Lecture, three hours; discussion, one hour. Requisites: courses 115A, 164, 170A or 170E or Statistics 100A, and Computer Science 31 or Program in Computing 10A. Strongly recommended requisite: Program in Computing 16A or Statistics 21. Introductory course on mathematical models for pattern recognition and machine learning. Topics include parametric and nonparametric probability distributions, curse of dimensionality, correlation analysis and dimensionality reduction, and concepts of decision theory. Advanced machine learning and pattern recognition problems, including data classification and clustering, regression, kernel methods, artificial neural networks, hidden Markov models, and Markov random fields. Projects in MATLAB to be part of final project presented in class. P/NP or letter grading.

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Enrollment Progress

Mar 11, 3 PM PST
LEC 1: 80/80 seats taken (Full)
First passPriority passSecond pass3 days6 days9 days12 days15 days16 days19 days22 days25 days020406080100

Section List

  • LEC 1

    Open (34 seats)

    MWF 3pm-3:50pm

    Franz Hall 2258A

Course

Instructor
Nguyen, M.T.
Previously taught
23S 22Su

Previous Grades

Grade distributions not available.