15

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
16

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.

  • 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
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    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
18

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)
  • 2
    How on earth is this not the accepted answer. – MachineEpsilon Jun 20 '18 at 7:29
  • @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
0

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, 
                 usecols=range(2,32))
 #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)

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