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MCMC-SymReg

Bayesian symbolic regression using mcmc sampling.

Paper here: https://arxiv.org/abs/1910.08892

API and Usage

Codes location

codes/BSR.py: API interface of BSR class

codes/bsr_class.py: definition of BSR class

codes/simulations.py: part of simulation settings in the paper

codes/funcs.py: basic sampling functions

Usage Example

K = 3 # number of trees
MM = 50 # number of iterations
# set hyperparameters alternatively
hyper_params = [{'treeNum': 3, 'itrNum':50, 'alpha1':0.4, 'alpha2':0.4, 'beta':-1}]
# initialize BSR object
my_bsr = BSR(K,MM)
# train (need to fill in parameters)
# train_X is dataframe with each row a datapoint
# train_y is series with default index
my_bsr.fit(train_X,train_y)
# fit new values
# new_X is dataframe of new data
fitted_y = my_bsr.predict(new_X)
# display fitted trees
my_bsr.model()
# complexity, including complexity of each tree & total
complexity = my_bsr.complexity()

Pdf files

bsr_paper.pdf: paper for Bayesian Symbolic Regression

Symbolic_Regression_Tree_MCMC.pdf: note for proposed algorithm

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Symbolic Regression using MCMC sampling

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