Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm trying to read a fairly large CSV file with Pandas and split it up into two random chunks, one of which being 10% of the data and the other being 90%.

Here's my current attempt:

rows = data.index
row_count = len(rows)
random.shuffle(list(rows))

data.reindex(rows)

training_data = data[row_count // 10:]
testing_data = data[:row_count // 10]

For some reason, sklearn throws this error when I try to use one of these resulting DataFrame objects inside of a SVM classifier:

IndexError: each subindex must be either a slice, an integer, Ellipsis, or newaxis

I think I'm doing it wrong. Is there a better way to do this?

share|improve this question
1  
Incidentally, this wouldn't randomly shuffle correctly anyway - the problem is random.shuffle(list(rows)). shuffle alters the data it operates on, but when you call list(rows), you make a copy of rows that gets altered and then thrown away - the underlying pandas Series, rows, is unchanged. One solution is to call rows = list(rows), then random.shuffle(rows) and data.reindex(rows) after that. –  kharybdis Feb 20 '13 at 0:10
add comment

2 Answers

up vote 22 down vote accepted

What version of pandas are you using? For me your code works fine (i`m on git master).

Another approach could be:

In [117]: import pandas

In [118]: import random

In [119]: df = pandas.DataFrame(np.random.randn(100, 4), columns=list('ABCD'))

In [120]: rows = random.sample(df.index, 10)

In [121]: df_10 = df.ix[rows]

In [122]: df_90 = df.drop(rows)
share|improve this answer
4  
Another approach is to use np.random.permuation –  Wes McKinney Sep 8 '12 at 22:37
add comment

I have found that np.random.choice() new in NumPy 1.7.0 works quite well for this.

For example you can pass the index values from a DataFrame and and the integer 10 to select 10 random uniformly sampled rows.

rows = np.random.choice(df.index.values, 10)
sampled_df = df.ix[rows]
share|improve this answer
    
with ipython timeit it takes half of random.sample time.. awesome –  nsl Nov 11 '13 at 16:34
    
+1 for use of np.random.choice. Also, if you have a pd.Series of probabilities, prob, you can pick from the index as so: np.random.choice(prob.index.values, p=prob.values) –  LondonRob Jan 22 at 19:06
6  
Don't forget to specify replace=False if you want sampling without replacement. Otherwise this method can potentially sample the same row multiple times. –  Alexander Measure Jan 30 at 3:55
add comment

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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