Publication | Closed Access
Randomized numerical linear algebra: Foundations and algorithms
273
Citations
198
References
2020
Year
Linear SystemsEngineeringMachine LearningMatrix FactorizationMatrix AnalysisKernel MatricesMathematical FoundationsComputer ScienceMatrix TheoryRandom MatrixRandomized AlgorithmApproximation TheoryLinear Algebraic ComputationsLow-rank Approximation
This survey describes probabilistic algorithms for linear algebraic computations, such as factorizing matrices and solving linear systems. It focuses on techniques that have a proven track record for real-world problems. The paper treats both the theoretical foundations of the subject and practical computational issues. Topics include norm estimation, matrix approximation by sampling, structured and unstructured random embeddings, linear regression problems, low-rank approximation, subspace iteration and Krylov methods, error estimation and adaptivity, interpolatory and CUR factorizations, Nyström approximation of positive semidefinite matrices, single-view (‘streaming’) algorithms, full rank-revealing factorizations, solvers for linear systems, and approximation of kernel matrices that arise in machine learning and in scientific computing.
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