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Model robust regression: Combining parametric, nonparametric, and semiparametric methods.

机译:模型鲁棒回归:组合参数,非参数和半参数方法。

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摘要

In obtaining a regression fit to a set of data, ordinary least squares regression depends directly on the parametric model formulated by the researcher. If this model is incorrect, a least squares analysis may be misleading. Alternatively, nonparametric regression (kernel or local polynomial regression, for example) has no dependence on an underlying parametric model, but instead depends entirely on the distances between regressor coordinates and the prediction point of interest. This procedure avoids the necessity of a reliable model, but in using no information from the researcher, may fit to irregular patterns in the data. The proper combination of these two regression procedures can overcome their respective problems. Considered is the situation where the researcher has an idea of which model should explain the behavior of the data, but this model is not adequate throughout the entire range of the data. An extension of partial linear regression and two methods of model robust regression are developed and compared in this context. These methods involve parametric fits to the data and nonparametric fits to either the data or residuals. The two fits are then combined in the most efficient proportions via a mixing parameter. Performance is based on bias and variance considerations.
机译:在获得对一组数据的回归拟合中,普通最小二乘回归直接取决于研究人员制定的参数模型。如果此模型不正确,则最小二乘分析可能会产生误导。或者,非参数回归(例如,内核或局部多项式回归)不依赖于基础参数模型,而是完全依赖于回归器坐标与感兴趣的预测点之间的距离。该过程避免了建立可靠模型的必要性,但是在不使用研究人员提供的信息的情况下,可能适合数据中的不规则模式。这两种回归方法的正确组合可以克服它们各自的问题。考虑了以下情况:研究人员对哪种模型应该解释数据的行为有一个想法,但是这种模型在整个数据范围内都不足够。在此背景下,开发并比较了部分线性回归的扩展和模型稳健回归的两种方法。这些方法涉及对数据的参数拟合,而对数据或残差的非参数拟合。然后通过混合参数将两个拟合以最有效的比例合并。绩效基于偏见和差异因素。

著录项

  • 作者

    Mays, James Edward.;

  • 作者单位

    Virginia Polytechnic Institute and State University.;

  • 授予单位 Virginia Polytechnic Institute and State University.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 1995
  • 页码 200 p.
  • 总页数 200
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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