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Title
18-751   Applied Stochastic Processes
Category
courses
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9d64a4718d5d4392a9dfc926f051508e
Source URL
https://cee.engineering.cmu.edu/education/course-descriptions/18-751.html
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https://cee.engineering.cmu.edu/education/graduate/courses.html
Crawl Time
2026-03-25T05:03:12+00:00
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18-751   Applied Stochastic Processes

Source: https://cee.engineering.cmu.edu/education/course-descriptions/18-751.html Parent: https://cee.engineering.cmu.edu/education/graduate/courses.html

Basic probability concepts : Probability space, simple and compound events, statistical independence, and Bayes Rule. Total Probability Concept; Bernoulli trials; Poisson Law. De Moivre-Laplace Theorem. Definition of a Random Variable (RV); Probability distribution of an RV: cumulative distribution function (CDF) and probability density function (PDF). Two Random Variables; several Random Variables. Functions of RVs; conditional distributions; conditional expectations; joint distributions. Moments, generating functions, and characteristic functions of RVs. Chebyshev inequality. Estimation; linear estimation; minimum mean square estimation; and orthogonality principle. Limit theorems; Central Limit Theorem; Law of Large Numbers (both strong LLN and Weak LLN). Definition of a Random Process (RP). Different notions of stationarity. Poisson and Gaussian processes. Autocorrelation and Power Spectral Density (PSD) of an RP. Processing of random (stochastic) processes by linear systems. Ergodicity. Spectral analysis. Matched Filtering. Selected applications from telecommunications, data networking (queuing), Kalman filtering.

Instructor: Ozan Tonguz