This repository is cloned from the synthetic
repository . It contains a python implementation of the Generative Network Symbolic Regression algorithm.
💡 For more information regarding the code, please refer to the original repository.
The main novelty brought here is the introduction of deep distances. Graph Representation Learning methods are probed to alleviate the original hand-engineered distance metric.
Within this new framework, the distance between networks is based on their representation in an embedding space resulting from the Graph Representation methods. The distance is computed using a distance metric (eg. euclidian, cosine, Manhattan, etc.) between the corresponding networks' coordinate within the chosen representation space.