Introduction to Computation and Optimization for Statistics

Lecture, three hours; discussion, one hour. Requisites: courses 100B (or Mathematics 170S), 102A, Mathematics 33A. Introduction to computational methods and optimization useful for statisticians. Use of computer programming to solve statistical problems. Topics include vector/matrix computation, multivariate normal distribution, principal component analysis, clustering analysis, gradient-based optimization, EM algorithm for missing data, and dynamic programming. P/NP or letter grading.

Review Summary

Clarity
8.3 / 10
Organization
8.3 / 10
Time
5-10 hrs/week
Overall
8.3 / 10

Reviews

    Quarter Taken: Spring 2023 In-Person
    Grade: A

    Great Professor, explains the concept really well. The final project was very time consuming and annoying.

Course

Instructor
Michailidis, G.
Previously taught
24S 23S

Grading Information

  • No group projects

  • Attendance not required

  • 2 midterms

  • No final

  • 0% recommend the textbook

Previous Grades

Grade distributions not available.