The estimation of parameters from data is a common problem in many areas of the physical sciences, and frequently used algorithms rely on sets of simulated data which are fit to data. In this article, an analytic solution for simulation-based parameter estimation problems is presented. The matrix formalism, termed the Linear Template Fit, calculates the best estimators for the parameters of interest. It combines a linear regression with the method of least squares. The algorithm uses only predictions calculated for a few values of the parameters of interest, which have been made available prior to its execution. The Linear Template Fit is particularly suited for performance critical applications and parameter estimation problems with computationally intense simulations, which are otherwise often limited in their usability for statistical inference. Equations for error propagation are discussed in detail and are given in closed analytic form. For the solution of problems with a nonlinear dependence on the parameters of interest, the Quadratic Template Fit is introduced. As an example application, a determination of the strong coupling constant from inclusive jet cross section data at the CERN Large Hadron Collider is studied and compared with previously published results.
翻译:对数据参数的估计是物理科学许多领域的一个常见问题,经常使用的算法依赖与数据相适应的模拟数据组。在本篇文章中,提出了模拟参数估计问题的分析解决办法。矩阵形式主义(称为线性模板Fit)计算出利息参数的最佳估计数据。它将线性回归与最小方位方法结合起来。算法只使用计算出利益参数的几个值的预测,这些值在执行之前就已经存在。线性模版特别适合性能关键应用和参数估计问题,而计算强度模拟往往限制其统计推断的可用性。错误传播的计算是详细讨论的,并以封闭性分析形式提供。为了解决非线性依赖利息参数的问题,引入了夸德性模版。作为实例,研究并比较了CERN Ung Hadron Colider公司包容性喷气跨段数据的强烈组合常数。