Deep Learning Interpretability with Symbolic Regression.
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Project description
InterpretSR allows you to approximate the behaviour of multi-layer perceptrons (MLPs) in deep learning models with symbolic equations using PySR.
Installation
pip install interpretsr
Documentation
Full documentation is available at ReadTheDocs.
License
MIT License
Project details
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