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by Doug Wakefield with Ben Hill
Though this piece was originally released via our paid research publication
- The Investor's Mind - in September 2006, if not timeless, its contents are
certainly applicable to our current markets and economic environment. While
we have taken the liberty of updating some of the charts, it is largely unchanged:
"It does not matter how frequently something succeeds if failure is too costly
to bear." [1] ~
- Solon
I have often stopped to ponder our human condition - specifically, our uncanny
ability to dismiss the seriousness of an event beforehand and to lament our
lack of preparation after it has happened. In some form or fashion, how many
New Orleans residents stated that they never expected the storm to break the
levees? But it's easy to see the rationale behind their unresponsiveness: they
had been through countless storms since the levees were first established,
and nothing that calamitous had ever happened.
It's easy to look back, after an event, and wonder why people didn't heed
the warnings. But don't we act similarly every day with our own health or the
way we drive our cars? Because we have so many experiences where nothing drastic
has happened, we dismiss the likelihood that anything will happen. We have
heard so many warnings about the stock market, our nation's debt, or
the unregulated derivatives market. Yet life goes on like before - for on one
more week, one more month...one more year. No wonder we don't change our investment
strategies.
History is replete with examples of ignored warnings before cataclysmically
destructive events. Be it the passengers on the Titanic or the investors in
1929, unheeded warnings combined with ignorance to produce tragedy. Consider
these words spoken by Cyrus C. Miller, president of the proposed New York Real
Estate Securities Exchange, which was slated to open in October of 1929. In
July of that fateful year, speaking of the benefits of this new market, Miller
states: [2]
"Stabilization of the real estate values will be an outstanding achievement
through its tendency to curtail blind speculation and its strong emphasis
on the aspect of sound investment." [3]
In his book, Money of the Mind, James Grant observes how unaware Wall
Street was of the looming Crash of '29 and the ensuing Great Depression.
"The new exchange could hardly have opened at a worse time. It was the month
of the Great Crash. What almost nobody foresaw was the significance of that
break to real estate or to the cozy business of real estate bonds." [4]
Over the last thirty-one months (now six years), we have written of numerous
reasons that we should all be preparing for an economic storm. As I watch individuals
trusting in watertight bulkheads that are only ten feet above the waterline
while they scoff at the unnecessary lifeboats, which they do not realize are
too few in number, I am baffled.
As in the August issue, we will look once again at the warning signals that
science and nature can reveal to investors. As we continue through the fog
and iceberg-infested waters of the investment world, we will slow speed and
look at patterns in nature and the markets, which are clearly warning signals.
The Nile is a River in Egypt

The year was 1906. Harold Edwin Hurst, a young English civil engineer, had
just arrived in Cairo for what was intended to be a short stay. The British
Empire had recently put down the fundamentalist Mahdi revolt upriver in Sudan,
and the Union Jack was raised over Egypt. In order to harness the Nile's enormous
economic power and control its floods, the Aswan Dam was completed in 1902.
Yet the initial design was soon found to be inadequate and the British began
planning to build a larger dam, the Aswan High Dam. [5]
The
picture to the left shows the construction of the Aswan Dam. The problem was
that the Aswan Low Dam, as the first dam has come to be known, was built upon
the same bell curve distribution assumptions as Bachelier's random walk hypothesis.
You see, engineers at the time assumed that flood variations were statistically
independent. The conventional methods of that day suggested that the new dam
should be twice as high as the old dam. Yet, according to his calculations,
Hurst's concluded that the dam should be much higher. He had found that the
Nile's water range widened faster than the bell curve assumed it would and
that it contained higher highs and lower lows. His observations led him to
conclude that the weather came in runs with back-to-back years of flooding
and back-to-back years of drought. [6]
Hurst's collection of data revealed that the amount of water coming through
the Nile not only varied greatly, but it also clustered. As he continued studying
the Nile, he also collected annual water levels from Sweden's Dalalven Lake;
rainfall from Adelaide, Australia to Washington D.C.; the thickness of lakebed
sediments in Russia, Norway, and Canada; temperature readings from St. Louis
to Helsinki; and the pattern of tree rings in Flagstaff pines and Sequoias.
In almost all cases, when Hurst plotted the number of years measured against
the high-to-low ranges, he found, that just like his observations of the Nile,
the range widened too quickly to fit within a bell curve. Though his calculations
greatly differed from the norms of his day, Hurst discovered that all of these
observations could be accounted for with the same basic formula. [7]
As an example, in order to calculate what size a reservoir New York would
need to keep water in steady supply for a century, Hurst reviewed its rainfall.
After looking at about 120 years of data, he found that, because of a clustering
effect, the reservoir would need to be much larger than was first thought.
While the standard deviation of rainfall in New York averaged only 6.3 inches
per year, his formula showed that the reservoir needed to be built to accommodate
up to 105 inches, or 16.7 times its standard deviation. [8]
In 1963, along the Charles River, a long way from the Nile, a professor who
was teaching economics at Harvard discovered Hurst's work. After observing
over 100 years of cotton prices, the professor had published a paper revealing
that cotton price movements hadn't fit Bachelier's model and that the historical
price movements didn't follow a constant standard deviation, but one that shifted
over time. There were too many big price jumps and falls. [9]
After class one day a student made the following observation to the professor, "You
know you have a power law here. I've heard that a power law was also found
by a hydrologist. He finds some strange exponent for the Nile floods. Maybe
it's ridiculous. But maybe it's the same thing. You may want to check." [10]
The professor, of course, was Dr. Benoit Mandelbrot. He discovered that prices,
like rainfall, had back-to-back years of wide movements and back-to-back years
of narrow movements. Mandelbrot notes:
"The size of the price changes clearly cluster together. Big changes often
come together in rapid succession, like a fusillade of cannon fire; then
come long stretches of minor changes, like the pop of toy guns." [11]
Mandelbrot even came up with terms, from his Jewish heritage, which describe
these phenomena vividly. Both terms came from the Bible's Old Testament.
In Genesis 7:4 God says to Noah, "I will cause it to rain upon the earth forty
days and forty nights; and every living substance that I have made will I destroy
from off the face of the earth." Mandelbrot called the catastrophic changes
the Noah Effect. The Crashes of '29, '87, and 2000 would fit within
this category. Today, we might call this the Perfect Storm.
The smaller changes, Mandelbrot termed the Joseph Effect. Undoubtedly,
this comes from Genesis 41: 28 - 30, where Joseph says to Pharaoh, "What God
is about to do he showeth unto Pharaoh. Behold, there come seven years of great
plenty throughout all the land of Egypt: and there shall arise after them seven
years of famine; and all the plenty shall be forgotten in the land of Egypt;
and the famine shall consume the land."
The chart below, of the volatility index (the VIX), allows us to observe the
Noah and Joseph effects.

(Chart updated to February 4, 2010)
Yet, because Mandelbrot's findings were not in line with all of the fields
that projected needs based on the bell curve assumption of distributions, his
conclusions were considered controversial. [12]
Looking for Clusters
Digging deeper, I turned to a friend of mine, Dr. John Quintanilla, a professor
of mathematics at the University of North Texas. When I asked Dr. Quintanilla
if he knew of any research or articles regarding fat tails, he told me that
he could not think of any (major) recent works since the material about fat
tails had been around for over 40 years. Dr. Quintanilla suggested that I search
the term, "extreme valuation distribution" so that I would understand the scientific
importance of fat tails.
The extreme value theory is a branch of statistics that deals with distributions
that do not follow a bell curve assumption. This branch studies standard deviations
that are much wider than "normal" and tend to have fat tails, which means the
values tend to cluster at the extremes. Though it is utilized in many fields,
the extreme value theory becomes very important to scientists who assess risk
for highly unusual events, such as 100-year floods.

Basically, when a scientist observes the clustering of certain data, it's
a signal to sit up and take notice. Now, since these are only probabilities,
the clusters do not assure the observer a 100 percent accurate storm warning
or exactly when and where a storm will hit. After all, storms, by nature, display
wild randomness. Yet, as Taleb notes in our opening quote, if we do not possess
the tools to discern rising risk levels, and we proceed blindly into a hurricane,
then we are undone. As for any "false alarms," the avoidance of a catastrophic
event more than compensates for any prior inconveniences.
Though the 1980 eruption of Mount St. Helen shocked many, the scientists who
had been studying its behavior for months, though awed, were not caught off
guard. They had seen the visible ground deformation (due to stress) move up
to a meter a day. They had noted increased eruptions of gas and steam. And
then, on one fateful day, a thousand small earthquakes built into a magnitude
5, which breached Mount St. Helen's carapace, resulting in its devastating
eruption. [13]
As a matter of fact, recent research shows that earthquakes seem to cluster
in time more than would be expected from a random, bell curve assumption. [14] Today,
we can look back on the eruption of Mount St. Helen and know that the clustering
of thousands of small earthquakes preceded, and in so doing foretold, the major
earthquake and the major eruption, which occurred on May 18th of 1980.
Market Meltdowns
Black Tuesday (1929) and Black Monday (1987) are memories that haunt most
investors. And yet, as our writing over the last two (seven) years reveals,
these events did not occur without reason. The data clustered, warning investors
of the rapidly growing financial risk, far in advance of the event.
But, before we go on to look at Black Monday, I remind us that, from the rare
event to the most commonplace day, history doesn't recognize the conventional
finance models. Once again, let us consider Mandelbrot's words:
"In fact, the bell curve fits reality very poorly. Theory suggests that
over time, there should be fifty-eight days when the Dow moved more than
3.4 percent; in fact, there were 1,001. Theory predicts six days of index
swings beyond 4.5 percent; in fact, there were 366. And index swings of more
than 7 percent should come once every 300,000 years; in fact, the twentieth
century saw forty-eight such days. Truly, a calamitous era that insists on
flaunting all predictions. Or, perhaps, our assumptions are wrong." [15]
As anyone can see from the evidence that Mandelbrot presents, our financial
markets are much more volatile than theories would lead investors to believe.
The panic buying and selling of tech stocks in 2000, the eventual collapse
of multiple bond markets due to the enormously leveraged positions of Long
Term Capital Management, and the destruction brought about when program trading
platforms all lined up to sell on Black Monday, remind us of how volatile markets
can be.
Even today, billions of dollars in our capital markets are working off of the
theory that prices deviate from the mean only by two or three standard
deviations. Perhaps this is what caught some off guard when natural gas recently
shed 59 percent. Unfortunately, the leverage of some of these players exacerbated
this selloff.
Regarding fat tails, Wikipedia notes, "According to the theoretical distribution,
events that deviate from the mean by five or more standard deviations ("5-sigma
event") are extremely rare, with a 10- or more sigma being practically impossible." [16] Again,
the likelihood of such an occurrence is thought to be so infinitesimally small
that investors and managers should not even have to consider it when managing
risk. But, what do we do with Black Monday, when prices moved by a standard
deviation of 22.
Liquidity Dries Up in the Hundred-Year Flood
The Crash of '87 brought liquidity risk to the forefront. In reviewing the
events surrounding the '87 crash, Dr. Bruce Jacobs stated the following regarding
portfolio insurance (an early form of program trading):
"...all insurance programs utilize a common rule; they buy as prices rise
and sell as they fall. A large enough market move will thus trigger all insurers
to trade simultaneously, regardless of the specific parameters of their insurance
policies."[17]
Portfolio insurance was a product that was intended to reduce risk. In this
early form of program trading, a computer program automatically forced the
portfolio to sell certain amounts of stock when the markets declined, theoretically
reducing the risk exposure of institutional investors.
However, in a classic fallacy of composition, when too many firms line up
on the sell side of the trade, liquidity dries up in an instant. As everyone
simultaneously rushes for the exit, prices plummet. And, the leverage created
by low margin requirements exacerbates the decline. Jacobs states:
"After the crash, the SEC concluded: 'Low margins...contribute to the illusion
of almost unlimited liquidity in the futures market. During a market break,
however, that liquidity disappears at a rate geometrically larger than liquidity
in the lower leveraged stock market.' The Brady Commission [a task force
headed by Reagan's Treasury Secretary, Nicholas Brady] finds that the equity
and futures markets during the crash were simply incapable of bearing 'the
full weight of the estimated $25 billion of selling dictated by portfolio
insurance strategies.' This volume translates into about four days' worth
of average trading volume on the NYSE at the time. According to the Brady
Commission, 'the selling pressure in the futures market washed across to
the stock market.'" [18]
Now compare Dr. Jacobs's comments to those of Wikipedia regarding the term "liquidity
risk."
"Liquidity risk arises from situations in which a party interested in trading
an asset cannot do it because nobody in the market wants to trade that asset.
Liquidity risk becomes particularly important to parties who are about to
hold or currently hold assets, since it affects their ability to trade." [19]
Notice the parallels between what causes a liquidity crisis, and what took
place in October of 1987. For those who would like to read further on the size
and scope of one of our most heavily leveraged markets today, I offer Burkhard
Vanholt's 1994 critical appraisal of six
industry reports on financial derivatives. In reading this, we note the
distinct possibility of another liquidity crisis. Indeed, liquidity crisis
could be the very reason that the Federal
Reserve removed the reporting of M3 in March of this year.
Wikipedia's definition continues with a discussion of the possibility of selling
in one market culminating in selling pressure in other markets - a sort of
domino effect.
"Liquidity risk tends to compound other risks. Suppose a firm has offsetting
cash flows with two different counterparties on a given day. If the counterparty
that owes it a payment defaults, the firm will have to raise cash from other
sources to make its payment. Should it be unable to do so, it too would default." [20]
The September
2006 IMF, Global Stability Report revealed that, at the end of 2005,
the worldwide notional value of over the counter (OTC) derivatives contracts
stood at $284 trillion, up $84 trillion over the last two years. Bond markets
stood at $59 trillion, up $7 trillion, and stock markets stood at $37 trillion,
up $6 trillion over the same time period. The sheer size of the OTC derivatives
market dwarfs the bond market, the stock market, our nation's annual GDP,
and even our nation's debts.
As various risks from various players cross various markets, a ripple effect
could occur, and the Poseidon could be capsized by a rogue wave. Again, Wikipedia
notes:
"Accordingly, liquidity risk has to be managed in addition to market, credit,
and other risks. Because of its tendency to compound other risks, it is difficult
or impossible to isolate liquidity risk. In all but the most simple of circumstances
[an ideal academic environment only], comprehensive metrics of liquidity
risk don't exist." (Brackets mine) [21]
Vanholt states, "Regulators are primarily concerned about systemic implications
of liquidity risk." In other words, regulators understand the importance of
trying to prepare for a clustering of trades on one side of the markets, which
could lead to a historic occurrence. And yet, because central banks wield such
power in our fiat currency system, regulators are ill equipped to stop this
runaway train.
The World In Chaos
Part of our lack of preparation for such events comes from our cultural practices.
Namely, we do not like to look at anything negative, and we are only taught
to think along linear lines. A client of mine once asked, "How can you look
at all this negative stuff?" While I have ethical reasons for doing so, I know
that the more I study the investment markets, and the things that affect them,
the more I know about our current juncture. Understanding where we are and
where we have been, helps me anticipate and navigate our course. To make better
investment decisions, the other obstacle that we must overcome is linear thinking.
Of course this starts with our own education. Our basic education is confined
to linear thought - the most obvious subjects being linear algebra, linear
equations, and Euclidian geometry. This occurs in many other subjects where
we study cause-and-effect relationships, some of which are true.
We carry this into our personal and business practices as well. Indeed, many
self-help books are written and read because we think in linear terms. That
is, if we do X, then Y will happen. And of course this is true
in a probabilistic sense, but it is never guaranteed, as we subconsciously
believe that it is. For example, we read The Seven Steps to Financial Freedom,
and, however imperfectly, we actually employ the said seven steps. What usually
happens? It doesn't go according to plan. There's a hitch. We go around it,
and the knowledge later proves useful in an ancillary way. In business, linear
thinking goes by the term "the bottom line." The business environment doesn't
support curiosity and exploration. Most firms do not allow employees to spend
time on any issue, unless they are sure that the answer will come quickly and
will increase profitability.
As we grow older, we realize that life is more like the fractals we studied
in last month's newsletter. Events in the markets and in our lives rarely follow
a continuous path of absolute certainty. However, if we step back and look
at the big picture, we see... patterns. In the midst of a world that appears
to be without order, closer investigation reveals cyclicality. This is the
basic thought behind the science and math that has come to be known as Chaos
Theory.
In his book, Trend Following, Michael Covel articulates the problem
with linear explanations.
"The only systems that could be understood in the past were those that were
believed to be linear, that is to say, systems that follow predictable patterns
and arrangements. However, the problem arises that we humans do not live
in an even remotely linear world; in fact, our worlds must indeed be categorized
as nonlinear; hence, proportion and linearity is scarce." [22]
Taleb notes, "Chaos theory concerns itself primarily with functions in which
a small input can lead to a disproportionate response." [23] Mandelbrot
adds, "The most famous example of chaos was proposed by meteorologist Edward
Lorenz in 1972: [with the question] can the flap of a butterfly's wings in
Brazil set off a tornado in Texas?" [24]
Of course all of this means nothing to the investor unless such occurrences
can be seen in the markets. In his book, Fractals, Chaos, Power Laws: Minutes
from an Infinite Paradise, Manfred Schroeder states:
"One of the neighborhoods where power-law noises dominate the scene, and
chaos reigns the charts, is Wall Street, U.S.A. At stock and commodity exchanges,
self-similarity weighs in on many scales." [25]
So, what is the benefit of knowing this information? In our current market
environment, it could prove to be crucial to the survival of the investor or
manager. Again, Covel points out that the most successful money managers are
those that embrace and utilize the concepts of chaos theory. He states:
"While acceptance of a nonlinear world is a new concept for most, it is
not a new proposition for trend followers. Big events are nonlinear events.
Trend followers won those events because they expected the unexpected.
Lack of linearity, or cause and effect, was not something they feared because
their trading models were built for the unexpected." [26] (Italics
mine)
The idea of looking for the rare event is also found in the trading practices
of Nassim Taleb. In his book, Fooled By Randomness, Taleb states:
"One such rare event is the stock market crash of 1987, which made me as
a trader and allowed me the luxury of becoming involved in all manner of
scholarship. Nero [another trader] aims to get out of harm's way by avoiding
exposure to rare events - a mostly defensive approach. I am far more aggressive
than Nero and go one step further; I have organized my career and business
in such a way as to be able o benefit from them [rare events]. In other words,
I aim at profiting from the rare event, with my asymmetric bets." [27]
Taleb continues:
"In the markets, there is a category of traders who are inverse rare
events, for whom volatility is often a bearer of good news. These traders
lose money frequently, but in small amounts, and make money rarely, but in
large amounts. I call them crisis hunters. I am happy to be one of them." [28]
But rather than attempting to hire a "trend follower," we would do better
to focus on understanding why we must anticipate and accommodate rare
events. There are times when the markets appear directionless, but they inevitably
unfold in patterns similar to those of the past. The markets, like nature,
appear chaotic to the glances of the linear eye. Yet, more careful observation
reveals symmetry and order in the midst of what was perceived to be chaos.
Schroeder paints the picture well.
"The unifying concept underlying fractals, chaos, and power laws is self-similarity.
Self-similarity, or invariance against changes in scale and size, is an attribute
of many laws of nature and innumerable phenomena in the world around us.
Self-similarity is, in fact, one of the decisive symmetries that shape our
universe and our efforts to comprehend it.
Symmetry itself is one of the most fundamental and fruitful concepts of human
thought. By symmetry we mean an invariance against change: something
stays the same, in spite of some potentially consequential alteration." [29]
Like Dr. Mandelbrot, Dr. Schroeder points out, "Nature abounds with periodic
phenomena: from the motion of a swing to the oscillations of atoms, from the
chirping of a grasshopper to the orbits of the heavenly bodies." [30] Though
nothing is exactly periodic, order can still be seen. The fact that a cloud
covers our sunrise or that the wind isn't blowing today doesn't mean that there
is no sun or that the wind will never blow again.
History shows that nature, economies, and markets often display a type of
deterministic chaos. Schroeder states:
"No matter how chaotic life gets, with all regularity gone to bits, another
fundamental bulwark often remains unshaken, rising above the turbulent chaos: self-similarity,
an invariance with respect to scaling; in short, a self-similar object
appears unchanged after increasing or shrinking its size. Indeed, in turbulent
flows, large eddies beget smaller ones; and these spawn smaller ones still." [31]
A Landslide in a Teacup
Because we extrapolate linear thoughts, millions of investors and advisors
are not prepared for what lies ahead in our markets. They're thinking something
like, "As long as we keep dollar-cost-averaging our diversified portfolio,
then we'll have plenty of money when retirement comes. If it's worked for the
last 25 years, why fix it? Right?" And yet, the history of the markets, general
history, and science and math are telling a different story.
Once the markets have reacted to the myriad factors foretelling price swings
well beyond the standard deviations, many will have to live with the thought
that they suspected something was amiss but took no action and suffered catastrophic
losses.
We close this month's newsletter with a poignant scientific experiment that
could prove pertinent to our markets. As an aside, this illustration also demonstrates
how crowds react once they understand that they have been misled. At some point,
we must address the enormous, unspoken risk of unethical behavior in our markets
and our economy. I am certain you will see the similarities. In his book, The
Wave Principle of Human Social Behavior, Prechter conveys the following:
"In studying sand piles, Bak and Chen found a phenomenon that I would characterize
as very like herding behavior. Their machine dropped single grains of sand
at regular intervals. A pile shaped roughly like a cone quickly developed.
Then, at seemingly unpredictable times, a single grain added to the pile
produced a slide of many grains down the side of the cone. As sand was added,
the cone continued to grow. Landslides continued, and their sizes varied.
Upon occasion, a particularly large slide occurred. Here is their summary
of this behavior:
'At criticality, the size of the landslide does not depend on the size or
the number of new grains added. It depends on the holistic behavior of all
the grains acting together. The global behavior of the total pile transcends
the behavior of the individual grains within it. At criticality, every
grain is interacting in complex ways with all its neighbors. The motion
of one grain on the slope can induce motion in thousands of others.'" [32]
Again, very small additional inputs can cause disproportionate results. As
such, we shouldn't be looking for the big event to topple our sandcastle, but
rather the small occurrence that sets off a chain reaction.
If you know people who, unlike you, have yet to start learning about
the casino we depend on, I encourage you to share this article, and those like
it, with them. The months ahead will prove extremely painful to those who've
buried their heads in the sand. Best
Minds Inc gleans ideas from a wide range of topics and experts. To improve
our odds of profiting during this time of great deception and confusion, we
look at history against the action of financial markets, in a "connect-the-dots" format.
If you are interested in our research, consider our publication, The
Investor's Mind: Anticipating Trends through the Lens of History.
Sources:
[1] Fooled
by Randomness: The Hidden Role of Chance in the Markets and in Life (2001)
Nassim Taleb, page 10
[2] Money and The
Mind: Borrowing and Lending in America From the Civil War to Michael Milken
(1992) James Grant, page 169
[3] Ibid, page 170
[4] Ibid
[5] The (Mis)Behavior
of Markets: A Fractal View of Risk, Ruin, and Reward (2004) Dr. Benoit Mandelbrot
and Richard Hudson, pages 173-176
[6] Ibid- pages 177-178
[7] Ibid- page 178
[8] Ibid- page 180
[9] Ibid- pages148-149
[10] Ibid- page
180
[11] Ibid- page199
[12] Ibid- page
201
[13] http://www.nature.com/nature/debates/earthquake/equake_contents.html
[14] Ibid
[15] The (Mis)Behavior
of Markets, Mandelbrot and Hudson, page 13
[16] http://en.wikipedia.org/wiki/Fat_tail
[17] Capital Ideas
and Market Realities: Option Replication, Investor Behavior, and Stock Market
Crashes, (1999) Dr. Bruce E. Jacobs, page 145
[18] Ibid- page
145
[19] Wikipedia.org/wiki/Liquidity_risk
[20] Ibid
[21] Ibid
[22] Trend Following:
How Great Traders Make Millions in Up or Down Markets (2006) Michael W. Covel,
page 192
[23] Fooled by Randomness,
Taleb, page 143
[24] The (Mis)Behavior
of Markets, Mandelbrot and Hudson, page 294
[25] Fractals, Chaos,
and Power Laws: Minutes from an Infinite Paradise (1991) Dr. Manfred Schroeder,
page 126
[26] Trend Following,
Covel, page 192
[27] Fooled by Randomness,
Taleb, page 90
[28] Fooled by Randomness,
Taleb, page 96
[29] Fractals, Chaos,
Power Laws, Dr. Manuel Schroeder, page xiii
[30] Ibid- page1
[31] Ibid- pages
1-2
[32] The Wave Principle
of Human Social Behavior and the New Science of Socionomics (1999), Robert
R. Prechter Jr., pages 421-422
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