One of the most interesting and challenging things about data science hackathons is getting a high score on both public and private leaderboards. I have closely monitored the series of data science hackathons and found an interesting trend. cross validation using python and R trend is based on participant rankings on the public and private leaderboards.

One thing that stood out was that participants who rank higher on the public leaderboard lose their position after their ranks gets validated on the private leaderboard. Some even failed to secure rank in the top 20s on the private leaderboard (image below).

Eventually, I discovered the phenomenon which brings such ripples on the leaderboard.

Take a guess! What could be the possible reason for high variation in these ranks? In other words, why does their model lose stability when evaluated on the private leaderboard?

In this article, we will look at possible reasons for this. We will also look at the concept of cross validation using **python **and R and a few common methods to perform it.

* Note: This article is meant for every aspiring data scientist keen to improve his/her performance in data science competitions. Each technique is followed by code snippets from both R and *Python

Let’s understand this using the below snapshot illustrating the fit of various models:

Here, we are trying to find the relationship between size and price. To achieve this, we have taken the following steps:

- We’ve established the relationship using a linear equation for which the plots have been shown. The first plot has a high error from training data points. Therefore, this will not perform well on either public or the private leaderboard. This is an example of “
**Underfitting”.**In this case, our model fails to capture the underlying trend of the data - In the second plot, we just found the right relationship between price and size, i.e., low training error and generalization of the relationship
- In the third plot, we found a relationship which has almost zero training error. This is because the relationship is developed by considering each deviation in the data point (including noise), i.e., the model is too sensitive and captures random patterns which are present only in the current dataset. This is an example of “
**Overfitting**”. In this relationship, there could be a high deviation between the public and private leaderboards

A common practice in **data science** competitions is to iterate over various models to find a better performing model. However, it becomes difficult to distinguish whether this improvement in score is coming because we are capturing the relationship better, or we are just over-fitting the data. To find the right answer for this question, we use validation techniques. This method helps us in achieving more generalized relationships.

**Cross Validation** is a technique which involves reserving a particular sample of a dataset on which you do not train the model. Later, you test your model on this sample before finalizing it.

Here are the steps involved in cross validation:

- You
*reserve*a sample data set - Train the model using the remaining part of the dataset
- Use the reserve sample of the test (validation) set. This will help you in gauging the effectiveness of your model’s performance. If your model delivers a positive result on validation data, go ahead with the current model. It rocks!

There are various methods available for performing cross validation. I’ve discussed a few of them in this section.

In this approach, we reserve 50% of the dataset for validation and the remaining 50% for model training. However, a major disadvantage of this approach is that since we are training a model on only 50% of the dataset, there is a huge possibility that we might miss out on some interesting information about the data which will lead to a higher bias.

Python Code:

```
train, validation = train_test_split(data, test_size=0.50, random_state = 5)
R Code:
set.seed(101) # Set Seed so that same sample can be reproduced in future also
# Now Selecting 50% of data as sample from total 'n' rows of the data
sample <- sample.int(n = nrow(data), size = floor(.50*nrow(data)), replace = F)
train <- data[sample, ]
test <- data[-sample, ]
```

In this approach, we reserve only one data point from the available dataset, and train the model on the rest of the data. This process iterates for each data point. This also has its own advantages and disadvantages. Let’s look at them:

- We make use of all data points, hence the bias will be low
- We repeat the cross validation process n times (where n is number of data points) which results in a higher execution time
- This approach leads to higher variation in testing model effectiveness because we test against one data point. So, our estimation gets highly influenced by the data point. If the data point turns out to be an outlier, it can lead to a higher variation

Python Code:

```
# importing libraries
import numpy as np
from sklearn.model_selection import LeaveOneOut
# creating the data
X = np.array([[1, 2], [3, 4]])
y = np.array([1, 2])
# Independent variable
print("\nIndependent variable :")
print(X)
# Dependent variable
print("\nDependent variable :")
print(y)
# creating the leav one out function
loo = LeaveOneOut()
loo.get_n_splits(X)
# printing the training and validation data
for train_index, test_index in loo.split(X):
X_train, X_test = X[train_index], X[test_index]
y_train, y_test = y[train_index], y[test_index]
print("\ntraining set:", X_train, y_train)
print("\nvalidation set :", X_test, y_test)
## NOTE: you can try out other validation techniques as well in this live coding window
```

R Code:

```
score = list()
LOOCV_function = function(x,label){
for(i in 1:nrow(x)){
training = x[-i,]
model = #... train model on training
validation = x[i,]
pred = predict(model, validation[,setdiff(names(validation),label)])
score[[i]] = rmse(pred, validation[[label]]) # score/error of ith fold
}
return(unlist(score)) # returns a vector
}
```

LOOCV leaves one data point out. Similarly, you could leave p training examples out to have validation set of size p for each iteration. This is called LPOCV (Leave P Out Cross Validation using python and R)

From the above two validation methods, we’ve learnt:

- We should train the model on a large portion of the dataset. Otherwise we’ll fail to read and recognise the underlying trend in the data. This will eventually result in a higher bias
- We also need a good ratio of testing data points. As we have seen above, less amount of data points can lead to a variance error while testing the effectiveness of the model
- We should iterate on the training and testing process multiple times. We should change the train and test dataset distribution. This helps in validating the model effectiveness properly

Do we have a method which takes care of all these 3 requirements?

Yes! That method is known as “**k-fold cross validation**”. It’s easy to follow and implement. Below are the steps for it:

- Randomly split your entire dataset into k”folds”
- For each k-fold in your dataset, build your model on k – 1 folds of the dataset. Then, test the model to check the effectiveness for
*kth*fold - Record the error you see on each of the predictions
- Repeat this until each of the k-folds has served as the test set
- The average of your k recorded errors is called the cross-validation error and will serve as your performance metric for the model

Below is the visualization of a k-fold validation when k=10.

Always remember, a lower value of *k* is more biased, and hence undesirable. On the other hand, a higher value of K is less biased, but can suffer from large variability. It is important to know that a smaller value of *k* always takes us towards validation set approach, whereas a higher value of *k* leads to LOOCV approach.

Precisely, LOOCV is equivalent to n-fold cross validation where n is the number of training examples.

Python Code:

```
from sklearn.model_selection import KFold
kf = RepeatedKFold(n_splits=5, n_repeats=10, random_state=None)
for train_index, test_index in kf.split(X):
print("Train:", train_index, "Validation:",test_index)
X_train, X_test = X[train_index], X[test_index]
y_train, y_test = y[train_index], y[test_index]
```

R code:

```
library(caret)
data(iris)
# Define train control for k fold cross validation
train_control <- trainControl(method="cv", number=10)
# Fit Naive Bayes Model
model <- train(Species~., data=iris, trControl=train_control, method="nb")
# Summarise Results
print(model)
```

Stratification is the process of rearranging the data so as to ensure that each fold is a good representative of the whole. For example, in a binary classification problem where each class comprises of 50% of the data, it is best to arrange the data such that in every fold, each class comprises of about half the instances.

It is generally a better approach when dealing with both bias and variance. A randomly selected fold might not adequately represent the minor class, particularly in cases where there is a huge class imbalance.

```
from sklearn.model_selection import StratifiedKFold
skf = StratifiedKFold(n_splits=5, random_state=None)
# X is the feature set and y is the target
for train_index, test_index in skf.split(X,y):
print("Train:", train_index, "Validation:", val_index)
X_train, X_test = X[train_index], X[val_index]
y_train, y_test = y[train_index], y[val_index]
```

```
library(caret)
# Folds are created on the basis of target variable
folds <- createFolds(factor(data$target), k = 10, list = FALSE)
```

Having said that, if the train set does not adequately represent the entire population, then using a stratified k-fold might not be the best idea. In such cases, one should use a simple **k-fold cross validation with repetition**.

In repeated cross-validation, the cross-validation procedure is repeated *n* times, yielding *n* random partitions of the original sample. The *n* results are again averaged (or otherwise combined) to produce a single estimation.

**Python code for repeated k-fold cross validation:**

```
from sklearn.model_selection import RepeatedKFold
rkf = RepeatedKFold(n_splits=5, n_repeats=10, random_state=None)
# X is the feature set and y is the target
for train_index, test_index in rkf.split(X):
print("Train:", train_index, "Validation:", val_index)
X_train, X_test = X[train_index], X[val_index]
y_train, y_test = y[train_index], y[val_index]
```

When dealing with real datasets, there are often cases where the test and train sets are very different. As a result, the internal cross-validation techniques might give scores that are not even in the ballpark of the test score. In such cases, adversarial validation offers an interesting solution.

The general idea is to check the degree of similarity between training and tests in terms of feature distribution. If It does not seem to be the case, we can suspect they are quite different. This intuition can be quantified by combining train and test sets, assigning 0/1 labels (0 – train, 1-test) and evaluating a binary classification task.

Let us understand, how this can be accomplished in the below steps:

`train.drop(['target'], axis = 1, inplace = True)`

```
train['is_train'] = 1
test['is_train'] = 0
```

`df = pd.concat([train, test], axis = 0)`

```
y = df['is_train']; df.drop('is_train', axis = 1, inplace = True)
# Xgboost parameters
xgb_params = {'learning_rate': 0.05,
'max_depth': 4,
'subsample': 0.9,
'colsample_bytree': 0.9,
'objective': 'binary:logistic',
'silent': 1,
'n_estimators':100,
'gamma':1,
'min_child_weight':4}
clf = xgb.XGBClassifier(**xgb_params, seed = 10)
```

```
probs = clf.predict_proba(x1)[:,1]
new_df = pd.DataFrame({'id':train.id, 'probs':probs})
new_df = new_df.sort_values(by = 'probs', ascending=False) # 30% validation set
val_set_ids = new_df.iloc[1:np.int(new_df.shape[0]*0.3),1]
```

*val_set_ids* will get you the ids from the train set that would constitute the validation set which is most similar to the test set. This will make your validation strategy more robust for cases where the train and test sets are highly dissimilar.

However, you must be careful while using this type of validation technique. Once the distribution of the test set changes, the validation set might no longer be a good subset to evaluate your model on.

Splitting a time-series dataset randomly does not work because the time section of your data will be messed up. For a time series forecasting problem, we perform cross validation using Python and R in the following manner.

- Folds for time series cross valdiation are created in a forward chaining fashion
- Suppose we have a time series for yearly consumer demand for a product during a period of
*n*years. The folds would be created like:

```
fold 1: training [1], test [2]
fold 2: training [1 2], test [3]
fold 3: training [1 2 3], test [4]
fold 4: training [1 2 3 4], test [5]
fold 5: training [1 2 3 4 5], test [6]
.
.
.
fold n: training [1 2 3 ….. n-1], test [n]
```

We progressively select a new train and test set. We start with a train set which has a minimum number of observations needed for fitting the model. Progressively, we change our train and test sets with each fold. In most cases, 1 step forecasts might not be very important. In such instances, the forecast origin can be shifted to allow for multi-step errors to be used. For example, in a regression problem, the following code could be used for performing cross validation using Python and R.

Python Code:

```
from sklearn.model_selection import TimeSeriesSplit
X = np.array([[1, 2], [3, 4], [1, 2], [3, 4]])
y = np.array([1, 2, 3, 4])
tscv = TimeSeriesSplit(n_splits=3)
for train_index, test_index in tscv.split(X):
print("Train:", train_index, "Validation:", val_index)
X_train, X_test = X[train_index], X[val_index]
y_train, y_test = y[train_index], y[val_index]
TRAIN: [0] TEST: [1]
TRAIN: [0 1] TEST: [2]
TRAIN: [0 1 2] TEST: [3]
```

R Code:

```
library(fpp)
library(forecast)
e <- tsCV(ts, Arima(x, order=c(2,0,0), h=1) #CV for arima model
sqrt(mean(e^2, na.rm=
```**TRUE**)) # RMSE

h = 1 implies that we are taking the error only for 1 step ahead forecasts.

(h =4) 4-step ahead error is depicted in the below diagram. This could be used if you want to evaluate your model for multi-step forecast.

Unfortunately, there is no single method that works best for all kinds of problem statements. Often, a custom cross validation using python and R technique based on a feature, or combination of features, could be created if that gives the user stable cross validation scores while making submissions in hackathons.

For example, in the recently finished contest ‘Lord of the Machines‘ by Analytics Vidhya, the most stable validation technique used by the top finishers was using the campaign *id* variable.

Please have a look at the problem statement and a few approaches discussed by the participants at this thread.

After k-fold cross validation using python and R, we’ll get *k* different model estimation errors (e1, e2 …..ek). In an ideal scenario, these error values should sum up to zero. To return the model’s bias, we take the average of all the errors. Lower the average value, better the model.

Similarly for calculating the model variance, we take standard deviation of all the errors. A low value of standard deviation suggests our model does not vary a lot with different subsets of training data.

We should focus on achieving a balance between bias and variance. This can be done by reducing the variance and controlling bias to an extent. It’ll result in a better predictive model. This trade-off usually leads to building less complex predictive models as well. For understanding bias-variance trade-off in more depth, please refer to section 9 of this article.

In this article, we discussed about overfitting and methods like cross-validation to avoid overfitting. We also looked at different cross-validation methods like validation set approach, LOOCV, k-fold cross validation, stratified k-fold and so on, followed by each approach’s implementation in Python and R performed on the Iris dataset.

Did you find this article helpful? Please share your opinions/thoughts in the comments section below. And don’t forget to test these techniques in AV’s hackathons.

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Become a full stack data scientist
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Understanding Cost Function
Understanding Gradient Descent
Math Behind Gradient Descent
Assumptions of Linear Regression
Implement Linear Regression from Scratch
Train Linear Regression in Python
Implementing Linear Regression in R
Diagnosing Residual Plots in Linear Regression Models
Generalized Linear Models
Introduction to Logistic Regression
Odds Ratio
Implementing Logistic Regression from Scratch
Introduction to Scikit-learn in Python
Train Logistic Regression in python
Multiclass using Logistic Regression
How to use Multinomial and Ordinal Logistic Regression in R ?
Challenges with Linear Regression
Introduction to Regularisation
Implementing Regularisation
Ridge Regression
Lasso Regression

Introduction to Stacking
Implementing Stacking
Variants of Stacking
Implementing Variants of Stacking
Introduction to Blending
Bootstrap Sampling
Introduction to Random Sampling
Hyper-parameters of Random Forest
Implementing Random Forest
Out-of-Bag (OOB) Score in the Random Forest
IPL Team Win Prediction Project Using Machine Learning
Introduction to Boosting
Gradient Boosting Algorithm
Math behind GBM
Implementing GBM in python
Regularized Greedy Forests
Extreme Gradient Boosting
Implementing XGBM in python
Tuning Hyperparameters of XGBoost in Python
Implement XGBM in R/H2O
Adaptive Boosting
Implementing Adaptive Boosing
LightGBM
Implementing LightGBM in Python
Catboost
Implementing Catboost in Python

Introduction to Clustering
Applications of Clustering
Evaluation Metrics for Clustering
Understanding K-Means
Implementation of K-Means in Python
Implementation of K-Means in R
Choosing Right Value for K
Profiling Market Segments using K-Means Clustering
Hierarchical Clustering
Implementation of Hierarchial Clustering
DBSCAN
Defining Similarity between clusters
Build Better and Accurate Clusters with Gaussian Mixture Models

Introduction to Machine Learning Interpretability
Framework and Interpretable Models
model Agnostic Methods for Interpretability
Implementing Interpretable Model
Understanding SHAP
Out-of-Core ML
Introduction to Interpretable Machine Learning Models
Model Agnostic Methods for Interpretability
Game Theory & Shapley Values

Deploying Machine Learning Model using Streamlit
Deploying ML Models in Docker
Deploy Using Streamlit
Deploy on Heroku
Deploy Using Netlify
Introduction to Amazon Sagemaker
Setting up Amazon SageMaker
Using SageMaker Endpoint to Generate Inference
Deploy on Microsoft Azure Cloud
Introduction to Flask for Model
Deploying ML model using Flask

Thank you for good explained article. Am just starting to explore the Analytics for past 6 months, Cross validation is the one i was looking to get my hands on and got ur article. One question is what is the Error Function we need to use?

Thanks sunil for the article. Is this the general way of writing the code in R and python for cross-validation? or are there other ways? Thanks,

Hi Sunil , Thank you . Great article.

I have a question. if we are creating 10 fold cross validation, we are training a model on 10 different datasets. It means we get 10 instances of model trained on 10 different datasets. At the time of final prediction do we need to predict our data on these 10 instances of models ? or take the skeleton of the model (same options we have used in CV) and train it on whole dataset and predict ? Can anyone please clarify ?

Neehar, Good question. Perhaps this will help you: If you are working in R, you can use the caret library to do the same processing with fewer lines of code. Note: The train function tries several models, and selects the best model. ### Load the library library(caret) # Load the iris dataset data(iris) # Define training control: 5 fold cross-validation. If you want to perform 10 fold cv, set number=10, train_control <- trainControl(method="cv", number=5) # Train the model using randomForest (rf) model <- train(Sepal.Length~., data=iris, trControl=train_control, method="rf") ##The printed summary shows the sample sizes used, the best model selected and other information. print(model) # Make predictions predictions <- predict(model, iris[,-1]) # Summarize results result <- data.frame(Actual=iris[,1],Predicted=predictions) result$Difference <- abs(result$Actual - result$Predicted) summary(result$Difference) ## The End

Good one

Hi, Nice article explaining k-fold cross validation. Just thought of adding the mae function from hydroGOF package library(hydroGOF) sim <- result$Predicted obs <- result$Actual mae(sim,obs) Output : 0.3157678

thanks for your good article , i have a question if you can explaine more please in fact : i have tested the tow appeoch of cross validation by using your script in the first hand and by using caret package as you mentioned in your comment : why in the caret package the sample sizes is always around 120,121... it is possible to get for example sample sizes 140 or 90 .. No pre-processing Resampling: Cross-Validated (5 fold) Summary of sample sizes: 120, 121, 119, 120, 120 Resampling results across tuning parameters: any clarification please about functioning of this method. thanks in advance

@Semi, :'Why in the caret package the sample sizes is always around 120,121…" A good question. Answer: The 'sample size used by caret' depends on the resampling parameter provided in trainControl. It seems that you used the value 5.. Try it again with a value 10. You will see a different sample size selected. tc <- trainControl("cv", number=10) model <- train(Sepal.Length~., data=iris, trControl=train_control, method="rf") Hope this helps.

thanks for the reply but can you expaine to me "the resampling paramet" when we use resamling is not a bootstrap ? thanks

The resampling method ('bootstrap' or 'no bootstrap') depends on the parameter specified in trainControl. You can try the following, and see the results: For the benefit of others, please describe what you see. tc.cv <- trainControl("cv", number=10) model1 <- train(Sepal.Length~., data=iris, trControl=tc.cv, method="rf") print (model1) tc.boot <- trainControl("boot", number=10) model2 <- train(Sepal.Length~., data=iris, trControl=tc.boot, method="rf") print (model2)

@Ram thanks for your clarification , when i have compare two methos (cv and boot) , i remark that for model 1 (with cv,n=5 ) summary of sample sizes are: 120, 121, 120, 120, 119 and for the model 2 (with boot,n=5) Summary of sample sizes: 150, 150, 150, 150, 150 so can you telle me how can i use cv or boot method ? should i compare RMSE for each method and take the smaller value? waiting your reply thanks in advance .

@Selmi, You might want to read the article again. Sunil has explained it. (How to measure the model’s bias-variance?)

Very explaination...keep it up...!!!

thank you for article! very helpful!

Thanks Sunil, Very nice article.. R users can switch to using caret as library for cross validation. It's has a standardized wrapper for all the models and cross validation.. Traincontrl is the parameter name..

what if cross validation score becomes zero after the models are trained? Which conclusion we will come to? Model is appropriate or failed ??

Hi Priyanshu, What kind of problem are you trying to solve Regression/Classification? What is the evaluation metric?

This is completely irrelevant topic. Model performance will never improve. Model Accuracy can be rightly captured by K fold validation. Final model is always on all data. So irrespective of using k fold, non k fold, final model will always be same.

Hi Arpit, It is correct that the final model will be on the whole dataset but using cross validation, we can tune our parameters effectively to improve the overall model performance.

Great Article!

Great Article! The following part of the code placed on time series has a mistake: from sklearn.model_selection import TimeSeriesSplit from sklearn.model_selection import TimeSeriesSplit X = np.array([[1, 2], [3, 4], [1, 2], [3, 4]]) y = np.array([1, 2, 3, 4]) tscv = TimeSeriesSplit(n_splits=3) for train_index, test_index in tscv.split(X): print("Train:", train_index, "Validation:", val_index) X_train, X_test = X[train_index], X[val_index] y_train, y_test = y[train_index], y[val_index] -> val_index is not deffined it should be test_index I think :) X = np.array([[1, 2], [3, 4], [1, 2], [3, 4]]) y = np.array([1, 2, 3, 4]) tscv = TimeSeriesSplit(n_splits=3) for train_index, test_index in tscv.split(X): print("Train:", train_index, "Validation:", test_index) X_train, X_test = X[train_index], X[test_index] y_train, y_test = y[train_index], y[test_index]

Thanks for the suggestion! We have updated the code.

Very informative Blog... Thanks Sunil!!

Hi please reply ، can we share on our website? Thank you Maria

Thanks for a great article to understand the use of cross-validation techniques for a good fit of the model.

Can anyone please answer what kind of split mechanism is ideal for a very imbalanced dataset in a classification problem ? Is it K-Fold, StratifiedKfold or ShuffleSplit ? I have the total dataset count of 3338. Out of which Class A count is 525, Class B counts 2134 and Class C counts 679. So, the dataset is having almost 70% of a particular class B and rest is divided amongst class A & C. Please suggest. FYIP, I am using python. Thanks

Hi DEB, You can use StratifiedkFold as it will keep equal ratio of each class in every split making each split silimar.

You have not mentioned Adversarial Validation code for R......?

Hello. Thanks for this articles. To Improve Model Performance can we also use the K-mean clustering method?

Thanks @Sunil for this great article! Very useful :) About this code that @RAM wrote back in November 2015, my question is: if I want to make sure my final model is not overfitted (even though RF seems to prevent overfitting), do I compare these results (code below) from the predictions, against the OOB error? I understand the former is the error in the CV trained datasets, and the latter is the error in the CV test datasets. Is this correct? Many thanks! # Make predictions predictions <- predict(model, iris[,-1]) # Summarize results result <- data.frame(Actual=iris[,1],Predicted=predictions) result$Difference <- abs(result$Actual – result$Predicted) summary(result$Difference)

Hi Gemma, If the validation accuracy is in sync with the training accuracy, you can say that the model is not overfitting. If the training accuracy is increasing while the validation accuracy starts to decrease, then the model is overfitting.

Hi..Thanks for putting it out with such detail. I am have developed a model using log regression in Angoss, and was trying to validate the same with k-fold cross validation. However, I am unable to make a sense of the results. While running the cross validation, I need to select either of the two comparison statistic - Accuracy or AUC. When I am selecting AUC as the statistic, I infer that AUC is not the same as the ROC of the model which I had created, based on the result. When I am using Accuracy as the statistic, I am getting average value of accuracy (likelihood function value) close to 0.96. Could you pls help me as to how do I read the result, and moreso, apply the cross validation result.

A great article explains the practical usage of cross-validation. Another article that I liked a lot can be found at

Very good explanation of the need of Cross-validation in ML