Literature
This is all literature mentioned / referenced in the Manopt.jl
documentation. Usually you find a small reference section at the end of every documentation page that contains the corresponding references as well.
- [ABG06]
- P.-A. Absil, C. Baker and K. Gallivan. Trust-Region Methods on Riemannian Manifolds. Foundations of Computational Mathematics 7, 303–330 (2006).
- [AMS08]
- P.-A. Absil, R. Mahony and R. Sepulchre. Optimization Algorithms on Matrix Manifolds (Princeton University Press, 2008), available online at press.princeton.edu/chapters/absil/.
- [AOT22]
- S. Adachi, T. Okuno and A. Takeda. Riemannian Levenberg-Marquardt Method with Global and Local Convergence Properties. ArXiv Preprint (2022).
- [ABBC20]
- N. Agarwal, N. Boumal, B. Bullins and C. Cartis. Adaptive regularization with cubics on manifolds. Mathematical Programming (2020).
- [ACOO20]
- Y. T. Almeida, J. X. Cruz Neto, P. R. Oliveira and J. C. Oliveira Souza. A modified proximal point method for DC functions on Hadamard manifolds. Computational Optimization and Applications 76, 649–673 (2020).
- [Bac14]
- M. Bačák. Computing medians and means in Hadamard spaces. SIAM Journal on Optimization 24, 1542–1566 (2014), arXiv:1210.2145.
- [Bea72]
- E. M. Beale. A derivation of conjugate gradients. In: Numerical methods for nonlinear optimization, edited by F. A. Lootsma (Academic Press, London, London, 1972); pp. 39–43.
- [BFSS23]
- R. Bergmann, O. P. Ferreira, E. M. Santos and J. C. Souza. The difference of convex algorithm on Hadamard manifolds, arXiv preprint (2023).
- [BG18]
- R. Bergmann and P.-Y. Gousenbourger. A variational model for data fitting on manifolds by minimizing the acceleration of a Bézier curve. Frontiers in Applied Mathematics and Statistics 4 (2018), arXiv:1807.10090.
- [BH19]
- R. Bergmann and R. Herzog. Intrinsic formulation of KKT conditions and constraint qualifications on smooth manifolds. SIAM Journal on Optimization 29, 2423–2444 (2019), arXiv:1804.06214.
- [BHJ24]
- R. Bergmann, R. Herzog and H. Jasa. The Riemannian Convex Bundle Method, preprint (2024), arXiv:2402.13670.
- [BHS+21]
- R. Bergmann, R. Herzog, M. Silva Louzeiro, D. Tenbrinck and J. Vidal-Núñez. Fenchel duality theory and a primal-dual algorithm on Riemannian manifolds. Foundations of Computational Mathematics 21, 1465–1504 (2021), arXiv:1908.02022.
- [BPS16]
- R. Bergmann, J. Persch and G. Steidl. A parallel Douglas Rachford algorithm for minimizing ROF-like functionals on images with values in symmetric Hadamard manifolds. SIAM Journal on Imaging Sciences 9, 901–937 (2016), arXiv:1512.02814.
- [BIA10]
- P. B. Borckmans, M. Ishteva and P.-A. Absil. A Modified Particle Swarm Optimization Algorithm for the Best Low Multilinear Rank Approximation of Higher-Order Tensors. In: 7th International Conference on Swarm INtelligence (Springer Berlin Heidelberg, 2010); pp. 13–23.
- [Bou23]
- N. Boumal. An Introduction to Optimization on Smooth Manifolds. First Edition (Cambridge University Press, 2023).
- [Car92]
- M. P. do Carmo. Riemannian Geometry. Mathematics: Theory & Applications (Birkhäuser Boston, Inc., Boston, MA, 1992); p. xiv+300.
- [CP11]
- A. Chambolle and T. Pock. A first-order primal-dual algorithm for convex problems with applications to imaging. Journal of Mathematical Imaging and Vision 40, 120–145 (2011).
- [CGT00]
- A. R. Conn, N. I. Gould and P. L. Toint. Trust Region Methods (Society for Industrial and Applied Mathematics, 2000).
- [DY99]
- Y. H. Dai and Y. Yuan. A Nonlinear Conjugate Gradient Method with a Strong Global Convergence Property. SIAM Journal on Optimization 10, 177–182 (1999).
- [DL21]
- W. Diepeveen and J. Lellmann. An Inexact Semismooth Newton Method on Riemannian Manifolds with Application to Duality-Based Total Variation Denoising. SIAM Journal on Imaging Sciences 14, 1565–1600 (2021), arXiv:2102.10309.
- [FO98]
- O. Ferreira and P. R. Oliveira. Subgradient algorithm on Riemannian manifolds. Journal of Optimization Theory and Applications 97, 93–104 (1998).
- [Fle13]
- P. T. Fletcher. Geodesic regression and the theory of least squares on Riemannian manifolds. International Journal of Computer Vision 105, 171–185 (2013).
- [Fle87]
- R. Fletcher. Practical Methods of Optimization. 2 Edition, A Wiley-Interscience Publication (John Wiley & Sons Ltd., 1987).
- [FR64]
- R. Fletcher and C. M. Reeves. Function minimization by conjugate gradients. The Computer Journal 7, 149–154 (1964).
- [GS23]
- G. N. Grapiglia and G. F. Stella. An Adaptive Riemannian Gradient Method Without Function Evaluations. Journal of Optimization Theory and Applications 197, 1140–1160 (2023).
- [HZ06]
- W. W. Hager and H. Zhang. A survey of nonlinear conjugate gradient methods. Pacific Journal of Optimization 2, 35–58 (2006).
- [HZ05]
- W. W. Hager and H. Zhang. A New Conjugate Gradient Method with Guaranteed Descent and an Efficient Line Search. SIAM Journal on Optimization 16, 170–192 (2005).
- [HS52]
- M. Hestenes and E. Stiefel. Methods of conjugate gradients for solving linear systems. Journal of Research of the National Bureau of Standards 49, 409 (1952).
- [HNP23]
- N. Hoseini Monjezi, S. Nobakhtian and M. R. Pouryayevali. A proximal bundle algorithm for nonsmooth optimization on Riemannian manifolds. IMA Journal of Numerical Analysis 43, 293–325 (2023).
- [Hua14]
- W. Huang. Optimization algorithms on Riemannian manifolds with applications. Ph.D. Thesis, Flordia State University (2014).
- [HAG18]
- W. Huang, P.-A. Absil and K. A. Gallivan. A Riemannian BFGS method without differentiated retraction for nonconvex optimization problems. SIAM Journal on Optimization 28, 470–495 (2018).
- [HGA15]
- W. Huang, K. A. Gallivan and P.-A. Absil. A Broyden class of quasi-Newton methods for Riemannian optimization. SIAM Journal on Optimization 25, 1660–1685 (2015).
- [IP17]
- B. Iannazzo and M. Porcelli. The Riemannian Barzilai–Borwein method with nonmonotone line search and the matrix geometric mean computation. IMA Journal of Numerical Analysis 38, 495–517 (2017).
- [Kar77]
- H. Karcher. Riemannian center of mass and mollifier smoothing. Communications on Pure and Applied Mathematics 30, 509–541 (1977).
- [LB19]
- C. Liu and N. Boumal. Simple algorithms for optimization on Riemannian manifolds with constraints. Applied Mathematics & Optimization (2019), arXiv:1091.10000.
- [LS91]
- Y. Liu and C. Storey. Efficient generalized conjugate gradient algorithms, part 1: Theory. Journal of Optimization Theory and Applications 69, 129–137 (1991).
- [Ngu23]
- D. Nguyen. Operator-Valued Formulas for Riemannian Gradient and Hessian and Families of Tractable Metrics in Riemannian Optimization. Journal of Optimization Theory and Applications 198, 135–164 (2023), arXiv:2009.10159.
- [NW06]
- J. Nocedal and S. J. Wright. Numerical Optimization. 2 Edition (Springer, New York, 2006).
- [Pee93]
- R. Peeters. On a Riemannian version of the Levenberg-Marquardt algorithm. Serie Research Memoranda 0011 (VU University Amsterdam, Faculty of Economics, Business Administration and Econometrics, 1993).
- [PR69]
- E. Polak and G. Ribière. Note sur la convergence de méthodes de directions conjuguées. Revue française d’informatique et de recherche opérationnelle 3, 35–43 (1969).
- [Pol69]
- B. T. Polyak. The conjugate gradient method in extremal problems. USSR Computational Mathematics and Mathematical Physics 9, 94–112 (1969).
- [Pow77]
- M. J. Powell. Restart procedures for the conjugate gradient method. Mathematical Programming 12, 241–254 (1977).
- [SO15]
- J. C. Souza and P. R. Oliveira. A proximal point algorithm for DC fuctions on Hadamard manifolds. Journal of Global Optimization 63, 797–810 (2015).
- [WS22]
- M. Weber and S. Sra. Riemannian Optimization via Frank-Wolfe Methods. Mathematical Programming 199, 525–556 (2022).
- [ZS18]
- H. Zhang and S. Sra. Towards Riemannian accelerated gradient methods, arXiv Preprint, 1806.02812 (2018).