{"title":"A Financial Market Model for the Netherlands: A Methodological Refinement","authors":"S. Muns","doi":"10.2139/ssrn.2657980","DOIUrl":null,"url":null,"abstract":"The Committee Parameters (Langejan et al. (2014)) advises to use the KNW-model (after Koijen et al. (2010)) to generate a representative scenario set for feasibility studies of pension funds. The scenario set enables a stochastic analysis of such feasibility studies. The underlying KNW-model is based on an affine factor model for the term structure. Stock returns, bond returns, interest rates, and inflation depend on observed factors and two latent factors. As such, the model contains relations between key financial risk factors of pension funds. CPB’s task is to estimate the model on Dutch data and, if appropriate, to calibrate some parameters in order to fit the recommendations of the Committee Parameters. Draper (2014) describes the current methods for this estimation and calibration.The calibration aims to adjust the Ultimate Forward Rate (UFR) and certain long-term expectations and covariances of the variables in the model. However, this calibration process introduces some arbitrariness. More specifically, the resulting parameter set may deviate substantially from the maximum likelihood set, even when taking the restrictions of the calibration into account. Instead of calibrating the model, we show how to impose restrictions in a continuous-time affine term structure model. In this way, the parameters correspond to the optimum of a constrained maximum likelihood estimation. The results suggest that the method in Draper (2014) provides suboptimal parameter estimates.The main result of this paper is the derivation of closed-form expressions for the long-term (unconditional) expectations, covariances, and the term structure. The expressions are required for the constrained likelihood optimization, and replace simulations for a long-run analysis of parameter sets. Our results apply to a wide range of continuous-time affine term strucure models with the Markov property, including the models in Dai and Singleton (2002) and Koijen et al. (2010).The model is outlined in Section 2. Section 3 provides expressions for the mean and covariance of possibly transformed variables in a VAR(1)-model. Section 4 presents closed-form expressions for some characteristics of the term structure in terms of the parameters. The estimation results are in Section 5. We draw conclusions in Section 6.","PeriodicalId":357131,"journal":{"name":"Netspar Research Paper Series","volume":"70 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2015-09-04","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"5","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Netspar Research Paper Series","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.2139/ssrn.2657980","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 5
Abstract
The Committee Parameters (Langejan et al. (2014)) advises to use the KNW-model (after Koijen et al. (2010)) to generate a representative scenario set for feasibility studies of pension funds. The scenario set enables a stochastic analysis of such feasibility studies. The underlying KNW-model is based on an affine factor model for the term structure. Stock returns, bond returns, interest rates, and inflation depend on observed factors and two latent factors. As such, the model contains relations between key financial risk factors of pension funds. CPB’s task is to estimate the model on Dutch data and, if appropriate, to calibrate some parameters in order to fit the recommendations of the Committee Parameters. Draper (2014) describes the current methods for this estimation and calibration.The calibration aims to adjust the Ultimate Forward Rate (UFR) and certain long-term expectations and covariances of the variables in the model. However, this calibration process introduces some arbitrariness. More specifically, the resulting parameter set may deviate substantially from the maximum likelihood set, even when taking the restrictions of the calibration into account. Instead of calibrating the model, we show how to impose restrictions in a continuous-time affine term structure model. In this way, the parameters correspond to the optimum of a constrained maximum likelihood estimation. The results suggest that the method in Draper (2014) provides suboptimal parameter estimates.The main result of this paper is the derivation of closed-form expressions for the long-term (unconditional) expectations, covariances, and the term structure. The expressions are required for the constrained likelihood optimization, and replace simulations for a long-run analysis of parameter sets. Our results apply to a wide range of continuous-time affine term strucure models with the Markov property, including the models in Dai and Singleton (2002) and Koijen et al. (2010).The model is outlined in Section 2. Section 3 provides expressions for the mean and covariance of possibly transformed variables in a VAR(1)-model. Section 4 presents closed-form expressions for some characteristics of the term structure in terms of the parameters. The estimation results are in Section 5. We draw conclusions in Section 6.
委员会参数(Langejan et al.(2014))建议使用knw模型(继Koijen et al.(2010)之后)生成养老基金可行性研究的代表性情景集。情景集可以对这种可行性研究进行随机分析。底层的know模型是基于期限结构的仿射因子模型。股票收益、债券收益、利率和通货膨胀取决于观察因素和两个潜在因素。因此,该模型包含了养老基金主要财务风险因素之间的关系。CPB的任务是根据荷兰的数据估计模型,并酌情校正一些参数,以符合委员会参数的建议。Draper(2014)描述了目前这种估计和校准的方法。校准的目的是调整最终远期利率(UFR)和模型中变量的某些长期预期和协方差。然而,这种校准过程引入了一些随意性。更具体地说,即使考虑到校准的限制,结果参数集也可能大大偏离最大似然集。我们不是校准模型,而是展示如何在连续时间仿射期限结构模型中施加限制。这样,参数对应于约束最大似然估计的最优值。结果表明,Draper(2014)的方法提供了次优参数估计。本文的主要结果是推导出长期(无条件)期望、协方差和期限结构的封闭表达式。这些表达式是约束似然优化所必需的,并且可以代替模拟进行参数集的长期分析。我们的结果适用于广泛的具有马尔可夫性质的连续时间仿射期限结构模型,包括Dai和Singleton(2002)以及Koijen等人(2010)中的模型。该模型在第2节中概述。第3节给出了VAR(1)-模型中可能变换的变量的均值和协方差的表达式。第4节以参数的形式给出期限结构的一些特征的封闭表达式。估计结果见第5节。我们在第6节中得出结论。