2

LightGBM provides the option to handle categorical variables without the need to onehot-encode the dataset.

One way to make use of this feature (from the Python interface) is to specify the column-names of the categorical features as a list using the categorical_feature-argument. This approach requires the categories to be encoded as integers.

But an alternative is to provide LightGBM with a Pandas DataFrame where the columns which are categorical in nature is set the be of the Categorical dtype, and LightGBM will figure out which columns to treat as categoricals.

But the underlying interger codes used in categoricals are set by Pandas, and will likely not be consistent across Python sessions. Will mixed-up cat_codes lead to LightGBM misinterpreting entries in the categoricals?

By a Pandas categorical, I'm refering to a feature set as df['Some_categorical_feature'] = df['Some_categorical_feature'].astype('category').

2
  • Wouldn't this entirely depend on your code? Are you ending sessions, and re-reading the dataset into Python via Pandas, and re-running LightGBM? In this case, yes, you would need to re-assign the column to be categorical.
    – sdhaus
    Commented Feb 12, 2020 at 15:29
  • Yes, I am ending sessions, re-reading data and re-casting as Categoricals. But since the categorical feature contains the mapping of the cat_codes to the feature names, I thought that LightGBM might be smart enough to handle the case where the cat_codes are permuted, and handle the categorical feature(s) based on the name that maps to the cat_codes... do you know it that's the case?
    – AllanLRH
    Commented Feb 12, 2020 at 15:34

3 Answers 3

4

Pandas assigns categorical codes by sorting the keys (categories) before assigning the codes, and LightGBM relies on Pandas to handle assigning the categoridcal codes correctly. Introducing a previously unseen category will break the ordering of the categoricals, and thus shift the categorical codes.

Source: https://github.com/microsoft/LightGBM/issues/2761#issuecomment-586722068

Code to demonstrate the problem:

#!/usr/bin/env python
# -*- coding: utf8 -*-

import pandas as pd
import lightgbm as lgb

X_train = pd.Series(['D', 'A', 'C', 'C', 'E', 'E', 'A'],
                    name='X', dtype='category').to_frame()
X_deploy = pd.Series(['B', 'E', 'A', 'C', 'D', 'E', 'F'],
                     name='X', dtype='category').to_frame()

X_train_transformed = lgb.basic._data_from_pandas(X_train, None, None, None)
X_deploy_transformed = lgb.basic._data_from_pandas(X_deploy, None, None, None)

print("X_train", X_train, sep=':\n', end='\n\n')
# X_train:
#    X
# 0  D
# 1  A
# 2  C
# 3  C
# 4  E
# 5  E
# 6  A

print("X_deploy", X_deploy, sep=':\n', end='\n\n')
# X_deploy:
#    X
# 0  B
# 1  E
# 2  A
# 3  C
# 4  D
# 5  E
# 6  F


print('X_train_transformed', X_train_transformed, sep=':\n', end='\n\n')
# X_train_transformed:
# (array([[2.],
#        [0.],
#        [1.],
#        [1.],
#        [3.],
#        [3.],
#        [0.]], dtype=float32), None, None, [['A', 'C', 'D', 'E']])

print('X_deploy_transformed', X_deploy_transformed, sep=':\n', end='\n\n')
# X_deploy_transformed:
# (array([[1.],
#        [4.],
#        [0.],
#        [2.],
#        [3.],
#        [4.],
#        [5.]], dtype=float32), None, None, [['A', 'B', 'C', 'D', 'E', 'F']])

print('X_train LGB-transformed codes and original Series')
# X_train LGB-transformed codes and original Series

print(*list(zip(X_train_transformed[0], X_train.X.to_list())), sep='\n', end='\n\n')
# (array([2.], dtype=float32), 'D')
# (array([0.], dtype=float32), 'A')
# (array([1.], dtype=float32), 'C')
# (array([1.], dtype=float32), 'C')
# (array([3.], dtype=float32), 'E')
# (array([3.], dtype=float32), 'E')
# (array([0.], dtype=float32), 'A')

print('X_deploy LGB-transformed codes and original Series')
# X_deploy LGB-transformed codes and original Series

print(*list(zip(X_deploy_transformed[0], X_deploy.X.to_list())), sep='\n', end='\n\n')
# (array([1.], dtype=float32), 'B')
# (array([4.], dtype=float32), 'E')
# (array([0.], dtype=float32), 'A')
# (array([2.], dtype=float32), 'C')
# (array([3.], dtype=float32), 'D')
# (array([4.], dtype=float32), 'E')
# (array([5.], dtype=float32), 'F')
1

I believe another answer to this question is misleading. LightGBM does exactly what you'd hope for behind the scenes. See this comment: https://github.com/microsoft/LightGBM/issues/2826#issuecomment-591579444

Relevant quote:

LightGBM will set old categorical codes from a training phase during a prediction one (if they differ)...So internally prediction data will have all original codes from the training dataset.

0

Thanks a lot for the answer form AllanLRH.
My solutions has two :

  1. directly use category feature ,and send them to lightgbm model . The lightgbm's predict method can process the category features ,and the result is right.

    feature_1=['a','a','a','b','c']
    data=pd.DataFrame({'f1':feature_1,'f2':[1,2,3,4,5]})
    data['f1']=data['f1'].astype('category')
    lightgbm.predict(data)
    
  2. we can deal the category feature manual, I use python dict or database table to convert the category value to code.

     feature_1=['a','a','a','b','c']
     data=pd.DataFrame({'f1':feature_1,'f2':[1,2,3,4,5]})
     data['f1']=data['f1'].map({'a':1,'b':2,'c':3})
     lightgbm.predict(data)
    

The two solution has the same result ,and both results are right .
This quetions has puzzled me a long time,and related bugs cost me two days.
Now the question is solved.

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