Evolutionary and adaptive learning in complex markets a brief summary

Authors
Publication date 2007
Host editors
  • J. Kertész
  • S. Bornholdt
  • R.N. Mantegna
Book title Noise and Stochastics in Complex Systems and Finance
Book subtitle 21-24 May 2007, Florence, Italy
ISBN
  • 9780819467386
Series Proceedings of SPIE
Event SPIE conference on "Noise and Stochastics in Complex Systems and Finance"
Article number 66010P
Number of pages 15
Publisher Bellingham, WA: SPIE
Organisations
  • Faculty of Economics and Business (FEB) - Amsterdam School of Economics Research Institute (ASE-RI)
Abstract
We briefly review some work on expectations and learning in complex markets, using the familiar demand-supply cobweb model. We discuss and combine two different approaches on learning. According to the adaptive learning approach, agents behave as econometricians using time series observations to form expectations, and update the parameters as more observations become available. This approach has become popular in macro. The second approach has an evolutionary flavor and is sometimes referred to as reinforcement learning. Agents employ different forecasting strategies and evaluate these strategies based upon a fitness measure, e.g. past realized profits. In this framework, boundedly rational agents switch between different, but fixed behavioral rules. This approach has become popular in finance. We combine evolutionary and adaptive learning to model complex markets and discuss whether this theory can match empirical facts and forecasting behavior in laboratory experiments with human subjects.
Document type Conference contribution
Language English
Published at https://doi.org/10.1117/12.724883
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