Statistics Department Seminar Series: David Hogg, Professor of Physics and Data Science, Center for Cosmology and Particle Physics, Department of Physics, New York University
"Is machine learning good or bad for science?"
Abstract: Machine learning (ML) methods are having a huge impact across all of the sciences. However, ML has a strong ontology - in which only the data exist - and a strong epistemology - in which a model is considered good if it performs well on held-out training data. These philosophies are in strong conflict with both standard practices and key philosophies in the natural sciences. I identify some locations for ML in the natural sciences at which the ontology and epistemology are valuable. I also show that there are contexts in which the introduction of ML introduces strong, unwanted statistical biases. My partial answers I provide (to the question in my title) come from the particular perspective of physics.
Work in collaboration with Soledad Villar at JHU.
https://cosmo.nyu.edu/hogg/
Work in collaboration with Soledad Villar at JHU.
https://cosmo.nyu.edu/hogg/
Building: | West Hall |
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Website: | |
Event Type: | Workshop / Seminar |
Tags: | seminar |
Source: | Happening @ Michigan from Department of Statistics, Department of Statistics Seminar Series |