Differentiable implementation of EML trees (arXiv 2603.21852) as trainable PyTorch modules for symbolic regression. Demonstrates recovery of 7/7 elementary functions with ≤24 parameters via gradient descent on a single universal operator. Includes hierarchical training for depth 4+, symbolic decompilation, and honest baselines against PySR and MLP.
Jesús Tabares Montilla (Wed,) studied this question.