arXiv:2005.03453 [cs.LG]AbstractReferencesReviewsResources
A combination of 'pooling' with a prediction model can reduce by 73% the number of COVID-19 (Corona-virus) tests
Tomer Cohen, Lior Finkelman, Gal Grimberg, Gadi Shenhar, Ofer Strichman, Yonatan Strichman, Stav Yeger
Published 2020-05-03Version 1
We show that combining a prediction model (based on neural networks), with a new method of test pooling (better than the original Dorfman method, and better than double-pooling) called 'Grid', we can reduce the number of Covid-19 tests by 73%.
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