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An assessment of econometric methods used in the estimation of affine term structure models.

机译:评估仿射词期限结构模型中使用的计量经济学方法。

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摘要

The first essay empirically evaluates recently developed techniques that have been proposed to improve the estimation of affine term structure models. The evaluation presented here is performed on two dimensions. On the first dimension, I find that invariant transformations and rotations can be used to reduce the number of free parameters needed to estimate the model and subsequently, improve the empirical performance of affine term structure models. The second dimension of this evaluation surrounds the comparison between estimating an affine term structure model using the model-free method and the inversion method. Using daily LIBOR rate and swap rate quotes from June 1996 to July 2008 to extract a panel of 3,034 time-series observations and 14 cross sections, this paper shows that, a term structure model that is estimated using the model-free method does not perform significantly better in fitting yields, at any horizon, than the more traditional methods available in the literature.;The second essay attempts explores implications of using principal components analysis in the estimation of affine term structure models. Early work employing principal component analysis focused on portfolio formation and trading strategies. Recent work, however, has moved the usage of principal components analysis into more formal applications such as the direct involvement of principal component based factors within an affine term structure model. It is this usage of principal components analysis in formal model settings that warrants a study of potential econometric implications of its application to term structure modeling. Serial correlation in interest rate data, for example, has been documented by several authors. The majority of the literature has focused on strong persistence in state variables as giving rise to this phenomena. In this paper, I take yields as given, and hence document the effects of whitening on the model-implied state-dependent factors, subsequently estimated by the principal component based model-free method. These results imply that the process of pre-whitening the data does play a critical role in model estimation. Results are robust to Monte Carlo Simulations. Empirical results are obtained from using daily LIBOR rate and swap rate quotes from June 1996 to July 2008 to extract a panel of zero-coupon yields consisting of 3,034 time-series observations and 14 cross sections.;The third essay examines the extent to which the prevalence of estimation risk in numerical integration creates bias, inefficiencies, and inaccurate results in the widely used class of affine term structure models. In its most general form, this class of models relies on the solution to a system of non-linear Ricatti equations to back out the state-factor coefficients. Only in certain cases does this class of models admit explicit, and thus analytically tractable, solutions for the state factor coefficients. Generally, and for more economically plausible scenarios, explicit closed form solutions do not exist and the application of Runge-Kutta methods must be employed to obtain numerical estimates of the coefficients for the state variables. Using a panel of 3,034 yields and 14 cross-sections, this paper examines what perils, if any, exist in this tradeoff of analytical tractability against economic flexibility. Robustness checks via Monte Carlo Simulations are provided. In specific, while the usage of analytical methods needs less computational time, numerical methods can be used to estimate a broader set of economic scenerios. Regardless of the data generating process, the generalized Gaussian process seems to dominate the Vasicek model in terms of bias and efficiency. However, when the data are generated from a Vasicek model, the Vasicek model performs better than the generalized Gaussian process for fitting the yield curve. These results impart new and important information about the tradeoff that exists between using analytical methods and numerical methods for estimate affine term structure models.
机译:第一篇论文从经验上评估了最近开发的技术,这些技术已被提出来改善仿射词结构模型的估计。这里介绍的评估是在两个维度上进行的。在第一维度上,我发现可以使用不变的变换和旋转来减少估计模型所需的自由参数的数量,从而提高仿射项结构模型的经验性能。该评估的第二个维度围绕着使用无模型方法和反演方法估计仿射项结构模型之间的比较。使用1996年6月至2008年7月的每日LIBOR利率和掉期利率报价提取3034个时间序列观测值和14个横截面的面板,该论文显示,使用无模型方法估算的期限结构模型无法执行在任何情况下,拟合效率都比文献中提供的更为传统的方法要好得多。第二篇文章试图探讨在仿射词结构模型的估计中使用主成分分析的含义。早期采用主成分分析的工作重点是投资组合的形成和交易策略。但是,最近的工作将主成分分析的使用转移到了更正式的应用程序中,例如将基于主成分的因子直接包含在仿射术语结构模型中。正是这种在正式模型设置中使用主成分分析的方法,才有必要研究将其应用到术语结构建模中的潜在计量经济学意义。例如,几位作者已经证明了利率数据中的序列相关性。多数文献集中在状态变量的强烈持久性上,从而引起了这种现象。在本文中,我将产量作为给定值,因此记录了白化对模型所隐含的状态相关因子的影响,随后通过基于主成分的无模型方法进行了估算。这些结果表明,数据预先变白的过程在模型估计中确实起着至关重要的作用。结果对于蒙特卡洛模拟是可靠的。通过使用1996年6月至2008年7月的每日伦敦银行同业拆借利率和掉期利率报价来提取一组由3034个时间序列观测值和14个横截面组成的零息债券收益率得出的经验结果;第三篇论文考察了数值积分中估计风险的普遍性会在广泛使用的仿射项结构模型中产生偏见,效率低下和不准确的结果。在其最一般的形式中,此类模型依赖于非线性Ricatti方程组的解决方案来返回状态因子。仅在某些情况下,此类模型才允许使用状态因数系数的显式解,因此在分析上易于处理。通常,对于更经济可行的方案,不存在显式的闭式解,并且必须采用Runge-Kutta方法的应用来获得状态变量系数的数值估计。本文使用3,034个屈服点和14个横截面的面板,研究了在分析可操作性与经济灵活性之间的权衡取舍中存在的风险(如果有)。通过蒙特卡洛模拟提供了稳健性检查。具体而言,虽然使用分析方法需要较少的计算时间,但可以使用数值方法来估计更广泛的经济情景。无论数据生成过程如何,就偏差和效率而言,广义高斯过程似乎都主导了Vasicek模型。但是,当从Vasicek模型生成数据时,Vasicek模型的性能要优于广义高斯过程来拟合收益曲线。这些结果为评估仿射项结构模型使用分析方法和数值方法之间存在的折衷提供了新的重要信息。

著录项

  • 作者

    Juneja, Januj.;

  • 作者单位

    The University of Arizona.;

  • 授予单位 The University of Arizona.;
  • 学科 Business Administration General.;Economics Finance.;Applied Mathematics.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 137 p.
  • 总页数 137
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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