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Expert-augmented machine learning
2020
Proceedings of the National Academy of Sciences of the United States of America
Machine learning is proving invaluable across disciplines. However, its success is often limited by the quality and quantity of available data, while its adoption is limited by the level of trust afforded by given models. Human vs. machine performance is commonly compared empirically to decide whether a certain task should be performed by a computer or an expert. In reality, the optimal learning strategy may involve combining the complementary strengths of humans and machines. Here, we present
doi:10.1073/pnas.1906831117
pmid:32071251
fatcat:yovbwu3vznfy5ppdea4puqndgy