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Foreign-Exchange-Rate Forecasting with Artificial Neural Networks (Hardcover, 2007 ed.)
Loot Price: R2,906
Discovery Miles 29 060
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Foreign-Exchange-Rate Forecasting with Artificial Neural Networks (Hardcover, 2007 ed.)
Series: International Series in Operations Research & Management Science, 107
Expected to ship within 10 - 15 working days
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The book focuses on forecasting foreign exchange rates via
artificial neural networks. It creates and applies the highly
useful computational techniques of Artificial Neural Networks
(ANNs) to foreign-exchange-rate forecasting. The result is an
up-to-date review of the most recent research developments in
forecasting foreign exchange rates coupled with a highly useful
methodological approach to predicting rate changes in foreign
currency exchanges. Foreign Exchange Rate Forecasting with
Artificial Neural Networks is targeted at both the academic and
practitioner audiences. Managers, analysts and technical
practitioners in financial institutions across the world will have
considerable interest in the book, and scholars and graduate
students studying financial markets and business forecast will also
have considerable interest in the book. The book discusses the most
important advances in foreign-exchange-rate forecasting and then
systematically develops a number of new, innovative, and creatively
crafted neural network models that reduce the volatility and
speculative risk in the forecasting of foreign exchange rates. The
book discusses and illustrates three general types of ANN models.
Each of these model types reflect the following innovative and
effective characteristics: (1) The first model type is a
three-layer, feed-forward neural network with instantaneous
learning rates and adaptive momentum factors that produce learning
algorithms (both online and offline algorithms) to predict foreign
exchange rates. (2) The second model type is the three innovative
hybrid learning algorithms that have been created by combining ANNs
with exponential smoothing, generalized linearauto-regression, and
genetic algorithms. Each of these three hybrid algorithms has been
crafted to forecast various aspects synergetic performance. (3) The
third model type is the three innovative ensemble learning
algorithms that combining multiple neural networks into an ensemble
output. Empirical results reveal that these creative models can
produce better performance with high accuracy or high efficiency.
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