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Inference for systems of stochastic differential equations from discretely sampled data: A numerical maximum likelihood approach

机译:从离散采样数据推断随机微分方程组:数值最大似然法

摘要

Maximum likelihood estimation of discretely observed diffusion processes is mostly hampered by the lack of a closed form solution of the transient density. It has recently been argued that a most generic remedy to this problem is the numerical solution of the pertinent Fokker-Planck (FP) or forward Kol- mogorov equation. Here we expand extant work on univariate diffusions to higher dimensions. We find that in the bivariate and trivariate cases, a numerical solution of the FP equation via alternating direction finite difference schemes yields results surprisingly close to exact maximum likelihood in a number of test cases. After providing evidence for the effciency of such a numerical approach, we illustrate its application for the estimation of a joint system of short-run and medium run investor sentiment and asset price dynamics using German stock market data.
机译:离散观测到的扩散过程的最大似然估计在很大程度上由于缺乏瞬态密度的闭合形式解而受到阻碍。最近有人争辩说,对该问题最通用的补救方法是相关福克-普朗克(FP)或正向Kolmogorov方程的数值解。在这里,我们将有关单变量扩散的现有工作扩展到更高的维度。我们发现在双变量和三变量情况下,通过交替方向有限差分方案对FP方程进行数值求解的结果出乎意料地接近了许多测试情况下的精确最大似然。在为这种数值方法的有效性提供了证据之后,我们说明了其在使用德国股票市场数据估算短期和中期投资者情绪和资产价格动态的联合系统中的应用。

著录项

  • 作者

    Lux Thomas;

  • 作者单位
  • 年度 2012
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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