Abstract
In this article, we consider the general problem of checking the correctness of matrix multiplication.
Given three
Funding source: National Science Foundation
Award Identifier / Grant number: 1066471
Funding statement: This work is partially supported by National Science Foundation grant 1066471 for Yaohang Li, and Hao Ji acknowledges support from an ODU Modeling and Simulation Fellowship. Michael Mascagni’s contribution to this paper was partially supported by National Institute of Standards and Technology (NIST) during his sabbatical. The mention of any commercial product or service in this paper does not imply an endorsement by NIST or the Department of Commerce.
Acknowledgements
We would like to thank Dr. Stephan Olariu for his valuable suggestions on the manuscript.
References
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© 2020 Walter de Gruyter GmbH, Berlin/Boston
Artikel in diesem Heft
- Frontmatter
- Drift velocity in GaN semiconductors: Monte Carlo simulation and comparison with experimental measurements
- Gaussian variant of Freivalds’ algorithm for efficient and reliable matrix product verification
- An approximate formula for calculating the expectations of functionals from random processes based on using the Wiener chaos expansion
- Implementing de-biased estimators using mixed sequences
- Hidden Markov Model with Markovian emission
- On the density of lines and Santalo’s formula for computing geometric size measures
- Constructing a confidence interval for the ratio of normal distribution quantiles
- Random walk on ellipsoids method for solving elliptic and parabolic equations
Artikel in diesem Heft
- Frontmatter
- Drift velocity in GaN semiconductors: Monte Carlo simulation and comparison with experimental measurements
- Gaussian variant of Freivalds’ algorithm for efficient and reliable matrix product verification
- An approximate formula for calculating the expectations of functionals from random processes based on using the Wiener chaos expansion
- Implementing de-biased estimators using mixed sequences
- Hidden Markov Model with Markovian emission
- On the density of lines and Santalo’s formula for computing geometric size measures
- Constructing a confidence interval for the ratio of normal distribution quantiles
- Random walk on ellipsoids method for solving elliptic and parabolic equations