I have just started reading Friam email and hope to participate in an
upcoming Barcamp. I want to understand better the promise of using ABM in understanding complexity. I heard, I think it was Nicholas Thompson, say that what he likes about ABM is that it allows him to see things he wouldn't be able to see otherwise. (Forgive me Nick, if I got that wrong) This potential is what interests me.but what "things" does it allow to be seen.that is what I want to know-that is the conversation I would like to engage. Almost everything allows something else to be seen in a new light. I want to know if ABM allows -new understanding in the way say dreams and dreaming allows us to explore and understand ourselves and each other in a way we wouldn't be able to do otherwise or -does ABM allow us to see something more like the numerical result of p divided out for 10 years. That is does ABM allow us to do things we don't have the interest or patience to spend our time doing. Both can be useful but what is it we are looking for? Can ABM bring us closer together in understanding each other? How? In what way? Best wishes, Ann Racuya-Robbins Founder and CEO World Knowledge BankR www.wkbank.com -------------- next part -------------- An HTML attachment was scrubbed... URL: http://redfish.com/pipermail/friam_redfish.com/attachments/20080312/c4290b5e/attachment.html |
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Hash: SHA1 admin at wkbank.com wrote: > -new understanding in the way say dreams and dreaming allows us to explore > and understand ourselves and each other in a way we wouldn't be able to do > otherwise > > or > > -does ABM allow us to see something more like the numerical result of p > divided out for 10 years. That is does ABM allow us to do things we don't > have the interest or patience to spend our time doing. Both, though the tendency would be toward the latter because that's exactly what computers are good at, doing things we don't have the time or interest to do. Ultimately, however, you have to remember that the "M" in ABM directly implies that an ABM (because it's a model) is MERELY a form of rhetoric, more specifically, it's a form of deductive _logic_. And in that sense, all ABMs, as rhetoric, commit the fallacy of "begging the question" (a.k.a. "assuming one's conclusions", petitio principii). Nothing can come out of it that you didn't already program into it. So, in that sense, an ABM won't tell you _anything_ you didn't already know in some form or another. And that means that the only thing an ABM is good for is taking your premises and munging them back and forth (using logic of some sort) to spit them out at you in some other form. (And, yes, this is true even if there's outside input from, say, a human or some external stochastic process, at various points in the execution.) Now, many people use this deductive machinery to estimate or predict the consequences of some initial conditions. And where the internal logic of the model is acyclic (no feedback), that's a valid use. But, regular old models (not ABM) are just as good or better at that sort of thing than ABM. ABM is particularly good at munging your premises and spitting them out in different forms when the logic is (or can be) _cyclic_. I.e. when there are feedback loops or self-reference inside. The canonical example for such cyclic logic is in a system where the environment for some "agents" is defined (collectively) by another set of "agents" and vice versa. And if seen in that light, regular old modeling (non ABM) _could_ help find new understanding by exploring dreams (or any psychologically relevant acyclic construct). But, because dreams (and psychological constructs in general) are social constructs developed in cycles with many dreamers as well as a semantic grounding in a cyclically constructed ecology, I'd say that of all the types of modeling one might use, ABM will be much more helpful in exploring ourselves than other forms of modeling. > Both can be useful but what is it we are looking for? Can ABM bring us > closer together in understanding each other? How? In what way? Respectively: Cycles, specifically co-evolution and stigmergy. Yes. By helping us to formulate, execute, and criticize those hypothetical (generative and phenomenal) cycles. Note, however, that the TENDENCY is to use ABM in the same old way traditional modelers use computers, to do work we're too lazy or ill-equipped to do, like counting to high numbers and such. My guess is that if you examine 1000 ABMs, you are likely to find only a handful that explicitly study causal cycles. In other words, most ABMs should not be ABMs at all. And in the handful of cases where cycles are studied, they are probably studied from a reductionist point of view, wherein herculean attempts are made to _isolate_ various pathways (cyclic or not), which defeats the very purpose of an ABM. After all, it's the _braided_ or woven nature of causal networks (in contrast to causal _chains_) that gave rise to ABM to begin with. Anyway, the domain is ripe with abuse. But don't let the poverty of most ABMs convince you that ABM is vacuous as an approach/perspective. You just have to view each individual ABM with a critical eye and think to yourself, "What cyclic reasoning does this model reify?" - -- glen e. p. ropella, 971-219-3846, http://tempusdictum.com And therefore the victories won by a master of war gain him neither reputation for wisdom nor merit for valour. -- Sun Tzu, "The Art of War" -----BEGIN PGP SIGNATURE----- Version: GnuPG v1.4.6 (GNU/Linux) Comment: Using GnuPG with Mozilla - http://enigmail.mozdev.org iD8DBQFH2E7WpVJZMHoGoM8RAm0UAKClIqyMV8esDF4b3bITkEHJ+Qs2JACfYpe9 lfPuvILFsb+xUCWyy37ST9I= =+DrA -----END PGP SIGNATURE----- |
In reply to this post by Ann Racuya-Robbins-2
Well, there's a sort of a minority 'out crowd' kind of view, that what
ABM's let you see you wouldn't otherwise is how nature is behaving that ABM's aught to emulate but can't for various general and specific reasons. The idea that playing with models suggests new ways to play with models is still there in this minority view, it's just that the purpose of that is quite different. Phil Henshaw ????.?? ? `?.???? ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ 680 Ft. Washington Ave NY NY 10040 tel: 212-795-4844 e-mail: pfh at synapse9.com explorations: www.synapse9.com <http://www.synapse9.com/> -- "it's not finding what people say interesting, but finding what's interesting in what they say" -- -----Original Message----- From: [hidden email] [mailto:[hidden email]] On Behalf Of admin at wkbank.com Sent: Wednesday, March 12, 2008 4:44 PM To: friam at redfish.com Subject: [FRIAM] Agent Based Modeling's Role in Understanding Complexity I have just started reading Friam email and hope to participate in an upcoming Barcamp. I want to understand better the promise of using ABM in understanding complexity. I heard, I think it was Nicholas Thompson, say that what he likes about ABM is that it allows him to see things he wouldn?t be able to see otherwise. (Forgive me Nick, if I got that wrong) This potential is what interests me but what ?things? does it allow to be seen that is what I want to know?that is the conversation I would like to engage. Almost everything allows something else to be seen in a new light. I want to know if ABM allows ?new understanding in the way say dreams and dreaming allows us to explore and understand ourselves and each other in a way we wouldn?t be able to do otherwise or ?does ABM allow us to see something more like the numerical result of p divided out for 10 years. That is does ABM allow us to do things we don?t have the interest or patience to spend our time doing. Both can be useful but what is it we are looking for? Can ABM bring us closer together in understanding each other? How? In what way? Best wishes, Ann Racuya-Robbins Founder and CEO World Knowledge Bank? www.wkbank.com -------------- next part -------------- An HTML attachment was scrubbed... URL: http://redfish.com/pipermail/friam_redfish.com/attachments/20080312/3feb7e9e/attachment.html |
To add to Phil remarks, there seems to be different views on what is an
'agent' in ABM (let's forget the 'what is a model stuff' for now). I distinguish between agents that are intrinsically part of a system, and that exhibit intelligence - either natural human intelligence or weak artificial intelligence. They can evaluate knowledge sufficiency in contexts and can probabilistically anticipate and adapt to perturbations. Compare this to how others refer to agents - or what I call automata - as deterministic or probabilistic, rules based entities that act within a system. If these agents or automata exist outside the system, providing data or modulation of the system, these elements are referred to as actors. Of course, I am one of 'those' model creating and simulating folks - so be forewarned. Ken _____ From: [hidden email] [mailto:[hidden email]] On Behalf Of Phil Henshaw Sent: Wednesday, March 12, 2008 4:09 PM To: 'The Friday Morning Applied Complexity Coffee Group' Subject: Re: [FRIAM] Agent Based Modeling's Role in Understanding Complexity Well, there's a sort of a minority 'out crowd' kind of view, that what ABM's let you see you wouldn't otherwise is how nature is behaving that ABM's aught to emulate but can't for various general and specific reasons. The idea that playing with models suggests new ways to play with models is still there in this minority view, it's just that the purpose of that is quite different. Phil Henshaw ????.?? ? `?.???? ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ 680 Ft. Washington Ave NY NY 10040 tel: 212-795-4844 e-mail: pfh at synapse9.com explorations: www.synapse9.com <http://www.synapse9.com/> -- "it's not finding what people say interesting, but finding what's interesting in what they say" -- -----Original Message----- From: [hidden email] [mailto:[hidden email]] On Behalf Of admin at wkbank.com Sent: Wednesday, March 12, 2008 4:44 PM To: friam at redfish.com Subject: [FRIAM] Agent Based Modeling's Role in Understanding Complexity I have just started reading Friam email and hope to participate in an upcoming Barcamp. I want to understand better the promise of using ABM in understanding complexity. I heard, I think it was Nicholas Thompson, say that what he likes about ABM is that it allows him to see things he wouldn?t be able to see otherwise. (Forgive me Nick, if I got that wrong) This potential is what interests me but what ?things? does it allow to be seen that is what I want to know?that is the conversation I would like to engage. Almost everything allows something else to be seen in a new light. I want to know if ABM allows ?new understanding in the way say dreams and dreaming allows us to explore and understand ourselves and each other in a way we wouldn?t be able to do otherwise or ?does ABM allow us to see something more like the numerical result of p divided out for 10 years. That is does ABM allow us to do things we don?t have the interest or patience to spend our time doing. Both can be useful but what is it we are looking for? Can ABM bring us closer together in understanding each other? How? In what way? Best wishes, Ann Racuya-Robbins Founder and CEO World Knowledge Bank? www.wkbank.com -------------- next part -------------- An HTML attachment was scrubbed... URL: http://redfish.com/pipermail/friam_redfish.com/attachments/20080312/152a9063/attachment.html |
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Hash: SHA1 Ken Lloyd wrote: > I distinguish between agents that are intrinsically part of a system, > and that exhibit intelligence - either natural human intelligence or > weak artificial intelligence. [...] Compare this to [...] what I call > automata - as deterministic or probabilistic, rules based entities > that act within a system. [...] What do you claim is the difference between a weak artificial intelligence algorithm and a rules-based algorithm? - -- glen e. p. ropella, 971-219-3846, http://tempusdictum.com There's no sense in being precise when you don't even know what you're talking about. -- John Von Neumann -----BEGIN PGP SIGNATURE----- Version: GnuPG v1.4.6 (GNU/Linux) Comment: Using GnuPG with Mozilla - http://enigmail.mozdev.org iD8DBQFH2F9FpVJZMHoGoM8RApnhAKCLHaCX8vVZAH2beeXhMiospI0BZwCZAew9 XFmUiphJL1WAMqznV0Vt8ko= =ss3r -----END PGP SIGNATURE----- |
In reply to this post by glen ep ropella
Thanks to all who responded.
"After all, it's the _braided_ or woven nature of causal networks (in contrast to causal _chains_) that gave rise to ABM to begin with." glen e. p. ropella Could you or someone recommend a good ABM (as in the above quotation) that I might study? I thought glen's description of bayesian was very clear. Could glen or someone else give a similarly clear and intuitive description of Bayesian Monte Carlo or Markov Chain Monte Carlo method? Ann Racuya-Robbins World Knowledge BankR A Virtual Democratic Country www.wkbank.com ============================================================ FRIAM Applied Complexity Group listserv Meets Fridays 9a-11:30 at cafe at St. John's College lectures, archives, unsubscribe, maps at http://www.friam.org -------------- next part -------------- An HTML attachment was scrubbed... URL: http://redfish.com/pipermail/friam_redfish.com/attachments/20080408/09efab20/attachment.html |
Ann,
Get you pencil and paper ready ... http://www.sigevolution.org/issues/pdf/SIGEVOlution200702.pdf Christopher Bishop, Neural Networks for Pattern Recognition, Oxford University Press, 1995 Klaus Mosegaard - Monte Carlo Analysis of Geophysical Inverse Problems, http://wwwrses.anu.edu.au/~malcolm/papers/pdf/SamMos02.pdf Klaus Mosegaard, 1998: Resolution Analysis of General Inverse Problems through Inverse Monte Carlo Sampling: Inverse Problems 14, pp. 405-426. James Scales, M. Smith, and S. Treitel, Introductory Geophysical Inverse Theory, Samizdat Press, Golden, CO USA, 2001, <http://acoustics.mines.edu/jscales/gp605/snapshot.pdf> http://acoustics.mines.edu/jscales/gp605/snapshot.pdf See the many books and papers by Mosegaard and Tarantola The network aspects are generally covered in Newman, Barabasi and Watts, The Structure and Dynamics of Networks, Princeton Series on Complexity Ken ============================= Kenneth A. Lloyd CEO and Director of Systems Science Watt Systems Technologies Inc. Albuquerque, NM USA kalloyd at wattsys.com kenneth.lloyd at incose.org - MBSE Complex, Adaptive & Stochastic Systems kenneth.lloyd at nmug.net - Director of Education www.wattsys.com <http://www.wattsys.com/> <http://www.linkedin.com/pub/7/9a/824> http://www.linkedin.com/pub/7/9a/824 This e-mail is intended only for the addressee named above. It may contain privileged or confidential information. If you are not the addressee you must not copy, distribute, disclose or use any of the information in it. If you have received it in error please delete it and immediately notify the sender. _____ From: [hidden email] [mailto:[hidden email]] On Behalf Of admin at wkbank.com Sent: Tuesday, April 08, 2008 10:16 AM To: 'The Friday Morning Applied Complexity Coffee Group' Subject: Re: [FRIAM] ABM,Baysian and Monte Carlo Method's Role in Understanding Complexity Thanks to all who responded. "After all, it's the _braided_ or woven nature of causal networks (in contrast to causal _chains_) that gave rise to ABM to begin with." glen e. p. ropella Could you or someone recommend a good ABM (as in the above quotation) that I might study? I thought glen's description of bayesian was very clear. Could glen or someone else give a similarly clear and intuitive description of Bayesian Monte Carlo or Markov Chain Monte Carlo method? Ann Racuya-Robbins World Knowledge BankR A Virtual Democratic Country www.wkbank.com ============================================================ FRIAM Applied Complexity Group listserv Meets Fridays 9a-11:30 at cafe at St. John's College lectures, archives, unsubscribe, maps at http://www.friam.org -------------- next part -------------- An HTML attachment was scrubbed... URL: http://redfish.com/pipermail/friam_redfish.com/attachments/20080408/2c4440ab/attachment.html |
Thank you Ken,
I am wondering though if someone has an executive summary? Were any of your citations specific agent based models? _____ From: [hidden email] [mailto:[hidden email]] On Behalf Of Ken Lloyd Sent: Tuesday, April 08, 2008 10:51 AM To: 'The Friday Morning Applied Complexity Coffee Group' Subject: Re: [FRIAM] ABM,Baysian and Monte Carlo Method's Role in Understanding Complexity Ann, Get you pencil and paper ready ... http://www.sigevolution.org/issues/pdf/SIGEVOlution200702.pdf Christopher Bishop, Neural Networks for Pattern Recognition, Oxford University Press, 1995 Klaus Mosegaard - Monte Carlo Analysis of Geophysical Inverse Problems, http://wwwrses.anu.edu.au/~malcolm/papers/pdf/SamMos02.pdf Klaus Mosegaard, 1998: Resolution Analysis of General Inverse Problems through Inverse Monte Carlo Sampling: Inverse Problems 14, pp. 405-426. James Scales, M. Smith, and S. Treitel, Introductory Geophysical Inverse Theory, Samizdat Press, Golden, CO USA, 2001, <http://acoustics.mines.edu/jscales/gp605/snapshot.pdf> http://acoustics.mines.edu/jscales/gp605/snapshot.pdf See the many books and papers by Mosegaard and Tarantola The network aspects are generally covered in Newman, Barabasi and Watts, The Structure and Dynamics of Networks, Princeton Series on Complexity Ken ============================= Kenneth A. Lloyd CEO and Director of Systems Science Watt Systems Technologies Inc. Albuquerque, NM USA kalloyd at wattsys.com kenneth.lloyd at incose.org - MBSE Complex, Adaptive & Stochastic Systems kenneth.lloyd at nmug.net - Director of Education www.wattsys.com <http://www.wattsys.com/> <http://www.linkedin.com/pub/7/9a/824> http://www.linkedin.com/pub/7/9a/824 This e-mail is intended only for the addressee named above. It may contain privileged or confidential information. If you are not the addressee you must not copy, distribute, disclose or use any of the information in it. If you have received it in error please delete it and immediately notify the sender. _____ From: [hidden email] [mailto:[hidden email]] On Behalf Of admin at wkbank.com Sent: Tuesday, April 08, 2008 10:16 AM To: 'The Friday Morning Applied Complexity Coffee Group' Subject: Re: [FRIAM] ABM,Baysian and Monte Carlo Method's Role in Understanding Complexity Thanks to all who responded. "After all, it's the _braided_ or woven nature of causal networks (in contrast to causal _chains_) that gave rise to ABM to begin with." glen e. p. ropella Could you or someone recommend a good ABM (as in the above quotation) that I might study? I thought glen's description of bayesian was very clear. Could glen or someone else give a similarly clear and intuitive description of Bayesian Monte Carlo or Markov Chain Monte Carlo method? Ann Racuya-Robbins World Knowledge BankR A Virtual Democratic Country www.wkbank.com ============================================================ FRIAM Applied Complexity Group listserv Meets Fridays 9a-11:30 at cafe at St. John's College lectures, archives, unsubscribe, maps at http://www.friam.org -------------- next part -------------- An HTML attachment was scrubbed... URL: http://redfish.com/pipermail/friam_redfish.com/attachments/20080408/00a08991/attachment.html |
Ann,
Are you looking for information on desktop (generally, serial processing or dual multi-processing, threaded) applications - such as NetLogo or StarLogo? Or are you looking for information on ABM using MPP (massively parallel processing) using multiple GPU (graphics cards) for the mathematical vector and matrix simulations of "intelligent" agents (natural, human or weak artificial)? The sigevolution.org site shows how evolutionary genetic algorithms evolve into patterns (such as swarm behavior, or entangled behavior as ref: in the Ropella e-mail). Some of this work is from E-Plex and their research into Complex Pattern Producing Networks (CPPN's) http://eplex.cs.ucf.edu/. Do not be mislead by the triviality of their examples - this can be powerful stuff. Another place to start is the Swarm wiki http://www.swarm.org at the University of Michigan. The term Agent Based Modeling (ABM) seems to cast a wide net - from "simple" cellular automata to phenotypical behavior of genotypically evolved and generated, quasi-intelligent artificial organisms (often referred to as complex adaptive systems). I guess I would need to know at what level you wish to understand agent based modeling of complex systems in order to recommend an executive summary (which may be an oxymoron). By this I mean, Stephen Wolfram's A New Kind of Science may be considered by some to be an executive summary on ABM. Specifically see page 991, Implications for Everyday Systems (Notes for Chapter 8) - Issues of Modeling - which ties up my recommendations with a pretty bow. This is as close as I could come to an executive summary. Referring to your original e-mail, IMO, the Bayesian approach is meaningless without the application of the Inverse Theory to refine it. I recommend Scales (see original post), because it is simple, clear, and reachable. Having said this, I'm afraid I haven't been very helpful. ============================= Kenneth A. Lloyd CEO and Director of Systems Science Watt Systems Technologies Inc. Albuquerque, NM USA kalloyd at wattsys.com kenneth.lloyd at incose.org - MBSE Complex, Adaptive & Stochastic Systems kenneth.lloyd at nmug.net - Director of Education www.wattsys.com <http://www.wattsys.com/> <http://www.linkedin.com/pub/7/9a/824> http://www.linkedin.com/pub/7/9a/824 This e-mail is intended only for the addressee named above. It may contain privileged or confidential information. If you are not the addressee you must not copy, distribute, disclose or use any of the information in it. If you have received it in error please delete it and immediately notify the sender. _____ From: [hidden email] [mailto:[hidden email]] On Behalf Of admin at wkbank.com Sent: Tuesday, April 08, 2008 12:17 PM To: 'The Friday Morning Applied Complexity Coffee Group' Subject: Re: [FRIAM] ABM,Baysian and Monte Carlo Method's Role in Understanding Complexity Thank you Ken, I am wondering though if someone has an executive summary? Were any of your citations specific agent based models? _____ From: [hidden email] [mailto:[hidden email]] On Behalf Of Ken Lloyd Sent: Tuesday, April 08, 2008 10:51 AM To: 'The Friday Morning Applied Complexity Coffee Group' Subject: Re: [FRIAM] ABM,Baysian and Monte Carlo Method's Role in Understanding Complexity Ann, Get you pencil and paper ready ... http://www.sigevolution.org/issues/pdf/SIGEVOlution200702.pdf Christopher Bishop, Neural Networks for Pattern Recognition, Oxford University Press, 1995 Klaus Mosegaard - Monte Carlo Analysis of Geophysical Inverse Problems, http://wwwrses.anu.edu.au/~malcolm/papers/pdf/SamMos02.pdf Klaus Mosegaard, 1998: Resolution Analysis of General Inverse Problems through Inverse Monte Carlo Sampling: Inverse Problems 14, pp. 405-426. James Scales, M. Smith, and S. Treitel, Introductory Geophysical Inverse Theory, Samizdat Press, Golden, CO USA, 2001, <http://acoustics.mines.edu/jscales/gp605/snapshot.pdf> http://acoustics.mines.edu/jscales/gp605/snapshot.pdf See the many books and papers by Mosegaard and Tarantola The network aspects are generally covered in Newman, Barabasi and Watts, The Structure and Dynamics of Networks, Princeton Series on Complexity Ken ============================= Kenneth A. Lloyd CEO and Director of Systems Science Watt Systems Technologies Inc. Albuquerque, NM USA kalloyd at wattsys.com kenneth.lloyd at incose.org - MBSE Complex, Adaptive & Stochastic Systems kenneth.lloyd at nmug.net - Director of Education www.wattsys.com <http://www.wattsys.com/> <http://www.linkedin.com/pub/7/9a/824> http://www.linkedin.com/pub/7/9a/824 This e-mail is intended only for the addressee named above. It may contain privileged or confidential information. If you are not the addressee you must not copy, distribute, disclose or use any of the information in it. If you have received it in error please delete it and immediately notify the sender. _____ From: [hidden email] [mailto:[hidden email]] On Behalf Of admin at wkbank.com Sent: Tuesday, April 08, 2008 10:16 AM To: 'The Friday Morning Applied Complexity Coffee Group' Subject: Re: [FRIAM] ABM,Baysian and Monte Carlo Method's Role in Understanding Complexity Thanks to all who responded. "After all, it's the _braided_ or woven nature of causal networks (in contrast to causal _chains_) that gave rise to ABM to begin with." glen e. p. ropella Could you or someone recommend a good ABM (as in the above quotation) that I might study? I thought glen's description of bayesian was very clear. Could glen or someone else give a similarly clear and intuitive description of Bayesian Monte Carlo or Markov Chain Monte Carlo method? Ann Racuya-Robbins World Knowledge BankR A Virtual Democratic Country www.wkbank.com ============================================================ FRIAM Applied Complexity Group listserv Meets Fridays 9a-11:30 at cafe at St. John's College lectures, archives, unsubscribe, maps at http://www.friam.org -------------- next part -------------- An HTML attachment was scrubbed... URL: http://redfish.com/pipermail/friam_redfish.com/attachments/20080408/2938b695/attachment.html |
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