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Spatial Regression Models with Spatially Correlated Errors.

机译:具有空间相关误差的空间回归模型。

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摘要

This thesis studies the spatial regression models with lattice data, with emphasis on models with spatially correlated errors. For the large scale variation of the data, the non-parametric, additive nonparametric and semi-parametric structure are adopted; while for the small scale variation, the errors are assumed to satisfy the torus, separable or unilateral SGAR model. Following Martins-Filho & Yao (2009), we propose to estimate the large scale variation with a two-step fitting procedure, which firstly forms a new process with the same conditional mean as the original one and i.i.d. errors, and secondly applies the estimation to the new process. Such approach takes both nonstationary mean/trend effects and spatial dependencies into account, hence overmatches the traditional estimations.;Asymptotic properties of both first- and second-step estimators are investigated. For the first-step estimators of the unknown regression function, the convergence rate with all three types of errors is considered, and when errors satisfy the separable or unilateral SGAR model, the asymptotic normality is established. For the second-step estimators of the unknown regression function, the asymptotic normality with three types of error structures is established. In the semi-parametric model, we also establish the asymptotic normality of the first- and second-step estimators of the linear parameters.;For all the models, simulations are conducted to assess the performance of our fitting. Under the condition that spatially correlated errors exist, the results show that our estimation works better than the traditional methods. The improvement of our estimation is significant when the volatility of the errors is large. As an illustration of our approach, a case study of the housing price in Hong Kong is given. It is shown that our approach improves the estimation, especially when some key factor is absent in the modelling.
机译:本文研究了具有格点数据的空间回归模型,重点是具有空间相关误差的模型。对于大范围的数据变化,采用非参数,加性非参数和半参数结构。对于小规模变化,假定误差满足圆环,可分离或单边SGAR模型。根据Martins-Filho和Yao(2009),我们建议通过两步拟合程序来估计大规模变化,该过程首先形成一个新的过程,其条件均值与原始方法和i.d.错误,然后将估算值应用于新流程。这种方法既考虑了非平稳均值/趋势效应,又考虑了空间依赖性,因此与传统估计值不匹配。;研究了第一和第二步估计量的渐近性质。对于未知回归函数的第一步估计,考虑了所有三种类型误差的收敛速度,并且当误差满足可分离或单边SGAR模型时,建立了渐近正态性。对于未知回归函数的第二步估计量,建立了具有三种误差结构的渐近正态性。在半参数模型中,我们还建立了线性参数的第一和第二步估计量的渐近正态性。对于所有模型,都进行了仿真以评估我们的拟合性能。结果表明,在存在空间相关误差的条件下,我们的估计比传统方法效果更好。当误差的波动性很大时,我们的估计值将得到改善。为了说明我们的做法,我们以香港房价为例进行了研究。结果表明,我们的方法改进了估计,尤其是当建模中缺少某些关键因素时。

著录项

  • 作者

    Zhang, Fan.;

  • 作者单位

    Hong Kong Polytechnic University (Hong Kong).;

  • 授予单位 Hong Kong Polytechnic University (Hong Kong).;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 151 p.
  • 总页数 151
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:44:32

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