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One of the key issues the world grappled with during Covid-19 was
the distributional implications of lockdowns globally. The shadow
of lockdown policies continues when nations still try to emerge out
of the pandemic. Heterogeneity herein over time, country and even
within nations in policy making resulted in unintended consequences
and debates between citizens, scientists, policy makers and civil
society. Responses to Covid-19 meanwhile tried to balance a long
run approach which involved the health sector, built on an
innovation-oriented mindset and kept in mind the broader economic
implications of policy decisions for the future.Flattening the
Curve is an effort to summarize these learnings from Covid-19,
especially for future pandemics in this age of zoonotic diseases
and the Anthropocene. Assembling scholars, scientists, innovators
and entrepreneurs from across a variety of fields, this edited
volume brings an interdisciplinary understanding to how the world
can better respond socially to pandemics. It should be of immense
value for students, scholars, policy makers and researchers in
public policy, global health, economics, science and innovation
policy, as well as regulation and business.
This book presents the latest findings on network theory and
agent-based modeling of economic and financial phenomena. In this
context, the economy is depicted as a complex system consisting of
heterogeneous agents that interact through evolving networks; the
aggregate behavior of the economy arises out of billions of
small-scale interactions that take place via countless economic
agents. The book focuses on analytical modeling, and on the
econometric and statistical analysis of the properties emerging
from microscopic interactions. In particular, it highlights the
latest empirical and theoretical advances, helping readers
understand economic and financial networks, as well as new work on
modeling behavior using rich, agent-based frameworks. Innovatively,
the book combines observational and theoretical insights in the
form of networks and agent-based models, both of which have proved
to be extremely valuable in understanding non-linear and evolving
complex systems. Given its scope, the book will capture the
interest of graduate students and researchers from various
disciplines (e.g. economics, computer science, physics, and applied
mathematics) whose work involves the domain of complexity theory.
This book presents the latest findings on network theory and
agent-based modeling of economic and financial phenomena. In this
context, the economy is depicted as a complex system consisting of
heterogeneous agents that interact through evolving networks; the
aggregate behavior of the economy arises out of billions of
small-scale interactions that take place via countless economic
agents. The book focuses on analytical modeling, and on the
econometric and statistical analysis of the properties emerging
from microscopic interactions. In particular, it highlights the
latest empirical and theoretical advances, helping readers
understand economic and financial networks, as well as new work on
modeling behavior using rich, agent-based frameworks. Innovatively,
the book combines observational and theoretical insights in the
form of networks and agent-based models, both of which have proved
to be extremely valuable in understanding non-linear and evolving
complex systems. Given its scope, the book will capture the
interest of graduate students and researchers from various
disciplines (e.g. economics, computer science, physics, and applied
mathematics) whose work involves the domain of complexity theory.
Many real-life systems are dynamic, evolving, and intertwined.
Examples of such systems displaying 'complexity', can be found in a
wide variety of contexts ranging from economics to biology, to the
environmental and physical sciences. The study of complex systems
involves analysis and interpretation of vast quantities of data,
which necessitates the application of many classical and modern
tools and techniques from statistics, network science, machine
learning, and agent-based modelling. Drawing from the latest
research, this self-contained and pedagogical text describes some
of the most important and widely used methods, emphasising both
empirical and theoretical approaches. More broadly, this book
provides an accessible guide to a data-driven toolkit for
scientists, engineers, and social scientists who require effective
analysis of large quantities of data, whether that be related to
social networks, financial markets, economies or other types of
complex systems.
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