Forecasting of High Frequency Financial Time Series: Concepts, Methods, Algorithms - Simon Dablemont - Books - LAP Lambert Academic Publishing - 9783838356549 - July 6, 2010
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Forecasting of High Frequency Financial Time Series: Concepts, Methods, Algorithms

Simon Dablemont

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Forecasting of High Frequency Financial Time Series: Concepts, Methods, Algorithms

Analysis of time series is very useful in science to realize modeling, filtering, prediction or smoothing. In the highly complex market structure the intra-day dealers are faced with different constraints and use different strategies to reach their financial goals such as maximizing their profits or utility function after adjusting for market risk. The procedures described in this book are suited for high frequency data showing nonlinear dependencies and observed at irregularly and randomly spaced times or when data are curves with different time points. Standard statistical methods completely fail in these cases. To overcome this problem we use functional analysis and neural networks. Often we have hidden variables that we cannot directly observe, or their measurement are costly or disturb the process. We can estimate these hidden variables, from measurement of other variables, using a Dynamic State Space Model with Kalman and Particle Filters. The methodologies and algorithms described in this book are suited for financial, engineering, physical applications when classical statistical methods fail.

Media Books     Paperback Book   (Book with soft cover and glued back)
Released July 6, 2010
ISBN13 9783838356549
Publishers LAP Lambert Academic Publishing
Pages 384
Dimensions 225 × 21 × 150 mm   ·   562 g
Language English