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Probability and Stochastic Modeling not only covers all the topics
found in a traditional introductory probability course, but also
emphasizes stochastic modeling, including Markov chains,
birth-death processes, and reliability models. Unlike most
undergraduate-level probability texts, the book also focuses on
increasingly important areas, such as martingales, classification
of dependency structures, and risk evaluation. Numerous examples,
exercises, and models using real-world data demonstrate the
practical possibilities and restrictions of different approaches
and help students grasp general concepts and theoretical results.
The text is suitable for majors in mathematics and statistics as
well as majors in computer science, economics, finance, and
physics. The author offers two explicit options to teaching the
material, which is reflected in "routes" designated by special
"roadside" markers. The first route contains basic, self-contained
material for a one-semester course. The second provides a more
complete exposition for a two-semester course or self-study.
Probability and Stochastic Modeling not only covers all the topics
found in a traditional introductory probability course, but also
emphasizes stochastic modeling, including Markov chains,
birth-death processes, and reliability models. Unlike most
undergraduate-level probability texts, the book also focuses on
increasingly important areas, such as martingales, classification
of dependency structures, and risk evaluation. Numerous examples,
exercises, and models using real-world data demonstrate the
practical possibilities and restrictions of different approaches
and help students grasp general concepts and theoretical results.
The text is suitable for majors in mathematics and statistics as
well as majors in computer science, economics, finance, and
physics. The author offers two explicit options to teaching the
material, which is reflected in "routes" designated by special
"roadside" markers. The first route contains basic, self-contained
material for a one-semester course. The second provides a more
complete exposition for a two-semester course or self-study.
Actuarial Models: The Mathematics of Insurance, Second Edition
thoroughly covers the basic models of insurance processes. It also
presents the mathematical frameworks and methods used in actuarial
modeling. This second edition provides an even smoother, more
robust account of the main ideas and models, preparing students to
take exams of the Society of Actuaries (SOA) and the Casualty
Actuarial Society (CAS). New to the Second Edition Revises all
chapters, especially material on the surplus process Takes into
account new results and current trends in teaching actuarial
modeling Presents a new chapter on pension models Includes new
problems from the 2011-2013 CAS examinations Like its best-selling,
widely adopted predecessor, this edition is designed for students,
actuaries, mathematicians, and researchers interested in insurance
processes and economic and social models. The author offers three
clearly marked options for using the text. The first option
includes the basic material for a one-semester undergraduate
course, the second provides a more complete treatment ideal for a
two-semester course or self-study, and the third covers more
challenging topics suitable for graduate-level readers.
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