Title of article
Large deviation and self-similarity analysis of graphs: DAX stock prices
Author/Authors
CARL J.G. EVERTSZ and KATHRIN BERKNER، نويسنده ,
Issue Information
ماهنامه با شماره پیاپی سال 1995
Pages
10
From page
121
To page
130
Abstract
Two methods for analyzing graphs such as those occurring in the stock
market, geographical profiles and rough surfaces, are investigated. They are based on
different scaling laws for the distributions of jumps as a function of the lag. The first is a
large deviation analysis, and the second is based on the concept of a self-similar process
introduced by Mandelbrot and van Ness. We show that large deviation analysis does not
apply to either the stock market nor fractional Brownian motion (H # 0.5). Instead the
analysis based on self-similarity is applicable to both, and does indicate that especially the
negative log-price fluctuations have a large degree of self-similarity. The latter analysis
allows one to probe the degree of self-similarity of a process, beyond what is possible with
the exponent H typically used to describe self-afhne graphs.
Journal title
Chaos, Solitons and Fractals
Serial Year
1995
Journal title
Chaos, Solitons and Fractals
Record number
922271
Link To Document