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TMLR 2022

Linear algebra with transformers

Journal Article Articles Artificial Intelligence ยท Machine Learning

Abstract

Transformers can learn to perform numerical computations from examples only. I study nine problems of linear algebra, from basic matrix operations to eigenvalue decomposition and inversion, and introduce and discuss four encoding schemes to represent real numbers. On all problems, transformers trained on sets of random matrices achieve high accuracies (over 90\%). The models are robust to noise, and can generalize out of their training distribution. In particular, models trained to predict Laplace-distributed eigenvalues generalize to different classes of matrices: Wigner matrices or matrices with positive eigenvalues. The reverse is not true.

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Context

Venue
Transactions on Machine Learning Research
Archive span
2022-2026
Indexed papers
3849
Paper id
780313014072155645