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Deep Symbolic Optimization

Deep Symbolic Optimization (DSO) is a deep learning framework for symbolic optimization tasks. The package dso includes the core symbolic optimization algorithms, as well as support for two particular symbolic optimization tasks: (1) symbolic regression (recovering tractable mathematical expressions from an input dataset) and (2) discovering symbolic policies for reinforcement learning environments. In the code, these tasks are referred to as regression and control, respectively. We also include a simple interface for defining new tasks.

On symbolic regression, DSO was benchmarked against the SRBench benchmark set and achieves state-of-the-art in both symbolic solution rate and accuracy solution rate:

DSO also won 1st place in the Real-World Track of the 2022 SRBench Symbolic Regression Competition held at the GECCO 2022 conference.

This repository contains code supporting the following publications:

  1. Petersen et al. 2021 Deep symbolic regression: Recovering mathematical expressions from data via risk-seeking policy gradients. ICLR 2021. Oral Paper
  2. Landajuela et al. 2021 Discovering symbolic policies with deep reinforcement learning. ICML 2021. Paper
  3. Mundhenk et al. 2021 Symbolic Regression via Neural-Guided Genetic Programming Population Seeding. NeurIPS 2021 Paper
  4. Landajuela et al. 2022 A Unified Framework for Deep Symbolic Regression. NeurIPS 2022 Paper
  5. Landajuela et al. 2021 Improving exploration in policy gradient search: Application to symbolic optimization. Math-AI @ ICLR 2021. Paper
  6. Kim et al. 2020 An interactive visualization platform for deep symbolic regression. IJCAI 2020. Paper
  7. Petersen et al. 2021 Incorporating domain knowledge into neural-guided search via in situ priors and constraints AutoML @ ICML 2021. Paper
  8. Kim et al. 2021 Distilling Wikipedia mathematical knowledge into neural network models. Math-AI @ ICLR 2021. Paper
  9. Silva et al. 2022 Leveraging Language Models to Efficiently Learn Symbolic Optimization Solutions ALA Workshop 2022. Paper
  10. Glatt et al. 2022 Deep Symbolic Optimization for Electric Component Sizing in Fixed Topology Power Converters AI for Design and Manufacturing (ADAM) @ AAAI 2022. Paper

Installation

Installation - Core package

The core package has been tested on Python3.6+ on Unix and OSX. To install the core package (and the default regression task), we highly recommend first creating a Python 3 virtual environment, e.g.,

python3 -m venv venv3 # Create a Python 3 virtual environment
source venv3/bin/activate # Activate the virtual environment

Then, from the repository root:

pip install --upgrade setuptools pip
export CFLAGS="-I $(python -c "import numpy; print(numpy.get_include())") $CFLAGS" # Needed on Mac to prevent fatal error: 'numpy/arrayobject.h' file not found
pip install -e ./dso # Install DSO package and core dependencies

The regression task is installed by default. It doesn't require any of the installation options below.

Installation - control task

There are a few additional dependencies to run the control task. Install them using:

pip install -e ./dso[control]

Installation - all tasks

To install all dependencies for all tasks, use the all option:

pip install -e ./dso[all]

Getting started

DSO relies on configuring runs via a JSON file, then launching them via a simple command-line or a few lines of Python.

Method 1: Running DSO via command-line interface

After creating your config file, simply run:

python -m dso.run path/to/config.json

After training, results are saved to a timestamped directory in the path given in the "logdir" parameter (default ./log).

Method 2: Running DSO via Python interface

The Python interface lets users instantiate and customize DSO models via Python scripts, an interactive Python shell, or an iPython notebook. The core DSO model is dso.core.DeepSymbolicOptimizer. After creating your config file, you can use:

from dso import DeepSymbolicOptimizer

# Create and train the model
model = DeepSymbolicOptimizer("path/to/config.json")
model.train()

After training, results are saved to a timestamped directory in the path given in config["training"]["logdir"] (default ./log).

Configuring runs

A single JSON file is used to configure each run. This file specifies the symbolic optimization task and all hyperparameters.

Each configuration JSON file has a number of top-level keys that control various parts of the DSO framework. The important top-level keys are:

  • "experiment" configures the experiment, namely the log directory and random number seed.
  • "task" configures the task, e.g., the dataset for symbolic regression, or the Gym environment for the control task. See below for task-specific configuration.
  • "logging" configures the output files for the execution of the algorithm, such as "save_all_iterations" to save detailed statistics for every iteration.
  • "training" configures training hyperparameters like "n_samples" (the total number of samples to generate) and "epsilon" (the risk factor used by the risk-seeking policy gradient).
  • "policy" configures policy hyperparameters like "max_length" and "num_layers".
  • "policy_optimizer" configures policy optimization hyperparameters like "learning_rate" and "optimizer".
  • "gp_meld" configures genetic programming hyperparameters.
  • "prior" configures the priors and constraints on the search space.

Any parameters not included in your config file assume default values found in config/config_common.json, config/config_regression.json (for regression runs), and config/config_control.json (for control runs).

Configuring runs for symbolic regression

Here are simple example contents of a JSON file for the regression task:

{
  "task" : {
    "task_type" : "regression",
    "dataset" : "path/to/my_dataset.csv",
    "function_set" : ["add", "sub", "mul", "div", "sin", "cos", "exp", "log", "poly"]
  }
}

This configures DSO to learn symbolic expressions to fit your custom dataset, using the tokens specified in function_set (see dso/functions.py for a list of supported tokens).

You can test symbolic regression out of the box with a default configuration, after running setup, with a command such as:

python -m dso.run dso/config/config_regression.json --b Nguyen-7

This will run DSO on the regression task with benchmark Nguyen-7.

If you want to include optimized floating-point constants in the search space, simply include "const" in the function_set list. Note that constant optimization uses an inner-optimization loop, which leads to much longer runtimes (~hours instead of ~minutes).

If you want to include the powerful LINEAR token (called poly in the code)--introduced in the unified deep symbolic regression (uDSR) NeurIPS 2022 paper--in the search space, simply include "poly" in the function_set list. Polynomial optimization adds a bit of overhead, but not nearly as much as the const token; thus, we highly recommend this token for most applications.

You can further configure the LINEAR/poly token by adjusting the poly_optimizer_params in the config, for example:

{
  "task" : {
    "task_type" : "regression",
    "dataset" : "path/to/my_dataset.csv",
    "function_set" : ["add", "sub", "mul", "div", "sin", "cos", "exp", "log", "poly"]
    "poly_optimizer_params" : {
      "degree": 3,
      "coef_tol": 1e-6,
      "regressor": "dso_least_squares"
      "regressor_params": {}
    }
  }
}

Within poly_optimizer_params, degree specifies the degree of the polynomials to be fit, coef_tol is a threshold value used to remove terms with sufficiently small coefficients, and regressor is the underlying regressor used to learn the polynomial coefficients. The default regressor is our in-house implementation of least squares called dso_least_squares, which optimizes the fitting process during the expression-learning loop. Other than dso_least_squares, we also support sklearn regressors linear_regression, lasso, and ridge. Depending on the regressor, parameters can be configured through regressor_params.

Configuring runs for learning symbolic control policies

Here's a simple example for the control task:

{
  "task" : {
    "task_type" : "control",
    "env" : "MountainCarContinuous-v0",
    "function_set" : ["add", "sub", "mul", "div", "sin", "cos", "exp", "log", 1.0, 5.0, 10.0]
  }
}

This configures DSO to learn a symbolic policy for MountainCarContinuous-v0, using the tokens specified in function_set (see dso/functions.py for a list of supported tokens).

For environments with multi-dimensional action spaces, DSO requires a pre-trained "anchor" policy. DSO is run once per action dimension, and the "action_spec" parameter is updated each run. For an environment with N action dimesions, "action_spec" is a list of length N. A single element should be null, meaning that is the symbolic action to be learned. Any number of elements can be "anchor", meaning the anchor policy will determine those actions. Any number of elements can be expression traversals (e.g., ["add", "x1", "x2"]), meaning that fixed symbolic policy will determine those actions.

Here's an example workflow for HopperBulletEnv-v0, which has three action dimensions. First, learn a symbolic policy for the first action by running DSO with a config like:

{
  "task" : {
    "task_type" : "control",
    "name" : "HopperBulletEnv-v0",
    "function_set" : ["add", "sub", "mul", "div", "sin", "cos", "exp", "log", 1.0, 5.0, 10.0],
    "action_spec" : [null, "anchor", "anchor"],
    "anchor" : "path/to/anchor.pkl"
  }
}

where "path/to/anchor.pkl" is a path to a stable_baselines model. (The environments used in the ICML paper have default values for anchor, so you do not have to specify one.) After running, let's say the best expression has traversal ["add", "x1", "x2"]. To launch the second round of DSO, update the config's action_spec to use the fixed symbolic policy for the first action, learn a symbolic policy for the second action, and use the anchor again for the third action:

"action_spec" : [["add", "x1", "x2"], null, "anchor"]

After running DSO, say the second action's traversal is ["div", "x3", "x4"]. Finally, update the action_spec to:

"action_spec" : [["add", "x1", "x2"], ["div", "x3", "x4"], null]

and rerun DSO. The final result is a fully symbolic policy.

Configuring runs for learning decision tree policies

DSO can also be configured to learn a decision tree policy. This is done by specifying decision_tree_threshold_set in "task", which is a set of thresholds on the values of state variables when making a decision. In particular, for each threshold tj in decision_tree_threshold_set, StateChecker tokens xi < tj for all state variables xi will be added to the Library.

For example, for MountainCarContinuous-v0, here is an example config:

{
  "task" : {
    "task_type" : "control",
    "env" : "MountainCarContinuous-v0",
    "function_set" : ["add", "sub", "mul", "div", "sin", "cos", "exp", "log", 1.0, 5.0, 10.0]
    "decision_tree_threshold_set" : [-0.05, 0.0, 0.01]
  }
}

Other than the functions specified in function_set, this will also add x1 < -0.05, x1 < 0.0, x1 < 0.01, x2 < -0.05, x2 < 0.0, and x2 < 0.01 to the Library because MountainCarContinuous-v0 has two state variables. With these StateChecker tokens, decision tree policies like "if x1 < -0.05 and x2 < 0.0, the action is exp(x1) + 1.0; otherwise, the action is sin(10 * x2)" can be sampled.

Using the Neural-Guided Genetic Programming Population Seeding Controller

To include the genetic programming inner-loop optimizer introduced in NeurIPS 2021, insert a field in your config for "gp_meld". You can play with the different parameters. The most important part is to set "run_gp_meld" to true.

{
  "gp_meld" : {
    "run_gp_meld" : true,
    "verbose" : false,
    "generations" : 20,
    "p_crossover" : 0.5,
    "p_mutate" : 0.5,
    "tournament_size" : 5,
    "train_n" : 50,
    "mutate_tree_max" : 3,
    "parallel_eval" : true
  }
}

Sklearn interface

The regression task supports an additional sklearn-like regressor interface to make it easy to try out deep symbolic regression on your own data:

from dso import DeepSymbolicRegressor

# Generate some data
np.random.seed(0)
X = np.random.random((10, 2))
y = np.sin(X[:,0]) + X[:,1] ** 2

# Create the model
model = DeepSymbolicRegressor() # Alternatively, you can pass in your own config JSON path

# Fit the model
model.fit(X, y) # Should solve in ~10 seconds

# View the best expression
print(model.program_.pretty())

# Make predictions
model.predict(2 * X)

Analyzing results

Each run of DSO saves a timestamped log directory in config["training"]["logdir"]. Inside this directory is:

  • dso_ExperimentName_0.csv: This file contains batch-wise summary statistics for each epoch. The suffix _0 means the random number seed was 0. (See "Advanced usage" for batch runs with multiple seeds.)
  • dso_ExperimnetName_0_summary.csv: This file contains summary statistics for the entire training run.
  • dso_ExperimnetName_0_hof.csv: This file contains statistics of the "hall of fame" (best sequences discovered during training). Edit `config["training"]["hof"] to set the number of hall-of-famers to record.
  • dso_ExperimnetName_0_pf.csv: This file contains statistics of the Pareto front of sequences discovered during training. This is a reward-complexity front.
  • config.json: This is a "dense" version of the configuration used for your run. It explicitly includes all parameters.

Advanced usage

Batch runs

DSO's command-line interface supports a multiprocessing-parallelized batch mode to run multiple tasks in parallel. This is recommended for large runs. Batch-mode DSO is launched with:

python -m dso.run path/to/config.json [--runs] [--n_cores_task] [--b] [--seed]

The option --runs (default 1) defines how many independent tasks (with different random number seeds) to perform. The regression task is computationally expedient enough to run multiple tasks in parallel. For the control task, we recommend running with the default --runs=1.

The option --n_cores_task (default 1) defines how many parallel processes to use across the --runs tasks. Each task is assigned a single core, so --n_cores_task should be less than or equal to --runs. (To use multiple cores within a single task, i.e., to parallelize reward computation, see the n_cores_batch configuration parameter.)

The option --seed, if provided, will override the parameter "seed" in your config.

By default, DSO will use the task specification found in the configuration JSON. The option --b (default None) is used to specify the named task(s) via command-line. For example, --b=path/to/mydata.csv runs DSO on the given dataset (regression task), and --b=MountainCarContinuous-v0 runs the environment MountainCarContinuous-v0 (control task). This is useful for running benchmark problems.

For example, to train 100 independent runs on the Nguyen-1 benchmark using 12 cores, using seeds 500 through 599:

python -m dso.run --b=Nguyen-1 --runs=100 --n_cores_task=12 --seed=500

Adding custom tasks and priors

DSO supports adding custom tasks and priors from your own modules.

To add new tasks, the task_type keyword in the config file can be used in the following format: <module>.<source>:<function> specifying the source implementing a make_task function.

For example:

{
  "task" : {
    "task_type" : "custom_mod.my_source:make_task"
  }
}

Similarly, new priors can be added by specifying the source where the Prior class can be found in the prior group of the config file.

For example:

 "prior": {
      "uniform_arity" : {
         "on" : true
      },
      "custom_mod.my_source:CustomPrior" : {
         "loc" : 10,
         "scale" : 5,
         "on" : true
      }
  }

Policy optimizers

DSO supports a variety of policy optimizers based the following objective structure:

$$J(\theta) = \sum_{i=1}^N J(\tau; \theta) \text{ with } J(\tau; \theta) \propto \log(p(\tau|\theta)).$$

The objective can be specified by overriding the _set_up method of PolicyOptimizer. Current DSO supports the following policy optimizers:

Policy gradient optimizers

Given a batch $\mathcal{T} = {\tau^{(i)}}_{i=1}^N$ of designs such that $\tau^{(i)} \sim p( \cdot | \theta)\ \forall 1 \leq i \leq N$:

$$\nabla_\theta J_\textrm{pg}(\theta; \varepsilon) \approx \frac{1}{\varepsilon N}\sum_{i=1}^N \left( R(\tau^{(i)}) - b \right) \cdot \mathbf{1}_{R(\tau^{(i)}) \geq \tilde{R}_\varepsilon(\theta) } \nabla_\theta \log p(\tau^{(i)} | \theta)$$

where

$$\tilde{R}_\varepsilon(\theta) = \textrm{Q}_{1-\varepsilon}(\mathcal{T} )$$

(the empirical quantile).

Vanilla policy gradient

We take:

$$b = \textrm{EWMA}_n \text{ with } \textrm{EWMA}(n) = \alpha \bar{R} + (1 - \alpha) \textrm{EWMA}_{n-1} \text{ and }\bar{R} = \frac{1}{N} \sum_{i=1}^N R(\tau)$$ $$\varepsilon = 1.0$$

Configuration:

   training.epsilon: 1.0,
   training.baseline : "ewma_R",
   policy_optimizer.policy_optimizer_type : "pg"

Risk-seeking policy gradient

$$b = \tilde{R}_\varepsilon(\theta)$$ $$\varepsilon = 0.05$$

Configuration:

   training.epsilon: 0.05,
   training.baseline : "R_e",
   policy_optimizer.policy_optimizer_type : "pg"

Priority queue training

Given a maximum reward priority queue (MRPQ):

$$\nabla_\theta J_\textrm{MRPQ}(\theta)= \frac{1}{k}\sum_{\tau\in\textrm{MRPQ}}\nabla_\theta \log p(\tau|\theta)$$

Proximal policy optimization

Given a batch $\mathcal{T} = {\tau^{(i)}}_{i=1}^N$ of designs such that $\tau^{(i)} \sim p( \cdot | \theta) \forall i$:

For $1=1,\dots,K$ do:

$$\theta \leftarrow \theta + \alpha \nabla J_{\text{PPO}}$$

with

$$J_{\text{PPO}} (\theta) =\mathbb{E}_{\tau \sim \mathcal{T}} [ \min (r(\theta) (R(\tau) - b), \text{clip}(r(\theta), 1-\epsilon, 1 + \epsilon) (R(\tau ) - b) ]$$

Code dependency map

The map of core dependencies is depicted here.

Citing this work

To cite this work, please cite the papers according to the most relevant tasks and/or methods.

To cite the regression task, please use:

@inproceedings{petersen2021deep,
  title={Deep symbolic regression: Recovering mathematical expressions from data via risk-seeking policy gradients},
  author={Petersen, Brenden K and Landajuela, Mikel and Mundhenk, T Nathan and Santiago, Claudio P and Kim, Soo K and Kim, Joanne T},
  booktitle={Proc. of the International Conference on Learning Representations},
  year={2021}
}

To cite the control task, please use:

@inproceedings{landajuela2021discovering,
  title={Discovering symbolic policies with deep reinforcement learning},
  author={Landajuela, Mikel and Petersen, Brenden K and Kim, Sookyung and Santiago, Claudio P and Glatt, Ruben and Mundhenk, Nathan and Pettit, Jacob F and Faissol, Daniel},
  booktitle={International Conference on Machine Learning},
  pages={5979--5989},
  year={2021},
  organization={PMLR}
}

To cite the neural-guided genetic programming population seeding method, please use:

@inproceedings{mundhenk2021seeding,
  title={Symbolic Regression via Neural-Guided Genetic Programming Population Seeding},
  author={T. Nathan Mundhenk and Mikel Landajuela and Ruben Glatt and Claudio P. Santiago and Daniel M. Faissol and Brenden K. Petersen},
  booktitle={Advances in Neural Information Processing Systems},
  year={2021}
}

To cite the unified deep symbolic regression (uDSR) method or the LINEAR/poly token, please use:

@inproceedings{landajuela2022unified,
title={A Unified Framework for Deep Symbolic Regression},
  author={Mikel Landajuela and Chak Lee and Jiachen Yang and Ruben Glatt and Claudio P. Santiago and Ignacio Aravena and Terrell N. Mundhenk and Garrett Mulcahy and Brenden K. Petersen},
  booktitle={Advances in Neural Information Processing Systems},
  year={2022}
}

Release

LLNL-CODE-647188