Abstract

Part 1 Probability and Random Variables 1 The Meaning of Probability 2 The Axioms of Probability 3 Repeated Trials 4 The Concept of a Random Variable 5 Functions of One Random Variable 6 Two Random Variables 7 Sequences of Random Variables 8 Statistics Part 2 Stochastic Processes 9 General Concepts 10 Random Walk and Other Applications 11 Spectral Representation 12 Spectral Estimation 13 Mean Square Estimation 14 Entropy 15 Markov Chains 16 Markov Processes and Queueing Theory

Keywords

MathematicsRandom variableEconometricsStatistics

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Publication Info

Year
1984
Type
article
Volume
79
Issue
388
Pages
957-957
Citations
16350
Access
Closed

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Cite This

Julia Abrahams, A. Papoulis (1984). Probability, Random Variables, and Stochastic Processes.. Journal of the American Statistical Association , 79 (388) , 957-957. https://doi.org/10.2307/2288754

Identifiers

DOI
10.2307/2288754