Feb. 5, 2024, 3:10 p.m. | Steve Nadis | MIT CSAIL

MIT News - Machine learning news.mit.edu

Exploiting the symmetry within datasets, MIT researchers show, can decrease the amount of data needed for training neural networks.

algorithms artificial intelligence computer science and technology data datasets idss machine machine learning mit mit researchers mit schwarzman college of computing networks neural networks research researchers school of engineering show symmetry training

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