Measure Theory and Probability
Work detail
Measure theory and integration are presented to undergraduates from the perspective of probability theory. The first chapter shows why measure theory is needed for the formulation of problems in probability, and explains why one would have been forced to invent Lebesgue theory (had it not already existed) to contend with the paradoxes of large numbers. The measure-theoretic approach then leads to interesting applications and a range of topics that include the construction of the Lebesgue measure on R [superscript n] (metric space approach), the Borel-Cantelli lemmas, straight measure theory (the Lebesgue integral). Chapter 3 expands on abstract Fourier analysis, Fourier series and the Fourier integral, which have some beautiful probabilistic applications: Polya's theorem on random walks, Kac's proof of the Szego theorem and the central limit theorem. In this concise text, quite a few applications to probability are packed into the exercises. --back cover
Overview
Shared work-level identity and catalog context.
Contributors
People credited with this work in the active catalog.
- Open Author
Malcolm Adams
- Open Author
Malcolm Ritchie Adams
- Open Author
Victor Guillemin
- Open Author
V. Guillemin
- Open Author
Victor Guillemin
Editions
Publication-specific versions linked to this work only.
- Image source: Open LibraryMT
Measure Theory and Probability
- Image source: Open LibraryMT
Measure Theory and Probability
- Image source: Open LibraryMT
Measure Theory and Probability
- Image source: Open LibraryMT
Measure theory and probability
- MTMeasure Theory and ProbabilityMalcolm Adams, Victor Guillemin
Measure Theory and Probability
- MTMeasure Theory and ProbabilityMalcolm Adams, V. Guillemin
Measure Theory and Probability