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This article
originally appeared in the February 1999 issue of Scientific
American.
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A
Multifractal Walk Down Wall Street
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"The
geometry that describes the shape of coastlines
and the patterns of galaxies also elucidates
how stock prices soar and plummet."
by
Benoit B. Mandelbrot
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Individual
investors and professional stock and currency traders
know better than ever that prices quoted in any financial
market often change with heart-stopping swiftness. Fortunes
are made and lost in sudden bursts of activity when
the market seems to speed up and the volatility soars.
Last September, for instance, the stock for Alcatel,
A French telecommunications equipment manufacturer,
dropped about 40 percent one day and fell another 6
percent over the next few days. In a reversal, the stock
shot up 10 percent on the fourth day.
The classical
financial models used for most of this century predict
that such precipitous events should never happen. A
cornerstone of finance is modern portfolio theory, which
tries to maximize returns for a given level of risk.
The mathematics underlying portfolio theory handles
extreme situations with benign neglect: it regards
large market shifts as too unlikely to matter or as
impossible to take into account. It is true that
portfolio theory may account for what occurs 95 percent
of the time in the market. But the picture it presents
does not reflect reality, if one agrees that major events
are part of the remaining 5 percent. An inescapable
analogy is that of a sailor at sea. If the weather is
moderate 95 percent of the time, can the mariner afford
to ignore the possibility of a typhoon?
The risk-reducing
formulas behind portfolio theory rely on a number of
demanding and ultimately unfounded premises. First,
they suggest that price changes are statistically independent
of one another: for example, that todays price
has no influence on the changes between the current
price and tomorrows. As a result, predictions
of future market movements become impossible. The second
presumption is that all price changes are distributed
in a pattern that conforms to the standard bell curve.
The width of the bell shape (as measured by its sigma,
or standard deviation) depicts how far price changes
diverge from the mean; events at the extremes are considered
extremely rare. Typhoons are, in effect, defined out
of existence.
Do financial
data neatly conform to such assumptions? Of course,
they never do. Charts of stock or currency changes over
time do reveal a constant background of small up and
down price movements but not as uniform as one
would expect if price changes fit the bell curve. These
patterns, however, constitute only one aspect of the
graph. A substantial number of sudden large changes
spikes on the chart that shoot up and down as
with the Alcatel stock stand out from the background
of more moderate perturbations. Moreover, the magnitude
of price movements (both large and small) may remain
roughly constant for a year, and then suddenly the variability
may increase for an extended period. Big price jumps
become more common as the turbulence of the market grows
clusters of them appear on the chart.
According
to portfolio theory, the probability of these large
fluctuations would be a few millionths of a millionth
of a millionth of a millionth. (The fluctuations are
greater than 10 standard deviations.) But in fact, one
observes spikes on a regular basis as often as
every month and their probability amounts to
a few hundredths. Granted, the bell curve is often described
as normal or, more precisely, as the normal distribution.
But should financial markets then be described as abnormal?
Of course not they are what they are, and it
is portfolio theory that is flawed.
Modern portfolio
theory poses a danger to those who believe in it too
strongly and is a powerful challenge for the theoretician.
Though sometimes acknowledging faults in the present
body of thinking, its adherents suggest that no other
premises can be handled through mathematical modeling.
This contention leads to the question of whether a rigorous
quantitative description of at least some features of
major financial upheavals can be developed. The bearish
answer is that large market swings are anomalies, individual
"acts of God" that present no conceivable
regularity. Revisionists correct the questionable premises
of modern portfolio theory through small fixes that
lack any guiding principle and do not improve matters
sufficiently. My own work carried out over many
years takes a very different and decidedly bullish
position.
I claim
that variations in financial prices can be accounted
for by a model derived from my work in fractal geometry.
Fractals or their later elaboration, call multifractals
do not purport to predict the future with certainty.
But they do create a more realistic picture of market
risks. Given the recent troubles confronting the large
investment pools call hedge funds, it would be foolhardy
not to investigate models providing more accurate estimates
of risk.
Multifractals
and the Market
An extensive
mathematical basis already exists for fractals and multifractals.
Fractal patterns appear not just in the price changes
of securities but in the distribution of galaxies throughout
the cosmos, in the shape of coastlines and in the decorative
designs generated by innumerable computer programs.
A fractal
is a geometric shape that can be separated into parts,
each of which is a reduced-scale version of the whole.
In finance, this concept is not a rootless abstraction
but a theoretical reformulation of a down-to-earth bit
of market folklore namely, that movements of
a stock or currency all look alike when a market chart
is enlarged or reduced so that is fits the same time
and price scale. An observer then cannot tell which
of the data concern prices that change from week to
week, day to day or hour to hour. This quality defines
the charts as fractal curves and makes available many
powerful tools of mathematical and computer analysis.
A more specific
technical term for the resemblance between the parts
and the whole is self-affinity. This property is related
to the better-known concept of fractals called self-similarity,
in which every feature of a picture is reduced or blown
up by the same ratio a process familiar to anyone
who has ever ordered a photographic enlargement. Financial
market charts, however, are far from being self-similar.
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Illustration
1 - THREE-PIECE-FRACTAL GENERATOR
(top) can be interpolated repeatedly
into each piece of subsequent charts (bottom
three diagrams). The pattern that
emerges icreasingly resembles market price oscillations.
(The interpolated generator is inverted for
each descending piece.)
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In a detail
of a graphic in which the features are higher than they
are wide as are the individual up-and-down price
ticks of a stock the transformation from the
whole to a part must reduce the horizontal axis more
than the vertical one. For a price chart, this transformation
must shrink the time-scale (the horizontal axis) more
than the price scale (the vertical axis). The geometric
relation of the whole to its parts is said to be one
of self-affinity.
The existence
of unchanging properties is not given much weight by
most statisticians. But they are beloved of physicists
and mathematicians like myself, who call them invariances
and are happiest with models that present an attractive
invariance property. A good idea of what I mean is provided
by drawing a simple chart that inserts price changes
from time 0 to a later time 1 in successive steps. The
intervals themselves are chosen arbitrarily; they may
represent a second, an hour, a day or a year.
The process
begins with a price, represented by a straight trend
line (illustration 1). Next, a broken line called
a generator is used to create the pattern that corresponds
to the up-and-down oscillations of a price quoted in
financial markets. The generator consists of three pieces
that are inserted (interpolated) along the straight
trend line. (A generator with fewer than three pieces
would not simulate a price that can move up and down.)
After delineating the initial generator, its three pieces
are interpolated by three shorter ones. Repeating these
steps reproduces the shape of the generator, or price
curve, but at compressed scales. Both the horizontal
axis (timescale) and the vertical axis (price scale)
are squeezed to fit the horizontal and vertical boundaries
of each piece of the generator.
Interpolations
Forever
Only the
first stages are shown in the illustration, although
the same process continues. In theory, it has no end,
but in practice, it makes no sense to interpolate down
to time intervals shorter than those between trading
transactions, which may occur in less than a minute.
Clearly, each piece ends up with a shape roughly like
the whole. That is, scale invariance is present simply
because it was built in. The novelty (and surprise)
is that these self-affine fractal curves exhibit a wealth
of structure a foundation of both fractal geometry
and the theory of chaos.
A few selected
generators yield so-called unifractal curves that exhibit
the relatively tranquil picture of the market encompassed
by modern portfolio theory. But tranquillity prevails
only under extraordinarily special conditions that are
satisfied only by these special generators. The assumptions
behind this oversimplified model are one of the central
mistakes of modern portfolio theory. It is much like
a theory of sea waves that forbids their swells to exceed
six feet.
The beauty
of fractal geometry is that it makes possible a model
general enough to reproduce the patterns that characterize
portfolio theorys placid markets as well as the
tumultuous trading conditions of recent months. The
just described method of creating a fractal price model
can be altered to show how the activity of markets speeds
up and slows down the essence of volatility.
This variability is the reason that the prefix "multi-"
was added to the word "fractal."
To create
a multifractal from a unifractal, the key step is to
lengthen or shorten the horizontal time axis so that
the pieces of
the generator
are either stretched or squeezed. At the same time,
the vertical price axis may remain untouched. In illustration
2, the first piece of the unifractal generator is
progressively shortened, which also provides room to
lengthen the second piece. After making these adjustments,
the generators become multifractal (M1 to M4). Market
activity speeds up in the interval of time represented
by the first piece of the generator and slows in the
interval that corresponds to the second piece (illustration
3).
Such an
alteration to the generator can produce a full simulation
of price fluctuations over a given period, using the
process of interpolation described earlier. Each time
the first piece of the generator is further shortened
and the process of successive interpolation is
undertaken it produces a chart that increasingly
resembles the characteristics of volatile markets (illustration
4).
The unifractal
(U) chart shown here (before any shortening) corresponds
to the becalmed markets postulated in the portfolio
theorists model. Proceeding down the stack (M1
to M4), each chart diverges further from that model,
exhibiting the sharp, spiky price jumps and the persistently
large movements that resemble recent trading. To make
these models of volatile markets achieve the necessary
realism, the three pieces of each generator were scrambled
a process not shown in the illustrations. It
works as follows: imagine a die on which each side bears
the image of one of the six permutations of the pieces
of the generator. Before each interpolation, the die
is thrown, and then the permutation that comes up is
selected.
What should
a corporate treasurer, currency trader or other market
strategist conclude from all this? The discrepancies
between the pictures painted by modern portfolio theory
and the actual movement of prices are obvious. Prices
do not vary continuously, and they oscillate wildly
at all timescales. Volatility far from a static
entity to be ignored or easily compensated for
is at the very heart of what goes on in financial markets.
In the past, money managers embraced the continuity
and constrained price movements of modern portfolio
theory because of the absence of strong alternatives.
But a money manager need no longer accept the current
financial models at face value.
Instead
multifractals can be put to work to "stress-test"
a portfolio. In this technique the rules underlying
multifractals attempt to create the same patterns of
variability as do the unknown rules that govern actual
markets. Multifractals describe accurately the relation
between the shape of the generator and the patterns
of up-and-down swings of prices to be found on charts
of real market data.
On a practical
level, this finding suggests that a fractal generator
can be developed based on historical market data. The
actual model used does not simply inspect what the market
did yesterday or last week. It is in fact a more realistic
depiction of market fluctuations, called fractional
Brownian motion in multifractal trading time. The charts
created from the generators produced by this model can
simulate alternative scenarios based on previous market
activity.
These techniques
do not come closer to forecasting a price drop or rise
on a specific day on the basis of past records. But
they provide estimates of the probability of what the
market might do and allow one to prepare for inevitable
sea changes. The new modeling techniques are designed
to cast a light of order into the seemingly impenetrable
thicket of the financial markets. They also recognize
the mariners warning that, as recent events demonstrate,
deserves to be heeded: On even the calmest sea, a gale
may be just over the horizon.
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Pick
the Fake
How
do multifractals stand up against actual records
of changes in financial prices? To assess
their performance, let us compare several
historical series of price changes with a
few artificial models. The goal of modeling
the patterns of real markets is certainly
not fulfilled by the first chart, which is
extremely monotonous and reduces to a static
background of small price changes, analogous
to the static noise from a radio. Volatility
stays uniform with no sudden jumps. In a historical
record of this kind, daily chapters would
vary from one another, but all the monthly
chapters would read very much alike. The rather
simple second chart is less unrealistic, because
is shows many spikes; however, these are isolated
against an unchanging background in which
the overall variability of prices remains
constant. The third chart has interchanged
strengths and failings, because it lacks any
precipitous jumps.
The
eye tells us that these three diagrams are
unrealistically simple. Let us now reveal
the sources. Chart 1 illustrates price fluctuations
in a model introduced in 1900 by French mathematician
Louis Bachelier. The changes in prices follow
a "random walk" that conforms to
the bell curve and illustrates the model that
underlies modern portfolio theory. Charts
2 and 3 are partial improvements on
Bacheliers work: a model I proposed
in 1963 (based on Levy stable random processes)
and one I published in 1965 (based on fractional
Brownian motion). These revisions, however,
are inadequate, except under certain special
market conditions.
In
the more important five lower diagrams of
the graph, at least one is a real record and
at least another is a computer-generated sample
of my latest multifractal model. The reader
is free to sort those five lines into the
appropriate categories. I hope the forgeries
will be perceived as surprisingly effective.
In fact, only two are real graphs of market
activity. Chart 5 refers to the changes in
price of IBM stock, and chart 6 shows price
fluctuations for the dollar-deutsche mark,
exchange rate. The remaining charts (4, 7
and 8) bear a strong resemblance to their
two real-world predecessors. But they are
completely artificial, having been generated
through a more refined form of my multifractal
model. -B.B.M.
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The
Author
Benoit B.
Mandelbrot has contributed to numerous fields of science
and art. A mathematician by training, he has served
since 1987 as Abraham Robinson Professor of Mathematical
Sciences at Yale University and IBM Fellow Emeritus
(Physics) at the Thomas J. Watson Reasearch Center in
Yorktown Heights, N.Y., where he worked from 1958 to
1993. He is a fellow of the American Academy of Arts
and Sciences and foreign associate of the U.S. National
Academy of Sciences and the Norwegian Academy. His awards
include the 1993 Wolf Prize for physics, the Barnard,
Franklin and Steinmetz medals, and the Science for Art,
Harvey, Humboldt and Honda prizes.
Further
Reading
The
Fractal Geometry of Nature.
Benoit B. Mandelbrot. W.H. Freeman and Company, 1982.
Fractals
and Scaling in Finance: Discontinuity, Concentration,
Risk. Benoit
B. Mandelbrot. Springer-Verlag, 1997.
"The
Multifractal Model of Asset Returns." Discussion
papers of the Cowles Foundation for Economics, Nos.
114-1166. Laurent Calvert, Adlai Fisher and Benoit B.
Mandelbrot. Cowles Foundation, Yale University, 1997.
Multifractals
and 1/F Noise: Wild Self-Affinity in Physics.
Benoit B. Mandelbrot, Springer-Verlag, 1999.
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