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# PySR.jl | |
[![DOI](https://zenodo.org/badge/295391759.svg)](https://zenodo.org/badge/latestdoi/295391759) | |
[![PyPI version](https://badge.fury.io/py/pysr.svg)](https://badge.fury.io/py/pysr) | |
[![Build Status](https://travis-ci.com/MilesCranmer/PySR.svg?branch=master)](https://travis-ci.com/MilesCranmer/PySR) | |
**Symbolic regression built on Julia, and interfaced by Python. | |
Uses regularized evolution, simulated annealing, and gradient-free optimization.** | |
Symbolic regression is a very interpretable machine learning algorithm | |
for low-dimensional problems: these tools search equation space | |
to find algebraic relations that approximate a dataset. | |
One can also | |
extend these approaches to higher-dimensional | |
spaces by using a neural network as proxy, as explained in | |
https://arxiv.org/abs/2006.11287, where we apply | |
it to N-body problems. Here, one essentially uses | |
symbolic regression to convert a neural net | |
to an analytic equation. Thus, these tools simultaneously present | |
an explicit and powerful way to interpret deep models. | |
*Backstory:* | |
Previously, we have used | |
[eureqa](https://www.creativemachineslab.com/eureqa.html), | |
which is a very efficient and user-friendly tool. However, | |
eureqa is GUI-only, doesn't allow for user-defined | |
operators, has no distributed capabilities, | |
and has become proprietary (and recently been merged into an online | |
service). Thus, the goal | |
of this package is to have an open-source symbolic regression tool | |
as efficient as eureqa, while also exposing a configurable | |
python interface. | |
# Installation | |
Install Julia - see [downloads](https://julialang.org/downloads/), and | |
then instructions for [mac](https://julialang.org/downloads/platform/#macos) | |
and [linux](https://julialang.org/downloads/platform/#linux_and_freebsd). | |
Then, at the command line, | |
install the `Optim` and `SpecialFunctions` packages via: | |
```bash | |
julia -e 'import Pkg; Pkg.add("Optim"); Pkg.add("SpecialFunctions")' | |
``` | |
For python, you need to have Python 3, numpy, sympy, and pandas installed. | |
You can install this package from PyPI with: | |
```bash | |
pip install pysr | |
``` | |
# Quickstart | |
```python | |
import numpy as np | |
from pysr import pysr | |
# Dataset | |
X = 2*np.random.randn(100, 5) | |
y = 2*np.cos(X[:, 3]) + X[:, 0]**2 - 2 | |
# Learn equations | |
equations = pysr(X, y, niterations=5, | |
binary_operators=["plus", "mult"], | |
unary_operators=["cos", "exp", "sin"]) | |
... | |
print(equations) | |
``` | |
which gives: | |
``` | |
Complexity MSE Equation | |
0 5 1.947431 plus(-1.7420927, mult(x0, x0)) | |
1 8 0.486858 plus(-1.8710494, plus(cos(x3), mult(x0, x0))) | |
2 11 0.000000 plus(plus(mult(x0, x0), cos(x3)), plus(-2.0, cos(x3))) | |
``` | |
The newest version of PySR also returns three additional columns: | |
- `score` - a metric akin to Occam's razor; you should use this to help select the "true" equation. | |
- `sympy_format` - sympy equation. | |
- `lambda_format` - a lambda function for that equation, that you can pass values through. | |
### Custom operators | |
One can define custom operators in Julia by passing a string: | |
```python | |
equations = pysr.pysr(X, y, niterations=100, | |
binary_operators=["mult", "plus", "special(x, y) = x^2 + y"], | |
extra_sympy_mappings={'special': lambda x, y: x**2 + y}, | |
unary_operators=["cos"]) | |
``` | |
Now, the symbolic regression code can search using this `special` function | |
that squares its left argument and adds it to its right. Make sure | |
all passed functions are valid Julia code, and take one (unary) | |
or two (binary) float32 scalars as input, and output a float32. Operators | |
are automatically vectorized. | |
We also define `extra_sympy_mappings`, | |
so that the SymPy code can understand the output equation from Julia, | |
when constructing a useable function. This step is optional, but | |
is necessary for the `lambda_format` to work. | |
One can also edit `operators.jl`. See below for more options. | |
### Weighted data | |
Here, we assign weights to each row of data | |
using inverse uncertainty squared. We also use 10 processes | |
instead of the usual 4, which creates more populations | |
(one population per thread). | |
```python | |
sigma = ... | |
weights = 1/sigma**2 | |
equations = pysr.pysr(X, y, weights=weights, procs=10) | |
``` | |
# Operators | |
All Base julia operators that take 1 or 2 float32 as input, | |
and output a float32 as output, are available. A selection | |
of these and other valid operators are stated below. You can also | |
define your own in `operators.jl`, and pass the function | |
name as a string. | |
Your operator should work with the entire real line (you can use | |
abs(x) - see `logm`); otherwise | |
the search code will be slowed down with domain errors. | |
**Binary** | |
`plus`, `mult`, `pow`, `div`, `greater`, `mod`, `beta`, `logical_or`, | |
`logical_and` | |
**Unary** | |
`neg`, | |
`exp`, | |
`abs`, | |
`logm` (=log(abs(x) + 1e-8)), | |
`logm10` (=log10(abs(x) + 1e-8)), | |
`logm2` (=log2(abs(x) + 1e-8)), | |
`sqrtm` (=sqrt(abs(x))) | |
`log1p`, | |
`sin`, | |
`cos`, | |
`tan`, | |
`sinh`, | |
`cosh`, | |
`tanh`, | |
`asin`, | |
`acos`, | |
`atan`, | |
`asinh`, | |
`acosh`, | |
`atanh`, | |
`erf`, | |
`erfc`, | |
`gamma`, | |
`relu`, | |
`round`, | |
`floor`, | |
`ceil`, | |
`round`, | |
`sign`. | |
# Full API | |
What follows is the API reference for running the numpy interface. | |
You likely don't need to tune the hyperparameters yourself, | |
but if you would like, you can use `hyperparamopt.py` as an example. | |
However, you should adjust `procs`, `niterations`, | |
`binary_operators`, `unary_operators`, and `maxsize` | |
to your requirements. | |
The program will output a pandas DataFrame containing the equations, | |
mean square error, and complexity. It will also dump to a csv | |
at the end of every iteration, | |
which is `hall_of_fame.csv` by default. It also prints the | |
equations to stdout. | |
```python | |
pysr(X=None, y=None, weights=None, procs=4, niterations=100, ncyclesperiteration=300, binary_operators=["plus", "mult"], unary_operators=["cos", "exp", "sin"], alpha=0.1, annealing=True, fractionReplaced=0.10, fractionReplacedHof=0.10, npop=1000, parsimony=1e-4, migration=True, hofMigration=True, shouldOptimizeConstants=True, topn=10, weightAddNode=1, weightInsertNode=3, weightDeleteNode=3, weightDoNothing=1, weightMutateConstant=10, weightMutateOperator=1, weightRandomize=1, weightSimplify=0.01, perturbationFactor=1.0, nrestarts=3, timeout=None, equation_file='hall_of_fame.csv', test='simple1', verbosity=1e9, maxsize=20) | |
``` | |
Run symbolic regression to fit f(X[i, :]) ~ y[i] for all i. | |
**Arguments**: | |
- `X`: np.ndarray, 2D array. Rows are examples, columns are features. | |
- `y`: np.ndarray, 1D array. Rows are examples. | |
- `weights`: np.ndarray, 1D array. Same shape as `y`. Optional weighted sum (e.g., 1/error^2). | |
- `procs`: int, Number of processes running (=number of populations running). | |
- `niterations`: int, Number of iterations of the algorithm to run. The best | |
equations are printed, and migrate between populations, at the | |
end of each. | |
- `ncyclesperiteration`: int, Number of total mutations to run, per 10 | |
samples of the population, per iteration. | |
- `binary_operators`: list, List of strings giving the binary operators | |
in Julia's Base, or in `operator.jl`. | |
- `unary_operators`: list, Same but for operators taking a single `Float32`. | |
- `alpha`: float, Initial temperature. | |
- `annealing`: bool, Whether to use annealing. You should (and it is default). | |
- `fractionReplaced`: float, How much of population to replace with migrating | |
equations from other populations. | |
- `fractionReplacedHof`: float, How much of population to replace with migrating | |
equations from hall of fame. | |
- `npop`: int, Number of individuals in each population | |
- `parsimony`: float, Multiplicative factor for how much to punish complexity. | |
- `migration`: bool, Whether to migrate. | |
- `hofMigration`: bool, Whether to have the hall of fame migrate. | |
- `shouldOptimizeConstants`: bool, Whether to numerically optimize | |
constants (Nelder-Mead/Newton) at the end of each iteration. | |
- `topn`: int, How many top individuals migrate from each population. | |
- `nrestarts`: int, Number of times to restart the constant optimizer | |
- `perturbationFactor`: float, Constants are perturbed by a max | |
factor of (perturbationFactor\*T + 1). Either multiplied by this | |
or divided by this. | |
- `weightAddNode`: float, Relative likelihood for mutation to add a node | |
- `weightInsertNode`: float, Relative likelihood for mutation to insert a node | |
- `weightDeleteNode`: float, Relative likelihood for mutation to delete a node | |
- `weightDoNothing`: float, Relative likelihood for mutation to leave the individual | |
- `weightMutateConstant`: float, Relative likelihood for mutation to change | |
the constant slightly in a random direction. | |
- `weightMutateOperator`: float, Relative likelihood for mutation to swap | |
an operator. | |
- `weightRandomize`: float, Relative likelihood for mutation to completely | |
delete and then randomly generate the equation | |
- `weightSimplify`: float, Relative likelihood for mutation to simplify | |
constant parts by evaluation | |
- `timeout`: float, Time in seconds to timeout search | |
- `equation_file`: str, Where to save the files (.csv separated by |) | |
- `test`: str, What test to run, if X,y not passed. | |
- `maxsize`: int, Max size of an equation. | |
**Returns**: | |
pd.DataFrame, Results dataframe, giving complexity, MSE, and equations | |
(as strings). | |
# TODO | |
- [x] Async threading, and have a server of equations. So that threads aren't waiting for others to finish. | |
- [x] Print out speed of equation evaluation over time. Measure time it takes per cycle | |
- [x] Add ability to pass an operator as an anonymous function string. E.g., `binary_operators=["g(x, y) = x+y"]`. | |
- [x] Add error bar capability (thanks Johannes Buchner for suggestion) | |
- [x] Why don't the constants continually change? It should optimize them every time the equation appears. | |
- Restart the optimizer to help with this. | |
- [x] Add several common unary and binary operators; list these. | |
- [x] Try other initial conditions for optimizer | |
- [x] Make scaling of changes to constant a hyperparameter | |
- [x] Make deletion op join deleted subtree to parent | |
- [x] Update hall of fame every iteration? | |
- Seems to overfit early if we do this. | |
- [x] Consider adding mutation to pass an operator in through a new binary operator (e.g., exp(x3)->plus(exp(x3), ...)) | |
- (Added full insertion operator | |
- [x] Add a node at the top of a tree | |
- [x] Insert a node at the top of a subtree | |
- [x] Record very best individual in each population, and return at end. | |
- [x] Write our own tree copy operation; deepcopy() is the slowest operation by far. | |
- [x] Hyperparameter tune | |
- [x] Create a benchmark for accuracy | |
- [x] Add interface for either defining an operation to learn, or loading in arbitrary dataset. | |
- Could just write out the dataset in julia, or load it. | |
- [x] Create a Python interface | |
- [x] Explicit constant optimization on hall-of-fame | |
- Create method to find and return all constants, from left to right | |
- Create method to find and set all constants, in same order | |
- Pull up some optimization algorithm and add it. Keep the package small! | |
- [x] Create a benchmark for speed | |
- [x] Simplify subtrees with only constants beneath them. Or should I? Maybe randomly simplify sometimes? | |
- [x] Record hall of fame | |
- [x] Optionally (with hyperparameter) migrate the hall of fame, rather than current bests | |
- [x] Test performance of reduced precision integers | |
- No effect | |
- [x] Create struct to pass through all hyperparameters, instead of treating as constants | |
- Make sure doesn't affect performance | |
- [x] Rename package to avoid trademark issues | |
- PySR? | |
- [x] Put on PyPI | |
- [x] Treat baseline as a solution. | |
- [x] Print score alongside MSE: \delta \log(MSE)/\delta \log(complexity) | |
- [x] Calculating the loss function - there is duplicate calculations happening. | |
- [x] Declaration of the weights array every iteration | |
- [x] Sympy evaluation | |
- [x] Threaded recursion | |
- [x] Test suite | |
- [x] Performance: - Use an enum for functions instead of storing them? | |
- Gets ~40% speedup on small test. | |
- [x] Use @fastmath | |
- [x] Try @spawn over each sub-population. Do random sort, compute mutation for each, then replace 10% oldest. | |
- [x] Control max depth, rather than max number of nodes? | |
- [ ] Sort these todo lists by priority | |
## Feature ideas | |
- [ ] Sympy printing | |
- [ ] Hierarchical model, so can re-use functional forms. Output of one equation goes into second equation? | |
- [ ] Call function to read from csv after running | |
- [ ] Add function to plot equations | |
- [ ] Refresh screen rather than dumping to stdout? | |
- [ ] Add ability to save state from python | |
- [ ] Additional degree operators? | |
- [ ] Multi targets (vector ops) | |
- [ ] Tree crossover? I.e., can take as input a part of the same equation, so long as it is the same level or below? | |
- [ ] Consider printing output sorted by score, not by complexity. | |
- [ ] Dump scores alongside MSE to .csv (and return with Pandas). | |
- [ ] Create flexible way of providing "simplification recipes." I.e., plus(plus(T, C), C) => plus(T, +(C, C)). The user could pass these. | |
- [ ] Consider allowing multi-threading turned off, for faster testing (cache issue on travis). Or could simply fix the caching issue there. | |
- [ ] Consider returning only the equation of interest; rather than all equations. | |
## Algorithmic performance ideas: | |
- [ ] Idea: use gradient of equation with respect to each operator (perhaps simply add to each operator) to tell which part is the most "sensitive" to changes. Then, perhaps insert/delete/mutate on that part of the tree? | |
- [ ] Consider adding mutation for constant<->variable | |
- [ ] Implement more parts of the original Eureqa algorithms: https://www.creativemachineslab.com/eureqa.html | |
- [ ] Experiment with freezing parts of model; then we only append/delete at end of tree. | |
- [ ] Use NN to generate weights over all probability distribution conditional on error and existing equation, and train on some randomly-generated equations | |
- [ ] For hierarchical idea: after running some number of iterations, do a search for "most common pattern". Then, turn that subtree into its own operator. | |
- [ ] Calculate feature importances based on features we've already seen, then weight those features up in all random generations. | |
- [ ] Calculate feature importances of future mutations, by looking at correlation between residual of model, and the features. | |
- Store feature importances of future, and periodically update it. | |
- [ ] Punish depth rather than size, as depth really hurts during optimization. | |
## Code performance ideas: | |
- [ ] Try defining a binary tree as an array, rather than a linked list. See https://stackoverflow.com/a/6384714/2689923 | |
- [ ] Add true multi-node processing, with MPI, or just file sharing. Multiple populations per core. | |
- Ongoing in cluster branch | |
- [ ] Performance: try inling things? | |
- [ ] Try storing things like number nodes in a tree; then can iterate instead of counting | |
```julia | |
mutable struct Tree | |
degree::Array{Integer, 1} | |
val::Array{Float32, 1} | |
constant::Array{Bool, 1} | |
op::Array{Integer, 1} | |
Tree(s::Integer) = new(zeros(Integer, s), zeros(Float32, s), zeros(Bool, s), zeros(Integer, s)) | |
end | |
``` | |
- Then, we could even work with trees on the GPU, since they are all pre-allocated arrays. | |
- A population could be a Tree, but with degree 2 on all the degrees. So a slice of population arrays forms a tree. | |
- How many operations can we do via matrix ops? Mutate node=>easy. | |
- Can probably batch and do many operations at once across a population. | |
- Or, across all populations! Mutate operator: index 2D array and set it to random vector? But the indexing might hurt. | |
- The big advantage: can evaluate all new mutated trees at once; as massive matrix operation. | |
- Can control depth, rather than maxsize. Then just pretend all trees are full and same depth. Then we really don't need to care about depth. | |
- [ ] Can we cache calculations, or does the compiler do that? E.g., I should only have to run exp(x0) once; after that it should be read from memory. | |
- Done on caching branch. Currently am finding that this is quiet slow (presumably because memory allocation is the main issue). | |
- [ ] Add GPU capability? | |
- Not sure if possible, as binary trees are the real bottleneck. | |
- Could generate on CPU, evaluate score on GPU? | |