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El. knyga: Combinatory Systems Theory: Understanding, Modeling and Simulating Collective Phenomena

  • Formatas: EPUB+DRM
  • Serija: Contemporary Systems Thinking
  • Išleidimo metai: 11-May-2017
  • Leidėjas: Springer International Publishing AG
  • Kalba: eng
  • ISBN-13: 9783319548050
  • Formatas: EPUB+DRM
  • Serija: Contemporary Systems Thinking
  • Išleidimo metai: 11-May-2017
  • Leidėjas: Springer International Publishing AG
  • Kalba: eng
  • ISBN-13: 9783319548050

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This study adopts the logic of Systems Thinking and Control Systems, presenting a simple but complete theory called the Theory of Combinatory Systems. This new theory is able to describe, interpret, explain, simulate and control collective phenomena and their observable effects. Despite specific differences among these phenomena – many of which are “one way", non-repeatable or reproducible – they can all be described or explained, and thus understood, using the model, as simple as it is general, of combinatory systems; that is, systems formed by collectivities, or populations of non-connected and unorganized individuals of some species, which appear to be directed by an invisible hand that guides the analogous actions of similar individuals in order to produce an emerging collective phenomenon. Combinatory Systems function due to the presence of micro control systems which, operating at the individual level, lead to uniform micro behavior by individuals in order to eliminate the (gap) with respect to the objective that is represented – or revealed – by the global information (macro behavior or effect). The book also examines Combinatory Automata, which represent a powerful tool for simulating the most relevant combinatory systems. In stochastic combinatory automata, when both probabilities and periods of transition of state are agent/time/state sensitive, the probabilistic micro behaviors are conditioned by the macro behavior of the entire system, which makes the micro-macro feedback more evident.

The Combinatory Systems Theory: Understanding, Modeling and Simulating Collective Phenomena is composed of four main chapters. Chapter 1 presents the basic ideas behind the theory, which are analysed in some detail. Chapter 2 describes the heuristic models of several relevant combinatory systems observable in different environments. Chapter 3, while not making particular use of sophisticated mathematical and statistical tools, presents the Theory of Combinatory Automata and builds models for simulating the operative logic of combinatory systems. Chapter 4 tries to answer three questions: are combinatory systems “systems” in the true sense of the term? Why is this theory able to explain so many and so varied a number of phenomena, even though it is based on a very simple modus operandi? Are combinatory systems different than complex systems? The book has been written with no prerequisite required to read and understand it, in particular math, statistics and computer knowledge.

1 The Theory of Combinatory Systems
1(74)
1.1 Defining Combinatory Systems
2(20)
1.1.1 Strange but Simple Phenomena
2(2)
1.1.2 Macro (Collective) and Micro (Individual) Behavior: Collectivities
4(2)
1.1.3 The Micro-Macro Feedback
6(2)
1.1.4 The Central Idea of Combinatory System Theory (CST)
8(2)
1.1.5 The Invisible Hand Producing Self-Organization and Path Dependence
10(6)
1.1.6 Behavior Due to "Chance" and "Necessity"
16(2)
1.1.7 Necessitating and Recombining Factors
18(4)
1.2 The Study of Collectivities: A Literature Review
22(13)
1.2.1 The Macro Approaches: A Short Survey
23(4)
1.2.2 The Micro Approaches: A Short Survey
27(6)
1.2.3 The Third Approach: The Micro-Macro Feedback Approach
33(2)
1.3 Peculiarities of Combinatory Systems
35(18)
1.3.1 Base and Environment
35(1)
1.3.2 Micro and Macro Behaviors and Effects
36(2)
1.3.3 The Micro-Macro Feedback Action
38(4)
1.3.4 State and Output, Macro Behavior and Macro Effect
42(2)
1.3.5 Incomplete and Limited Information
44(3)
1.3.6 Minimum and Maximum Density
47(2)
1.3.7 Energy Inputs
49(1)
1.3.8 Control of Combinatory Systems: Strengthening and Weakening Actions and Effects
50(1)
1.3.9 Exogenous and Endogenous Control
51(2)
1.4 Self-Organization and the Evolution of Combinatory Systems
53(5)
1.4.1 Natural and Artificial Combinatory Systems. Spontaneous Genesis and Design
53(2)
1.4.2 Expansion, Organization and Ramification of Natural Combinatory Systems
55(2)
1.4.3 Robustness and Persistence in Combinatory Systems
57(1)
1.5 Typology of Combinatory Systems
58(17)
1.5.1 Five Relevant Classes of Combinatory Systems
58(2)
1.5.2 Models for Representing Combinatory Systems
60(1)
1.5.3 Social Combinatory Systems: The Modus Operandi
61(5)
1.5.4 The External Control of Social Combinatory Systems
66(3)
Appendix 1 The Language of Systems Thinking (the Basics)
69(2)
Appendix 2 Control Systems (the Basics)
71(4)
2 The Observable Variety: Heuristic Models of Combinatory Systems
75(76)
2.1 A Bit of Order: Heuristic Models of Five Classes of Combinatory Systems
76(1)
2.2 Systems of Accumulation
76(12)
2.2.1 "Pile-of-Garbage" System
78(2)
2.2.2 "Planet-Formation" System
80(2)
2.2.3 "Graffiti-on-Wall" System
82(1)
2.2.4 "Urban-Settlement" System
83(4)
2.2.5 Industrial Districts and Colonies
87(1)
2.3 Systems of Diffusion
88(15)
2.3.1 "A-Fashion-Is-Born" and "Epidemics" Systems
90(2)
2.3.2 "The-Hundred-Towers" System
92(5)
2.3.3 "Tower-of-Babel" System
97(2)
2.3.4 "Spread-of-Drugs" System
99(2)
2.3.5 "Break-out-of-Applause" System
101(2)
2.4 Systems of Pursuit
103(12)
2.4.1 "Voice-Murmur" System
104(2)
2.4.2 "Beat-the-Record" System
106(3)
2.4.3 "Speed-Limit" System
109(2)
2.4.4 "Eternal-Feud" System (and Variants)
111(2)
2.4.5 "Assail-the-Professor" System
113(2)
2.5 Systems of Order
115(18)
2.5.1 "Waltz-Spin" System
116(3)
2.5.2 "Herd-in-Flight" System
119(2)
2.5.3 "Stadium-Wave" System
121(2)
2.5.4 "Trace-a-Path" System
123(3)
2.5.5 "File-of-Ants" and "Stigmergy" Effect
126(3)
2.5.6 "Highway-Ruts" System
129(1)
2.5.7 "Macedonian-Phalanx" System
129(3)
2.5.8 "School-of-Fish" Systems
132(1)
2.6 Systems of Improvement and Progress
133(18)
2.6.1 "Increasing-Productivity" System
135(3)
2.6.2 "Increasing-Quality" System
138(3)
2.6.3 "Needs-and-Aspirations" System
141(4)
2.6.4 "Scientific-and-Technological-Progress" System
145(3)
2.6.5 "Survival and Evolution" System
148(3)
3 Simulation Models. The Combinatory Automaton
151(80)
3.1 Combinatory Automaton
152(7)
3.1.1 Defining the Deterministic Combinatory Automaton
152(2)
3.1.2 Simulating the Dynamics of a Mono-Dimensional Automaton
154(3)
3.1.3 Simulating the Dynamics of a Two-Dimensional Automaton
157(2)
3.2 Stochastic Combinatory Automaton
159(18)
3.2.1 The Role of Probabilities
159(1)
3.2.2 Stochastic Cell and Automaton. Probability Field
160(4)
3.2.3 Reversible Stochastic Combinatory Automaton Simulating Pursuit and Order: "Voice-Murmur" Phenomenon in an Indoor Locale (Sect. 2.4.1)
164(5)
3.2.4 The Modus Operandi of a Boolean Stochastic Combinatory Automaton with Output-Dependent Probabilities
169(3)
3.2.5 Example of a Boolean Stochastic Irreversible Combinatory Automaton with Stop-or-Go Cell and Output-Dependent Probabilities
172(5)
3.3 Fields of Probabilities for Transition of State in a Boolean Automaton
177(14)
3.3.1 Seven Special Cases
177(7)
3.3.2 The Modus Operandi of a Probabilistic Irreversible Combinatory Automaton Simulating Diffusion (CASE 7)
184(7)
3.4 Stochastic Combinatory Automata Simulating Combinatory Systems of Diffusion
191(18)
3.4.1 Irreversible Stochastic Combinatory Automaton Simulating Slow Diffusion. The "Hundred-Towers" Phenomenon (Sect. 2.3.2)
191(4)
3.4.2 Probabilistic Reversible Combinatory Automaton Simulating Explosive Diffusion. Applause
195(3)
3.4.3 Probabilistic Reversible Combinatory Automaton Generating "Chaotic" Macro Behaviors
198(3)
3.4.4 Probabilistic Irreversible Combinatory Automaton Simulating Vertical and Horizontal Accumulation
201(8)
3.5 The Combinatory Automaton Simulating Combinatory Systems of Improvement and Progress
209(10)
3.5.1 A Combinatory Automaton Simulating Races and Records
209(3)
3.5.2 A Combinatory Automaton Simulating an Inflationary Process Due to Imitation
212(4)
3.5.3 A Combinatory Automaton Simulating Stock Exchange Quotations and General Indices
216(3)
3.6 Systems of Improvement and Progress
219(12)
3.6.1 The Formal Definition
219(5)
3.6.2 Three Types of Automata of Improvement and Progress
224(2)
3.6.3 Reversibility in Automata of Improvement and Progress
226(1)
3.6.4 Rewriting the Heuristic Models
226(5)
4 The Heuristic Value of Combinatory Systems Theory
231(42)
4.1 Do Combinatory Systems Follow the Paradigm of Systems Thinking and the General Theory of Systems?
231(5)
4.1.1 Premise: Different Ways to Conceive of Systems
231(3)
4.1.2 Exogenous and Endogenous Observation of Systems
234(2)
4.2 The Explanatory Power of Combinatory System Theory
236(7)
4.2.1 Premise: The Explanation Process and Its Operational Closure
236(3)
4.2.2 The Power of the Procedural Explanation
239(1)
4.2.3 Combinatory Systems vs CAS
240(2)
4.2.4 Is Combinatory Systems Theory an Effective Explanatory Tool?
242(1)
4.3 Three Reflections
243(30)
4.3.1 Chance, Necessity and Freedom
243(4)
4.3.2 Individual Rationality and Collective Behavior
247(4)
4.3.3 From Systems of Improvement and Progress to the Three Metaphysical "Laws" of Becoming
251(2)
4.3.4 Concluding Remarks. An Imaginary Interview with the Author
253(20)
References 273(10)
Index 283
Piero Mella is Full Professor of Business Economics and Control Theory at the Faculty of Economics, University of Pavia. In the past he has been the Dean of the Faculty as well as the Director of its Department of Business Research. He has authored dozens of publications (among which a treatise entitled Amministrazione dImpresa [ Management of the Firm], UTET Press), and for years he has researched systems theory from multiple perspectives. His recent essays about Systems theory include: Guida al Systems Thinking [ A Guide to Systems Thinking] (Il Sole24Ore, Milano, 2007) and Sistemi di controllo [ Control Systems] (Franco Angeli, Milano, 2008), and Systems Thinking: Intelligence in Action (2012). He has developed the Theory of Combinatory Systems; he is editor of the journal "Economia Aziendale on-line".