This work studies an experimental design problem where $x$'s are to be selected with the goal of estimating a function $m(x)$, which is observed with noise. A linear model is fitted to $m(x)$ but it is not assumed that the model is correctly specified. It follows that the quantity of interest is the best linear approximation of $m(x)$, which is denoted by $\ell(x)$. It is shown that in this framework the ordinary least squares estimator typically leads to an inconsistent estimation of $\ell(x)$, and rather weighted least squares should be considered. An asymptotic minimax criterion is formulated for this estimator, and a design that minimizes the criterion is constructed. An important feature of this problem is that the $x$'s should be random, rather than fixed. Otherwise, the minimax risk is infinite. It is shown that the optimal random minimax design is different from its deterministic counterpart, which was studied previously, and a simulation study indicates that it generally performs better when $m(x)$ is a quadratic or a cubic function. Another finding is that when the variance of the noise goes to infinity, the random and deterministic minimax designs coincide. The results are illustrated for polynomial regression models and different generalizations are presented.
翻译:这项工作研究一个实验设计问题, 选择$x美元的目的是为了估算一个函数$m( x) 美元, 并且用噪音来观察。 线性模型安装为 $( x) 美元, 但无法假定该模型的指定正确。 由此可见, 利息的数量是美元( x) 美元的最佳线性近似值, 美元( x) 美元表示美元( x) 。 显示在此框架中, 普通的最小正方块估计值通常导致对美元( ell( x) 美元的估计不一致, 并且应考虑加权最低方块。 为此天线性标设计了一个淡化的迷你鱼标准, 并且设计了一个将标准最小值最大化为 $( x), 但它的最小方块值是随机的直线性近似近似近似值。 否则, 最小方块的风险是无限的。 显示最佳的随机微方块设计与以前研究过的确定性对应方值不同, 模拟研究显示当 $( x) 美元是普通正方块的正态和正方块的正态设计结果时, 它一般的正态是随机的正态, 。