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Analysis of Market Returns Using Multifractal Time Series and Agent-Based Simulation.

机译:使用多重分形时间序列和基于代理的仿真对市场收益进行分析。

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摘要

Many types of financial time series, most notably market returns, have been found to exhibit long-range memory as well as dramatic day-to-day swings that cannot be adequately represented by light-tailed distributions such as the normal distribution. In particular, this means that for such time series, the sum of covariances at all time lags is not defined because the covariance function does not converge to zero fast enough as the time lag increases. Moreover in such time series, often the tails of the marginal density converge to zero so slowly that higher-order marginal moments such as skewness and kurtosis fail to exist. Therefore conventional methods for analyzing simulation-generated time series cannot generally be applied to high-fidelity simulations of financial markets.;Building on earlier work in fractal geometry and fractal time series, in 1997 Mandelbrot et al. proposed the multifractal model of asset returns (MMAR) as an alternative to the ARCH models for analyzing time series exhibiting volatility clustering, long-range dependence, and heavy-tailed returns. Mandelbrot et al. defined the multifractal spectrum as the renormalized probability density function of the Holder exponents observed in the time series; and they used the multifractal spectrum to measure the ability of MMAR to match the statistical properties of real data. In 2002 Kantelhardt et al. formulated multifractal detrended fluctuation analysis (MF-DFA), an algorithm for extracting the multifractal spectrum from a time series.;Many economists have recently adopted agent-based simulation for modeling financial markets. Fads based on new products, shocks related to world events, scandals involving company leaders, or outright criminal activity can drastically change the processes and relationships governing a market. Already there is evidence that agent-based models yield more accurate approximations to the true or observed behavior in financial markets compared with approximations achieved with conventional discrete-event models. Agent-based models exhibit emergent behaviors that have been linked to non-Gaussian interaction metrics and singularities in the time series they generate.;To analyze market-return time series exhibiting volatility clustering, long-range dependence, or heavy-tailed marginals, we exploit multifractal analysis and agent-based simulation. We develop a robust, automated software tool for extracting the multifractal spectrum of a time series based on MF-DFA. Guidelines are given for setting MF-DFA's parameters in practice. The software is tested on simulated data with closed-form monofractal and multifractal spectra as well as on observed data, and the results are analyzed. We also present a prototype agent-based financial market model and analyze its output using MF-DFA. The ultimate objective is to expand this model to study the effects of microlevel agent behaviors on the macrolevel time series output as analyzed by MF-DFA. Finally we explore the potential for validating agent-based models using MF-DFA.
机译:已发现许多类型的金融时间序列,尤其是市场收益,具有长期记忆和戏剧性的日常波动,无法通过诸如正态分布之类的轻尾分布来充分体现。特别地,这意味着对于这样的时间序列,没有定义所有时间滞后的协方差之和,因为随着时间滞后的增加,协方差函数没有足够快地收敛到零。此外,在这样的时间序列中,边际密度的尾部经常收敛到零,以至于缓慢出现以至于偏斜和峰度之类的高阶边际矩不存在。因此,通常无法将用于分析模拟生成的时间序列的常规方法应用于金融市场的高保真度模拟。基于分形几何学和分形时间序列的早期工作,1997年Mandelbrot等人。提出了资产收益率的多重分形模型(MMAR)作为ARCH模型的替代方案,用于分析表现出波动性聚类,长期依赖和重尾收益的时间序列。 Mandelbrot等。将多重分形谱定义为在时间序列中观察到的Holder指数的重新归一化概率密度函数;他们使用多重分形谱来衡量MMAR匹配实际数据统计特性的能力。在2002年Kantelhardt等人。制定了多重分形去趋势波动分析(MF-DFA),一种从时间序列中提取多重分形频谱的算法。基于新产品的时尚,与世界大事有关的震惊,与公司领导有关的丑闻或彻头彻尾的犯罪活动可以极大地改变管理市场的过程和关系。已经有证据表明,与传统的离散事件模型相比,基于代理的模型可以更准确地近似金融市场中真实或观察到的行为。基于代理的模型在其生成的时间序列中表现出与非高斯相互作用度量和奇异性相关的突发行为;为了分析表现出波动性聚集,长期依赖或重尾边际的市场收益时间序列,我们利用多重分形分析和基于代理的模拟。我们开发了一个强大的自动化软件工具,用于提取基于MF-DFA的时间序列的多形谱。给出了在实践中设置MF-DFA参数的准则。该软件在具有封闭形式的单分形和多分形光谱的模拟数据以及观察到的数据上进行了测试,并对结果进行了分析。我们还提出了一个基于代理的原型金融市场模型,并使用MF-DFA分析了其输出。最终目标是扩展此模型,以研究MF-DFA分析的微观代理行为对宏观时间序列输出的影响。最后,我们探索使用MF-DFA验证基于代理的模型的潜力。

著录项

  • 作者

    Thompson, James R.;

  • 作者单位

    North Carolina State University.;

  • 授予单位 North Carolina State University.;
  • 学科 Engineering System Science.;Engineering Industrial.;Economics Finance.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 156 p.
  • 总页数 156
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:40:58

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