Title: G
1Gödelian Foundations of Non-Computability and
Heterogeneity In Economic Forecasting and
Strategic Innovation
- Sheri M. Markose
- Economics Department and Centre For Computational
Finance and Economic Agents (CCFEA) - University of Essex, UK. scher_at_essex.ac.uk
-
- Computing in Europe (Cie) Conference
- SWANSEA 4 July 2006
2ROAD MAP I
- ?SELF-REFLEXIVE CONTRARIAN STRUCTURE This is
false - The presence of contrarian payoff structures or
hostile agents in a game theoretic framework are
shown to result in the fundamental non-computable
fixed point that corresponds to Gödel's
undecidable proposition - ? Lack of effective procedures to determine
winning strategies in a stock market game with
contrarian payoff structure - Brian Arthur (1994) The Minority or El
Farol game has a contrarian structure - ? Results in the adoption of a multiplicity or
heterogeneity of meta-models for forecasting and
strategizing by agents
3ROAD MAP II Game Theory with Hostile Agents
Nash Equilibrium is Surprise or Innovation
- ? Construction of fixed point or self-reference
in so called rational expectations or mutual
acknowledgement uses Diagonalization lemma and
2nd Recursion Theorem - ? Any best response function of the game
which is constrained to be a total computable
function then represents the productive function
of the Emil Post (1944) set theoretic proof of
the Gödel Incompleteness result. The productive
function implements strategic innovation and
objects of novelty or 'surprise' formally maps
into a non-recursively enumerable set - This results in undecidable structure changing
dynamics in the system
4ROAD MAP III Ubiquity of contrarian
self-reflexivecalculations in socio-economic
systems
- ? Oppositional or contrarian structures,
self-reflexive calculations and the necessity to
innovate to out-smart hostile agents are
ubiquitous in economic systems. As first noted in
Binmore (1987) and Spear (1987), extant game
theory and economic theory cannot model the
strategic and logical necessity of Gödelian
indeterminism in economic systems. - ? Formal results developed in Markose (2002,
2004, 2005) on the implications of the Gödelian
incompleteness result for economics. - Keywords Effective procedures self-reflexivity
contrarian payoff structures strategic
innovation Gödel Incompleteness.
5Canonical Example I of Self-Reflexive Systems
and Contrarian Structures
- ? Brian Arthur (1994) gave a powerful
rebuttal of why traditional economic analysis
will fail to understand stock markets using only
deduction and why artificial modelling is needed - In a stock market an investor makes money if
he/she can sell when everybody else is buying and
buy when everybody else is selling. In other
words, one needs to be in the minority or
contrarian - Arthur called this the El Farol Bar problem. You
want to go to the pub when it is not crowded.
Assume everybody else wants to do the same. How
can you rationally decide/strategize to succeed
in this objective of being in the minority ?
6Minority Game HeterogeneousForecasting Rules
- If all of us have the same forecasting model to
work out how many people will turn up say our
model says it will be 80 full then as all of
us do not want to be there when it is crowded
none of us will go. - This contradicts the prediction of our model and
in fact we should go. If all reasoned this way
once again we will fail etc. So there is no
Homogenous Rational Expectations and no rational
way in which we can decide to go. Traditional
economics cannot deal with this - Hence, Brian Arthur said we must use Artificial
Stock Market models and see how the system
dynamically self-organizes
7Example II Design of Market GamesShould not
permit computable winning strategies or Free Lunch
- George Soros made 2bn taking a short position
against the Sterling and the Bank of England. He
is alleged to have used the Liar or Contrarian
Strategy. - Soros cut above ordinary speculator student of
Karl Popper and knows the self-reflexive problem
of the Cretan Liar. Liar can subvert only from a
a point of certainty or computable fixed point.
Hence, if the policy position is perfectly known
hostile agents can destroy it. Indeterminism or
ambiguity is a essential design element for
success of market systems and zero sum games - Traffic Model and how to avoid congestion is a
minority game
8Part II Main ingredients of a Nash Equilibrium
With Surprise or Innovation
- Agents with full powers of Turing Machines Why?
- Agents must have oppositional interests Why?
- Arms Race Type Red Queen Dynamic formally
modelled as the productive function that can
produce innovations ad infinitum
9I. Agents with full powers of Turing Machines
Why?
- It is now well known from the Wolfram-Chomsky
scheme (see, Wolfram, 1984, Foley, in Albin,1998,
pp. 42-55, Markose, 2001a) that on varying the
computational capabilities of agents, different
system wide or global dynamics can be generated.
- Finite automata produce Type 1 dynamics with
unique limit points - Push down automata produce Type 2 dynamics with
limit cycles - Linear bounded automata produce Type 3 chaotic
output trajectories with strange attractors. - However, it takes agents with full powers of
Turing Machines capable of simulating other
Turing machines and hence self-reference, a
property called computational universality, to
produce the Type 4 irregular innovation based
structure changing dynamics associated with
capitalist growth. -
10- Agents must have oppositional interests. Why?
- Axelrod (1987) in his classic study on
cooperative and non-cooperative behaviour in
governing design principles behind evolution had
raised this crucial question on the necessity of
hostile agents we can begin asking about
whether parasites are inherent to all complex
systems, or merely the outcome of the way
biological systems have happened to evolve
(ibid. p. 41). - It is believed that with the computational theory
of actor innovation (Markose, 2003/4), we have a
formal solution of one of the long standing
mysteries as to why agents with the highest level
of computational intelligence are necessary to
produce innovative outcomes in Type IV dynamics.
11- Finally what do non-computable emergent
equilibria look like? - It corresponds to the famous Langton thesis on
life at the edge of chaos and is formally
identical to recursively inseparable sets first
discovered in the context of formally undecidable
propositions and algorithmically unsolvable
problems by Post (1944). -
- Figure 1 gives the set theoretic representation
of the Wolfram-Chomsky schema of complexity
classes for dynamical systems which formally
corresponds to Posts set theoretic proof of
Gödel Incompleteness Result.
12(No Transcript)
13- Mathematical Preliminaries
- ? MECHANISM, ALGORITHM, COMPUTATION
-
- The Church Turing Thesis states that models of
computation considered so far for implementing
finitely encoded instructions, prominent among
these being that of the Turing machine (T.M for
short), have all been shown to be equivalent to
the class of general recursive functions.
14(No Transcript)
15Definition 2 A set which is the null set or the
domain or the range of a recursive function is a
recursively enumerable (r.e) set. Sets that
cannot be enumerated by T.Ms are not r.e .
The one feature of computability theory that is
crucial to eductive game theory where players
have to simulate the decision procedure of other
players, is the notion of the Universal Turing
Machine(UTM).
(2) The UTM, on L.H.S of
(2) on input x will halt and output what the TMa
on the RHS does when the latter halts and
otherwise both are undefined.
16 . C x fx(x) ) TMx(x) halts x Î Wx
(3.a) The complement of C C x
TMx (x) does not halt fx(x) not defined x Ï
Wx (3.b).Theorem 1 The set C is not
recursively enumerable. In the proof that C is
not recursively enumerable, viz there is no
computable function that will enumerate it,
Cantors diagonalization method is used. 2
2 Assume that there is a computable function
f fy , whose domain Wy C . Now, if y Î Wy
, then y Î C as we have assumed C Wy . But
by the definition of C in (3.b) if y Î Wy ,
then y Î C and not to C . Alternatively, if
yÏWy , y ÏC , given the assumption that C Wy
. Then, again we have a contradiction, as since
from (3.b) when yÏ Wy , yÎC . Thus we have to
reject the assumption that for some computable
function f fy , its domain Wy C .
17Definition 5 A creative set Q is a recursively
enumerable set whose compliment, Q, is a
productive set. The set Q is productive if
there exists a recursively enumerable set Wx
disjoint from Q (viz. Wx Ì Q) and there is a
total computable function f(x) which belongs to
Q - Wx. f(x) ? Q Wx is referred to as the
productive function and is a witness to the
fact that Q is not recursively enumerable. Any
effective enumeration of Q will fail to list
f(x), Cutland (1980, p. 134-136).
18GAME REGULATORY ARBITRAGE OR PARASITE AND HOST
MODEL UNDER COMPUTABILITY CONSTRAINTS
- Computability constraints means that all decision
rules, actions etc. are finitely encodable
procedures with Godel numbers (g.ns). -
- G (p,q), (Ap, Ag), sÎ S. This information is
in the public domain. - Here,(p,g) denote the respective g.ns of the
objective functions, to be specified, of players,
p, the private sector/regulatee and g,
government/regulator. - The action sets by Ai with A ? Ai, are finitely
countable with ail Î Ai , iÎ (g, p) being the
g.n of an action rule of player i and
l0,1,2,.....,L. An element sÎ S denotes a
finite vector of state variables and other
archival information and S is a finitely
countable set. The strategy functions denoted
by (bg , bp ) The strategy sets containing the
g.ns of computable strategies denoted by (Bp,
Bg). Lower case b are g.n for strategies and b
beliefs of other players strategy.
19LIKE CHESS NOTATION META ANALYSIS OF
GAME All meta-information with regard to the
outcomes of the game for any given set of state
variables, s belong to S and state of play can be
effectively organized by the so called
prediction function f s (x,y) (s) in an
infinite matrix X of the enumeration of all
computable functions, given in Figure 2.
20FIGURE 2 PREDICTABLE PAYOFFS X0 fs(0,0)
fs (0,1) fs (0,2) fs (0,3) ....
fs(0,y) .... X1 fs(1,0) fs
(1,1) fs (1,2) fs (1,3) .... fs(1,y)
.... X2 fs(2,0) fs (2,1)
fs (2,2) fs (1,3) .... fs(2,y) .....
.. Xx fs(x,0) fs (x,1) fs (x,2)
fs (x,3) .... fs(x,y) ....
fs(x,x)The best response function fi can
dynamically move the system from row to row.f s
(x,y) (s) q . q in
some code, is the vector of state variables
determining the outcome of the game.Nash
Equilibria are DIAGONAL ELEMENTS s(x,y) is the
index of the program for prediction function f
that produces the output of the game when one
player plays strategy x and the other player
plays a strategy that is consistent with his
belief that the first player has used strategy y.
21Second Recursion Theorem Fixed Point
Result X0 fs(0,0) fs (0,1) fs (0,2)
fs (0,3) .... fs(0,y) .... X1
fs(1,0) fs (1,1) fs (1,2) fs (1,3)
.... fs(1,y) .... X2 fs(2,0)
fs (2,1) fs (2,2) fs (1,3) ....
fs(2,y) ..... .. Xx fs(x,0)
fs (x,1) fs (x,2) fs (x,3) .... fs(x,x
) .....
f'
Xm ff(s(0,0)) ff(s(1,1)) ff(s(2,2))
ff(s(3,3)) ... ff(s(m,m))
Xm ff(s(0,0)) ff(s(1,1)) ff(s(2,2))
ff(s(3,3)) ... ff(s(m,m))
fs(m,m)
22 Theorem 1 The representational system is a 1-1
mapping between meta information in matrix X in
Figure2 and internal calculations such that the
conditions under which the prediction function
which determines the output of the game for each
(x,y) point is defined as follows
23Definition 5 The best response functions fi, i ?
(p,g) that are total computable functions can
belong to one of the following classes
such that the g.ns of fi are contained
in set ?, ? m f j f m , fm is
total computable. (5.b)Remark 4 The set ?
which is the set of all total computable
functions is not recursively enumerable. The
proof of this is standard, see, Cutland (1980,
p.7). As will be clear, (5.b) draws attention
to issues on how innovative actions/institutions
can be constructed from existing action sets.
24Definition 7 The objective functions of players
are computable functions Pi , i? (p,g) defined
over the partial recursive payoff/outcome
functions specified in state variables in (3).
The Nash equilibrium strategies with g.ns denoted
by (bpE, bg E) entail two subroutines or
iterations, to be specified later.
25In standard rational choice models of game
theory, the optimization calculus in the choice
of best response requires choice to be restricted
to given actions sets. Hence, strategy functions
map from a relevant tuple that encodes meta
information of the game into given action
sets bi ( fis(x,x), z, s, A) ? Ai and fi f m
, m?Ai, i ? (p,g) .
(7.a) Unless this is the case, as the set ?
is not recursively enumerable there is in general
no computable decision procedure that enables a
player to determine the other players response
functions. Definition 7 We say that the player
has used a strategic innovation or a surprise and
adopted an innovation in terms of actions from ?-
A, viz. outside given action sets when, bi
(fis(x,x)), z, s, A) ? ?- A and fi fi ! fm
, m? ? -A,
i ? (p,g).
(7.b)
26WHEN DOES THIS HAPPEN?The very function of the
Gödel meta framework is to ensure that no move in
the game made by rational and calculating players
can entail an unpredictable/surprise response
function from set ? unless players can mutually
infer by strictly codifiable deductive means from
s(x.x) that (7.b) is a logical implication of the
optimal strategy at the point in the game.
In other words, the necessity of an
innovative/surprise strategy as a best response
and that an algorithmic decision procedure is
impossible at this point are fully codifiable
propositions in the meta analysis of the game.
27THE STRUCTURE OF OPPOSITION THE LIAR
STRATEGY For any state s when the rule a
applies,THE LIAR STRATEGY fp
For all s when policy rule a does not apply,
fp 0 . Do Nothing
(14.b)Implications of
the Liar Strategy
28 Proposition 3 The outcome of the game at this
out of equilibrium point s(ba ,ba ) is
predictable with
The no-win for g is recursively ascertainable and
rule a cannot be a Nash equilibrium strategy for
g. Not acknowledging the identity of the
Liar is fatal for transparent rules and the
success of the Liar entails an elementary error
in logic and game theory on part of the other
player.
293.3 The Non-computable Fixed Point Now, if
g acknowledges the identity of the Liar in
(14.a), he updates his belief with ba , the
code for the Liar strategy in (14.a). Once the
identity of the Liar has been acknowledged, g
must rationally abandon the transparent rule a in
(14.a) as per Proposition 3.
Theorem 3 The prediction function indexed by
the fixed point of the Liar/rule breaker best
response function fp in (15) is not computable.
Here, the fixed point which signals mutual
knowledge that p will falsify predicted outcomes
of gs rule will lack structural invariance
relative to the best response function fp whose
fixed point it is. Herbert Simon calls this
the outguessing problem
303.4 Surprise Nash Equilibria and The Productive
Function gs Nash equilibrium strategy bgE
with g.n bgE implemented by the total computable
function b1 in (11.a) must be such that bgE (fgs
(ba , ba ), z, s, A) ? ?- A and fg fg! fm
, m? ? -A. (16.a) That is, fg! implements an
innovation and bgE ! is the g.n of the surprise
strategy function in (16.a).
31Likewise for player p, fp! implements an
innovation in (16.b) and bpE ! is the g.n of the
surprise strategy function. Thus, bpE (fp s
(b1( ba), b1( ba )), z, s, A) ? ?- A and fp
fp ! fm , m? ? -A. (16.b)The total
computable functions (b1 , b2 ) in (11.a,b)
implementing the g.ns of the respective Nash
equilibrium strategies from the uncomputable
fixed point in (15), fully definable in the meta
analysis, can only map into domains of respective
strategy sets (Bp , Bg) whose members cannot be
recursively enumerable. As fp are total
computable functions thereoff, it can only map
into the productive set ? -A, which is not
recursively enumerable.
32Theorem 5The incompleteness of ps strategy
set Bp that arises from the agency of the Liar
strategy requires the proof that ßpc is
productive as in Definition 4 with the g.n of the
surprise strategy bpE ! ? ßpc -
ßp.Construct a witness for why ßpc is not
recursively enumerable.
33(No Transcript)
34ARMS RACE IN SURPRISES/INNOVATIONS
Bpc
b0 b1 . bn-1
g.n (fp(sn)) bn
Wsn
Wsn1
g.n Godel Number
35CONCLUDING REMARKS? INNOVATION FAR FROM BEING
A RANDOM OUTCOME, AS IS POPULARLY HELD, IS THE
RESULT PRIMARILY OF COMPUTATONAL INTELLIGENCE
Wolfram (1984) had conjectured that the highest
level of computational intelligence, the capacity
for self-referential calculation of hostile
behaviour was also necessary. This casts doubt
on the Darwinian tradition that random mutation
is the only source of variety ? THE STRUCTURE
OF OPPOSITION IS A LOGICAL NECESSARY CONDITION
FOR INNOVATION TO BE A STRATEGIC RATIONAL
OUTCOME AND A NASH EQUILBRIUM OF A GAME.
36- Surprise Nash equilbria correspond to phase
transition of life at the edge of chaos. -
- In Markose (2003) it is argued that for systems
to stay at the phase transition associated wih
novelty production requires the Red Queen dynamic
of rivalrous coevolving species. In the Rays
Tierra(1992) and Hillis ( 1992)artificial life
simulation models, once computational agents have
enough capabilities to detect rivalrous behaviour
that is inimical to them, they learn to use
secrecy and surprises. - Finally, a matter that is beyond this paper, but
is of crucial mathematical importance is that
objects of adaptive novelty as in the Gödel
(1931) result has the highest diophantine degree
of algorithmic unsolvability of the Hilbert Tenth
problem. This model of indeterminism is a far
cry from extant models that appear to assume
adaptive innovation or strategic surprise is
white noise which in the framework of entropy
represents perfect disorder, the antithesis of
self-organized complexity. It can be
conjectured that a lack of progress in our
understanding of market incompleteness and
arbitrage free institutions is related to these
issues on indeterminism.
37Selected References
- Arthur, W.B., (1994). 'Inductive Behaviour and
Bounded Rationality', American Economic Review,
84, pp.406-411. - Binmore, K. (1987), 'Modelling Rational Players
Part 1', Journal of Economics and Philosophy,
vol. 3, pp. 179-214. - Markose, S.M, 2005 , 'Computability and
Evolutionary Complexity Markets as Complex
Adaptive Systems (CAS)', Economic Journal , vol.
115, pp.F159-F192. - Markose, S.M, 2004, 'Novelty in Complex Adaptive
Systems (CAS) A Computational Theory of Actor
Innovation', Physica A Statistical Mechanics and
Its Applications, vol. 344, pp. 41- 49. Fuller
details in University of Essex, Economics Dept.
Discussion Paper No. 575, January 2004. - Markose, S.M., July 2002, 'The New Evolutionary
Computational Paradigm of Complex Adaptive
Systems Challenges and Prospects For Economics
and Finance', In, Genetic Algorithms and Genetic
Programming in Computational Finance, Edited by
Shu-Heng Chen, Kluwer Academic Publishers,
pp.443-484 . Also Essex University Economics
Department DP no. 552, July 2001. - Post, E.(1944). 'Recursively Enumerable Sets of
Positive Integers and Their Decision Problems',
Bulletin of American Mathematical Society,
vol.50, pp.284-316. - Spear, S.(1989), 'Learning Rational Expectations
Under Computability Constraints', Econometrica ,
vol.57, pp.889-910.