Essentials Of Time Series For Financial Applications(1st Edition)

Authors:

Massimo Guidolin, Manuela Pedio

Free essentials of time series for financial applications 1st edition massimo guidolin, manuela pedio 0128134100,
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Book details

ISBN: 0128134100, 9780128134108

Book publisher: Academic Press

Book Price $0 : Essentials of Time Series for Financial Applications by Massimo Guidolin and Manuela Pedio is a comprehensive guide focusing on the implementation and interpretation of time series models specifically for financial contexts. The book delves into various time series methodologies such as ARIMA models, GARCH, and VAR processes, offering a practical solution manual that helps readers understand complex financial datasets. This manual serves not only as a crucial resource for understanding predictive modeling in finance but also as an 'answer key' for tackling real-world financial problems using these models. The detailed table of content is meticulously structured to guide both practitioners and academics through the essentials of time series analysis, making it a valuable resource for learning everything from basic concepts to sophisticated applications like stochastic volatility models. The authors emphasize both theoretical underpinnings and practical applications, making the book an invaluable tool for those studying or working in quantitative finance, econometrics, and financial engineering. Although primarily an academic text, it is praised for its clarity and depth, making sophisticated statistical tools accessible to a broader audience. It is particularly appreciated in academic circles for its robust treatment of both the fundamental and advanced techniques used in financial time series analysis.