This volume investigates algorithmic methods based on machine learning in order to design sequential investment strategies for financial markets. Such sequential investment strategies use information collected from the market's past and determine, at the beginning of a trading period, a portfolio; that is, a way to invest the currently available capital among the assets that are available for purchase or investment.The aim is to produce a self-contained text intended for a wide audience, including researchers and graduate students in computer science, finance, statistics, mathematics, and engineering.
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Investigates algorithmic methods based on machine learning in order to design sequential investment strategies for financial markets. This title is suitable for researchers and graduate students in computer science, finance, statistics, mathematics, and engineering.
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On the History of the Growth Optimal Portfolio (M M Christensen); Empirical Log-Optimal Portfolio Selections: A Survey (L Gyorfi et al.); Log-Optimal Portfolio Selection with Proportional Transaction Costs (L Gyorfi & H Walk); Log-Optimal Portfolio with Short Selling and Leverage (M Horvath & A Urban); Nonparametric Sequential Prediction of Stationary Time Series (L Gyorfi & G Ottuscak); Empirical Pricing American Put Options (L Gyorfi & A Telcs).
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Produktdetaljer
ISBN
9781848168138
Publisert
2012-03-16
Utgiver
Vendor
Imperial College Press
Aldersnivå
U, P, 05, 06
Språk
Product language
Engelsk
Format
Product format
Innbundet
Antall sider
260