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E-raamat: Artificial Intelligence, Learning and Computation in Economics and Finance

  • Formaat: EPUB+DRM
  • Sari: Understanding Complex Systems
  • Ilmumisaeg: 15-Feb-2023
  • Kirjastus: Springer International Publishing AG
  • Keel: eng
  • ISBN-13: 9783031152948
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  • Formaat: EPUB+DRM
  • Sari: Understanding Complex Systems
  • Ilmumisaeg: 15-Feb-2023
  • Kirjastus: Springer International Publishing AG
  • Keel: eng
  • ISBN-13: 9783031152948
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This book presents frontier research on the use of computational methods to model complex interactions in economics and finance. Artificial Intelligence, Machine Learning and simulations offer effective means of analyzing and learning from large as well as new types of data. These computational tools have permeated various subfields of economics, finance, and also across different schools of economic thought. Through 16 chapters written by pioneers in economics, finance, computer science, psychology, complexity and statistics/econometrics, the book introduces their original research and presents the findings they have yielded.

Theoretical and empirical studies featured in this book draw on a variety of approaches such as agent-based modeling, numerical simulations, computable economics, as well as employing tools from artificial intelligence and machine learning algorithms. The use of computational approaches to perform counterfactual thought experiments are also introduced, which help transcend the limits posed by traditional mathematical and statistical tools.

The book also includes discussions on methodology, epistemology, history and issues concerning prediction, validation, and inference, all of which have become pertinent with the increasing use of computational approaches in economic analysis.


Perspectives from the Development of Agent-based Modelling in Economics
and Finance.- Towards a General Model of Financial Markets.- The U-Mart
Futures Exchange Experiment and Her Institutional Design Historically
Inherited.- A Bottom-Up Framework for Data-Driven Agent-Based Simulations.-
Can News Networks and Topics Influence Assets Return and Volatility?.- Causal
Inference and Agent-Based Models.- Finding the Human in Their Stories: Some
Thoughts on Digital Humanities Tools.- Interdependence Overcomes the
Limitations of Rational Theories of Collective Behavior: The Productivity of
Patents by Nations.- Sand Castles and Financial Systems.-Estimation of
Agent-Based Models via Approximate Bayesian Computation.- Unravelling Aspects
of Decision Making Under Uncertainty.- Logic and Epistemology in Behavioral
Economics.- Aggregate Investor Attention and Bitcoin Return: The Machine
Learning Approach.- Information and Market Power: An Experimental
Investigation into the Hayek Hypothesis.- Algorithmically Learning,
Creatively and Intelligently to Play Games.- A Simonian Formalistic
Perspective on Collaborative, Distributed Invention.- Modified Sraffan
Schemes and Algorithmic Rational Agents.
Dr. Ragupathy Venkatachalam is a Senior Lecturer in Economics at the Institute of Management Studies, Goldsmiths, University of London. He obtained his Ph.D. from the University of Trento, Italy. He has previously taught economics at the Centre for Development Studies (India) and worked as a research fellow at the Artificial Intelligence Economics Research Center at the National Chengchi University (Taiwan). He serves as the co-editor of Economia Politica [ Journal of Analytical and Institutional Economics].  His broad research areas include computable economics, economic dynamics, causal inference, discrimination and history of economic thought. He has published several peer-reviewed journal articles, book chapters and edited special issues on these areas. His research focuses on the algorithmic models of theorizing both at the micro- and macro-levels.