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			<title>Reason Magazine - Staff</title>
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			<managingEditor>info@reason.com (Reason Online)</managingEditor>
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<title>Complex Questions</title>
<link>http://www.reason.com/news/show/29809.html</link>
<description> &lt;p&gt;About a year ago Stephanie Forrest of the University of New Mexico
and Terry Jones of the Santa Fe Institutethe nerve center of &amp;quot;complexity&amp;quot;
researchwere fooling around with ECHO, an artificial evolution program developed by
Chris Langton, the father of &amp;quot;artificial life.&amp;quot; Like most research in the
emerging field of complexity, ECHO involves creating &amp;quot;digital organ isms,&amp;quot;
small snippets of computer code equipped with instructions to help them survive and
replicate in the silicon environment. When turned loose in cyberspace, these computer
creatures act very much like living organisms. They can be programmed to compete for
scarce resources, trade genes through sexual interactions, fight or trade with other
organisms, andin a fast-for ward of evolutionreproduce themselves over thousands of
generations. &lt;p&gt;The particular program that Jones and Forrest were tuning was designed
to mimic biologi cal evolution. After a while, they began noticing an odd pattern.
&amp;quot;No matter what organisms we started with, a few species would become predominant
while the vast majority remained scarce,&amp;quot; says Jones. &amp;quot;The species might
change places occasionally, but the pattern always remained the same. Even programs
that had bugs in them produced the same configuration.&amp;quot; &lt;p&gt;Their curiosity
piqued, Jones and Forrest showed their results to Jim Brown, an ecologist at the
University of New Mexico. His eyes opened wide. &amp;quot;That's Preston's curve,&amp;quot;
said the startled Brown. &amp;quot;It's a well-known ratio in ecology which says that most
species remain small while only a few species widely proliferate.&amp;quot; &lt;p&gt;The
replication of Preston's curve in the computer is typical of discoveries being made
today in the field of complexity. At times, the insights seem sublime, as if the
divine architecture of the universe were being revealed. Then again at others, the
research is disappointing: &amp;quot;The major discovery to emerge from the [Santa Fe]
Institute thus far is that 'it's very hard to do science on complex systems,'&amp;quot;
writes John Horgan of &lt;em&gt; Scientific American&lt;/em&gt;, quoting University of Chicago
mathematical biologist Jack D. Cowan. Neither the promise nor the disappointment is
surprising, however. Complexity is a young field, examining difficult problems with
new tools. Its results are often remarkable, deepening our understanding of how the
world works (or might work). But they are also quite preliminary and subject to
conflicting interpretations, especially when applied to social systems. &lt;p&gt;Complexity
theory explores how systems that are open to sources of energy are able to raise
themselves to higher levels of self-organization. Oil droplets in water will arrange
them selves into a sphere that is hollow inside. Snowflakes form crystals that always
have a hexagonal design. Previously these patterns had been thought of as coincidences
or curiosities. But begin ning with Ilya Prigogine, the 1977 Nobel laureate in
chemistry, theorists have been arguing that complex systems are capable of making
unexpectedly large leaps in self-organization that allow them to maintain a precarious
non-equilibrium. &lt;p&gt;This ordered non-equilibrium forms a temporary stay against the
dreaded Second Law of Thermodynamics, which says that any order in a closed system
will eventually dissipatea phenomenon called &amp;quot;increasing entropy.&amp;quot; Water and
ink mixed together, for example, eventually turn a uniform light blue. Pockets of hot and cold air in a room will become
uniformly luke warm. At bottom, the logic is that there are only a few orderly states
and many, many more messy or disordered ones. The chances of achieving an orderly
state by accident are vanishingly small. &lt;p&gt;Popular alarmists from Henry Adams to
Jeremy Rifkin have preached pessimism by misus ing the Second Law to argue that life
on Earth is quickly winding down. (Unaware of nuclear energy, Adams predicted that the
sun's core would burn out in a few thousand years.) But Earth is not a closed
thermodynamic systemand the universe may not be either. Life on Earth lives off the
constant energy provided by the sun. This allows the biosphere to pile up order in the
form of complex organic molecules, stored genetic information, and stable ecosystems.
As for the universe itself, it is still living off the energy of the Big Bang. Just
where that energy came from and whether it will eventually dissipate to thermodynamic
equilibrium is still being debated by the cosmologists. But concerns about the
universe winding down into a uniform state of low -grade energy are premature at best.
&lt;p&gt;Says Harold Morowitz, editor-in-chief of &lt;em&gt;Complexity&lt;/em&gt; , a bi-monthly journal
that published its first issue in September: &amp;quot;Entropy is only defined for closed,
equilibrium systems. The Earth is not a closed system and for all we know, the
universe may not be, either. But as far as non -equilibrium systems are concerned, any
system that is in something other than its most random state, as a result of boundary
conditions or energy flowing through the system, is experiencing some kind of
spontaneous order.&amp;quot; &lt;p&gt;Enthusiasts point to examples of spontaneous order almost
everywherethe gathering of winds into a hurricane, the self-replication abilities of
DNA, the interlocking relationships of an ecosystem, the immune system, the human
mind, the development of language and common law, the evolution of human cultures. All
are representative of the slow, cumulative development of &amp;quot;autocatalytic&amp;quot;
patterns and positive feedback loops that eventually emerge as &amp;quot;complex, adap
tive systems&amp;quot;organisms capable of sustaining their identity while constantly
changing to meet new environments. &lt;p&gt;As Stuart Kauffman, a MacArthur fellow and Santa
Fe Institute star, puts it: &amp;quot;I read about entropy and I expect a world filled
with disorder. Yet I look outside my window and see nothing but order. It is the order
that needs explaining.&amp;quot; &lt;p&gt;In his first brilliant discovery 20 years ago, for
example, Kauffman created a system of 100 computer-dwelling &amp;quot;genes,&amp;quot; all
turning each other on and off, just as real genes are believed to do in any living
organism. Although the situation appeared completely chaotic, Kauffman dis covered
that when each gene was controlled by only two other genes, the on-off patterns would
settle down into about 10 repeating cycles, or &amp;quot;basins of attraction.&amp;quot; He
posited that these basins corresponded to the different cell types that are produced
by the same set of genes in every multicellular organism. In one of those sublime
revelations that dot the history of complexity research, Kauffman later discovered
that he had duplicated a long-known principle of genetics: that the number of cell
types&lt;strong&gt; &lt;/strong&gt;in an organism is roughly equal to the square root of the number of its
genes. &lt;p&gt;&amp;quot;The simplicity of this result astonished me at the time,&amp;quot; he
says. &amp;quot;It still astonishes me.&amp;quot;

&lt;p&gt;While everyone in complexity research agrees that spontaneous order exists
throughout the cosmos, no one seems to be able to agree on exactly what that implies. &amp;quot;The
consensus right now is that there is no one thing called complexity theory,&amp;quot; says
Michael Simmons, director of re search at Santa Fe. &amp;quot;Talk to any person who is
working in the field and they'll give you a differ ent definition.&amp;quot; &lt;p&gt;One area
of agreement is the concept of &amp;quot;algorithmic information content,&amp;quot; or AIC.
This refers to the length of the instructions needed to generate the solution to a
problem. AIC can be very small or very large. The instruction: &amp;quot;Print 1 followed
by a trillion zeros&amp;quot; produces a very large outcome with only one simple
instruction. The instruction: &amp;quot;Print 17898369806895434&lt;br /&gt; 8230...&amp;quot; up to a
trillion randomly selected numbers would require an AIC larger than the answer itself.
&lt;p&gt;It is only in the middle range that things start to get interesting. Suppose we
tell the com puter: &amp;quot;Print a million numbers at random. Now scan the string and
find how many times the numbers '1234567890' appear in succession. Remove these
numbers and scramble the remaining numbers again. Repeat step 2. Repeat step 3.
Continue until the string does not occur. Count the digits in the remaining number.
Print the answer.&amp;quot; The computer will have to do a lot more &amp;quot;thinking&amp;quot;
to complete the instructions. &lt;p&gt;Charles Bennett of IBM has defined this amount of
thinking a computing machine has to do to generate a printout as &amp;quot;depth.&amp;quot;
Neither a perfectly ordered system (&amp;quot;Print 1 followed by a trillion zeros&amp;quot;)
or a perfectly disordered one (&amp;quot;Print 1823749567819074823719...&amp;quot;) has much
depth to it. Instead, depthwhich is essentially a measure of complexityoccurs in the
middle range. This middle area has been defined as a &amp;quot;phase transition&amp;quot;
between order and chaos. &lt;p&gt;Systems become &amp;quot;deeper&amp;quot; and more complex as
elements of time and memory are added. A perfectly elastic ball bouncing on a table
has no memory and can be described almost perfectly by the linear equations of
physics. A hurricane gathering force, on the other hand, is nonlinear and virtually
impossible to describe in mathematical terms. Rather than complex, it is
&amp;quot;chaotic.&amp;quot; &lt;p&gt;Although chaotic systems are inherently unpredictable, they
can be described by certain laws, the most important being the &amp;quot;butterfly
effect,&amp;quot; which says that small changes in initial conditions can produce enormous
changes in outcome. (The term comes from the piquant obser vation that, since weather
patterns are chaotic, a butterfly flapping its wings in Mexico today can change the
weather in Chicago next month.) &lt;p&gt;Chemical reactions are complex without necessarily
being chaotic. Take a container filled with hydrogen and oxygen atoms in a 2-to-1
ratio and certain predictions can be made. Still, it will make an enormous difference
whether the atoms are already bonded to form water mol ecules or whether they are
ionized and volatile. The system has memory and therefore requires more information to
describe it. &lt;p&gt;Biology is more complex again. Biological systems all obey the laws of
physics and chem istry, yet still have qualities that cannot be derived from physics
and chemistry. To understand Preston's curve, for example, you have to know something
about the actions of biological organ isms within evolutionary time. &lt;p&gt;In his book
&lt;a href=&quot;http://www.amazon.com/exec/obidos/ASIN/0716727250/reasonmagazineA/&quot;&gt;The Quark and the Jaguar&lt;/a&gt;, physicist Murray Gell-Mann, who won the Nobel Prize
for his quark theory, posits that complexity explains why all the action of the
universe cannot simply be reduced to a few fundamental rules. Or, to put it
differently, complexity theory says that, given a complete knowledge of the state of
the universe at its inception and given a complete knowledge of the laws of physics and chemistry, it would still be
impossible to predict the path of life on Earth. &lt;p&gt;&amp;quot;I know of no serious
scientist who believes that there are special chemical forces that do not arise from
underlying physical forces,&amp;quot; writes Gell-Mann. &amp;quot;In that sense, we are all
reduc tionists. But the very fact that chemistry is more special than elementary
particle physics, apply ing only under the particular conditions that allow chemical
phenomena to occur, means that information about those special conditions must be fed
into the equations.&amp;quot; &lt;p&gt;The differential applies even more strongly to biology.
&amp;quot;To begin with, many features common to all life on Earth may be the result of
accidents that occurred early in the history of life on the planet but could have
turned out differently,&amp;quot; writes Gell-Mann. In that case, terres trial life has
taken on a good deal of effective complexity, since a great deal of new information
would have to be plugged into the equations to describe its outcome. &lt;p&gt;Even if
terrestrial biology is not unique, it still contains a good deal of depth. &amp;quot;The
science of biology is very much more complex than fundamental physics because so many
of the regu larities of terrestrial biology arise from chance events as well as
fundamental laws,&amp;quot; writes Gell-Mann. Economics, psychology, and human cultures
have even greater depth and complexity than biology, simply because they are based on
human beings' biological nature but also go beyond it. &lt;p&gt;Gell-Mann says he formulated
this hierarchy partly in response to the reductionism he found among his colleagues at
Caltech. Many specialists argued that the human mind had no unique qualities that
could not be described by the workings of electrical impulses and organic chemistry.
&amp;quot;Some refused to talk about the mind at all,&amp;quot; he recalls. &amp;quot;One friend
of mine called it 'the M-word.'&amp;quot; &lt;p&gt;Now the anti-reductionists are on the
counterattack. Says Kauffman: &amp;quot;The past three centu ries of science have been
predominantly reductionist, attempting to break complex systems into simple parts, and
those parts, in turn, into simpler parts. This program has been spectacularly
successful, but it has also left a vacuum. How do we use the information gleaned about
the parts to build a theory of the whole? The complex whole, in a completely
non-mystical way, can often exhibit collective properties'emergent' featuresthat are
lawful and unique in their own right. These properties constitute the
'self-organization' or 'spontaneous order' of the system.&amp;quot; &lt;p&gt;Kauffman posits
that the spontaneous order being discovered in natural systems makes the genesis of
life seem natural, even expected. Rather than the blind, one-shot miracle implied by
Darwin's theory of natural selection, life on Earth may be the orderly and expected
outcome of nature's inherent tendencies toward self-organization. &amp;quot;Natural
selection is important, but it has not labored alone to create the fine architectures
of the biosphere,&amp;quot; says Kauffman. &amp;quot;I believe the order of the biological
world's not merely tinkered, but arises naturally and spontaneously because of laws of
complexity that we are just beginning to understand.&amp;quot; &lt;p&gt;In the recently
published &lt;a href=&quot;http://www.amazon.com/exec/obidos/ASIN/0195111303/reasonmagazineA/&quot;&gt;At Home in the Universe&lt;/a&gt; , a popular account of his ideas, Kauffman is
even more enthusiastic: &amp;quot;Profound order is being discovered in large, complex,
and apparently random systems. I believe that this emergent order underlies not only
the origin of life itself, but much of the order seen in organisms today....If all
this is true, what a revision of the Darwinian worldview will lie before us! Not we
the accidental, but we the expected!&amp;quot; &lt;p&gt;Nor does Kauffman shrink from the
obvious implications of this discovery: &lt;p&gt;&amp;quot;Most important of all, if this is
true, life is vastly more probable than we have supposed.

&lt;p&gt;Not only are we at home in the universe, but we are far more likely to share it
with as yet un known companions.&amp;quot; &lt;p&gt;Carl Sagan, take heart. &lt;p&gt;Complexity
research has quickly spread from the natural to the social sciences. &amp;quot;We are more
convinced than ever that our greatest impact is going to be in the social
sciences,&amp;quot; says Santa Fe research director Simmons. &amp;quot;In the evolution of
human culture and the adaptive learn ing that goes on within large organizations we
expect to see significant discoveries very soon.&amp;quot; &lt;p&gt;The most striking result so
far: As computers have encountered complex systems, it has become clear that it is
difficult, if not impossible, to plan their outcomes centrally. John Holland, the
pioneering University of Michigan mathematician, built the first computerized
&amp;quot;complex adaptive system&amp;quot; by mimicking the free market. Looking for a way to
model the human brain, Holland found that efforts to create a
&amp;quot;command-and-control&amp;quot; model had already failed at MIT. So he solved the
problem by making each digital &amp;quot;synapse&amp;quot; into an economic unit. Individual
synapses were paid off for solving problems, with a &amp;quot;bucket brigade&amp;quot; to
distribute the rewards to participating units. &lt;p&gt;&amp;quot;Economic reinforcement via the
profit motive was an enormously powerful organizing force, in much the same way that
Adam Smith's Invisible Hand was enormously powerful in the real economy,&amp;quot; writes
Mitchell Waldrop in Compl&lt;em&gt; exity&lt;/em&gt;, a 1992 book on the work at Santa Fe.
&amp;quot;When you thought about it, in fact, the Darwinian metaphor and the Adam Smith
metaphor fit together quite nicely.&amp;quot; &lt;p&gt;Computer experts at the Palo Alto
Research Center discovered the same principle in 1988 when Xerox tried setting up a
system to maximize use of its computers. Engineers had tried a
&amp;quot;command-and-control&amp;quot; system, but found it unworkable. The information
needed to coordinate decisions quickly overwhelmed the central processor. So Xerox
researchers invented SPAWN, a system in which individual computers are given
&amp;quot;money&amp;quot; and instructed to maximize their bank accounts by taking on tasks
and trading computer downtime among themselves. Without any external direction or
control, the computers quickly optimize their own use by trading on this internally
created market. &lt;p&gt;&amp;quot;All complex biological and economic systems work this
way,&amp;quot; says Tad Hogue, a member of the research staff at Xerox PARC. &amp;quot;If
every human cell's protein production had to be pro cessed through the brain, the
costs of coordination would quickly overwhelm the nerve cells' capacities.
Consequently, most decisions are made within the cell, or by the internal communica
tions of the endocrinal system, which bypasses most brain functions. Although we tend
to think of ourselves being in complete command of our bodies, most of life's choices
are made within the individual cells.&amp;quot; &lt;p&gt;Stuart Kauffman advances the
&amp;quot;patches&amp;quot; principle for solving problems in large organiza tions. Trying to
find the best way for a large entity to solve a complex mathematical problem, Kauffman
shows that if the entity is broken up into a grid of small &amp;quot;patches&amp;quot; and
each patch is allowed to solve its own small portion of the problem, an optimal
solution emerges. Kauffman even invokes Adam Smith by way of explanation: &amp;quot;Here
we have another invisible hand in operation. When the system is broken into
well-chosen patches, each adapts for its own selfish benefit, yet the joint effect is
to achieve very good [solutions] for the whole lattice of patches. No central
administrator coordinates behavior. Properly chosen patches, each acting selfishly,
achieve the coordination.&amp;quot; He suggests the finding has enormous implications
for federalism and for decentralizing large corporate units. &lt;p&gt;On the surface, the
computer-assisted discovery of spontaneous order would appear to be a triumphant
vindication of libertarian social theory in general and the Austrian School of econom
ics in particular. The term &amp;quot;spontaneous order,&amp;quot; after all, was coined by
Friedrich A. Hayek in his 1960 classic, &lt;a href=&quot;http://www.amazon.com/exec/obidos/ASIN/0226320847/reasonmagazineA/&quot;&gt;The Constitution of Liberty&lt;/a&gt;. For most
of this century, free market economists have labored to convince people that
&amp;quot;economic planning&amp;quot; isn't necessary. Left to itself, they argued, the market
economy will spontaneously optimize the wishes and desires of its participantseven
though all are only pursuing their own self-interest. &lt;p&gt;&amp;quot;I am convinced that if
[the market system] were the result of human design, it would be acclaimed as one of
the greatest triumphs of the human mind,&amp;quot; wrote Hayek in his landmark essay,
&amp;quot;The Uses of Knowledge in Society&amp;quot; (1945). &amp;quot;Its misfortune is the
double one that it is not the product of human design and that the people guided by it
usually do not know why they are made to do what they do.&amp;quot; &lt;p&gt;Yet for all their
efforts in defending the spontaneous order of the market, neither the Austri ans nor
their followers ever articulated in convincing mathematical terms just how spontaneous
order arises. Astonishingly, the complexity theorists, with their digital organisms
and time -compressing computer models, now seem to have provided the answer. &lt;p&gt;Brian
Arthur, head of economics research at Santa Fe, readily acknowledges this prece dence.
&amp;quot;Right after we published our first findings, we started getting letters from all
over the country saying, 'You know, all you guys have done is rediscover Austrian
economics,'&amp;quot; says Arthur, sitting in his book-lined offices at the Santa Fe
Institute's sun-drenched hilltop mansion. &amp;quot;I admit I wasn't familiar with Hayek
and von Mises at the time. But now that I've read them, I can see that this is
essentially true.&amp;quot; &lt;p&gt;Yet all this has not prevented Arthur and the other
economists at Santa Fe from turning complexity into a rationale for government
intervention. Arthur's basic concepts are &amp;quot;increasing returns&amp;quot; and
&amp;quot;path dependence.&amp;quot; In a series of papers (particularly &amp;quot;Increasing
Returns and Path Dependence in the Economy,&amp;quot; published in 1993), he has argued
thatrather than the old Ricardo/Malthusian pessimism about &amp;quot;diminishing
returns&amp;quot;technological innovation in the economy can produce cascading
improvements that improve productivity beyond anyone's wild est dreams. Improvement
leads to improvement, which interlock in an ever more interdependent network of
improvementssuch as railroads leading to better transportation of food leading to
improvements in agricultural productivity. &lt;p&gt;But Arthur also argues that, once
undertaken, paths of innovation may lead to &amp;quot;technologi cal lock-in&amp;quot;:
Economies and societies may get frozen on technological paths that later become
unproductive. He likes to cite the QWERTY system on the typewriter keyboard and the
triumph of VHS over Betamax as instances where a possibly inferior technology has
become enshrined by the market. &lt;p&gt;&amp;quot;Economies are complex systems and once they
adapt it becomes difficult to change direction,&amp;quot; says Arthur. &amp;quot;Nobody makes
Betamax movies because people don't have the home equipment to show them and people
don't buy the home equipment because nobody makes Betamax movies.&amp;quot; To overcome
this inertia, he argues, government intervention may be neces sary. (The specific
examples of QWERTY and Betamax have been examined in detail, andconvincingly debunked,
by economists Stan Liebowitz of the University of Texas at Dallas and Stephen Margolis
of North Carolina State University.)

&lt;p&gt;Arthur's work furnishes the basic principles for a &amp;quot;white paper&amp;quot;
submitted to federal Judge Stanley Sporkin in November 1994, arguing that allowing
Microsoft to buy Intuit, which makes personal-finance software, would lead to dire
consequences, &amp;quot;so as to constitute a threat to the underpinnings of a free
society.&amp;quot; In that context, &amp;quot;increasing returns&amp;quot;rather than a reason for
technological optimismbecomes a two-by-four with which to hit any company that itself
may experience increasing returns from a new technology, and thus develop a monopoly.

&lt;p&gt;So if complexity research breeds so much respect for self-organizationputting
digital flesh on the skeleton of Adam Smith's invisible handwhy do its economists so
often end up defending the visible hand of the government? Part of the answer seems to
be in the &amp;quot;path depen dence&amp;quot; of the Santa Fe program itself. The researchers
bring their own political philosophies and assumptions to their work, driving not so
much the research itself but its interpretation. The founder of the economics program
was Kenneth Arrow, a Nobel Prize winner and dedicated Keynesian. Gell-Mann is a devoted
environmentalist and co-founder of the World Resources Institute -- as co-chairman of
Sante Fe's science board, he has tried to relate the institute's work to rainforest
preservation and other environmentalist concerns. &amp;quot;Shoot Newt&amp;quot; reads graffiti
on an institute blackboard.

&lt;p&gt;AT the heart of complexity theory, however, lies the notion of freely evolving
systems, including social and economic systems. Kauffman's work is pregnant with support
for individual liberty and free institutions. John Holland's decision to model the human
brain in the free market may be seen as a paradigm for the era. The problem seems to be
that complexity theory, as applied to economics, has been developed by researchers who
already had a strong predilection for activist government. And the theory isn't well
developed enough to say much, if anything, about public policy. Complexity research is
still far more descriptive than prescriptive. Its main contribution to our understanding
of markets is the evidence that order can arise without central direction. Complexity
research addresses one of the hardest obstacles faced by advocates of free markets: what
Thomas Sowell has called &quot;the intentional fallacy,&quot; the notion that someone must be in
charge.

&lt;p&gt;Says Michael Rothschild, the former managment consultant who wrote &lt;a href=&quot;http://www.amazon.com/exec/obidos/ASIN/0805019790/reasonmagazineA/&quot;&gt;Bionomics&lt;/a&gt;
to popularize his own ideas about &quot;economy as ecology&quot;: &quot;The great anxiety people have
about the free market is that nobody appears to be running it. There's a psychological
certainty in the idea that somebody -- the president, the chairman of the Federal
Reserve Board -- is 'at the helm.' Perhaps the hardest thing for people to grasp is that
the economy has the properties of a living organism -- it runs by itself.&quot;

&lt;p&gt;Complexity theory's elegant demonstrations should help make these often
counterintuitive concepts more acceptabel to the general public. Yet none of this
constitutes a moral proof for choosing individual liberty. In the end, people have to
make that choice themselves.&lt;/p&gt;</description>
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<pubDate>Mon, 01 Jan 1996 00:00:00 EST</pubDate><author>info@reason.com (William Tucker)</author>
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