# How to split data into 3 sets (train, validation and test)?

I have a pandas dataframe and I wish to divide it to 3 separate sets. I know that using train_test_split from `sklearn.cross_validation`, one can divide the data in two sets (train and test). However, I couldn't find any solution about splitting the data into three sets. Preferably, I'd like to have the indices of the original data.

I know that a workaround would be to use `train_test_split` two times and somehow adjust the indices. But is there a more standard / built-in way to split the data into 3 sets instead of 2?

• This doesn't answer your specific question, but I think the more standard approach for this would be splitting into two sets, train and test, and running cross-validation on the training set thus eliminating the need for a stand alone "development" set. – David Jul 7 '16 at 16:40
• This came up before, and as far as I know there is no built-in method for that yet. – ayhan Jul 7 '16 at 16:43
• I suggest Hastie et al.'s The Elements of Statistical Learning for a discussion on why to use three sets instead of two (web.stanford.edu/~hastie/local.ftp/Springer/OLD/… Model assessment and selection chapter) – ayhan Jul 7 '16 at 17:16
• @David In some models to prevent overfitting, there is a need for 3 sets instead of 2. Because in your design choices, you are somehow tuning parameters to improve performance on the test set. To prevent that, a development set is required. So, using cross validation will not be sufficient. – CentAu Jul 7 '16 at 17:23
• @ayhan, a corrected URL for that book is statweb.stanford.edu/~tibs/ElemStatLearn/printings/…, chapter 7 (p. 219). – Camille Goudeseune May 8 '17 at 19:50

Numpy solution. We will split our data set into the following parts:

• 60% - train set,
• 20% - validation set,
• 20% - test set

``````In [305]: train, validate, test = np.split(df.sample(frac=1), [int(.6*len(df)), int(.8*len(df))])

In [306]: train
Out[306]:
A         B         C         D         E
0  0.046919  0.792216  0.206294  0.440346  0.038960
2  0.301010  0.625697  0.604724  0.936968  0.870064
1  0.642237  0.690403  0.813658  0.525379  0.396053
9  0.488484  0.389640  0.599637  0.122919  0.106505
8  0.842717  0.793315  0.554084  0.100361  0.367465
7  0.185214  0.603661  0.217677  0.281780  0.938540

In [307]: validate
Out[307]:
A         B         C         D         E
5  0.806176  0.008896  0.362878  0.058903  0.026328
6  0.145777  0.485765  0.589272  0.806329  0.703479

In [308]: test
Out[308]:
A         B         C         D         E
4  0.521640  0.332210  0.370177  0.859169  0.401087
3  0.333348  0.964011  0.083498  0.670386  0.169619
``````

`[int(.6*len(df)), int(.8*len(df))]` - is an `indices_or_sections` array for numpy.split().

Here is a small demo for `np.split()` usage - let's split 20-elements array into the following parts: 80%, 10%, 10%:

``````In [45]: a = np.arange(1, 21)

In [46]: a
Out[46]: array([ 1,  2,  3,  4,  5,  6,  7,  8,  9, 10, 11, 12, 13, 14, 15, 16, 17, 18, 19, 20])

In [47]: np.split(a, [int(.8 * len(a)), int(.9 * len(a))])
Out[47]:
[array([ 1,  2,  3,  4,  5,  6,  7,  8,  9, 10, 11, 12, 13, 14, 15, 16]),
array([17, 18]),
array([19, 20])]
``````
• @root what exactly is the frac=1 parameter doing? – SpiderWasp42 Mar 12 '17 at 2:52
• @SpiderWasp42, `frac=1` instructs `sample()` function to return all (`100%` or fraction = `1.0`) rows – MaxU Mar 12 '17 at 8:45
• Thanks @MaxU. I'd like to mention 2 things to keep things simplified. First, use `np.random.seed(any_number)` before the split line to obtain same result with every run. Second, to make unequal ratio like `train:test:val::50:40:10` use `[int(.5*len(dfn)), int(.9*len(dfn))]`. Here first element denotes size for `train` (0.5%), second element denotes size for `val` (1-0.9 = 0.1%) and difference between the two denotes size for `test`(0.9-0.5 = 0.4%). Correct me if I'm wrong :) – dataLeo May 7 '18 at 17:57
• hrmm is it a mistake when you say "Here is a small demo for np.split() usage - let's split 20-elements array into the following parts: 90%, 10%, 10%:" I am pretty sure you mean 80%, 10%, 10% – Kevin Jan 11 at 21:19
• How can we do it with stratifying in mind? – Andrew Naguib Jan 23 at 19:22

### Note:

Function was written to handle seeding of randomized set creation. You should not rely on set splitting that doesn't randomize the sets.

``````import numpy as np
import pandas as pd

def train_validate_test_split(df, train_percent=.6, validate_percent=.2, seed=None):
np.random.seed(seed)
perm = np.random.permutation(df.index)
m = len(df.index)
train_end = int(train_percent * m)
validate_end = int(validate_percent * m) + train_end
train = df.ix[perm[:train_end]]
validate = df.ix[perm[train_end:validate_end]]
test = df.ix[perm[validate_end:]]
return train, validate, test
``````

### Demonstration

``````np.random.seed([3,1415])
df = pd.DataFrame(np.random.rand(10, 5), columns=list('ABCDE'))
df
``````

``````train, validate, test = train_validate_test_split(df)

train
``````

``````validate
``````

``````test
``````

However, one approach to dividing the dataset into `train`, `test`, `cv` with `0.6`, `0.2`, `0.2` would be to use the `train_test_split` method twice.

``````from sklearn.model_selection import train_test_split

x, x_test, y, y_test = train_test_split(xtrain,labels,test_size=0.2,train_size=0.8)
x_train, x_cv, y_train, y_cv = train_test_split(x,y,test_size = 0.25,train_size =0.75)
``````

One approach is use train_test_split function twice.

``````from sklearn.model_selection import train_test_split

X_train, X_test, y_train, y_test
= train_test_split(X, y, test_size=0.2, random_state=1)

X_train, X_val, y_train, y_val
= train_test_split(X_train, y_train, test_size=0.25, random_state=1)
``````

It is very convenient to use `train_test_split` without performing reindexing after dividing to several sets and not writing some additional code. Best answer above does not mention that by separating two times using `train_test_split` not changing partition sizes won`t give initially intended partition:

``````x_train, x_remain = train_test_split(x, test_size=(val_size + test_size))
``````

Then the portion of validation and test sets in the x_remain change and could be counted as

``````new_test_size = np.around(test_size / (val_size + test_size), 2)
# To preserve (new_test_size + new_val_size) = 1.0
new_val_size = 1.0 - new_test_size

x_val, x_test = train_test_split(x_remain, test_size=new_test_size)
``````

In this occasion all initial partitions are saved.