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eureqa.py
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@@ -51,54 +51,58 @@ def eureqa(X=None, y=None, threads=4,
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test='simple1',
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maxsize=20,
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"""
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"""
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rand_string = f'{"".join([str(np.random.rand())[2] for i in range(20)])}'
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if isinstance(binary_operators, str): binary_operators = [binary_operators]
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test='simple1',
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maxsize=20,
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):
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"""Run symbolic regression to fit f(X[i, :]) ~ y[i] for all i.
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Note: most default parameters have been tuned over several example
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equations, but you should adjust `threads`, `niterations`,
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`binary_operators`, `unary_operators` to your requirements.
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:X: np.ndarray, 2D. Rows are examples, columns are features.
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:y: np.ndarray, 1D. Rows are examples.
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:threads: Number of threads (=number of populations running).
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You can have more threads than cores - it actually makes it more
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efficient.
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:niterations: Number of iterations of the algorithm to run. The best
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equations are printed, and migrate between populations, at the
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end of each.
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:ncyclesperiteration: Number of total mutations to run, per 10
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samples of the population, per iteration.
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:binary_operators: List of strings giving the binary operators
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in Julia's Base, or in `operator.jl`.
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:unary_operators: Same but for operators taking a single `Float32`.
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:alpha: Initial temperature.
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:annealing: Whether to use annealing. You should (and it is default).
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:fractionReplaced: How much of population to replace with migrating
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equations from other populations.
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:fractionReplacedHof: How much of population to replace with migrating
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equations from hall of fame.
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:npop: Number of individuals in each population
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:parsimony: Multiplicative factor for how much to punish complexity.
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:migration: Whether to migrate.
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:hofMigration: Whether to have the hall of fame migrate.
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:shouldOptimizeConstants: Whether to numerically optimize
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constants (Nelder-Mead/Newton) at the end of each iteration.
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:topn: How many top individuals migrate from each population.
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:weightAddNode: Relative likelihood for mutation to add a node
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:weightDeleteNode: Relative likelihood for mutation to delete a node
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:weightDoNothing: Relative likelihood for mutation to leave the individual
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:weightMutateConstant: Relative likelihood for mutation to change
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the constant slightly in a random direction.
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:weightMutateOperator: Relative likelihood for mutation to swap
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an operator.
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:weightRandomize: Relative likelihood for mutation to completely
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delete and then randomly generate the equation
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:weightSimplify: Relative likelihood for mutation to simplify
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constant parts by evaluation
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:timeout: Time in seconds to timeout search
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:equation_file: Where to save the files (.csv separated by |)
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:test: What test to run, if X,y not passed.
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:maxsize: Max size of an equation.
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:returns: pd.DataFrame, giving complexity, MSE, and equations
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(as strings).
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"""
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rand_string = f'{"".join([str(np.random.rand())[2] for i in range(20)])}'
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if isinstance(binary_operators, str): binary_operators = [binary_operators]
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