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A theory for market impact: How order flow affects stock price.

机译:市场影响理论:订单流如何影响股价。

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摘要

It is known that the impact of transactions on stock price (market impact) is a concave function of the size of the order, but there exists little quantitative theory that suggests why this is so. I develop a quantitative theory for the market impact of hidden orders (orders that reflect the true intention of buying and selling) that matches the empirically measured result and that reproduces some of the non-trivial and universal properties of stock returns (returns are percent changes in stock price). The theory is based on a simple premise, that the stock market can be modeled in a mechanical way - as a device that translates order flow into an uncorrelated price stream. Given that order flow is highly autocorrelated, this premise requires that market impact (1) depends on past order flow and (2) is asymmetric for buying and selling. I derive the specific form for the dependence in (1) by assuming that current liquidity responds to information about all currently active hidden orders (liquidity is a measure of the price response to a transaction of a given size). This produces an equation that suggests market impact should scale logarithmically with total order size. Using data from the London Stock Exchange I empirically measure market impact and show that the result matches the theory. Also using empirical data, I qualitatively specify the asymmetry of (2). Putting all results together, I form a model for market impact that reproduces three universal properties of stock returns - that returns are uncorrelated, that returns are distributed with a power law tail, and that the magnitude of returns is highly autocorrelated (also known as clustered volatility).
机译:众所周知,交易对股票价格的影响(市场影响)是定单大小的凹函数,但几乎没有定量理论可以说明为什么如此。我针对隐藏订单(反映了买卖的真实意图的订单)的市场影响开发了一种定量理论,该理论与根据经验测得的结果相匹配,并再现了股票收益的一些非平凡和普遍性质(收益为变动百分比)股票价格)。该理论基于一个简单的前提,即可以以机械方式对股市建模-作为一种将订单流转换为不相关的价格流的设备。考虑到订单流是高度自相关的,此前提要求市场影响(1)取决于过去的订单流,而(2)买卖不对称。通过假设当前流动性响应有关所有当前有效隐藏订单的信息(流动性是对给定规模交易的价格响应的度量),我得出了(1)中依赖关系的具体形式。这产生了一个方程,表明市场影响应该与总订单量成对数关系。利用伦敦证券交易所的数据,我根据经验评估了市场影响力,并表明结果与理论相符。同样使用经验数据,我定性地指定了(2)的不对称性。将所有结果放在一起,我形成了一个对市场影响的模型,该模型再现了股票收益的三个通用属性-收益不相关,收益与幂律尾部分布,收益的大小高度自相关(也称为聚类)挥发性)。

著录项

  • 作者

    Gerig, Austin Nathaniel.;

  • 作者单位

    University of Illinois at Urbana-Champaign.;

  • 授予单位 University of Illinois at Urbana-Champaign.;
  • 学科 Economics Finance.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 107 p.
  • 总页数 107
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 财政、金融;
  • 关键词

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