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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
The aim of this book is to advocate and promote network models of
linguistic systems that are both based on thorough mathematical
models and substantiated in terms of linguistics. In this way, the
book contributes first steps towards establishing a statistical
network theory as a theoretical basis of linguistic network
analysis the boarder of the natural sciences and the humanities.
This book addresses researchers who want to get familiar with
theoretical developments, computational models and their empirical
evaluation in the field of complex linguistic networks. It is
intended to all those who are interested in statistical models of
linguistic systems from the point of view of network research. This
includes all relevant areas of linguistics ranging from
phonological, morphological and lexical networks on the one hand
and syntactic, semantic and pragmatic networks on the other. In
this sense, the volume concerns readers from many disciplines such
as physics, linguistics, computer science and information science.
It may also be of interest for the upcoming area of systems biology
with which the chapters collected here share the view on systems
from the point of view of network analysis.
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
The aim of this book is to advocate and promote network models of
linguistic systems that are both based on thorough mathematical
models and substantiated in terms of linguistics. In this way, the
book contributes first steps towards establishing a statistical
network theory as a theoretical basis of linguistic network
analysis the boarder of the natural sciences and the humanities.
This book addresses researchers who want to get familiar with
theoretical developments, computational models and their empirical
evaluation in the field of complex linguistic networks. It is
intended to all those who are interested in statistical models of
linguistic systems from the point of view of network research. This
includes all relevant areas of linguistics ranging from
phonological, morphological and lexical networks on the one hand
and syntactic, semantic and pragmatic networks on the other. In
this sense, the volume concerns readers from many disciplines such
as physics, linguistics, computer science and information science.
It may also be of interest for the upcoming area of systems biology
with which the chapters collected here share the view on systems
from the point of view of network analysis.
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