首页> 外文OA文献 >Correspondance entre régression par processus Gaussien et splines d'interpolation sous contraintes linéaires de type inégalité. Théorie et applications.
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Correspondance entre régression par processus Gaussien et splines d'interpolation sous contraintes linéaires de type inégalité. Théorie et applications.

机译:高斯过程的回归与插值样条曲线在不等式类型的线性约束下的对应关系。理论与应用。

摘要

This thesis is dedicated to interpolation problems when the numerical function is known to satisfy some properties such as positivity, monotonicity or convexity. Two methods of interpolation are studied. The first one is deterministic and is based on convex optimization in a Reproducing Kernel Hilbert Space (RKHS). The second one is a Bayesian approach based on Gaussian Process Regression (GPR) or Kriging. By using a finite linear functional decomposition, we propose to approximate the original Gaussian process by a finite-dimensional Gaussian process such that conditional simulations satisfy all the inequality constraints. As a consequence, GPR is equivalent to the simulation of a truncated Gaussian vector to a convex set. The mode or Maximum A Posteriori is defined as a Bayesian estimator and prediction intervals are quantified by simulation. Convergence of the method is proved and the correspondence between the two methods is done. This can be seen as an extension of the correspondence established by [Kimeldorf and Wahba, 1971] between Bayesian estimation on stochastic process and smoothing by splines. Finally, a real application in insurance and finance is given to estimate a term-structure curve and default probabilities.
机译:当数值函数已知满足某些性质,如正性,单调性或凸性时,本论文专门研究插值问题。研究了两种插值方法。第一个是确定性的,并且基于“再生内核希尔伯特空间”(RKHS)中的凸优化。第二种是基于高斯过程回归(GPR)或Kriging的贝叶斯方法。通过使用有限线性函数分解,我们建议通过有限维高斯过程来逼近原始高斯过程,以便条件模拟满足所有不等式约束。因此,GPR等效于将截断的高斯矢量模拟为凸集。模式或最大后验时间定义为贝叶斯估计量,预测间隔通过仿真进行量化。证明了该方法的收敛性,并且完成了两种方法之间的对应关系。这可以看作是[Kimeldorf and Wahba,1971]在随机过程的贝叶斯估计与样条平滑之间建立的对应关系的扩展。最后,给出了在保险和金融领域的实际应用,以估算期限结构曲线和违约概率。

著录项

  • 作者

    Maatouk Hassan;

  • 作者单位
  • 年度 2015
  • 总页数
  • 原文格式 PDF
  • 正文语种 fr
  • 中图分类

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