Exploiting Compositional Structure for Automatic and Efficient Numerical Linear Algebra
–Neural Information Processing Systems
Many areas of machine learning and science involve large linear algebra problems, such as eigendecompositions, solving linear systems, computing matrix exponentials, and trace estimation. The matrices involved often have Kronecker, convolutional, block diagonal, sum, or product structure. In this paper, we propose a simple but general framework for large-scale linear algebra problems in machine learning, named CoLA (Compositional Linear Algebra).
Neural Information Processing Systems
Mar-27-2025, 10:33:30 GMT