为每日和每月时间序列设定基准的贝叶斯决策分析

J. Sanz-Gómez, J. Rojo-García
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引用次数: 0

摘要

在商业时间序列分析中,调整金融序列(股票期权、掉期、抵押贷款或其他贷款)时往往需要对月度时间序列进行日分解。经典的随机调整方法只能估算季度或月度基准,而且只能在高频是低频的正整倍数时使用。因此,这些方法无法解决此类问题,从而证明有必要开发适用于高频序列(日或周)的工具和方法。考虑到每个月的天数不同,本文首次提出了使用日指标的已知方法。所提出的贝叶斯(正态-伽马)方法可以在似然模型中使用多个指标,还可以获得高频序列最优估计的明确(非迭代)解决方案。同样重要的是,该模型还包括对波动指标的修正机制,这在小地区的基准问题中经常出现。该方法采用正态-伽马规格,允许对估计的日序列进行贝叶斯可信区间计算。
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Bayesian Decision Analysis For Benchmarking Daily And Monthly Time Series
In Business Time Series analysis, daily disaggregation of monthly time series is often needed when adjusting financial series (stock options, swaps, mortgages or other loans). The classical stochastic adjustment methods only allow quarterly or monthly benchmarks to be estimated and can only be applied when high frequency is a regular multiple of low frequency. Thus, they fail to offer solutions for such problems, thereby evidencing the need to develop tools and methods for high-frequency series (daily or weekly ones). This paper obtains the first known method for using daily indicators, taking into account the different number of days for each month. The proposed Bayesian (normal-gamma) method can employ several indicators for the likelihood model, also obtaining an explicit (non iterative) solution for the optimal estimate of high frequency series. It is also important to observe that the model includes a correction mechanism for volatile indicators, as is often found in benchmarking problems for small areas. The methodology, in the line of normal-gamma specifications, allows Bayesian Credibility intervals for the estimated daily series. 
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