Skip to content

Latest commit

 

History

History
30 lines (20 loc) · 2.63 KB

File metadata and controls

30 lines (20 loc) · 2.63 KB

Deep Generative Symbolic Regression (Code)

This repository is the official implementation of the paper Deep Generative Symbolic Regression.

  1. Run/Follow steps in install.sh.
  2. Download the baseline pre-trained models for NeuralSymbolicRegressionThatScales from https://github.com/SymposiumOrganization/NeuralSymbolicRegressionThatScales and put them into the folder models/nesymres_pre_train.
  3. Replicate experimental results by running and configuring run_recovery_multi.py.
  4. Process the output log file using process_logs.py by updating the LOG_PATH variable to point to the recently generated log file.

Configuring experiments:

The simplest way to configure the experiments is to modify the following parameters at the top of run_recovery_multi.py

conf.exp.seed_runs = 40
conf.exp.n_cores_task = 1  # 7 if GPU memory is at least 24GB, else tune to be smaller
conf.exp.seed_start = 0
conf.exp.baselines = ["DGSR-PRE-TRAINED", "NGGP", "NESYMRES", "GP"]
# User must specify the benchmark to run:
conf.exp.benchmark = "fn_d_2"  # Possible values ["fn_d_2", "fn_d_5", "l_cd_12", ""fn_d_all"]

The final parameter conf.exp.benchmark is the most important, as it corresponds to which benchmark experiment is to be run. Select one of the possible values specified in the comment.

Re-training the models for a new dataset or equation class of new input variables of token set library:

First configure and then run the file run_pretrain.py. This file is used to pre-train the DGSR model for a specific dataset that uses a specific number of input variables (covariates) as defined by the test dataset equation selected. This will train the model essentially forever, and continually saves the model during training. After a period of 4-5 hours, the model performance loss will plateau. The user will need to then manually stop the training process, and copy the saved model (controller.pt) and model configuration file (config.json) from the log directory (./log/{$RUN}, where $RUN is a folder name that includes the trained dataset and date as a string) to the pre-trained models directory (./models/dgsr_pre-train/), and then update the path to load when testing in run_recovery_multi.py in the dict COVARS_TO_PRE_TRAINED_MODEL.