The varying coefficient model has received wide attention from researchers as it is a powerful dimension reduction tool for non-parametric modeling. Most existing varying coefficient models fitted with polynomial spline assume equidistant knots and take the number of knots as the hyperparameter. However, imposing equidistant knots appears to be too rigid, and determining the optimal number of knots systematically is also a challenge. In this article, we deal with this challenge by utilizing polynomial splines with adaptively selected and predictor-specific knots to fit the coefficients in varying coefficient models. An efficient dynamic programming algorithm is proposed to find the optimal solution. Numerical results show that the new method can achieve significantly smaller mean squared errors for coefficients compared with the commonly used kernel-based method.
翻译:不同的系数模型得到了研究人员的广泛关注,因为它是非参数模型的强大减少维度工具。大多数现有的带有多元螺旋的各种不同系数模型都假定了等离结,并将结数作为超参数。然而,规定等离结似乎过于僵硬,并系统地确定结数的最佳数量也是一个挑战。在本条中,我们通过使用适应性选择和预测性特定结节的多元浮质来应对这一挑战,以适应不同系数模型中的系数。提出了高效的动态编程算法以找到最佳的解决方案。数字结果显示,与通常使用的内核法相比,新的方法可以大大缩小系数的平均正方形错误。