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Least-squares estimation in linear regression models with vague concepts

机译:具有模糊概念的线性回归模型中的最小二乘估计

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The paper is a contribution to parameter estimation in fuzzy regression models with random fuzzy sets. Here models with crisp parameters and fuzzy observations of the variables are investigated. This type of regression models may be understood as an extension of the ordinary single equation linear regression models by integrating additionally the physical vagueness of the involved items. So the significance of these regression models is to improve the empirical meaningfulness of the relationship between the items by a more sensitive attention to the fundamental adequacy problem of measurement. Concerning the parameter estimation the ordinary least-squares method is extended. The existence of estimators by the suggested method is shown, and some of their stochastic properties are surveyed.
机译:本文为具有随机模糊集的模糊回归模型中的参数估计做出了贡献。在这里,研究了具有清晰参数的模型和变量的模糊观测。通过额外集成所涉及项目的物理模糊性,可以将这种类型的回归模型理解为普通单方程线性回归模型的扩展。因此,这些回归模型的意义在于,通过更加敏感地关注测量的基本充分性问题,来提高项目之间关系的经验意义。关于参数估计,扩展了普通最小二乘法。证明了所提出方法的估计量的存在,并对它们的一些随机性质进行了调查。

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