AICE2001 Scientific Computing, USouthampton, 25Fall
COMP6260 Optimisation for Machine Learning, USouthampton, 25Spring
Info | ConvexAnalysis | 1st-order algo | Other algo | Nonconvex | Lab
AICE1004 Maths for AI&CE, USouthampton, 24Fall
Info | LectureNote | MadBookPro
COMP1311 Math I, USouthampton, 24Fall
COMP1215 Foundations of Computer Science, USouthampton, 23Fall
Combinatorics Graph Probability StatisticsNote Keys & book Madbook
CO327 Deterministic OR Models, UWaterloo, 22Spring
Intro Info Review LinearProgram Tutorial1 IntegerProgram Tutorial2
FourierMotzkin Matlab1, Matlab2 BigM if-then IntegerProgram
Extreme-case trick 6Parimutuel auction
2-player 0-sum gameLogicIntegerProgram OptimalTransport Example
Notes on LP & IP
MARO201 UMONS, 19-20 Gradient descent solving quadratic problems | video
1st-order Taylor approximation of convex function & Bregman divergence
proj operator is firmly non-expensive & obtuse angle criterion
Augmented objective function & methods for constrained optimization
Prox of norm, Moreau's decomposition, conjugate of norm = indicator function of dual norm
Projection onto
Subdifferential & subgradient
Subgradient method
Proximal bundle method
Moreau-Yosida Envelope & Proximal map
Proximal gradient & convergence rate on
Solving
Adaptive restarts
Nesterov's optimal convergence rate of 1st-order method on convex smooth functions
Nesterov's Estimate Sequence, part 1: what is it & how to make one
Nesterov's Estimate Sequence, part 2: optimal 1st-order scheme
Convergence rate of gradient descent on convex smooth function
Convergence rate of gradient descent on strongly-convex smooth function
Convergence rate of projected gradient method on
Convergence rate of Nesterov’s accelerated gradient method on
Convergence rate of Nesterov’s accelerated gradient method on α-strongly convex
Convergence of proximal gradient with Nesterov's acceleration / FISTA
Gradient flow gives GD, proximal point, extra-gradient & 4th-order Runge-Kutta
Convergence analysis of 1st-order method on a quadratic program using dynamic system
Convergence of 4th-order Runge-Kutta update on least squares
Principle of least action & Euler-Lagrange equation of motion
Properties of conjugate
Duality | KKT | Slater’s constraint qualifications
Fast primal-dual proximal gradient algorithm & preconditioning
Cubic regularization
Anderson Acceleration
Solving total variation norm regularized least squares by MM
Convergence of MM
BSUM (only convergence, no rate)
TiTAN
Convergence of randomized block coordinate gradient descent on β-smooth convex function
Greedy coordinate descent
Accelerating coordinate descents
Kurdyka-Łojasiewicz property
Convergence of PALM on non-convex problem, part 2 : generated sequence converges to a critical point
Inertial Proximal Alternating Linearized Method (iPALM)
Xu-Yin Block Coordinate Descent for Regularized Multiconvex Optimization, hand written
Penalty method is not effective for NNLS – using iteratively reweighed least squares
NNLS by projected gradient descent: acceleration & restart | NNLS PGD mfile | NNLS PGD mfile 2
If A and its inverse are nonnegative, then A is the permutation of a positive diagonal matrix
NMF via projected gradient |
PGD algorithm mfile | APG algorithm mfile
NMF via HALS: column-wise exact block coordinate descent |
HALS mfile
Nuclear norm is tight convex relaxation of rank function only within the unit ball
Characterizing nuclear norm: nuclear norm is the dual norm of the spectral norm
Understanding the uniqueness of the sol. of the nuclear norm minimization
Singular value thresholding solves
Nonlinear elastic obstacle problem
Poisson image editing