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首页> 外文期刊>Journal of Econometrics >Convolutional autoregressive models for functional time series
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Convolutional autoregressive models for functional time series

机译:功能时间序列的卷积自回归模型

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Functional data analysis has became an increasingly popular class of problems in statistical research. However, functional data observed over time with serial dependence remains a less studied area. Motivated by Bosq (2000), who first introduced the functional autoregressive models, we propose a convolutional functional autoregressive model, where the function at time t is a result of the sum of convolutions of the past functions and a set of convolution functions, plus a noise process, mimicking the vector autoregressive process. It provides an intuitive and direct interpretation of the dynamics of a stochastic process. Instead of principal component analysis commonly used in functional data analysis, we adopt a sieve estimation procedure based on B-spline approximation of the convolution functions. We establish convergence rate of the proposed estimator, and investigate its theoretical properties. The model building, model validation, and prediction procedures are also developed. Both simulated and real data examples are presented. (C) 2016 Elsevier B.V. All rights reserved.
机译:功能数据分析已成为统计研究中越来越流行的一类问题。然而,随着时间的流逝,具有系列依赖性的功能数据仍然是一个研究较少的领域。受Bosq(2000)的启发,他首先介绍了函数自回归模型,我们提出了卷积函数自回归模型,其中时间t的函数是过去函数和一组卷积函数的卷积和的结果。噪声过程,模仿向量自回归过程。它提供了对随机过程动力学的直观直观的解释。代替功能数据分析中常用的主成分分析,我们采用基于卷积函数的B样条近似的筛分估计程序。我们建立拟议估计量的收敛速度,并研究其理论性质。还开发了模型构建,模型验证和预测程序。给出了模拟和真实数据示例。 (C)2016 Elsevier B.V.保留所有权利。

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