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Machine Learning For Financial Engineering Gyrfi Lszlottucsak

  • SKU: BELL-21987610
Machine Learning For Financial Engineering Gyrfi Lszlottucsak
$ 31.00 $ 45.00 (-31%)

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Machine Learning For Financial Engineering Gyrfi Lszlottucsak instant download after payment.

Publisher: Imperial College Press
File Extension: PDF
File size: 2.47 MB
Pages: 250
Author: Györfi, László;Ottucsak, Gyorgy;Walk, Harro
ISBN: 9781848168138, 9781848168145, 1848168136, 1848168144
Language: English
Year: 2012

Product desciption

Machine Learning For Financial Engineering Gyrfi Lszlottucsak by Györfi, László;ottucsak, Gyorgy;walk, Harro 9781848168138, 9781848168145, 1848168136, 1848168144 instant download after payment.

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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