Statistical Analysis of Financial Data in R
Statistical Analysis of Financial Data in R
Although there are many books on mathematical finance, few deal with the
statistical aspects of modern data analysis as applied to financial
problems. This textbook fills this gap by addressing some of the most
challenging issues facing financial engineers. It shows how
sophisticated mathematics and modern statistical techniques can be used
in the solutions of concrete financial problems. Concerns of risk
management are addressed by the study of extreme values, the fitting of
distributions with heavy tails, the computation of values at risk (VaR),
and other measures of risk. Principal component analysis (PCA),
smoothing, and regression techniques are applied to the construction of
yield and forward curves. Time series analysis is applied to the study
of temperature options and nonparametric estimation. Nonlinear filtering
is applied to Monte Carlo simulations, option pricing and earnings
prediction. This textbook is intended for undergraduate students
majoring in financial engineering, or graduate students in a Master in
finance or MBA program. It is sprinkled with practical examples using
market data, and each chapter ends with exercises. Practical examples
are solved in the R computing environment. They illustrate problems
occurring in the commodity, energy and weather markets, as well as the
fixed income, equity and credit markets. The examples, experiments and
problem sets are based on the library Rsafd developed for the purpose of
the text. The book should help quantitative analysts learn and
implement advanced statistical concepts. Also, it will be valuable for
researchers wishing to gain experience with financial data, implement
and test mathematical theories, and address practical issues that are
often ignored or underestimated in academic curricula.
Ebook format: PDF
Ebook page: 595
File size: 11.34 MB
Ebook page: 595
File size: 11.34 MB
$35.00

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