The principle of parsimony, embraced in all areas of science, states that simple explanations are preferable to complex explanations in theory construction. Parsimony, however, can necessitate a trade-off with depth and richness in understanding. The approach of dynamical minimalism avoids this trade-off. The goal of this approach is to identify the simplest mechanisms and fewest variables capable of producing the phenomenon in question. A dynamical model in which change is produced by simple rules repetitively interacting with each other can exhibit unexpected and complex properties. It is thus possible to explain complex psychological and social phenomena with very simple models if these models are dynamic. In dynamical minimalist theories, then, the principle of parsimony can be followed without sacrificing depth in understanding. Computer simulations have proven especially useful for investigating the emergent properties of simple models.
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Sage Publications Ltd.
Date Issued
2004
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Genre
Extent
11p.
Subject (Topical)
Identifier
2181982
Additional Information
The principle of parsimony, embraced in all areas of science, states that simple explanations are preferable to complex explanations in theory construction. Parsimony, however, can necessitate a trade-off with depth and richness in understanding. The approach of dynamical minimalism avoids this trade-off. The goal of this approach is to identify the simplest mechanisms and fewest variables capable of producing the phenomenon in question. A dynamical model in which change is produced by simple rules repetitively interacting with each other can exhibit unexpected and complex properties. It is thus possible to explain complex psychological and social phenomena with very simple models if these models are dynamic. In dynamical minimalist theories, then, the principle of parsimony can be followed without sacrificing depth in understanding. Computer simulations have proven especially useful for investigating the emergent properties of simple models.
©2004 Sage Publications Ltd. All rights reserved. The final, definitive version of this paper is available at http://online.sagepub.com and may be cited as Nowak, Andrzej (2004) Dynamical minimalism: why less is more in psychology, Personality and Social Psychology Review 8(2):183‐192, DOI:10.1207/s15327957pspr0802_12
Department of Psychology Charles E. Schmidt College of Science
Date Backup
2004
Date Text
2004
DOI
10.1207/s15327957pspr0802_12
Date Issued (EDTF)
2004
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FAU
FAU
admin_unit="FAU01", ingest_id="ing6478", creator="creator:SPATEL", creation_date="2010-06-22 13:36:35", modified_by="super:FAUDIG", modification_date="2013-09-11 12:22:08"
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FADT2181982
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single unit
Person Preferred Name
Nowak, Andrzej
creator
nowak@fau.edu
Physical Description
11p.
Title Plain
Dynamical minimalism: why less is more in psychology
Origin Information
Sage Publications Ltd.
2004
single unit
Title
Dynamical minimalism: why less is more in psychology
Other Title Info
Dynamical minimalism: why less is more in psychology