ECE 7230

ECE 7230

Course information provided by the 2025-2026 Catalog.

Covers essential topics in high dimensional statistical inference, stochastic optimization, Bayesian statistical signal processing and Markov Chain Monte-Carlo stochastic simulation. The course is four inter-related parts. Part 1 covers the basics of probabilistic models, Markov chain Monte-Carlo simulation and regression with sparsity constraints. Part 2 covers Bayesian filtering including the Kalman filter, Hidden Markov Model filter and sequential Markov chain Monte-Carlo methods such as the particle filter. Part 3 covers maximum likelihood estimation and numerical methods such as the Expectation Maximization algorithm. Part 4 covers stochastic gradient algorithms and stochastic optimization. The course focuses on the deep fundamental ideas that underpin signal processing, data science and machine learning. The discussion sections will focus on more advanced aspects in statistical inference.


Last 3 terms offered 2024FA, 2023SP, 2022SP

Learning Outcomes REF-FA25

  • Students will learn state of the art methods in Bayesian state estimation, parameter estimation and applications.

View Enrollment Information

Syllabi: none
  •   Regular Academic Session.  Choose one lecture and one discussion.

  • 4 Credits Opt NoAud

  • 19977 ECE 7230   LEC 001

    • MW
    • Aug 25 - Dec 8, 2025
    • Krishnamurthy, V

  • Instruction Mode: In Person

  • 19978 ECE 7230   DIS 201

    • F
    • Aug 25 - Dec 8, 2025
    • Krishnamurthy, V

  • Instruction Mode: In Person