Title: The Econophysics of the Brazilian Real-US Dollar Rate
1The Econophysics of the Brazilian Real-US Dollar
Rate
- Sergio Da Silva
- Department of Economics, Federal University of
Rio Grande Do Sul - Raul Matsushita
- Department of Statistics, University of Brasilia
- Iram Gleria
- Department of Physics, Federal University of
Alagoas - Annibal Figueiredo
- Department of Physics, University of Brasilia
2- This presentation
- and the associated paper are available at
- SergioDaSilva.com
3Data
- Daily and intraday
- Daily series
- 2 January 1995 to 31 December 2003
- 15-minute series
- 930AM of 19 July 2001
- to 430PM of 14 January 2003
4Raw Daily Series
5Daily Returns
6Raw Intraday Series
7Intraday Returns
8Discoveries
- Related to regularities found in the study of
returns - for increasing
9Power LawsLog-Log Plots
- Newtonian law of motion governing free fall can
be thought of as a power law - Dropping an object from a tower
10Power LawsDrop Time versus Height of Free Fall
The relation between height and drop time is no
linear
11Power LawsLog of Drop Time versus Log of Height
of Fall
12Power LawsLog-Log Plots
13Daily Real-Dollar RatePower Law in Mean
14Daily Real-Dollar RatePower Law for the Means of
Increasing Return Time Lags
15Daily Real-Dollar RatePower Law in Standard
Deviation I
16Daily Real-Dollar RatePower Law in Standard
Deviation II
17Hurst Exponent
18Hurst Exponent and Efficiency
- Single returns ( )
- Hurst exponent
- Daily data
- Intraday data
- Such figures are compatible with weak efficiency
in the real-dollar market
19Daily Real-Dollar RatePower Law in Hurst
Exponent I
20Daily Real-Dollar RatePower Law in Hurst
Exponent II
21Daily Real-Dollar RatePower Law in Hurst
Exponent III
22Hurst Exponent Over TimeDaily Data
23Hurst Exponent Over TimeHistogram of Daily Data
24Hurst Exponent Over TimeIntraday Data
25Hurst Exponent Over TimeHistogram of Intraday
Data
26Daily Real-Dollar RatePower Law in
Autocorrelation Time
27LZ Complexity
28Daily Real-Dollar RatePower Law in Relative LZ
Complexity
2915-Minute Real-Dollar RatePower Law in Mean
3015-Minute Real-Dollar RatePower Law in Standard
Deviation
3115-Minute Real-Dollar RatePower Law in Hurst
Exponent I
3215-Minute Real-Dollar RatePower Law in Hurst
Exponent II
3315-Minute Real-Dollar RatePower Law in Hurst
Exponent III
3415-Minute Real-Dollar RatePower Law in
Autocorrelation Time
3515-Minute Real-Dollar RatePower Law in Relative
LZ Complexity
36Lévy Distributions
- Lévy-stable distributions were introduced by Paul
Lévy in the early 1920s - The Lévy distribution is described by four
parameters - (1) an index of stability ?
- (2) a skewness parameter
- (3) a scale parameter
- (4) a location parameter.
- Exponent ? determines the rate at which the tails
of the distribution decay. - The Lévy collapses to a Gaussian if ? 2.
- If ? gt 1 the mean of the distribution exists and
equals the location parameter. - But if ? lt 2 the variance is infinite.
- The pth moment of a Lévy-stable random variable
is finite if p lt ?. - The scale parameter determines the width, whereas
the location parameter tracks the shift of the
peak of the distribution.
37Lévy Distributions
- Since returns of financial series are usually
larger than those implied by a Gaussian
distribution, - research interest has revisited the hypothesis
of a stable Pareto-Lévy distribution - Ordinary Lévy-stable distributions have fat
power-law tails that decay more slowly than an
exponential decay - Such a property can capture extreme events, and
that is plausible for financial data - But it also generates an infinite variance, which
is implausible
38Lévy Distributions
- Truncated Lévy flights are an attempt to overturn
such a drawback - The standard Lévy distribution is thus abruptly
cut to zero at a cutoff point - The TLF is not stable though,
- but has finite variance and slowly converges to a
Gaussian process as implied by the central limit
theorem - A canonical example of the use of the truncated
Lévy flight for real-world financial data is that
of Mantegna and Stanley for the SP 500
39Power Laws in Return TailsStock Markets
- Index a of the Lévy is the negative inverse of
the power law slope of the probability of return
to the origin - This shows how to reveal self-similarity in a
non-Gaussian scaling - a 2 Gaussian scaling
- a lt 2 non-Gaussian scaling
- For the SP 500 stock index a 1.4
- For the Bovespa index a 1.6
40SP 500Probability Density Functions
41SP 500Power Law in the Probability of Return to
the Origin
42SP 500Probability Density Functions Collapsed
onto the ?t 1 Distribution
43SP 500Comparison of the ?t 1 Distribution
with a Theoretical Lévy and a Gaussian
44Lévy Flights
- Owing to the sharp truncation, the characteristic
function of the TLF is no longer infinitely
divisible as well - However, it is still possible to define a TLF
with a smooth cutoff that yields an infinitely
divisible characteristic function smoothly
truncated Lévy flight - In such a case, the cutoff is carried out by
asymptotic approximation of a stable distribution
valid for large values - Yet the STLF breaks down in the presence of
positive feedbacks
45Lévy Flights
- But the cutoff can still be alternatively
combined with a statistical distribution factor
to generate a gradually truncated Lévy flight - Nevertheless that procedure also brings fatter
tails - The GTLF itself also breaks down if the positive
feedbacks are strong enough - This apparently happens because the truncation
function decreases exponentially
46Lévy Flights
- Generally the sharp cutoff of the TLF makes
moment scaling approximate and valid for a finite
time interval only - for longer time horizons, scaling must break down
- And the breakdown depends not only on time but
also on moment order - Exponentially damped Lévy flight
- a distribution might be assumed to deviate from
the Lévy in both a smooth and gradual fashion - in the presence of positive feedbacks that may
increase
47Probability of Return to the Origin
48Probability of Return to the Origin
49Lévy Flights
50Lévy Flights
51Lévy Flights
52Lévy Flights
53Exponentially Damped Lévy Flights
54Exponentially Damped Lévy Flights
55Exponentially Damped Lévy Flight
56Exponentially Damped Lévy Flight
57Multiscaling
- Whether scaling is single or multiple depends on
how a Lévy flight is broken - While the abruptly truncated Lévy flight (the TLF
itself) exhibits mere single scaling, - the smoothly TLF shows multiscaling
58Multiscaling
59Multiscaling
60Multiscaling
61Multiscaling
62Multiscaling
63Multiscaling
64Multiscaling
65Multiscaling
66Log-Periodicity
- What if extreme events are not in the Lévy tails,
and are outliers? Sornette and colleagues put
forward the sanguine hypothesis that crashes are
deterministic and governed by log-periodic
formulas - Their one-harmonic log-periodic function is
-
- where
- And the two-harmonic log-periodic function is
given by - We suggest a three-harmonic log-periodic
formula, i.e. - Parameter values are estimated by nonlinear least
squares
67Log-Periodicity
68Log-Periodicity