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A Monte Carlo study of new time series statistical tests and their application to the modeling of price dynamics in futures markets.

机译:蒙特卡洛研究新的时间序列统计检验及其在期货市场价格动态建模中的应用。

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摘要

Modeling price dynamics in financial markets has become an important research area in financial economics. In the past empirical studies of financial price movements were based on methods that were incapable of detecting or modeling nonlinear serial dependence that characterizes financial market data. Recently, advances in the study of nonlinear dynamics in the physical sciences have motivated researchers to apply nonlinear time-series models to the study of financial and economic data. This dissertation investigates three statistical tests which can detect nonlinear serial dependence, and applies these tests and two nonlinear time-series models to futures markets.;Based on findings of Monte Carlo investigation, the three tests and two nonlinear time-series models are applied to the study of price dynamics in futures markets. The futures studied are the S&P 500, Crude Oil, Japanese Yen, Deutsche Mark, and Eurodollar futures. The results show that the price changes of all five futures have nonlinear serial dependence, and that they can be modeled by nonlinear time-series models, either GARCH, or TAR, or combined TAR-GARCH model.;The main conclusions to emerge from the findings of this dissertation are as follows. The three tests are reliable for detecting serial dependence, including nonlinear serial dependence. The tests work well when sample size equals 1000 or larger and the sample's departure from the null hypothesis is not too small. When analyzing futures prices, we have to acount for nonlinear serial dependence, use nonlinear models with conditional heteroskedasticity and conditional mean change.;In this dissertation, the finite sample properties of the BDS, TAR-F and Q
机译:对金融市场中的价格动态进行建模已成为金融经济学的重要研究领域。过去,对金融价格变动的经验研究基于无法检测或建模表征金融市场数据的非线性序列依赖性的方法。近年来,物理学中非线性动力学研究的不断发展促使研究人员将非线性时间序列模型应用于金融和经济数据的研究。本文研究了三种可以检测非线性序列相关性的统计检验,并将这些检验和两个非线性时间序列模型应用于期货市场。基于蒙特卡洛研究的结果,将这三个检验和两个非线性时间序列模型应用于期货市场。期货市场价格动态研究。研究的期货是标准普尔500,原油,日元,德国马克和欧洲美元的期货。结果表明,所有五种期货的价格变化都具有非线性序列依赖性,可以通过非线性时间序列模型GARCH或TAR或组合TAR-GARCH模型进行建模。本论文的发现如下。这三个测试对于检测包括非线性序列依赖性在内的序列依赖性是可靠的。当样本大小等于或大于1000且样本与原假设的偏离不太小时,这些测试会很好地工作。在分析期货价格时,我们必须考虑非线性序列依赖性,使用具有条件异方差和条件均值变化的非线性模型。本文研究了BDS,TAR-F和Q的有限样本性质。

著录项

  • 作者

    Gao, Hong.;

  • 作者单位

    American University.;

  • 授予单位 American University.;
  • 学科 Statistics.;Economics Finance.;Economics General.
  • 学位 Ph.D.
  • 年度 1994
  • 页码 238 p.
  • 总页数 238
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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