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Correction to: Sensitivity Analysis for Inverse Probability Weighting Estimators via the Percentile Bootstrap 修正:通过百分位Bootstrap对逆概率加权估计的敏感性分析
IF 5.8 1区 数学 Q1 STATISTICS & PROBABILITY Pub Date : 2023-08-05 DOI: 10.1093/jrsssb/qkad079
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引用次数: 0
Autoregressive optimal transport models. 自回归最优运输模型。
IF 5.8 1区 数学 Q1 STATISTICS & PROBABILITY Pub Date : 2023-07-01 DOI: 10.1093/jrsssb/qkad051
Changbo Zhu, Hans-Georg Müller

Series of univariate distributions indexed by equally spaced time points are ubiquitous in applications and their analysis constitutes one of the challenges of the emerging field of distributional data analysis. To quantify such distributional time series, we propose a class of intrinsic autoregressive models that operate in the space of optimal transport maps. The autoregressive transport models that we introduce here are based on regressing optimal transport maps on each other, where predictors can be transport maps from an overall barycenter to a current distribution or transport maps between past consecutive distributions of the distributional time series. Autoregressive transport models and their associated distributional regression models specify the link between predictor and response transport maps by moving along geodesics in Wasserstein space. These models emerge as natural extensions of the classical autoregressive models in Euclidean space. Unique stationary solutions of autoregressive transport models are shown to exist under a geometric moment contraction condition of Wu & Shao [(2004) Limit theorems for iterated random functions. Journal of Applied Probability 41, 425-436)], using properties of iterated random functions. We also discuss an extension to a varying coefficient model for first-order autoregressive transport models. In addition to simulations, the proposed models are illustrated with distributional time series of house prices across U.S. counties and annual summer temperature distributions.

由等间隔时间点索引的单变量分布序列在应用中无处不在,它们的分析构成了分布数据分析这一新兴领域的挑战之一。为了量化这种分布时间序列,我们提出了一类在最优运输地图空间中运行的固有自回归模型。我们在这里介绍的自回归输运模型是基于彼此之间最优输运图的回归,其中预测因子可以是从整体重心到当前分布的输运图,也可以是分布时间序列的过去连续分布之间的输运图。自回归输运模型及其相关的分布回归模型通过在Wasserstein空间中沿测地线移动来指定预测器和响应输运图之间的联系。这些模型是经典自回归模型在欧几里得空间中的自然延伸。在Wu & Shao[2004]迭代随机函数的极限定理的几何矩收缩条件下,证明了自回归输运模型的唯一平稳解的存在。应用概率学报,41,425-436)],使用迭代随机函数的性质。我们还讨论了一阶自回归输运模型的变系数模型的推广。除了模拟之外,所提出的模型还用美国各县房价的分布时间序列和每年夏季温度的分布来说明。
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引用次数: 12
Testing homogeneity: the trouble with sparse functional data. 测试同质性:稀疏函数数据的麻烦。
IF 5.8 1区 数学 Q1 STATISTICS & PROBABILITY Pub Date : 2023-07-01 DOI: 10.1093/jrsssb/qkad021
Changbo Zhu, Jane-Ling Wang

Testing the homogeneity between two samples of functional data is an important task. While this is feasible for intensely measured functional data, we explain why it is challenging for sparsely measured functional data and show what can be done for such data. In particular, we show that testing the marginal homogeneity based on point-wise distributions is feasible under some mild constraints and propose a new two-sample statistic that works well with both intensively and sparsely measured functional data. The proposed test statistic is formulated upon energy distance, and the convergence rate of the test statistic to its population version is derived along with the consistency of the associated permutation test. The aptness of our method is demonstrated on both synthetic and real data sets.

测试两个功能数据样本之间的同质性是一项重要的任务。虽然这对于密集测量的功能数据是可行的,但我们解释了为什么它对于稀疏测量的功能数据具有挑战性,并展示了可以为此类数据做些什么。特别是,我们证明了在一些温和的约束条件下,基于点向分布的边际均匀性测试是可行的,并提出了一种新的双样本统计量,它可以很好地处理密集和稀疏测量的功能数据。提出了基于能量距离的检验统计量,并推导了检验统计量对其总体版本的收敛速度以及相关排列检验的一致性。在合成数据集和实际数据集上都证明了该方法的适用性。
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引用次数: 0
On the causal interpretation of randomised interventional indirect effects 关于随机介入间接效应的因果解释
1区 数学 Q1 STATISTICS & PROBABILITY Pub Date : 2023-06-28 DOI: 10.1093/jrsssb/qkad066
Caleb H Miles
Abstract Identification of standard mediated effects such as the natural indirect effect relies on heavy causal assumptions. By circumventing such assumptions, so-called randomised interventional indirect effects have gained popularity in the mediation literature. Here, I introduce properties one might demand of an indirect effect measure in order for it to have a true mediational interpretation. For instance, the sharp null criterion requires an indirect effect measure to be null whenever no individual-level indirect effect exists. I show that without stronger assumptions, randomised interventional indirect effects do not satisfy such criteria. I additionally discuss alternative causal interpretations of such effects.
标准中介效应(如自然间接效应)的识别依赖于大量的因果假设。通过规避这些假设,所谓的随机干预间接效应在调解文献中得到了普及。在这里,我介绍了人们可能要求的间接效应测量的性质,以便它有一个真正的中介解释。例如,尖锐零标准要求当不存在个人层面的间接效应时,间接效应度量为零。我的研究表明,如果没有更强有力的假设,随机干预的间接效应就不能满足这些标准。我还讨论了这种影响的其他因果解释。
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引用次数: 3
Two-stage estimation and bias-corrected empirical likelihood in a partially linear single-index varying-coefficient model 部分线性单指标变系数模型的两阶段估计和偏差校正经验似然
IF 5.8 1区 数学 Q1 STATISTICS & PROBABILITY Pub Date : 2023-06-27 DOI: 10.1093/jrsssb/qkad060
L. Xue
The estimation and empirical likelihood (EL) of the parameters of interest in a partially linear single-index varying-coefficient model are studied. A two-stage method is presented to estimate the regression parameters and the coefficient functions. The asymptotic distributions of the proposed estimators are obtained. Meanwhile, a bias-corrected EL ratio for the regression parameters is proposed. It is shown that the ratio is asymptotically standard chi-squared. The result can be directly used to construct the EL confidence regions of the regression parameters. Simulation studies are carried out to evaluate the finite sample behaviour of the proposed method. An application example of a real data set is given.
研究了部分线性单指标变系数模型中感兴趣参数的估计和经验似然。提出了一种两阶段估计回归参数和系数函数的方法。得到了所提估计量的渐近分布。同时,对回归参数提出了一种偏差校正后的EL比值。结果表明,该比值为渐近标准卡方。该结果可直接用于构建回归参数的EL置信区域。进行了仿真研究,以评估所提出的方法的有限样本行为。给出了一个实际数据集的应用实例。
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引用次数: 0
Testing for the Markov property in time series via deep conditional generative learning. 通过深度条件生成学习测试时间序列中的马尔可夫性质。
IF 5.8 1区 数学 Q1 STATISTICS & PROBABILITY Pub Date : 2023-06-23 eCollection Date: 2023-09-01 DOI: 10.1093/jrsssb/qkad064
Yunzhe Zhou, Chengchun Shi, Lexin Li, Qiwei Yao

The Markov property is widely imposed in analysis of time series data. Correspondingly, testing the Markov property, and relatedly, inferring the order of a Markov model, are of paramount importance. In this article, we propose a nonparametric test for the Markov property in high-dimensional time series via deep conditional generative learning. We also apply the test sequentially to determine the order of the Markov model. We show that the test controls the type-I error asymptotically, and has the power approaching one. Our proposal makes novel contributions in several ways. We utilise and extend state-of-the-art deep generative learning to estimate the conditional density functions, and establish a sharp upper bound on the approximation error of the estimators. We derive a doubly robust test statistic, which employs a nonparametric estimation but achieves a parametric convergence rate. We further adopt sample splitting and cross-fitting to minimise the conditions required to ensure the consistency of the test. We demonstrate the efficacy of the test through both simulations and the three data applications.

马尔可夫性质被广泛应用于时间序列数据的分析中。相应地,检验马尔可夫性质,并相应地推断马尔可夫模型的阶数,是至关重要的。在本文中,我们通过深度条件生成学习,提出了高维时间序列中马尔可夫性质的非参数检验。我们还依次应用测试来确定马尔可夫模型的阶数。我们证明了该检验渐近地控制了I型误差,并且具有逼近1的幂。我们的建议在几个方面作出了新的贡献。我们利用并扩展了最先进的深度生成学习来估计条件密度函数,并在估计量的近似误差上建立了一个尖锐的上界。我们推导了一个双稳健检验统计量,它采用了非参数估计,但实现了参数收敛速度。我们进一步采用样本分割和交叉拟合,以最大限度地减少确保测试一致性所需的条件。我们通过模拟和三个数据应用证明了测试的有效性。
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引用次数: 0
Normalised latent measure factor models 归一化潜在测量因子模型
1区 数学 Q1 STATISTICS & PROBABILITY Pub Date : 2023-06-23 DOI: 10.1093/jrsssb/qkad062
Mario Beraha, Jim E Griffin
Abstract We propose a methodology for modelling and comparing probability distributions within a Bayesian nonparametric framework. Building on dependent normalised random measures, we consider a prior distribution for a collection of discrete random measures where each measure is a linear combination of a set of latent measures, interpretable as characteristic traits shared by different distributions, with positive random weights. The model is nonidentified and a method for postprocessing posterior samples to achieve identified inference is developed. This uses Riemannian optimisation to solve a nontrivial optimisation problem over a Lie group of matrices. The effectiveness of our approach is validated on simulated data and in two applications to two real-world data sets: school student test scores and personal incomes in California. Our approach leads to interesting insights for populations and easily interpretable posterior inference.
摘要:我们提出了一种在贝叶斯非参数框架内建模和比较概率分布的方法。在依赖归一化随机测度的基础上,我们考虑离散随机测度集合的先验分布,其中每个测度是一组潜在测度的线性组合,可解释为不同分布共享的特征特征,具有正随机权重。提出了一种对后验样本进行后处理以实现识别推理的方法。利用黎曼优化来解决矩阵李群上的非平凡优化问题。我们的方法的有效性在模拟数据上得到了验证,并在两个实际数据集的两个应用中得到了验证:加州的学生考试成绩和个人收入。我们的方法对人群和容易解释的后验推理产生了有趣的见解。
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引用次数: 0
Strategic two-sample test via the two-armed bandit process 通过双臂盗匪过程进行战略双样本检验
IF 5.8 1区 数学 Q1 STATISTICS & PROBABILITY Pub Date : 2023-06-14 DOI: 10.1093/jrsssb/qkad061
Zengjing Chen, Xiaodong Yan, Guodong Zhang
This study aims to improve the power of two-sample tests by analysing whether the difference between two population parameters is larger than a prespecified positive equivalence margin. The classic test statistic treats the original data as exchangeable, while the proposed test statistic breaks the structure and proposes employing a two-armed bandit process to strategically integrate the data and thus a strategy-specific test statistic is constructed by combining the classic CLT with the law of large numbers. The developed asymptotic theory is investigated by using nonlinear limit theory in a larger probability space and relates to the ‘strategic CLT’ with a clearly defined density function. The asymptotic distribution demonstrates that the proposed statistic is more concentrated under the null hypothesis and less concentrated under the alternative than the classic CLT, thereby enhancing the testing power. Simulation studies provide supporting evidence for the theoretical results and portray a more powerful performance when using finite samples. A real example is also added for illustration.
本研究旨在通过分析两个总体参数之间的差异是否大于预先指定的正等效裕度来提高双样本检验的有效性。经典检验统计量将原始数据视为可交换的,而本文的检验统计量打破了这种结构,提出采用双臂强盗过程对数据进行策略整合,从而将经典的CLT与大数定律相结合,构建了针对策略的检验统计量。利用非线性极限理论在更大的概率空间中研究了渐近理论,该渐近理论涉及具有明确定义密度函数的“策略CLT”。渐近分布表明,与经典的CLT相比,所提出的统计量在零假设下更集中,在备选假设下更不集中,从而提高了检验能力。仿真研究为理论结果提供了支持证据,并在使用有限样本时描绘了更强大的性能。还添加了一个真实的例子来说明。
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引用次数: 0
Quasi-Newton updating for large-scale distributed learning 大规模分布式学习的准牛顿更新
1区 数学 Q1 STATISTICS & PROBABILITY Pub Date : 2023-06-10 DOI: 10.1093/jrsssb/qkad059
Shuyuan Wu, Danyang Huang, Hansheng Wang
Abstract Distributed computing is critically important for modern statistical analysis. Herein, we develop a distributed quasi-Newton (DQN) framework with excellent statistical, computation, and communication efficiency. In the DQN method, no Hessian matrix inversion or communication is needed. This considerably reduces the computation and communication complexity of the proposed method. Notably, related existing methods only analyse numerical convergence and require a diverging number of iterations to converge. However, we investigate the statistical properties of the DQN method and theoretically demonstrate that the resulting estimator is statistically efficient over a small number of iterations under mild conditions. Extensive numerical analyses demonstrate the finite sample performance.
分布式计算对现代统计分析至关重要。在此,我们开发了一个具有出色统计,计算和通信效率的分布式准牛顿(DQN)框架。在DQN方法中,不需要Hessian矩阵反演和通信。这大大降低了该方法的计算和通信复杂度。值得注意的是,现有的相关方法只分析数值收敛性,并且需要发散迭代数才能收敛。然而,我们研究了DQN方法的统计性质,并从理论上证明了在温和的条件下,在少量迭代中得到的估计器是统计有效的。大量的数值分析证明了有限样本的性能。
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引用次数: 0
Correction to: Autoregressive optimal transport models. 更正:自回归最优运输模型。
IF 5.8 1区 数学 Q1 STATISTICS & PROBABILITY Pub Date : 2023-05-31 eCollection Date: 2023-07-01 DOI: 10.1093/jrsssb/qkad057

[This corrects the article DOI: 10.1093/jrsssb/qkad051.].

[这更正了文章DOI:10.1093/jrsssb/qkad051.]。
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引用次数: 0
期刊
Journal of the Royal Statistical Society Series B-Statistical Methodology
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