MATH 173B. Optimization Methods for Data Science II (4 units)
Link to catalog page: https://catalog.ucsd.edu/courses/MATH.html#math173b
Description
Unconstrained optimization: linear least squares; randomized linear least squares; method(s) of steepest descent; line-search methods; conjugate-gradient method; comparing the efficiency of methods; randomized/stochastic methods; nonlinear least squares; norm minimization methods. Convex constrained optimization: optimality conditions; convex programming; Lagrangian relaxation; the method of multipliers; the alternating direction method of multipliers; minimizing combinations of norms. Prerequisites: MATH 173A. Students who have not completed listed prerequisites may enroll with consent of instructor.
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