Multi-Fractality Analysis of Time Series in Artificial Stock Market Generated by Multi-Agent Systems Based on the Genetic Programming and Its Applications
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- @Article{journals/ieicet/IkedaT07a,
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author = "Yoshikazu Ikeda and Shozo Tokinaga",
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title = "Multi-Fractality Analysis of Time Series in Artificial
Stock Market Generated by Multi-Agent Systems Based on
the Genetic Programming and Its Applications",
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journal = "IEICE Transactions on Fundamentals of Electronics,
Communications and Computer Sciences",
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year = "2007",
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volume = "90-A",
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number = "10",
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pages = "2212--2222",
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keywords = "genetic algorithms, genetic programming,
multi-fractal, artificial stock market,
multi-agent-based modeling",
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ISSN = "0916-8508",
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DOI = "doi:10.1093/ietfec/e90-a.10.2212",
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abstract = "There are several methods for generating multi-fractal
time series, but the origin of the multi-fractality is
not discussed so far. This paper deals with the
multi-fractality analysis of time series in an
artificial stock market generated by multi-agent
systems based on the Genetic Programming (GP) and its
applications to feature extractions. Cognitive
behaviors of agents are modeled by using the GP to
introduce the co-evolutionary (social) learning as well
as the individual learning. We assume five types of
agents, in which a part of the agents prefer forecast
equations or forecast rules to support their decision
making, and another type of the agents select decisions
at random like a speculator. The agents using forecast
equations and rules usually use their own knowledge
base, but some of them use their public (common)
knowledge base to improve trading decisions. For
checking the multi-fractality we use an extended method
based on the continuous time wavelet transform. Then,
it is shown that the time series of the artificial
stock price reveals as a multi-fractal signal. We
mainly focus on the proportion of the agents of each
type. To examine the role of agents of each type, we
classify six cases by changing the composition of
agents of types. As a result, in several cases we find
strict multi-fractality in artificial stock prices, and
we see the relationship between the realizability
(reproducibility) of multi-fractality and the system
parameters. By applying a prediction method for
mono-fractal time series as counterparts, features of
the multi-fractal time series are extracted. As a
result, we examine and find the origin of multi-fractal
processes in artificial stock prices.",
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bibdate = "2008-01-15",
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bibsource = "DBLP,
http://dblp.uni-trier.de/db/journals/ieicet/ieicet90a.html#IkedaT07a",
- }
Genetic Programming entries for
Yoshikazu Ikeda
Shozo Tokinaga
Citations