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Ali Tajer
Professor
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Electrical, Computer, and Systems Engineering
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Rensselaer Polytechnic Institute
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(518) 276-8237
6040 Jonsson Engineering Center (JEC)
110 8th Street, Troy, NY 12180
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Introduction to Stochastic Signals & Systems
Fall 2024
| Lecture | Topic | 
|---|---|
| Lecture 01 | Axioms, discrete probability models | 
| Lecture 02 | Cconditional probability, total probability, Baye's rule | 
| Lecture 03 | Continuous probability models, moments, PMF | 
| Lecture 04 | CDF, PDF | 
| Lecture 05 | Functions of random variables, pairs of random variables, correlation | 
| Lecture 06 | Definition of stochastic process, auto-correlation, auto-covariance | 
| Lecture 07 | Cross-correlation, arrival process, renewal process, sum process, Poisson processes | 
| Lecture 08 | Properties of Poisson processes, stationary processes | 
| Lecture 09 | Poisson Process Derivation, Poisson Randomness,  | 
| Lecture 10 | Systems with Stoch. Inputs: Memoryless Systems, LTI systems | 
| Lecture 11 | LTI systems mean and autocorrelation | 
| Lecture 12 | Fourier Transform review, power spectral density | 
| Lecture 13 | Power spectral density in LTI systems | 
| Lecture 14 | Random Walks and Wiener Process | 
| Lecture 15 | Wiener Process | 
| Lecture 16 | Notes on PSD and Autocorr., Mean Ergodicity | 
| Lecture 17 | Ideal filtering of Stoch. Processes, maximum Likelihood estimation | 
| Lecture 18 | Minimum mean square estimation | 
| Lecture 19 | Optimum Filters | 
| Lecture 20 | Optimum filtering applications: Filtering, prediction, smoothing | 
| Lecture 21 | Kalman filters | 
| Lecture 23 | Kalman filters | 
| Lecture 24 | Introduction to measure theory  | 
| Lecture 25 | Introduction to measure theory  | 
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