# How to split data using Time Based in Test and Train Respectively

How to split data into Train and Test by using time-based split.

I know that train_test_split splits it randomly how to split it based on Time.

``````  X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.33, random_state=42)
# this splits the data randomly as 67% test and 33% train
``````

How to Split the same data set based on time as 67% train and 33% test?

The dataset has a column TimeStamp.

I tried searching on the similar questions but was not sure about the approach.

Can someone explain briefly

• Do you want a monotonic split -- e.g. the earliest third is test data, and the rest is testing? Or do you want a random split that merely takes time into account, without being a deterministic function of time? – Jeffrey Benjamin Brown Jun 15 '18 at 17:02
• I want a time based split i.e which splits the data into Train and Test respectively based on Time. – dhruv bhardwaj Jun 15 '18 at 17:05
• Is your sampling in time uniform? Is there a constant delay between consecutive samples, or is the delay variable? – Paul Brodersen Jun 15 '18 at 17:12
• The delay is variable. One approach I thought is by Sorting by sample based on Time and then split it Train and Test data and then use TimeSeriesSplit in sklearn – dhruv bhardwaj Jun 15 '18 at 17:15
• But train_test_split is splitting it randomly as I saw it in its documentation. – dhruv bhardwaj Jun 15 '18 at 17:16

On time series datasets, data splitting takes place in a different way. See this link for more info. Alternatively, you can try TimeSeriesSplit from scikit-learn package. So the main idea is this, suppose you have 10 points of data according to timestamp. Now the splits will be like this :

``````Split 1 :
Train_indices : 1
Test_indices  : 2

Split 2 :
Train_indices : 1, 2
Test_indices  : 3

Split 3 :
Train_indices : 1, 2, 3
Test_indices  : 4

Split 4 :
Train_indices : 1, 2, 3, 4
Test_indices  : 5
``````

So on and so forth. You can check the example shown in the link above to get a better idea how TimeSEriesSPlit works in sklearn

Update If you have a seperate time column, you can simply sort the data based on that column and apply timeSeriesSplit as mentioned above to get the splits.

In order to ensure 67% training and 33% testing data in final split, specify number of splits as following:

``````no_of_split = int((len(data)-3)/3)
``````

Example

``````X = np.array([[1, 2], [3, 4], [1, 2], [3, 4],[1, 2], [3, 4],[3, 4],[1, 2],     [3, 4],[3, 4],[1, 2], [3, 4] ])
y = np.array([1, 2, 3, 4, 5, 6,7,8,9,10,11,12])
tscv = TimeSeriesSplit(n_splits=int((len(y)-3)/3))
for train_index, test_index in tscv.split(X):
print("TRAIN:", train_index, "TEST:", test_index)

#To get the indices
X_train, X_test = X[train_index], X[test_index]
y_train, y_test = y[train_index], y[test_index]
``````

OUTPUT :

``````('TRAIN:', array([0, 1, 2]), 'TEST:', array([3, 4, 5]))
('TRAIN:', array([0, 1, 2, 3, 4, 5]), 'TEST:', array([6, 7, 8]))
('TRAIN:', array([0, 1, 2, 3, 4, 5, 6, 7, 8]), 'TEST:', array([ 9, 10, 11]))
``````

• See, I know TimeSeriesSplit in sklearn but that will only be used once the data is split into Train and Test according to Time not 'randomly' as train_test_split this splits it randomly into Train and Test as per the requirements. – dhruv bhardwaj Jun 15 '18 at 17:20
• Is there a library in sklearn which splits data into Train and Test based on time and not randomly or is there any other method? – dhruv bhardwaj Jun 15 '18 at 17:21
• Does your data specifically have a 'datetime' column ? – Mohammed Kashif Jun 15 '18 at 17:24
• It has a Time column – dhruv bhardwaj Jun 15 '18 at 17:25
• And I am assuming here the time column is not sorted, right ? – Mohammed Kashif Jun 15 '18 at 17:27

If you have a simple dataset where each row is an observation (e.g. a non-time-series dataset for a classification problem) and you would like to split it into train and test, this function will split into train and test based on a column of dates:

``````import pandas as pd
import numpy as np
from math import ceil

def train_test_split_sorted(X, y, test_size, dates):
"""Splits X and y into train and test sets, with test set separated by most recent dates.

Example:
--------
>>> from sklearn import datasets

# Fake dataset:
>>> gen_data = datasets.make_classification(n_samples=10000, n_features=5)
>>> dates = np.array(pd.date_range('2016-01-01', periods=10000, freq='5min'))
>>> np.random.shuffle(dates)
>>> df = pd.DataFrame(gen_data[0])
>>> df['date'] = dates
>>> df['target'] = gen_data[1]

# Separate:
>>> X_train, X_test, y_train, y_test = train_test_split_sorted(df.drop('target', axis=1), df['target'], 0.33, df['date'])

>>> print('Length train set: {}'.format(len(y_train)))
Length train set: 8000
>>> print('Length test set: {}'.format(len(y_test)))
Length test set: 2000
>>> print('Last date in train set: {}'.format(X_train['date'].max()))
Last date in train set: 2016-01-28 18:35:00
>>> print('First date in test set: {}'.format(X_test['date'].min()))
First date in test set: 2016-01-28 18:40:00
"""

n_test = ceil(test_size * len(X))

sorted_index = [x for _, x in sorted(zip(np.array(dates), np.arange(0, len(dates))), key=lambda pair: pair[0])]
train_idx = sorted_index[:-n_test]
test_idx = sorted_index[-n_test:]

if isinstance(X, (pd.Series, pd.DataFrame)):
X_train = X.iloc[train_idx]
X_test = X.iloc[test_idx]
else:
X_train = X[train_idx]
X_test = X[test_idx]
if isinstance(y, (pd.Series, pd.DataFrame)):
y_train = y.iloc[train_idx]
y_test = y.iloc[test_idx]
else:
y_train = y[train_idx]
y_test = y[test_idx]

return X_train, X_test, y_train, y_test
``````

The `dates` argument could actually be any kind of array or Series which you would like to use to sort your data.

In your case, you should call: `X_train, X_test, y_train, y_test = train_test_split_sorted(X, y, 0.333, TimeStamp)` with `TimeStamp` being the array or column where you have the information about the timestamp of each observation.

One easy way to do it..

First: sort the data by time

Second:

``````import numpy as np
train_set, test_set= np.split(data, [int(.67 *len(data))])
``````

That makes the train_set with the first 67% of the data, and the test_set with rest 33% of the data.