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Study and implementation of some quantitative trading models

机译:一些量化交易模型的研究与实现

摘要

Quantitative or algorithmic trading is the automatization of investments decisions obeying a fixed or dynamic sets of rules to determine trading orders. It has increasingly made its way up to 70% of the trading volume of one of the biggest financial markets such as the New York Stock Exchange (NYSE). However, there is not a signi cant amount of academic literature devoted to it due to the private nature of investment banks and hedge funds. This projects aims to review the literature and discuss the models available in a subject that publications are scarce and infrequently. We review the basic and fundamental mathematical concepts needed for modeling financial markets such as: stochastic processes, stochastic integration and basic models for prices and spreads dynamics necessary for building quantitative strategies. We also contrast these models with real market data with minutely sampling frequency from the Dow Jones Industrial Average (DJIA). Quantitative strategies try to exploit two types of behavior: trend following or mean reversion. The former is grouped in the so-called technical models and the later in the so-called pairs trading. Technical models have been discarded by financial theoreticians but we show that they can be properly cast into a well defined scientific predictor if the signal generated by them pass the test of being a Markov time. That is, we can tell if the signal has occurred or not by examining the information up to the current time; or more technically, if the event is F_t-measurable. On the other hand the concept of pairs trading or market neutral strategy is fairly simple. However it can be cast in a variety of mathematical models ranging from a method based on a simple euclidean distance, in a co-integration framework or involving stochastic differential equations such as the well-known Ornstein-Uhlenbeck mean reversal ODE and its variations. A model for forecasting any economic or financial magnitude could be properly defined with scientific rigor but it could also lack of any economical value and be considered useless from a practical point of view. This is why this project could not be complete without a backtesting of the mentioned strategies. Conducting a useful and realistic backtesting is by no means a trivial exercise since the laws" that govern financial markets are constantly evolving in time. This is the reason because we make emphasis in the calibration process of the strategies' parameters to adapt the given market conditions. We find out that the parameters from technical models are more volatile than their counterpart form market neutral strategies and calibration must be done in a high-frequency sampling manner to constantly track the currently market situation. As a whole, the goal of this project is to provide an overview of a quantitative approach to investment reviewing basic strategies and illustrating them by means of a back-testing with real financial market data. The sources of the data used in this project are Bloomberg for intraday time series and Yahoo! for daily prices. All numeric computations and graphics used and shown in this project were implemented in MATLAB^R scratch from scratch as a part of this thesis. No other mathematical or statistical software was used.
机译:定量或算法交易是指遵循固定或动态规则集来确定交易订单的投资决策的自动化。在越来越多的最大金融市场之一,例如纽约证券交易所(NYSE)的交易量中,它达到了70%。但是,由于投资银行和对冲基金的私人性质,没有大量的学术文献专门针对此问题。该项目旨在回顾文献并讨论出版物稀缺且不经常出现的主题中可用的模型。我们回顾了为金融市场建模所需的基本和基本数学概念,例如:随机过程,随机整合和价格基本模型,以及建立定量策略所必需的价差动态。我们还将这些模型与真实的市场数据进行对比,并以道琼斯工业平均指数(DJIA)的微小采样频率作为样本。定量策略试图利用两种行为:趋势跟随或均值回归。前者归类于所谓的技术模型中,后者归类于所谓的成对交易中。金融理论家已经抛弃了技术模型,但我们证明,只要它们产生的信号通过了马尔可夫时间检验,就可以将它们正确地定义为明确的科学预测变量。也就是说,通过检查当前时间之前的信息,我们可以判断信号是否已经发生;或更严格地说,如果事件是F_t可测量的。另一方面,配对交易或市场中立策略的概念相当简单。但是,可以在各种数学模型中进行铸造,这些模型的范围从基于简单欧氏距离的方法,在协整框架中或涉及随机微分方程(例如著名的Ornstein-Uhlenbeck均值反转ODE及其变化)。可以用科学严谨的方法适当地定义用于预测任何经济或金融规模的模型,但它也可能没有任何经济价值,并且从实用的角度来看,它被认为是无用的。这就是为什么如果不对上述策略进行回测,就无法完成该项目的原因。进行有用的,现实的回测绝不是一件容易的事,因为控制金融市场的“法律”是随着时间不断发展的。这是因为我们强调调整策略参数以适应给定市场的标定过程的原因。我们发现,技术模型中的参数比市场中立策略中的参数更具波动性,必须以高频采样的方式进行校准,以不断跟踪当前的市场情况。将概述量化投资方法的方法,以审查基本策略,并通过对真实金融市场数据的回溯测试进行说明,该项目中使用的数据源是彭博社(Bloomberg)的日内时间序列和Yahoo!该项目中使用和显示的所有数值计算和图形均在scr的MATLAB ^ R scratch中实现作为本文的一部分。没有使用其他数学或统计软件。

著录项

  • 作者

    Sánchez López Emiliano;

  • 作者单位
  • 年度 2011
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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