# What's is the difference between train, validation and test set, in neural networks?

I'm using this library to implement a learning agent.

I have generated the training cases, but I don't know for sure what the validation and test sets are.
The teacher says:

70% should be train cases, 10% will be test cases and the rest 20% should be validation cases.

edit

I have this code for training, but I have no idea when to stop training.

``````  def train(self, train, validation, N=0.3, M=0.1):
# N: learning rate
# M: momentum factor
accuracy = list()
while(True):
error = 0.0
for p in train:
input, target = p
self.update(input)
error = error + self.backPropagate(target, N, M)
print "validation"
total = 0
for p in validation:
input, target = p
output = self.update(input)
total += sum([abs(target - output) for target, output in zip(target, output)]) #calculates sum of absolute diference between target and output

accuracy.append(total)
print min(accuracy)
print sum(accuracy[-5:])/5
#if i % 100 == 0:
print 'error %-14f' % error
if ? < ?:
break
``````

edit

I can get an average error of 0.2 with validation data, after maybe 20 training iterations, that should be 80%?

average error = sum of absolute difference between validation target and output, given the validation data input/size of validation data.

``````1
avg error 0.520395
validation
0.246937882684
2
avg error 0.272367
validation
0.228832420879
3
avg error 0.249578
validation
0.216253590304
...
22
avg error 0.227753
validation
0.200239244714
23
avg error 0.227905
validation
0.199875013416
``````
• "...that should be 80%?" No, average error and percent correct are two different things. Suppose your target value is 5.0 and your neuron returned 4.8 (i.e. an error of 0.2). Depending on the data an error of 0.2 may be acceptable, so if the error is small enough then you might consider that instance correctly specified. So if you have 10 targets and your classification error for 7 of them was within the acceptable range, then you would have classified 70% of the data correctly. Jun 7, 2010 at 4:23
• What is the termination criteria required by your teacher? Jun 7, 2010 at 4:28

The training and validation sets are used during training.

``````for each epoch
for each training data instance
propagate error through the network
calculate the accuracy over training data
for each validation data instance
calculate the accuracy over the validation data
if the threshold validation accuracy is met
exit training
else
continue training
``````

Once you're finished training, then you run against your testing set and verify that the accuracy is sufficient.

Training Set: this data set is used to adjust the weights on the neural network.

Validation Set: this data set is used to minimize overfitting. You're not adjusting the weights of the network with this data set, you're just verifying that any increase in accuracy over the training data set actually yields an increase in accuracy over a data set that has not been shown to the network before, or at least the network hasn't trained on it (i.e. validation data set). If the accuracy over the training data set increases, but the accuracy over the validation data set stays the same or decreases, then you're overfitting your neural network and you should stop training.

Testing Set: this data set is used only for testing the final solution in order to confirm the actual predictive power of the network.

• its python :x i just cant get a stop criteria.. the values converge.. but always with some flutuation.. Jun 6, 2010 at 15:42
• @Daniel, does the training accuracy fluctuate or the validation accuracy fluctuates? It's possible that your validation accuracy fluctuates, but it's less likely that the training accuracy would fluctuate. When you say "input, target = p" does it mean that you're setting both to p? Jun 6, 2010 at 15:49
• I'm not very good with python, so the code looks a little confusing to me... in general you want to stop training when your validation accuracy meets a certain threshold, say 70% or 90%, whatever makes sense for the domain of your data. Jun 6, 2010 at 15:55
• Validating set is used in the process of training. Testing set is not. The Testing set allows 1)to see if the training set was enough and 2)whether the validation set did the job of preventing overfitting. If you use the testing set in the process of training then it will be just another validation set and it won't show what happens when new data is feeded in the network. May 10, 2011 at 10:05
• @AntonAndreev I don't get it. According to your answer, neither the `validation set` nor the `test set` are used to tune the weights of the neural network. Why can't you use the same data set, not used to train the weights, as the `validation set` and `test set`? What is gained by keeping them separate?
– Gili
Dec 13, 2017 at 10:14

Training set: A set of examples used for learning, that is to fit the parameters [i.e., weights] of the classifier.

Validation set: A set of examples used to tune the parameters [i.e., architecture, not weights] of a classifier, for example to choose the number of hidden units in a neural network.

Test set: A set of examples used only to assess the performance [generalization] of a fully specified classifier.

From ftp://ftp.sas.com/pub/neural/FAQ1.txt section "What are the population, sample, training set, design set, validation"

The error surface will be different for different sets of data from your data set (batch learning). Therefore if you find a very good local minima for your test set data, that may not be a very good point, and may be a very bad point in the surface generated by some other set of data for the same problem. Therefore you need to compute such a model which not only finds a good weight configuration for the training set but also should be able to predict new data (which is not in the training set) with good error. In other words the network should be able to generalize the examples so that it learns the data and does not simply remembers or loads the training set by overfitting the training data.

The validation data set is a set of data for the function you want to learn, which you are not directly using to train the network. You are training the network with a set of data which you call the training data set. If you are using gradient based algorithm to train the network then the error surface and the gradient at some point will completely depend on the training data set thus the training data set is being directly used to adjust the weights. To make sure you don't overfit the network you need to input the validation dataset to the network and check if the error is within some range. Because the validation set is not being using directly to adjust the weights of the netowork, therefore a good error for the validation and also the test set indicates that the network predicts well for the train set examples, also it is expected to perform well when new example are presented to the network which was not used in the training process.

Early stopping is a way to stop training. There are different variations available, the main outline is, both the train and the validation set errors are monitored, the train error decreases at each iteration (backprop and brothers) and at first the validation error decreases. The training is stopped at the moment the validation error starts to rise. The weight configuration at this point indicates a model, which predicts the training data well, as well as the data which is not seen by the network . But because the validation data actually affects the weight configuration indirectly to select the weight configuration. This is where the Test set comes in. This set of data is never used in the training process. Once a model is selected based on the validation set, the test set data is applied on the network model and the error for this set is found. This error is a representative of the error which we can expect from absolutely new data for the same problem.

EDIT:

Also, in the case you do not have enough data for a validation set, you can use crossvalidation to tune the parameters as well as estimate the test error.

• I know I'm not supposed to post meaningless comments like this, but wanted to tell you that I appreciate this answer greatly :) May 5, 2014 at 22:31

We create a validation set to

• Measure how well a model generalizes, during training
• Tell us when to stop training a model;When the validation loss stops decreasing (and especially when the validation loss starts increasing and the training loss is still decreasing)

Why validation set used: Cross-validation set is used for model selection, for example, select the polynomial model with the least amount of errors for a given parameter set. The test set is then used to report the generalization error on the selected model. From here: https://www.coursera.org/learn/machine-learning/lecture/QGKbr/model-selection-and-train-validation-test-sets

• I'm taking Andrew Ng's classes too and I agree with you. Validation set should be be a part of training. It should only be used to turn hyperparameters. Nov 18, 2017 at 18:17

Say you train a model on a training set and then measure its performance on a test set. You think that there is still room for improvement and you try tweaking the hyper-parameters ( If the model is a Neural Network - hyper-parameters are the number of layers, or nodes in the layers ). Now you get a slightly better performance. However, when the model is subjected to another data ( not in the testing and training set ) you may not get the same level of accuracy. This is because you introduced some bias while tweaking the hyper-parameters to get better accuracy on the testing set. You basically have adapted the model and hyper-parameters to produce the best model for that particular training set.

A common solution is to split the training set further to create a validation set. Now you have

• training set
• testing set
• validation set

You proceed as before but this time you use the validation set to test the performance and tweak the hyper-parameters. More specifically, you train multiple models with various hyper-parameters on the reduced training set (i.e., the full training set minus the validation set), and you select the model that performs best on the validation set.

Once you've selected the best performing model on the validation set, you train the best model on the full training set (including the valida‐ tion set), and this gives you the final model.

Lastly, you evaluate this final model on the test set to get an estimate of the generalization error.

Training Dataset: The sample of data used to fit the model.

Validation Dataset: The sample of data used to provide an unbiased evaluation of a model fit on the training dataset while tuning model hyperparameters. The evaluation becomes more biased as skill on the validation dataset is incorporated into the model configuration.

Test Dataset: The sample of data used to provide an unbiased evaluation of a final model fit on the training dataset.

Training data is used to update weights. If we talk about simple Multilayer perceptron neural networks, weights are updated during back propagation based on error on training data.

Validation data is used to check the overfitting of the model. It is also used as a stopping criteria for training. Different callbacks in Keras are dependent on validation data. For example we can set early stopping based on validation data. We always check the accuracy of model during training on validation data.

Testing data has nothing to do with the training process. Once trained model is saved, testing data is used to check the performance of model on unseen data.

# In simple words define Training set, Test set, Validation set

Training set: Is used for finding Nearest neighbors. Validation set: Is for finding different k which is applying to train set. Test set: Is used for finding the maximum accuracy and unseen data in future.

• The definition of training set and validation set is wrong in this answer. Jun 18, 2021 at 0:08