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Markov chain aggregation for agent-b...
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Banisch, Sven.
Markov chain aggregation for agent-based models[electronic resource] /
紀錄類型:
書目-語言資料,印刷品 : Monograph/item
杜威分類號:
519.233
書名/作者:
Markov chain aggregation for agent-based models/ by Sven Banisch.
作者:
Banisch, Sven.
出版者:
Cham : : Springer International Publishing :, 2016.
面頁冊數:
xiv, 195 p. : : ill., digital ;; 24 cm.
Contained By:
Springer eBooks
標題:
Complex Systems.
標題:
Mathematical Methods in Physics.
標題:
Complexity.
標題:
Markov processes.
標題:
Multiagent systems.
標題:
Physics.
標題:
Nonlinear Dynamics.
ISBN:
9783319248776
ISBN:
9783319248752
內容註:
Introduction -- Background and Concepts -- Agent-based Models as Markov Chains -- The Voter Model with Homogeneous Mixing -- From Network Symmetries to Markov Projections -- Application to the Contrarian Voter Model -- Information-Theoretic Measures for the Non-Markovian Case -- Overlapping Versus Non-Overlapping Generations -- Aggretion and Emergence: A Synthesis -- Conclusion.
摘要、提要註:
This self-contained text develops a Markov chain approach that makes the rigorous analysis of a class of microscopic models that specify the dynamics of complex systems at the individual level possible. It presents a general framework of aggregation in agent-based and related computational models, one which makes use of lumpability and information theory in order to link the micro and macro levels of observation. The starting point is a microscopic Markov chain description of the dynamical process in complete correspondence with the dynamical behavior of the agent-based model (ABM), which is obtained by considering the set of all possible agent configurations as the state space of a huge Markov chain. An explicit formal representation of a resulting "micro-chain" including microscopic transition rates is derived for a class of models by using the random mapping representation of a Markov process. The type of probability distribution used to implement the stochastic part of the model, which defines the updating rule and governs the dynamics at a Markovian level, plays a crucial part in the analysis of "voter-like" models used in population genetics, evolutionary game theory and social dynamics. The book demonstrates that the problem of aggregation in ABMs - and the lumpability conditions in particular - can be embedded into a more general framework that employs information theory in order to identify different levels and relevant scales in complex dynamical systems.
電子資源:
http://dx.doi.org/10.1007/978-3-319-24877-6
Markov chain aggregation for agent-based models[electronic resource] /
Banisch, Sven.
Markov chain aggregation for agent-based models
[electronic resource] /by Sven Banisch. - Cham :Springer International Publishing :2016. - xiv, 195 p. :ill., digital ;24 cm. - Understanding complex systems,1860-0832. - Understanding complex systems..
Introduction -- Background and Concepts -- Agent-based Models as Markov Chains -- The Voter Model with Homogeneous Mixing -- From Network Symmetries to Markov Projections -- Application to the Contrarian Voter Model -- Information-Theoretic Measures for the Non-Markovian Case -- Overlapping Versus Non-Overlapping Generations -- Aggretion and Emergence: A Synthesis -- Conclusion.
This self-contained text develops a Markov chain approach that makes the rigorous analysis of a class of microscopic models that specify the dynamics of complex systems at the individual level possible. It presents a general framework of aggregation in agent-based and related computational models, one which makes use of lumpability and information theory in order to link the micro and macro levels of observation. The starting point is a microscopic Markov chain description of the dynamical process in complete correspondence with the dynamical behavior of the agent-based model (ABM), which is obtained by considering the set of all possible agent configurations as the state space of a huge Markov chain. An explicit formal representation of a resulting "micro-chain" including microscopic transition rates is derived for a class of models by using the random mapping representation of a Markov process. The type of probability distribution used to implement the stochastic part of the model, which defines the updating rule and governs the dynamics at a Markovian level, plays a crucial part in the analysis of "voter-like" models used in population genetics, evolutionary game theory and social dynamics. The book demonstrates that the problem of aggregation in ABMs - and the lumpability conditions in particular - can be embedded into a more general framework that employs information theory in order to identify different levels and relevant scales in complex dynamical systems.
ISBN: 9783319248776
Standard No.: 10.1007/978-3-319-24877-6doiSubjects--Topical Terms:
465366
Complex Systems.
LC Class. No.: QA274.7
Dewey Class. No.: 519.233
Markov chain aggregation for agent-based models[electronic resource] /
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Introduction -- Background and Concepts -- Agent-based Models as Markov Chains -- The Voter Model with Homogeneous Mixing -- From Network Symmetries to Markov Projections -- Application to the Contrarian Voter Model -- Information-Theoretic Measures for the Non-Markovian Case -- Overlapping Versus Non-Overlapping Generations -- Aggretion and Emergence: A Synthesis -- Conclusion.
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