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Estimation for generalized partially functional linear additive regression model

机译:广义部分函数线性加性回归模型的估计

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摘要

In practice, it is not uncommon to encounter the situation that a discrete response is related to both a functional random variable and multiple real-value random variables whose impact on the response is nonlinear. In this paper, we consider the generalized partial functional linear additive models (GPFLAM) and present the estimation procedure. In GPFLAM, the nonparametric functions are approximated by polynomial splines and the infinite slope function is estimated based on the principal component basis function approximations. We obtain the estimator by maximizing the quasi-likelihood function. We investigate the finite sample properties of the estimation procedure via Monte Carlo simulation studies and illustrate our proposed model by a real data analysis.
机译:实际上,遇到离散响应与功能随机变量和多个对响应有非线性影响的实数值随机变量有关的情况并不少见。在本文中,我们考虑了广义局部函数线性加性模型(GPFLAM),并提出了估计程序。在GPFLAM中,非参数函数由多项式样条曲线逼近,而无限斜率函数则基于主成分基函数逼近来估算。我们通过最大化拟似然函数来获得估计量。我们通过蒙特卡洛模拟研究调查了估计程序的有限样本属性,并通过实际数据分析说明了我们提出的模型。

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