Qualitative Modeling of Complex Systems : : An Introduction to Loop Analysis and Time Averaging / / Charles J. Puccia, Richard Levins.

In this modern era of mathematical modeling, applications have become increasingly complicated. As the complexity grows, it becomes more and more difficult to draw meaningful conclusions about the behavior of theoretical models and their relations to reality. Alongside methods that emphasize quantit...

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Superior document:Title is part of eBook package: De Gruyter HUP e-dition: Complete eBook Package
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Place / Publishing House:Cambridge, MA : : Harvard University Press, , [2013]
©1985
Year of Publication:2013
Edition:Reprint 2014
Language:English
Online Access:
Physical Description:1 online resource (259 p.) :; illustrations
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Description
Other title:Frontmatter --
Preface --
Contents --
1. Qualitative Models --
2. Loop Models: Definition of Terms and Calculation of Model Properties --
3. Loop Models: Predicting Change --
4. Qualitative Predictions --
5. From Concept to Model --
6. Dynamical Systems and Loop Analysis --
7. Time Averaging --
Appendix References Index --
Appendix: Some Mathematical Operations and Concepts --
References --
Index
Summary:In this modern era of mathematical modeling, applications have become increasingly complicated. As the complexity grows, it becomes more and more difficult to draw meaningful conclusions about the behavior of theoretical models and their relations to reality. Alongside methods that emphasize quantitative properties and the testing of scientific details, there is a need for approaches that are more qualitative. These techniques attempt to cover whole families of models in one bold stroke, in a manner that allows robust conclusions to be drawn about them. Loop analysis and time averaging provide a means of interpreting the properties of systems from the network of interactions within the system. The authors' methodology concentrates on graphical representation to guide experimental design, to identify sources of external variability from the statistical pattern of variables, and to make management decisions. Although most of the examples are drawn from ecology, the methods are relevant to all of the pure and applied sciences. This relevance is enhanced by case studies from such diverse areas as physiology, resource management, the behavioral sciences, and social epidemiology. The book will be useful to a broad readership from the biological and social sciences as well as the physical sciences and technology. It will interest undergraduate and graduate students along with researchers active in these disciplines. Here the reader will find a strong rationale for maintaining a holistic approach, revealing what insights and advantages are retained by the broader perspective and, more explicitly, by the synergistic effects that cannot be discerned by reducing systems to their smallest parts.
Format:Mode of access: Internet via World Wide Web.
ISBN:9780674435070
9783110353488
9783110353549
9783110442212
DOI:10.4159/harvard.9780674435070
Access:restricted access
Hierarchical level:Monograph
Statement of Responsibility: Charles J. Puccia, Richard Levins.