# 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 shuffle the whole dataset first (`df.sample(frac=1, random_state=42)`) and then split our data set into the following parts:

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

``````In : train, validate, test = \
np.split(df.sample(frac=1, random_state=42),
[int(.6*len(df)), int(.8*len(df))])

In : train
Out:
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 : validate
Out:
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 : test
Out:
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 : a = np.arange(1, 21)

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

In : np.split(a, [int(.8 * len(a)), int(.9 * len(a))])
Out:
[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 :) – sync11 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 '19 at 21:19
• Hey, @MaxU I had a case, something somewhat similar. I was wondering if you could look at it for me to see if it is and help me there. Here is my question stackoverflow.com/questions/54847668/… – Deepak M Feb 24 '19 at 2:17

### 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.iloc[perm[:train_end]]
validate = df.iloc[perm[train_end:validate_end]]
test = df.iloc[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
`````` • I believe this function requires a df with index values ranging from 1 to n. In my case, I modified the function to use df.loc as my index values were not necessarily in this range. – iOSBeginner Apr 16 at 12:38

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)
``````
• Suboptimal for large datasets – Maksym Ganenko Aug 30 '19 at 12:28
• @MaksymGanenko Can you please elaborate ? – blitu12345 Sep 1 '19 at 6:43
• You suggest to split data with two separate operations. Each data split involves data copying. So when you suggest to use two separate split operations instead of one you artificially create burden on both RAM and CPU. So your solution is suboptimal. Data split should be done with a single operation like `np.split()`. Also, it doesn't require additional dependency on `sklearn`. – Maksym Ganenko Sep 2 '19 at 9:28
• another benefit of this approach is that you can use the stratification parameters. – Ami Tavory Mar 24 at 9:57
• A simple and easy enough approach! – mgokhanbakal Aug 18 at 7:00

Here is a Python function that splits a Pandas dataframe into train, validation, and test dataframes with stratified sampling. It performs this split by calling scikit-learn's function `train_test_split()` twice.

``````import pandas as pd
from sklearn.model_selection import train_test_split

def split_stratified_into_train_val_test(df_input, stratify_colname='y',
frac_train=0.6, frac_val=0.15, frac_test=0.25,
random_state=None):
'''
Splits a Pandas dataframe into three subsets (train, val, and test)
following fractional ratios provided by the user, where each subset is
stratified by the values in a specific column (that is, each subset has
the same relative frequency of the values in the column). It performs this
splitting by running train_test_split() twice.

Parameters
----------
df_input : Pandas dataframe
Input dataframe to be split.
stratify_colname : str
The name of the column that will be used for stratification. Usually
this column would be for the label.
frac_train : float
frac_val   : float
frac_test  : float
The ratios with which the dataframe will be split into train, val, and
test data. The values should be expressed as float fractions and should
sum to 1.0.
random_state : int, None, or RandomStateInstance
Value to be passed to train_test_split().

Returns
-------
df_train, df_val, df_test :
Dataframes containing the three splits.
'''

if frac_train + frac_val + frac_test != 1.0:
raise ValueError('fractions %f, %f, %f do not add up to 1.0' % \
(frac_train, frac_val, frac_test))

if stratify_colname not in df_input.columns:
raise ValueError('%s is not a column in the dataframe' % (stratify_colname))

X = df_input # Contains all columns.
y = df_input[[stratify_colname]] # Dataframe of just the column on which to stratify.

# Split original dataframe into train and temp dataframes.
df_train, df_temp, y_train, y_temp = train_test_split(X,
y,
stratify=y,
test_size=(1.0 - frac_train),
random_state=random_state)

# Split the temp dataframe into val and test dataframes.
relative_frac_test = frac_test / (frac_val + frac_test)
df_val, df_test, y_val, y_test = train_test_split(df_temp,
y_temp,
stratify=y_temp,
test_size=relative_frac_test,
random_state=random_state)

assert len(df_input) == len(df_train) + len(df_val) + len(df_test)

return df_train, df_val, df_test
``````

Below is a complete working example.

Consider a dataset that has a label upon which you want to perform the stratification. This label has its own distribution in the original dataset, say 75% `foo`, 15% `bar` and 10% `baz`. Now let's split the dataset into train, validation, and test into subsets using a 60/20/20 ratio, where each split retains the same distribution of the labels. See the illustration below: Here is the example dataset:

``````df = pd.DataFrame( { 'A': list(range(0, 100)),
'B': list(range(100, 0, -1)),
'label': ['foo'] * 75 + ['bar'] * 15 + ['baz'] * 10 } )

#    A    B label
# 0  0  100   foo
# 1  1   99   foo
# 2  2   98   foo
# 3  3   97   foo
# 4  4   96   foo

df.shape
# (100, 3)

df.label.value_counts()
# foo    75
# bar    15
# baz    10
# Name: label, dtype: int64
``````

Now, let's call the `split_stratified_into_train_val_test()` function from above to get train, validation, and test dataframes following a 60/20/20 ratio.

``````df_train, df_val, df_test = \
split_stratified_into_train_val_test(df, stratify_colname='label', frac_train=0.60, frac_val=0.20, frac_test=0.20)
``````

The three dataframes `df_train`, `df_val`, and `df_test` contain all the original rows but their sizes will follow the above ratio.

``````df_train.shape
#(60, 3)

df_val.shape
#(20, 3)

df_test.shape
#(20, 3)
``````

Further, each of the three splits will have the same distribution of the label, namely 75% `foo`, 15% `bar` and 10% `baz`.

``````df_train.label.value_counts()
# foo    45
# bar     9
# baz     6
# Name: label, dtype: int64

df_val.label.value_counts()
# foo    15
# bar     3
# baz     2
# Name: label, dtype: int64

df_test.label.value_counts()
# foo    15
# bar     3
# baz     2
# Name: label, dtype: int64
``````
• NameError: name 'df' is not defined. The 'df' in split_stratified_into_train_val_test() should be replaced with 'df_input'. – Fantasy Pollock May 18 at 11:24
• Thanks. I fixed it. The problem was in an error-handling path of the code. – stackoverflowuser2010 May 18 at 18:09

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.

In the case of supervised learning, you may want to split both X and y (where X is your input and y the ground truth output). You just have to pay attention to shuffle X and y the same way before splitting.

Here, either X and y are in the same dataframe, so we shuffle them, separate them and apply the split for each (just like in chosen answer), or X and y are in two different dataframes, so we shuffle X, reorder y the same way as the shuffled X and apply the split to each.

``````# 1st case: df contains X and y (where y is the "target" column of df)
df_shuffled = df.sample(frac=1)
X_shuffled = df_shuffled.drop("target", axis = 1)
y_shuffled = df_shuffled["target"]

# 2nd case: X and y are two separated dataframes
X_shuffled = X.sample(frac=1)
y_shuffled = y[X_shuffled.index]

# We do the split as in the chosen answer
X_train, X_validation, X_test = np.split(X_shuffled, [int(0.6*len(X)),int(0.8*len(X))])
y_train, y_validation, y_test = np.split(y_shuffled, [int(0.6*len(X)),int(0.8*len(X))])
``````