Submitted by bjergerk1ng t3_11542tv in MachineLearning
afireohno t1_j9230xx wrote
There are two lines of work that come to mind you might be interested in.
- Geometric deep learning primarily studies various types of invariances (translation, permutation, etc) that can be encoded in DL architectures.
- Algorithmic alignment studies the relationship between information flow in classical algorithms and DL architectures and how "aligning" the latter to the former can improve performance.
Edit: Spelling
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