In most of the Scikit-learn algorithms, the data must be loaded as a Bunch object. For many example in the tutorial load_files() or other functions are used to populate the Bunch object. Functions like load_files() expect data to be present in certain format, but I have data stored in a different format, namely a CSV file with strings for each field.

How do I parse this and load data in the Bunch object format?

  • 1
    To be sure: none of the algorithms load Bunch objects. The example scripts use those, but the algorithms all want arrays or sparse matrices. – Fred Foo Dec 11 '13 at 12:23
  • @Blake, the fit method of the classifier takes in a couple of list objects - list of data (Bunch.data) followed by a list of target(Bunch.target) - clf.fit(<list>, <list>). – Vivek Mar 10 '18 at 1:58

You don't have to create Bunch objects. They are just useful for loading the internal sample datasets of scikit-learn.

You can directly feed a list of Python strings to your vectorizer object.

| improve this answer | |
  • Thanks, Is there any utility function to load .CSV? Have a csv with for columns (all strings). Right now i am using python csv reader docs.python.org/2/library/csv.html – David Dec 10 '13 at 23:49
  • 6
    I would recommend pandas: pandas.pydata.org you need to convert the pandas.DataFrame to an np array before feeding it to sklearn, though. – Andreas Mueller Dec 11 '13 at 0:47

You can do it like this:

import numpy as np
import sklearn.datasets

examples = []
examples.append('some text')
examples.append('another example text')
examples.append('example 3')

target = np.zeros((3,), dtype=np.int64)
target[0] = 0
target[1] = 1
target[2] = 0
dataset = sklearn.datasets.base.Bunch(data=examples, target=target)
| improve this answer | |
  • @MachineEpsilon The question shows a misunderstanding in how you feed data to a classifier in scikit-learn, so even though this answers the literal question, it doesn't clear up the original misunderstanding. This link makes it pretty clear: scikit-learn.org/stable/… – Perry Oct 26 '18 at 9:29

This is an Example of Breast Cancer Wisconsin (Diagnostic) Data Set, you can find the csv in Kaggle:

 #1)From column 2 at 32 in the CSV  are 
 #X_train and X_test data @usecols=range(2,32) this is stored in the Bunch 
 #Object key named "data"
from numpy import genfromtxt
data = genfromtxt("YOUR DATA DIRECTORY", delimiter=',', skip_header=1, 
 #2-)I am interested in the column data B (column 1 
 #in Numpy Array @usecols= (1),) in the CSV 
 # because is the output of  y_train and y_test and is stored in the Bunch 
#Object Key named: "target"
import pandas as pd
target = genfromtxt("YOUR DATA DIRECTORY", delimiter=',', 
                    skip_header=1, usecols=(1), dtype=str)

#There are some tricks for transform the target like it is in # sklearn, # offcourse it can be made in a Unique variable (target, target1,... is #separated only for explain what I did. #3-)First transform the numpy into a Panda

target2 = pd.Series(target)

#4-)It`s for use the rank function, you could skip the step number 5

target3 = target2.rank(method='dense', axis=0)

#5-) This is only for transform the target in 0 or 1 like the example in the #Book

target4 = (target3 % 2 == 0) * 1 

#6-)Got values into numpy

target5 = target4.values

Here I copied Hugh Perkins's solution

import sklearn dataset = sklearn.datasets.base.Bunch(data=data, target=target5)

| improve this answer | |

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.