Title: Introduction to Complexity Science
1Introduction toComplexity Science
Science, Models and Theories
2Would-be Worlds?
A fluke?
- Superbowl XXXII
- Denver 28, 15, 34, 19 24
- Green Bay 24, 17, 21, 18 21
3Rerunning the Tape
4Settling Empirical Questions
- Why should a simulation model, any simulation
model, be able to settle an empirical question?
- Could these empirical questions be settled via
simulation modelling? - Do I wear underwear while lecturing?
- Is there life on Mars?
- If these questions cannot be settled via
simulation modelling, why should the re-running
the tape thought experiment, or Denver fluked
it question be any different?
5What is a Model?
- The word model is applied to many things
Are these the same type of thing?
6Standing in for..
- Models are often said to stand in for the real
phenomena or systems that they represent.
Its more accurate to say that models idealise
the systems that they represent.
7Scientific Modelling
- Physics lays out a role for scientific models
- theory-led
- not driven directly by observations of reality
Theory
8Making Predictions
In the exact sciences we are used to expecting
our models to make accurate predictions.
Requires strong faith in theory.
Nevertheless, such models are still idealisations.
9Simulation Models
What of simulation models (of complex systems)?
Are they different or special in some respect?
Should simulation models somehow
be maximally accurate and maximally general?
- Confusion of this type can lead to problems
- validation does it make accurate predictions
- verification is it bug-free?
10Reasons to Simulate Pt. 1
- Bonabeau Theraulaz (1994)
- Ray (1994)
- Taylor Jefferson (1994)
- Miller (1995)
- Di Paolo (1996)
- Sober (1996)
- Noble (1997)
- etc.
Simulations are better than equations
- more realistic
- more flexible
- easier to construct
- Also in some sense
- clearer
- more explicit
- inter-subjective
Is this really true?
11Doomed to Succeed
Where models strive for realism, per se, the
modelling cycle is broken.
Repeated tinkering leads to a model that matches
the modellers pre-conceptions, generating only
confirmatory observations.
Tom Ray what we see is what we know
12Opaque Thought Experiments
A suggestion where simulation models address
complex systems that we do not yet
understand treat them as a kind of thought
experiment.
- Thought experiments
- generate no new facts about the world
- but reorganise ones theoretical commitments
- These ones are
- partially mechanised
- opaque
13The Lure of Artificial Worlds
Why are overly complicated and mysterious
kitchen-sink simulation models so attractive?
14Complexity Science Models
So, simulation models of complex systems should
be elegant, beautiful and lean.
But also simple and unrealistic
15Lies, Damned Lies, and Simulation
Our failure to establish an effective methodology
for simulation modelling may be fatal to the
field. Statistics is crucial to modern
science. Yet stats is typically regarded as
deeply dubious. Its what shysters (e.g.,
politicians) use to sell you their point of
view. Another decade of dodgy simulation models
used to back up important policy decisions could
see simulation modelling tarred with the same
brush.