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A Hands-On Approach to Understanding and Using Actuarial Models
Computational Actuarial Science with R provides an introduction to
the computational aspects of actuarial science. Using simple R
code, the book helps you understand the algorithms involved in
actuarial computations. It also covers more advanced topics, such
as parallel computing and C/C++ embedded codes. After an
introduction to the R language, the book is divided into four
parts. The first one addresses methodology and statistical modeling
issues. The second part discusses the computational facets of life
insurance, including life contingencies calculations and
prospective life tables. Focusing on finance from an actuarial
perspective, the next part presents techniques for modeling stock
prices, nonlinear time series, yield curves, interest rates, and
portfolio optimization. The last part explains how to use R to deal
with computational issues of nonlife insurance. Taking a
do-it-yourself approach to understanding algorithms, this book
demystifies the computational aspects of actuarial science. It
shows that even complex computations can usually be done without
too much trouble. Datasets used in the text are available in an R
package (CASdatasets).
A Hands-On Approach to Understanding and Using Actuarial Models
Computational Actuarial Science with R provides an introduction to
the computational aspects of actuarial science. Using simple R
code, the book helps you understand the algorithms involved in
actuarial computations. It also covers more advanced topics, such
as parallel computing and C/C++ embedded codes. After an
introduction to the R language, the book is divided into four
parts. The first one addresses methodology and statistical modeling
issues. The second part discusses the computational facets of life
insurance, including life contingencies calculations and
prospective life tables. Focusing on finance from an actuarial
perspective, the next part presents techniques for modeling stock
prices, nonlinear time series, yield curves, interest rates, and
portfolio optimization. The last part explains how to use R to deal
with computational issues of nonlife insurance. Taking a
do-it-yourself approach to understanding algorithms, this book
demystifies the computational aspects of actuarial science. It
shows that even complex computations can usually be done without
too much trouble. Datasets used in the text are available in an R
package (CASdatasets).
"Extreme, synchronized rises and falls in financial markets occur
infrequently but they do occur. The problem with the models is that
they did not assign a high enough chance of occurrence to the
scenario in which many things go wrong at the same time - the 'em
perfect storm' scenario" (Business Week, September 1998). This book
focuses on limiting theorems for copulae. Because joint dependences
of extremal events is nowadays is key issue in risk management, it
becomes crucial to get a better understanding of behavior of
copulas in tails. The first chapter presents a survey on copulae,
and possible applications in risk management. The following
chapters present some canonical theorems for copulae, and the link
between this approach and standard results on multivariate extreme
is explained. A concluding chapter presents a survey on graphical
procedures to represent copula densities (with proper fit) in
tails.
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