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Hi I want to use a simple AdaBoostClassifier on the mushroom dataset which lools smth. like:

target  cap-shape  cap-surface  cap-color  bruises  odor  \
3059       0          2            3          2        1     5   
1953       0          5            0          3        1     5   
1246       0          2            2          3        0     5   
5373       1          5            2          8        1     2   
413        0          5            3          9        1     3   

...

using:

from sklearn.ensemble import AdaBoostClassifier
from sklearn.preprocessing import LabelEncoder
import pandas as pd

dataset = pd.read_csv('data\mushroom.csv',header=None)
dataset = dataset.sample(frac=1)
dataset.columns = ['target','cap-shape','cap-surface','cap-color','bruises','odor','gill-attachment','gill-spacing',
             'gill-size','gill-color','stalk-shape','stalk-root','stalk-surface-above-ring','stalk-surface-below-ring','stalk-color-above-ring',
             'stalk-color-below-ring','veil-type','veil-color','ring-number','ring-type','spore-print-color','population',
             'habitat']

for label in dataset.columns:
    dataset[label] = LabelEncoder().fit(dataset[label]).transform(dataset[label])


X = dataset.drop(['target'],axis=1)
Y = dataset['target']


AdaBoost = AdaBoostClassifier(base_estimator='DecisionTreeClassifier',n_estimators=400,learning_rate=0.01,algorithm='SAMME')

AdaBoost.fit(X,Y)

prediction = AdaBoost.score(Y)

print(prediction)

but this returns me:

---> 15 AdaBoost.fit(X,Y)

AttributeError: 'str' object has no attribute 'fit'

  • 2
    That error simply means that the AdaBoost object is a str, and thus doing AdaBoost.fit is analogous to doing "string".fit. Something wrong is happening creating the AdaBoost object. – ResetACK May 30 '18 at 13:37
  • 1
    Try printing AdaBoost. What does it look like? – pushkin May 30 '18 at 13:39
  • AdaBoostClassifier(algorithm='SAMME', base_estimator='DecisionTreeClassifier', learning_rate=0.01, n_estimators=400, random_state=None) – 2Obe May 30 '18 at 13:40
  • 1
    @ResetACK I have found the issue. As base_estimator I have set 'DecisionTreeClassifier'. THIS is a sting and has no fit() method. The AdaBoost IS NOT a string – 2Obe May 30 '18 at 13:47
  • 1
    A good practice to get into is to debug your scripts by using python -i <script>. This launches the script in the interpreter, which would allow you to do dir(AdaBoost), giving you the available attributes of the object (or run other commands to manipulate the data without having to edit, save, and then run the script over and over) – ResetACK May 30 '18 at 13:48
1

I have found the issue. As base_estimator I have set 'DecisionTreeClassifier'. THIS is a sting and has no fit() method. The AdaBoost IS NOT a string.

from sklearn.ensemble import AdaBoostClassifier
from sklearn.preprocessing import LabelEncoder

for label in dataset.columns:
    dataset[label] = LabelEncoder().fit(dataset[label]).transform(dataset[label])

X = dataset.drop(['target'],axis=1)
Y = dataset['target']


AdaBoost = AdaBoostClassifier(n_estimators=400,learning_rate=0.01,algorithm='SAMME')

AdaBoost.fit(X,Y)

prediction = AdaBoost.score(X,Y)

print(prediction)

0.9182668636139832

  • Removing the parameter is the solution? I'm doing a gridsearch on base estimator and listing DecisionTreeClassifier and RandomForestClassifier as my models. But it's failing because of this issue. How can I evaluate different models without using this parameter? – Jamie1612 Jul 11 '18 at 12:07
1

In reference to my comment in 2Obe's answer above, I found the correct way to specify the parameter -

AdaBoostClassifier(base_estimator=DecisionTreeClassifier(),n_estimators=400,learning_rate=0.01,algorithm='SAMME')

It should be a constructor rather than a string

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