PDF] Steepest Descent and Conjugate Gradient Methods with Variable Preconditioning
Por um escritor misterioso
Last updated 18 fevereiro 2025
![PDF] Steepest Descent and Conjugate Gradient Methods with Variable Preconditioning](https://d3i71xaburhd42.cloudfront.net/a0174a41c7d682aeb1d7e7fa1fbd2404e037a638/11-Figure8.1-1.png)
It is shown that the CG method with variable preconditioning under this assumption may not give improvement, compared to the steepest descent (SD) method, and a new elegant geometric proof of the SD convergence rate bound is given. We analyze the conjugate gradient (CG) method with variable preconditioning for solving a linear system with a real symmetric positive definite (SPD) matrix of coefficients $A$. We assume that the preconditioner is SPD on each step, and that the condition number of the preconditioned system matrix is bounded above by a constant independent of the step number. We show that the CG method with variable preconditioning under this assumption may not give improvement, compared to the steepest descent (SD) method. We describe the basic theory of CG methods with variable preconditioning with the emphasis on “worst case” scenarios, and provide complete proofs of all facts not available in the literature. We give a new elegant geometric proof of the SD convergence rate bound. Our numerical experiments, comparing the preconditioned SD and CG methods, not only support and illustrate our theoretical findings, but also reveal two surprising and potentially practically important effects. First, we analyze variable preconditioning in the form of inner-outer iterations. In previous such tests, the unpreconditioned CG inner iterations are applied to an artificial system with some fixed preconditioner as a matrix of coefficients. We test a different scenario, where the unpreconditioned CG inner iterations solve linear systems with the original system matrix $A$. We demonstrate that the CG-SD inner-outer iterations perform as well as the CG-CG inner-outer iterations in these tests. Second, we compare the CG methods using a two-grid preconditioning with fixed and randomly chosen coarse grids, and observe that the fixed preconditioner method is twice as slow as the method with random preconditioning.
![PDF] Steepest Descent and Conjugate Gradient Methods with Variable Preconditioning](https://media.springernature.com/lw685/springer-static/image/chp%3A10.1007%2F978-3-030-36468-7_13/MediaObjects/472714_1_En_13_Fig3_HTML.png)
The Conjugate Gradient Method
![PDF] Steepest Descent and Conjugate Gradient Methods with Variable Preconditioning](https://i.stack.imgur.com/qvK0E.png)
Preconditioned congugate gradaient vs Untransfomed preconditioned
![PDF] Steepest Descent and Conjugate Gradient Methods with Variable Preconditioning](https://miro.medium.com/v2/resize:fit:1400/1*-XzvdqP1LApHMRypbxhazA.png)
Descent carefully on a gradient!. In machine learning, gradient
![PDF] Steepest Descent and Conjugate Gradient Methods with Variable Preconditioning](https://media.springernature.com/lw685/springer-static/image/art%3A10.1186%2Fs13660-019-2192-6/MediaObjects/13660_2019_2192_Fig6_HTML.png)
A conjugate gradient algorithm and its application in large-scale
![PDF] Steepest Descent and Conjugate Gradient Methods with Variable Preconditioning](https://indrag49.github.io/Numerical-Optimization/bookdownproj_files/figure-html/unnamed-chunk-10-1.png)
Chapter 5 Conjugate Gradient Methods
![PDF] Steepest Descent and Conjugate Gradient Methods with Variable Preconditioning](https://d3i71xaburhd42.cloudfront.net/6252990076647c9b14e3b1d4ff3ccdafb591a6ff/4-Figure4-1.png)
PDF] Nonsymmetric multigrid preconditioning for conjugate gradient
![PDF] Steepest Descent and Conjugate Gradient Methods with Variable Preconditioning](https://i1.rgstatic.net/publication/2128371_Steepest_Descent_and_Conjugate_Gradient_Methods_with_Variable_Preconditioning/links/54124a4d0cf2fa878ad39ab6/largepreview.png)
PDF) Steepest Descent and Conjugate Gradient Methods with Variable
![PDF] Steepest Descent and Conjugate Gradient Methods with Variable Preconditioning](https://d3i71xaburhd42.cloudfront.net/58140dd819ce6d049571e35c6520d6232f5980e4/6-Figure3-1.png)
PDF] Comparison of steepest descent method and conjugate gradient
![PDF] Steepest Descent and Conjugate Gradient Methods with Variable Preconditioning](https://i.stack.imgur.com/3wHPQ.png)
matrices - How is the preconditioned conjugate gradient algorithm
Recomendado para você
-
Method of steepest descent - Wikipedia18 fevereiro 2025
-
Descent method — Steepest descent and conjugate gradient, by Sophia Yang, Ph.D.18 fevereiro 2025
-
Method of Steepest Descent -- from Wolfram MathWorld18 fevereiro 2025
-
2 The steepest descent method: ) ( ) (k x and ) 2 ( ) ( ) ( k k k e x α18 fevereiro 2025
-
7: An example of steepest descent optimization steps.18 fevereiro 2025
-
Gradient Descent in Machine Learning: Optimized Algorithm18 fevereiro 2025
-
python - Steepest Descent Trace Behavior - Stack Overflow18 fevereiro 2025
-
Steepest Descent and Newton's Method in Python, from Scratch: A… – Towards AI18 fevereiro 2025
-
Steepest descent method in sc18 fevereiro 2025
-
Gradient Descent in Machine Learning - Javatpoint18 fevereiro 2025
você pode gostar
-
Pokemon Yellow Cheats - GameShark Codes For GBC18 fevereiro 2025
-
Isekai Yakkyoku - Episode 1 vostfr - ADKami18 fevereiro 2025
-
Vetores de Chama De Desenho Animado Fundo De Fogo Ilustração Vetorial e mais imagens de Condimento - Temperos - iStock18 fevereiro 2025
-
Cursed Dual Cutlass18 fevereiro 2025
-
Como comprar roupas e personagens na loja de Street Fighter 518 fevereiro 2025
-
Fardania (Isekai Shokudou) - Pictures18 fevereiro 2025
-
Design PNG E SVG De Cavalo Pulando Elegante Preto Para Camisetas18 fevereiro 2025
-
The King of Fighters: Awaken CG Movie Dives Into the Orochi Saga18 fevereiro 2025
-
Jacob Zuma sought to hand state assets to allies, finds corruption18 fevereiro 2025
-
Record of Ragnarok manga18 fevereiro 2025