Of course it is the essence of science to verify hypotheses
by experiments. Yet sometimes we have neither suitable 
experimental data nor a solid theory, for example
in the case of very large agent-based systems (for instance 
for the self-organization and self-management of large 
internet applications on planetary scale, or the modeling 
of historical processes with millions of actors). It is 
hardly possible to examine these systems without simplified
models, and in this case the questions I mentioned seem to
be justified.

In traditional "factor-based" or "equation-based modeling" 
we use differential equations and everything is based
on a soild theory: mathematics. This traditional modeling 
has a century-long history and we know the suitable parameters,
equations and models. Agent-based modeling has a short history, 
we don't know exactly the suitable parameters, agents and models, 
and worst of all it is not based on a solid theoretical 
theorem-lemma-proof science or calculus like mathematics.

What is missing is a solid science of ABM or a new science of
complexity - something in the direction of Wolfram's NKS idea
(exploring computational universes in a systematic way). Just
as formal, symmetrical and regular systems can be described by 
mathematics and 'equation-based modeling', complex systems can 
in principle be described by a 'NKS' and agent-based modeling 
- which seems to be more an art than a science. 

-J.


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