03734nam 22006255 450 991098613870332120251103115057.09789819779291981977929410.1007/978-981-97-7929-1(CKB)37817223500041(MiAaPQ)EBC31955430(Au-PeEL)EBL31955430(OCoLC)1506226818(DE-He213)978-981-97-7929-1(EXLCZ)993781722350004120250310d2025 u| 0engur|||||||||||txtrdacontentcrdamediacrrdacarrierMeasure Theory for Analysis and Probability /by Alok Goswami, B.V. Rao1st ed. 2025.Singapore :Springer Nature Singapore :Imprint: Springer,2025.1 online resource (387 pages)Indian Statistical Institute Series,2523-31229789819779284 9819779286 1. Measure Theory: Why and What -- 2. Measures: Construction and Properties -- 3. Measurable Functions and Integration -- 4. Random Variables and Random Vectors -- 5. Product Spaces -- 6. Radon-Nikodym Theorem and Lp Spaces -- 7. Convergence and Laws of Large Numbers -- 8. Weak convergence and Central Limit Theorem -- 9. Conditioning: The Right Approach -- 10. Infinite Products -- 11. Brownian Motion: A Brief Journey.This book covers major measure theory topics with a fairly extensive study of their applications to probability and analysis. It begins by demonstrating the essential nature of measure theory before delving into the construction of measures and the development of integration theory. Special attention is given to probability spaces and random variables/vectors. The text then explores product spaces, Radon–Nikodym and Jordan–Hahn theorems, providing a detailed account of �������� spaces and their duals. After revisiting probability theory, it discusses standard limit theorems such as the laws of large numbers and the central limit theorem, with detailed treatment of weak convergence and the role of characteristic functions. The book further explores conditional probabilities and expectations, preceded by motivating discussions. It discusses the construction of probability measures on infinite product spaces, presenting Tulcea’s theorem and Kolmogorov’s consistency theorem. The text concludes with the construction of Brownian motion, examining its path properties and the significant strong Markov property. This comprehensive guide is invaluable not only for those pursuing probability theory seriously but also for those seeking a robust foundation in measure theory to advance in modern analysis. By effectively motivating readers, it underscores the critical role of measure theory in grasping fundamental probability concepts.Indian Statistical Institute Series,2523-3122Measure theoryProbabilitiesMeasure and IntegrationProbability TheoryTeoria de la mesurathubProbabilitatsthubLlibres electrònicsthubMeasure theory.Probabilities.Measure and Integration.Probability Theory.Teoria de la mesuraProbabilitats515.42Goswami Alok1790997Rao B. V1764417MiAaPQMiAaPQMiAaPQBOOK9910986138703321Measure Theory for Analysis and Probability4327855UNINA