On Parameter Estimation of Stochastic Delay Difference Equation using the Two $m$-delay Autoregressive Coefficients

Manlika Ratchagit, B. Wiwatanapataphee, D. Nur
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引用次数: 1

Abstract

This paper aims to present how to estimate a model parameter, namely the fixed rate of the investment return in the stochastic delay difference equation in financial time series using the two m-delay autoregressive coefficients. The autoregressive coefficients (ARC) algorithm is proposed and compares with the classical differential evolution (DE) algorithm. For a Monte-Carlo simulation tool, the results obtained from the model with the estimated parameter are validated with historical financial data of IBEX 35, JPM and GOOG from Thomson Reuters database in the period between 2008 and 2010. The numerical results confirm that the two $m$-delay autoregressive coefficients perform well to estimate the fixed rate of the investment return and reduce the computation time for the matching process.
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用两个$m$-delay自回归系数估计随机时滞差分方程的参数
本文旨在介绍如何利用两个m-时滞自回归系数估计金融时间序列随机时滞差分方程中的模型参数,即投资收益率的固定率。提出了自回归系数(ARC)算法,并与经典的微分进化(DE)算法进行了比较。对于蒙特卡罗模拟工具,使用Thomson Reuters数据库中IBEX 35、JPM和GOOG三家公司2008 - 2010年的历史财务数据对模型估计参数得到的结果进行验证。数值结果表明,两个$m$-delay自回归系数能够较好地估计固定投资收益率,减少匹配过程的计算时间。
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