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I am using CatBoostRegressor in Python version of the Catboost library.

According to documentation, it's possible to use overfitting detector, which I am doing, like this:

model = CatBoostRegressor(iterations=iters, learning_rate=0.03, depth=depth, verbose=True, od_pval=1, od_type='IncToDec', od_wait=20)
model.fit(train_pool, eval_set=validation_pool)

# this code didn't executed
model.save_model(model_name)

However, after the overfitting occurs, I've got my Python script interrupted, prematurely stopped, pick any phrase you want, and save model part didn't get executed, which leads to a lot of waisted time and no results in the end. I didn't get any stacktrace.

Is there any possibility to handle it in CatBoost and save hours of fitting work?

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  • Could you give more info about why and how your python script got killed?
    – mcsim
    Dec 3, 2017 at 12:49
  • 1
    i expect that this is what overfitting detector has been doing. Not sure, that I fully grasp what you expect me to answer
    – Mysterion
    Dec 3, 2017 at 12:51
  • Stack trace, for example. What does it mean "killed"?
    – mcsim
    Dec 3, 2017 at 12:52
  • what do you mean by I've got my Python script killed I would expect that an error was raised. ?
    – 00__00__00
    Dec 3, 2017 at 12:54
  • 1
    okay, may be I should rephrase it. I didn't get any stack trace, my script just got interrupted, ended prematurely, pick any word you want. If I would have an error, of course I would paste it here. I'm pretty much sure, it's something with the library (CatBoost), that I'm using
    – Mysterion
    Dec 3, 2017 at 12:55

3 Answers 3

7
+100

Use this code. It will save the model no matter what happens in the try block.

try:
    model.fit(X, y)
finally:
    model.save_model()
1
  • tested it, and it works, even though, at first I thanked it was killed again
    – Mysterion
    Dec 11, 2017 at 11:07
0

Well i don't know how catboost work but i would like to share a different way to save/store your trained data maybe it could help

import pickle
model = CatBoostRegressor(iterations=iters, learning_rate=0.03, depth=depth, verbose=True, od_pval=1, od_type='IncToDec', od_wait=20)
model.fit(train_pool, eval_set=validation_pool)
#----To store model----------
filename = 'final_model' # name to store model
pickle.dump(model, open(filename, 'wb')) # pickling
#-----To load model------------
loaded_model = pickle.load(open(filename, 'rb'))
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  • 1
    how the pickle will help me?
    – Mysterion
    Dec 6, 2017 at 8:56
  • how many no of iterations you are using? and if no of iterations are more than you mentioned in training parameters then it could be because of over fitting...... Pickle is just another way to store model, long time back when i was performing multi class classification i used save_model and it didn't save my classifier so i used pickle and it worked
    – outlier
    Dec 8, 2017 at 6:09
-3

You can do it with pickle, just train your module and dump it using pickle.

 pickle.dump(regr, open("models/svrrbf.sav",'wb'))

Further you can use that module to test your inputs. Hope it helps

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