016/j.jeconom.2026.106181
Ye Yang , Wim P.M. Vijverberg
This paper offers hypothesis and specification tests for the best generalized methods of moment estimator (BGMME) of the matrix exponential spatial specification (MESS) developed by Debarsy et al. (2015). First, as the BGMME is a two-step estimator, we formulate corrected standard errors using a modified version of the finite sample correction method in Windmeijer (2005) that accounts for the fact that the BGMME makes more extensive use of the first-stage estimator than the GMM model analyzed by Windmeijer. Second, since the BGMME uses different moment conditions under normal, non-normal, and heteroskedastic disturbances, we propose a pretest strategy to determine which set of moment conditions is most suitable for the data at hand. Third, we consider and examine the performance of test statistics that help choose between MESS(1,1), MESS(1,0) and MESS(0,1) models. The performance of these tools is examined with Monte Carlo experiments, which also allow for varying degrees of spatial correlation in the explanatory variables. The correction in the standard errors is especially useful when the sample size is small, such as in a study with state-level, provincial or country-level data: the corrected standard errors improve statistical inference, yielding better size properties. The pretest strategy is effective when the heteroskedasticity, if present, is correlated with explanatory variables in the model. Spatial lags in the outcome variable are more easily detected than those in the disturbance. An empirical study of housing prices illustrates the new tools.
本文对Debarsy等人(2015)开发的矩阵指数空间规范(MESS)的最佳广义矩估计(BGMME)方法进行了假设和规范检验。首先,由于BGMME是一个两步估计量,我们使用Windmeijer(2005)中有限样本校正方法的修改版本来制定校正标准误差,这说明BGMME比Windmeijer分析的GMM模型更广泛地使用了第一阶段估计量。其次,由于BGMME在正态、非正态和异方差干扰下使用不同的矩条件,我们提出了一种预测试策略,以确定哪一组矩条件最适合手头的数据。第三,我们考虑并检查测试统计量的性能,这些统计量有助于在MESS(1,1)、MESS(1,0)和MESS(0,1)模型之间进行选择。这些工具的性能通过蒙特卡罗实验进行了检验,这也允许在解释变量中存在不同程度的空间相关性。标准误差的修正在样本量较小时尤其有用,例如在州级、省级或国家级数据的研究中:修正后的标准误差可以改进统计推断,产生更好的大小属性。当异方差(如果存在)与模型中的解释变量相关时,预检验策略是有效的。结果变量中的空间滞后比干扰变量中的空间滞后更容易被检测到。对房价的实证研究说明了这些新工具。
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引用次数: 0
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