中文

Coupled continuous time random walks in finance

数据分析、统计与概率 2008-12-10 v1 物理与社会 统计金融

摘要

Continuous time random walks (CTRWs) are used in physics to model anomalous diffusion, by incorporating a random waiting time between particle jumps. In finance, the particle jumps are log-returns and the waiting times measure delay between transactions. These two random variables (log-return and waiting time) are typically not independent. For these coupled CTRW models, we can now compute the limiting stochastic process (just like Brownian motion is the limit of a simple random walk), even in the case of heavy tailed (power-law) price jumps and/or waiting times. The probability density functions for this limit process solve fractional partial differential equations. In some cases, these equations can be explicitly solved to yield descriptions of long-term price changes, based on a high-resolution model of individual trades that includes the statistical dependence between waiting times and the subsequent log-returns. In the heavy tailed case, this involves operator stable space-time random vectors that generalize the familiar stable models. In this paper, we will review the fundamental theory and present two applications with tick-by-tick stock and futures data.

关键词

引用

@article{arxiv.physics/0608281,
  title  = {Coupled continuous time random walks in finance},
  author = {Mark M. Meerschaert and Enrico Scalas},
  journal= {arXiv preprint arXiv:physics/0608281},
  year   = {2008}
}

备注

7 pages, 2 figures. Paper presented at the Econophysics Colloquium, Canberra, Australia, November 2005