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首页> 外文期刊>Journal of Multivariate Analysis: An International Journal >A new minimum contrast approach for inference in single-index models
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A new minimum contrast approach for inference in single-index models

机译:单索引模型推断的新的最小对比度方法

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摘要

Abstract Semiparametric single-index models represent an appealing compromise between parametric and nonparametric approaches and have been widely investigated in the literature. The underlying assumption in single-index models is that the information carried by the vector of covariates could be summarized by a one-dimensional projection. We propose a new, general inference approach for such models, based on a quadratic form criterion involving kernel smoothing. The approach could be applied with general single-index assumptions, in particular for mean regression models and conditional law models. The covariates could be unbounded and no trimming is necessary. A resampling method for building confidence intervals for the index parameter is proposed. Our empirical experiments reveal that the new method performs well in practice. ]]>
机译:<![cdata [ 抽象 半曝光单索引模型代表参数和非参数方法之间的吸引力妥协,并已在文献中被广泛研究。单索引模型中的潜在假设是协变量传染媒介携带的信息可以通过一维投影来总结。基于涉及核平滑的二次形式标准,我们为这种模型提出了一种新的一般推理方法。该方法可以应用于一般的单指标假设,特别是对于平均回归模型和条件法规模型。协调会可能是无限的,无需修剪。提出了一种用于构建索引参数置信区间的重采样方法。我们的实验实验表明,新方法在实践中表现良好。 ]]>

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