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Algorithms for approximate linear regression design with application to a first order model with heteroscedasticity

机译:近似线性回归设计算法及其在具有异方差性的一阶模型中的应用

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The basic structure of algorithms for numerical computation of optimal approximate linear regression designs is briefly summarized. First order methods are contrasted to second order methods. A first order method, also called a vertex direction method, uses a local linear approximation of the optimality criterion at the actual point. A second order method is a Newton or quasi-Newton method, employing a local quadratic approximation. Specific application is given to a multiple first order regression model on a cube with heteroscedasticity caused by random coefficients with known dispersion matrix. For a general (positive definite) dispersion matrix the algorithms work for moderate dimension of the cube. If the dispersion matrix is diagonal, a restriction to invariant designs is legal by equivariance of the model and the algorithms also work for large dimension.
机译:简要总结了用于最佳近似线性回归设计数值计算的算法的基本结构。一阶方法与二阶方法形成对比。一阶方法(也称为顶点方向方法)在实际点上使用最优性准则的局部线性近似。二阶方法是牛顿法或准牛顿法,采用局部二次逼近。将特定应用应用于具有由已知色散矩阵的随机系数引起的异方差性的多维数据集上的多维一阶回归模型。对于一般(正定)色散矩阵,算法适用于立方体的中等尺寸。如果色散矩阵是对角线,则通过模型的等方差来限制不变设计是合法的,并且算法也适用于大尺寸。

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