Parameter Estimation from an Optimal Projection in a Local Environment

A. Bijaoui, A. Recio-Blanco, P. Laverny
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引用次数: 3

Abstract

The parameter fit from a model grid is limited by our capability to reduce the number of models, taking into account the number of parameters and the non linear variation of the models with the parameters. The Local MultiLinear Regression (LMLR) algorithms allow one to fit linearly the data in a local environment. The MATISSE algorithm, developed in the context of the estimation of stellar parameters from the Gaia RVS spectra, is connected to this class of estimators. A two-steps procedure was introduced. A raw parameter estimation is first done in order to localize the parameter environment. The parameters are then estimated by projection on specific vectors computed for an optimal estimation. The MATISSE method is compared to the estimation using the objective analysis. In this framework, the kernel choice plays an important role. The environment needed for the parameter estimation can result from it. The determination of a first parameter set can be also avoided for this analysis. These procedures based on a local projection can be fruitfully applied to non linear parameter estimation if the number of data sets to be fitted is greater than the number of models.
局部环境下最优投影的参数估计
考虑到参数的数量和模型随参数的非线性变化,模型网格的参数拟合受到我们减少模型数量的能力的限制。局部多元线性回归(LMLR)算法允许在局部环境中线性拟合数据。在根据盖亚RVS光谱估计恒星参数的背景下开发的MATISSE算法与这类估计器有关。介绍了一个两步法。首先进行原始参数估计,以便对参数环境进行局部化。然后通过在特定向量上的投影来估计参数,以获得最优估计。将马蒂斯方法与客观分析的估计方法进行了比较。在这个框架中,内核选择起着重要的作用。参数估计所需的环境可以由此产生。在此分析中还可以避免确定第一个参数集。当拟合的数据集数量大于模型数量时,这些基于局部投影的方法可以有效地应用于非线性参数估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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