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Discrete Time Series Processes And Applications In Finance at Meripustak

Discrete Time Series Processes And Applications In Finance by ZUMBACH G, SPRINGER

Books from same Author: ZUMBACH G

Books from same Publisher: SPRINGER

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  • General Information  
    Author(s)ZUMBACH G
    PublisherSPRINGER
    ISBN9783642317415
    Pages322
    BindingHardbound
    LanguageEnglish
    Publish YearOctober 2012

    Description

    SPRINGER Discrete Time Series Processes And Applications In Finance by ZUMBACH G

    Most financial and investment decisions are based on considerations of possible future changes and require forecasts on the evolution of the financial world. Time series and processes are the natural tools for describing the dynamic behavior of financial data, leading to the required forecasts. This book presents a survey of the empirical properties of financial time series, their descriptions by means of mathematical processes, and some implications for important financial applications used in many areas like risk evaluation, option pricing or portfolio construction. The statistical tools used to extract information from raw data are introduced. Extensive multiscale empirical statistics provide a solid benchmark of stylized facts (heteroskedasticity, long memory, fat-tails, leverage...), in order to assess various mathematical structures that can capture the observed regularities. The author introduces a broad range of processes and evaluates them systematically against the benchmark, summarizing the successes and limitations of these models from an empirical point of view. The outcome is that only multiscale ARCH processes with long memory, discrete multiplicative structures and non-normal innovations are able to capture correctly the empirical properties. In particular, only a discrete time series framework allows to capture all the stylized facts in a...



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