R Programming for Actuarial Science

R Programming for Actuarial Science
Author: Peter McQuire,Alfred Kume
Publsiher: John Wiley & Sons
Total Pages: 645
Release: 2023-10-26
Genre: Computers
ISBN: 9781119754992

Download R Programming for Actuarial Science Book in PDF, Epub and Kindle

R Programming for Actuarial Science Professional resource providing an introduction to R coding for actuarial and financial mathematics applications, with real-life examples R Programming for Actuarial Science provides a grounding in R programming applied to the mathematical and statistical methods that are of relevance for actuarial work. In R Programming for Actuarial Science, readers will find: Basic theory for each chapter to complement other actuarial textbooks which provide foundational theory in depth. Topics covered include compound interest, statistical inference, asset-liability matching, time series, loss distributions, contingencies, mortality models, and option pricing plus many more typically covered in university courses. More than 400 coding examples and exercises, most with solutions, to enable students to gain a better understanding of underlying mathematical and statistical principles. An overall basic to intermediate level of coverage in respect of numerous actuarial applications, and real-life examples included with every topic. Providing a highly useful combination of practical discussion and basic theory, R Programming for Actuarial Science is an essential reference for BSc/MSc students in actuarial science, trainee actuaries studying privately, and qualified actuaries with little programming experience, along with undergraduate students studying finance, business, and economics.

R Programming for Actuarial Science

R Programming for Actuarial Science
Author: Peter McQuire,Alfred Kume
Publsiher: John Wiley & Sons
Total Pages: 645
Release: 2023-10-16
Genre: Computers
ISBN: 9781119754978

Download R Programming for Actuarial Science Book in PDF, Epub and Kindle

R Programming for Actuarial Science Professional resource providing an introduction to R coding for actuarial and financial mathematics applications, with real-life examples R Programming for Actuarial Science provides a grounding in R programming applied to the mathematical and statistical methods that are of relevance for actuarial work. In R Programming for Actuarial Science, readers will find: Basic theory for each chapter to complement other actuarial textbooks which provide foundational theory in depth. Topics covered include compound interest, statistical inference, asset-liability matching, time series, loss distributions, contingencies, mortality models, and option pricing plus many more typically covered in university courses. More than 400 coding examples and exercises, most with solutions, to enable students to gain a better understanding of underlying mathematical and statistical principles. An overall basic to intermediate level of coverage in respect of numerous actuarial applications, and real-life examples included with every topic. Providing a highly useful combination of practical discussion and basic theory, R Programming for Actuarial Science is an essential reference for BSc/MSc students in actuarial science, trainee actuaries studying privately, and qualified actuaries with little programming experience, along with undergraduate students studying finance, business, and economics.

Computational Actuarial Science with R

Computational Actuarial Science with R
Author: Arthur Charpentier
Publsiher: CRC Press
Total Pages: 652
Release: 2014-08-26
Genre: Business & Economics
ISBN: 9781466592599

Download Computational Actuarial Science with R Book in PDF, Epub and Kindle

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 First Course in Statistical Programming with R

A First Course in Statistical Programming with R
Author: W. John Braun,Duncan J. Murdoch
Publsiher: Cambridge University Press
Total Pages: 231
Release: 2016-07-18
Genre: Computers
ISBN: 9781107576469

Download A First Course in Statistical Programming with R Book in PDF, Epub and Kindle

Learn to program in R from the experts with this new, color edition of Braun and Murdoch's bestselling textbook.

Modern Actuarial Risk Theory

Modern Actuarial Risk Theory
Author: Rob Kaas,Marc Goovaerts,Jan Dhaene
Publsiher: Springer Science & Business Media
Total Pages: 394
Release: 2008-12-03
Genre: Business & Economics
ISBN: 9783540867364

Download Modern Actuarial Risk Theory Book in PDF, Epub and Kindle

Modern Actuarial Risk Theory contains what every actuary needs to know about non-life insurance mathematics. It starts with the standard material like utility theory, individual and collective model and basic ruin theory. Other topics are risk measures and premium principles, bonus-malus systems, ordering of risks and credibility theory. It also contains some chapters about Generalized Linear Models, applied to rating and IBNR problems. As to the level of the mathematics, the book would fit in a bachelors or masters program in quantitative economics or mathematical statistics. This second and.

Effective Statistical Learning Methods for Actuaries I

Effective Statistical Learning Methods for Actuaries I
Author: Michel Denuit,Donatien Hainaut,Julien Trufin
Publsiher: Springer Nature
Total Pages: 441
Release: 2019-09-03
Genre: Business & Economics
ISBN: 9783030258207

Download Effective Statistical Learning Methods for Actuaries I Book in PDF, Epub and Kindle

This book summarizes the state of the art in generalized linear models (GLMs) and their various extensions: GAMs, mixed models and credibility, and some nonlinear variants (GNMs). In order to deal with tail events, analytical tools from Extreme Value Theory are presented. Going beyond mean modeling, it considers volatility modeling (double GLMs) and the general modeling of location, scale and shape parameters (GAMLSS). Actuaries need these advanced analytical tools to turn the massive data sets now at their disposal into opportunities. The exposition alternates between methodological aspects and case studies, providing numerical illustrations using the R statistical software. The technical prerequisites are kept at a reasonable level in order to reach a broad readership. This is the first of three volumes entitled Effective Statistical Learning Methods for Actuaries. Written by actuaries for actuaries, this series offers a comprehensive overview of insurance data analytics with applications to P&C, life and health insurance. Although closely related to the other two volumes, this volume can be read independently.

Effective Statistical Learning Methods for Actuaries II

Effective Statistical Learning Methods for Actuaries II
Author: Michel Denuit,Donatien Hainaut,Julien Trufin
Publsiher: Springer Nature
Total Pages: 228
Release: 2020-11-16
Genre: Business & Economics
ISBN: 9783030575564

Download Effective Statistical Learning Methods for Actuaries II Book in PDF, Epub and Kindle

This book summarizes the state of the art in tree-based methods for insurance: regression trees, random forests and boosting methods. It also exhibits the tools which make it possible to assess the predictive performance of tree-based models. Actuaries need these advanced analytical tools to turn the massive data sets now at their disposal into opportunities. The exposition alternates between methodological aspects and numerical illustrations or case studies. All numerical illustrations are performed with the R statistical software. The technical prerequisites are kept at a reasonable level in order to reach a broad readership. In particular, master's students in actuarial sciences and actuaries wishing to update their skills in machine learning will find the book useful. This is the second of three volumes entitled Effective Statistical Learning Methods for Actuaries. Written by actuaries for actuaries, this series offers a comprehensive overview of insurance data analytics with applications to P&C, life and health insurance.

Modern Actuarial Risk Theory

Modern Actuarial Risk Theory
Author: Rob Kaas,Marc Goovaerts,Jan Dhaene,Michel Denuit
Publsiher: Springer Science & Business Media
Total Pages: 394
Release: 2008-08-17
Genre: Business & Economics
ISBN: 9783540709985

Download Modern Actuarial Risk Theory Book in PDF, Epub and Kindle

Modern Actuarial Risk Theory contains what every actuary needs to know about non-life insurance mathematics. It starts with the standard material like utility theory, individual and collective model and basic ruin theory. Other topics are risk measures and premium principles, bonus-malus systems, ordering of risks and credibility theory. It also contains some chapters about Generalized Linear Models, applied to rating and IBNR problems. As to the level of the mathematics, the book would fit in a bachelors or masters program in quantitative economics or mathematical statistics. This second and much expanded edition emphasizes the implementation of these techniques through the use of R. This free but incredibly powerful software is rapidly developing into the de facto standard for statistical computation, not just in academic circles but also in practice. With R, one can do simulations, find maximum likelihood estimators, compute distributions by inverting transforms, and much more.