Langevin modelling of high-frequency Hang-Seng index data

https://doi.org/10.1016/S0378-4371(03)00034-7Get rights and content

Abstract

Accurate statistical characterization of financial time series, such as compound stock indices, foreign currency exchange rates, etc., is fundamental to investment risk management, pricing of derivative products and financial decision making. Traditionally, such data were analyzed and modeled from a purely statistics point of view, with little concern on the specifics of financial markets. Increasingly, however, attention has been paid to the underlying economic forces and the collective behavior of investors. Here we summarize a novel approach to the statistical modeling of a major stock index (the Hang Seng index). Based on mathematical results previously derived in the fluid turbulence literature, we show that a Langevin equation with a variable noise amplitude correctly reproduces the ubiquitous fat tails in the probability distribution of intra-day price moves. The form of the Langevin equation suggests that, despite the extremely complex nature of financial concerns and investment strategies at the individual's level, there exist simple universal rules governing the high-frequency price move in a stock market.

References (9)

  • L.-H Tang et al.

    Physica A

    (2000)
  • G Stolovitzky et al.

    Phys. Lett. A

    (1999)
  • Z.-F Huang

    Physica A

    (2000)
  • S.B Pope et al.

    Phys. Fluids A

    (1993)
    E.S.C Ching

    Phys. Rev. E

    (1996)
There are more references available in the full text version of this article.

Cited by (0)

View full text