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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Using Particle Swarm Optimization Algorithm to Calibrate the Term Structure Model
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Using Particle Swarm Optimization Algorithm to Calibrate the Term Structure Model

机译:使用粒子群优化算法来校准术语结构模型

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摘要

One of the advantages of stochastic differential equations (SDE) is that they can follow a variety of different trends so that they can establish complex dynamic systems in the economic and financial fields. Although some estimation methods have been proposed to identify the unknown parameters in virtue of the results in the SDE model to speed up the process, these solutions only focus on using explicit approach to solve SDEs, and therefore they are not reliable to deal with data source merged being large and varied. Thus, this study makes progress in creating a new implicit way to fill in the gaps of accurately calibrating the unknown parameters in the SDE model. Essentially, the primary goal of the article is to generate rigid SDE simulation. Meanwhile, the particle swarm optimization method serves a purpose to search and simultaneously obtain the optimal estimation of the model unknown parameters in the complicated experiment of parameter space in an effective way. Finally, in an interest rate term structure model, it is verified that the method effectively deals with parameter estimation in the SDE model.
机译:随机微分方程(SDE)的一个优点是它们可以遵循各种不同的趋势,以便他们可以在经济和金融领域建立复杂的动态系统。尽管已经提出了一些估计方法以鉴定SDE模型中的结果以加速该过程的结果,但这些解决方案仅关注使用显式方法来解决SDE,因此它们不可靠地处理数据源合并大而且变化。因此,本研究在创建新的隐式方法方面取得了进展,以填补精确校准SDE模型中未知参数的差距。基本上,文章的主要目标是产生刚性SDE仿真。同时,粒子群优化方法用于以有效的方式搜索和同时在参数空间的复杂实验中获得型号未知参数的最佳估计。最后,在一个利率期限结构模型中,验证了该方法有效地涉及SDE模型中的参数估计。

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