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A linearly distributed lag estimator with r-convex coefficients

机译:具有r凸系数的线性分布滞后估计

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摘要

The purpose of linearly distributed lag models is to estimate, from time series data, values of the dependent variable by incorporating prior information of the independent variable. A least-squares calculation is proposed for estimating the lag coefficients subject to the condition that the rth differences of the coefficients are non-negative, where r is a prescribed positive integer. Such priors do not assume any parameterization of the coefficients, and in several cases they provide such an accurate representation of the prior knowledge, so as to compare favorably to established methods. In particular, the choice of the prior knowledge parameter r gives the lag coefficients interesting special features such as monotonicity, convexity, convexity/concavity, etc. The proposed estimation problem is a strictly convex quadratic programming calculation, where each of the constraint functions depends on r+1 adjacent lag coefficients multiplied by the binomial numbers with alternating signs that arise in the expansion of the rth power of (1-1). The most distinctive feature of this calculation is the Toeplitz structure of the constraint coefficient matrix, which allows the development of a special active set method that is faster than general quadratic programming algorithms. Most of this efficiency is due to reducing the equality constrained minimization calculations, which occur during the quadratic programming iterations, to unconstrained minimization ones that depend on much fewer variables. Some examples with real and simulated data are presented in order to illustrate this approach.
机译:线性分布滞后模型的目的是通过合并自变量的先验信息,从时间序列数据中估算因变量的值。提出了最小二乘计算来估计滞后系数,条件是系数的第r个差是非负的,其中r是规定的正整数。这样的先验不假设系数的任何参数化,并且在某些情况下,它们提供了先验知识的这种精确表示,以便与已建立的方法进行比较。特别是,先验知识参数r的选择赋予了滞后系数有趣的特殊特征,例如单调性,凸性,凸性/凹性等。提出的估计问题是严格凸二次规划计算,其中每个约束函数都取决于r + 1个相邻滞后系数乘以二项式数并加上交替的符号,这些符号在(1-1)的r次方的扩展中出现。此计算的最大特色是约束系数矩阵的Toeplitz结构,它允许开发一种比常规二次规划算法更快的特殊主动集方法。这种效率的大部分归因于将在二次编程迭代期间发生的等式约束最小化计算减少为依赖于更少变量的无约束最小化计算。为了说明这种方法,给出了一些带有真实和模拟数据的例子。

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