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1. A Minimization Approach for Minimax Optimization with Coupled Constraints

2. LoCo: Low-Bit Communication Adaptor for Large-scale Model Training

3. Vertex Exchange Method for a Class of Quadratic Programming Problems

4. Nesterov's Accelerated Jacobi-Type Methods for Large-scale Symmetric Positive Semidefinite Linear Systems

5. Learning-rate-free Momentum SGD with Reshuffling Converges in Nonsmooth Nonconvex Optimization

6. Convergence rates of S.O.S hierarchies for polynomial semidefinite programs

7. An Inexact Bregman Proximal Difference-of-Convex Algorithm with Two Types of Relative Stopping Criteria

8. Stochastic Bregman Subgradient Methods for Nonsmooth Nonconvex Optimization Problems

9. Developing Lagrangian-based Methods for Nonsmooth Nonconvex Optimization

10. An Inexact Halpern Iteration with Application to Distributionally Robust Optimization

11. Wasserstein distributionally robust optimization and its tractable regularization formulations

13. On Partial Optimal Transport: Revising the Infeasibility of Sinkhorn and Efficient Gradient Methods

14. A feasible method for general convex low-rank SDP problems

15. A Sparse Smoothing Newton Method for Solving Discrete Optimal Transport Problems

16. A Corrected Inexact Proximal Augmented Lagrangian Method with a Relative Error Criterion for a Class of Group-quadratic Regularized Optimal Transport Problems

17. Adam-family Methods with Decoupled Weight Decay in Deep Learning

18. Self-adaptive ADMM for semi-strongly convex problems

19. On solving a rank regularized minimization problem via equivalent factorized column-sparse regularized models

20. Quantifying low rank approximations of third order symmetric tensors

21. SGD-type Methods with Guaranteed Global Stability in Nonsmooth Nonconvex Optimization

22. Adaptive sieving: A dimension reduction technique for sparse optimization problems

23. Nonconvex Stochastic Bregman Proximal Gradient Method with Application to Deep Learning

24. A Highly Efficient Algorithm for Solving Exclusive Lasso Problems

25. Adam-family Methods for Nonsmooth Optimization with Convergence Guarantees

26. A Riemannian Dimension-reduced Second Order Method with Application in Sensor Network Localization

27. A Partial Exact Penalty Function Approach for Constrained Optimization

30. On proximal augmented Lagrangian based decomposition methods for dual block-angular convex composite programming problems

31. A feasible method for solving an SDP relaxation of the quadratic knapsack problem

32. A squared smoothing Newton method for semidefinite programming

34. CDOpt: A Python Package for a Class of Riemannian Optimization

35. Tractable hierarchies of convex relaxations for polynomial optimization on the nonnegative orthant

36. On Efficient and Scalable Computation of the Nonparametric Maximum Likelihood Estimator in Mixture Models

37. An Improved Unconstrained Approach for Bilevel Optimization

38. A Constraint Dissolving Approach for Nonsmooth Optimization over the Stiefel Manifold

39. Accelerating nuclear-norm regularized low-rank matrix optimization through Burer-Monteiro decomposition

40. Dissolving Constraints for Riemannian Optimization

43. Solving graph equipartition SDPs on an algebraic variety

44. Inexact Bregman Proximal Gradient Method and its Inertial Variant with Absolute and Partial Relative Stopping Criteria

45. DC algorithms for a class of sparse group $\ell_0$ regularized optimization problems

46. On Regularized Square-root Regression Problems: Distributionally Robust Interpretation and Fast Computations

47. A Dimension Reduction Technique for Large-scale Structured Sparse Optimization Problems with Application to Convex Clustering

48. An Inexact Projected Gradient Method with Rounding and Lifting by Nonlinear Programming for Solving Rank-One Semidefinite Relaxation of Polynomial Optimization

49. Bregman Proximal Point Algorithm Revisited: A New Inexact Version and its Inertial Variant

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