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Measure, Integral and Probability / by Marek Capinski, Peter E. Kopp
(Springer Undergraduate Mathematics Series. ISSN:21974144)

2nd ed. 2004.
出版者 (London : Springer London : Imprint: Springer)
出版年 2004
大きさ XV, 311 p. 3 illus : online resource
著者標目 *Capinski, Marek author
Kopp, Peter E author
SpringerLink (Online service)
件 名 LCSH:Probabilities
LCSH:Mathematical analysis
LCSH:Measure theory
LCSH:Social sciences—Mathematics
FREE:Probability Theory
FREE:Analysis
FREE:Measure and Integration
FREE:Mathematics in Business, Economics and Finance
一般注記 Content -- 1. Motivation and preliminaries -- 1.1 Notation and basic set theory -- 1.2 The Riemann integral: scope and limitations -- 1.3 Choosing numbers at random -- 2. Measure -- 2.1 Null sets -- 2.2 Outer measure -- 2.3 Lebesgue-measurable sets and Lebesgue measure -- 2.4 Basic properties of Lebesgue measure -- 2.5 Borel sets -- 2.6 Probability -- 2.7 Proofs of propositions -- 3. Measurable functions -- 3.1 The extended real line -- 3.2 Lebesgue-measurable functions -- 3.3 Examples -- 3.4 Properties -- 3.5 Probability -- 3.6 Proofs of propositions -- 4. Integral -- 4.1 Definition of the integral -- 4.2 Monotone convergence theorems -- 4.3 Integrable functions -- 4.4 The dominated convergence theorem -- 4.5 Relation to the Riemann integral -- 4.6 Approximation of measurable functions -- 4.7 Probability -- 4.8 Proofs of propositions -- 5. Spaces of integrable functions -- 5.1 The space L1 -- 5.2 The Hilbert space L2 -- 5.3 The LP spaces: completeness -- 5.4 Probability -- 5.5 Proofs of propositions -- 6. Product measures -- 6.1 Multi-dimensional Lebesgue measure -- 6.2 Product ?-fields -- 6.3 Construction of the product measure -- 6.4 Fubini’s theorem -- 6.5 Probability -- 6.6 Proofs of propositions -- 7. The Radon—Nikodym theorem -- 7.1 Densities and conditioning -- 7.2 The Radon—Nikodym theorem -- 7.3 Lebesgue—Stieltjes measures -- 7.4 Probability -- 7.5 Proofs of propositions -- 8. LimitL theorems -- 8.1 Modes of convergence -- 8.2 Probability -- 8.3 Proofs of propositions -- Solutions -- References
Measure, Integral and Probability is a gentle introduction that makes measure and integration theory accessible to the average third-year undergraduate student. The ideas are developed at an easy pace in a form that is suitable for self-study, with an emphasis on clear explanations and concrete examples rather than abstract theory. For this second edition, the text has been thoroughly revised and expanded. New features include: · a substantial new chapter, featuring a constructive proof of the Radon-Nikodym theorem, an analysis of the structure of Lebesgue-Stieltjes measures, the Hahn-Jordan decomposition, and a brief introduction to martingales · key aspects of financial modelling, including the Black-Scholes formula, discussed briefly from a measure-theoretical perspective to help the reader understand the underlying mathematical framework. In addition, further exercises and examples are provided to encourage the reader to become directly involved with the material
HTTP:URL=https://doi.org/10.1007/978-1-4471-0645-6
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Springer eBooks 9781447106456
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分 類 LCC:QA273.A1-274.9
DC23:519.2
書誌ID 4000104838
ISBN 9781447106456

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