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DDPS | The problem with deep learning for physics (and how to fix it) by Miles Cranmer
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Description: I will present a review of how deep learning is used in physics, and how this use is often misguided. I will introduce the term “scientific debt,” and argue that, though deep learning can quickly solve a complex problem, its success does not come for free. Because most learning techniques are completely opaque in their conclusions, we as a community accumulate scientific debt whenever machine learning is used without an interpretation. Fundamentally, science is about understanding, and when we blindly learn and exploit a pattern in a high-dimensional dataset, we have not gained any new scientific insight; we have avoided the underlying problem and taken on debt, left to some future scientist to repay.
In the second part of the talk, I will outline several methods created by myself and collaborators over the last year to help address these problems which use symbolic regression. I will show how one can derive interpretable analytic relations from trained deep neural networks; this allows us to extract insight from machine learning used in astrophysics and physics. I will conclude by showing several applications by us and others who have implemented our techniques, and how we may gain new insights from such results.
LNL-VIDEO-830564
#DeepLearning #Physics #LLNL
In the second part of the talk, I will outline several methods created by myself and collaborators over the last year to help address these problems which use symbolic regression. I will show how one can derive interpretable analytic relations from trained deep neural networks; this allows us to extract insight from machine learning used in astrophysics and physics. I will conclude by showing several applications by us and others who have implemented our techniques, and how we may gain new insights from such results.
LNL-VIDEO-830564
#DeepLearning #Physics #LLNL