MilesCranmer commited on
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f1e7133
1 Parent(s): 69fc6d0

Update dead links to readthedocs

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  1. pysr/sr.py +2 -2
pysr/sr.py CHANGED
@@ -434,7 +434,7 @@ class PySRRegressor(BaseEstimator, RegressorMixin):
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  equations, but you should adjust `niterations`,
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  `binary_operators`, `unary_operators` to your requirements.
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  You can view more detailed explanations of the options on the
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- [options page](https://pysr.readthedocs.io/en/latest/docs/options/) of the documentation.
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  :param model_selection: How to select a model. Can be 'accuracy' or 'best'. The default, 'best', will optimize a combination of complexity and accuracy.
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  :type model_selection: str
@@ -1038,7 +1038,7 @@ class PySRRegressor(BaseEstimator, RegressorMixin):
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  if len(X) > 10000 and not batching:
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  warnings.warn(
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- "Note: you are running with more than 10,000 datapoints. You should consider turning on batching (https://pysr.readthedocs.io/en/latest/docs/options/#batching). You should also reconsider if you need that many datapoints. Unless you have a large amount of noise (in which case you should smooth your dataset first), generally < 10,000 datapoints is enough to find a functional form with symbolic regression. More datapoints will lower the search speed."
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  )
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  X, selection = _handle_feature_selection(
 
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  equations, but you should adjust `niterations`,
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  `binary_operators`, `unary_operators` to your requirements.
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  You can view more detailed explanations of the options on the
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+ [options page](https://astroautomata.com/PySR/#/options) of the documentation.
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  :param model_selection: How to select a model. Can be 'accuracy' or 'best'. The default, 'best', will optimize a combination of complexity and accuracy.
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  :type model_selection: str
 
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  if len(X) > 10000 and not batching:
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  warnings.warn(
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+ "Note: you are running with more than 10,000 datapoints. You should consider turning on batching (https://astroautomata.com/PySR/#/options?id=batching). You should also reconsider if you need that many datapoints. Unless you have a large amount of noise (in which case you should smooth your dataset first), generally < 10,000 datapoints is enough to find a functional form with symbolic regression. More datapoints will lower the search speed."
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  )
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  X, selection = _handle_feature_selection(