I am trying to build a Deep Learning model to pick out Tropical Cyclones in weather model data. I have collected the data, normalized it in the region [0, 1] and passed it to my early model. Then I plotted my loss and accuracy curves as here. I am getting weird curves as the validation loss starts increasing after ~50 epochs, indicating overfitting, but the validation accuracy is still increasing. Is my model overfitting (at around 50 epochs) or not?
These graphs are classical graphs that comes with overfitting! You can recognize overfit because even though training accuracy keeps increasing, validation accuracy does not. To prevent overfit, there are several approaches; too numerous to name in one answer. You could apply L1/L2 regularization, dropout, or artificially expand your training data (amongst others).
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I'm currently working on a multi-class classification problem which is highly imbalanced. I want to save my model weights for best epoch but I'm confused on which metric I should choose?
Here's my training progress bar :
I am using ModelCheckpoint callback in tf.keras and monitoring val_loss as a metric to save best model weights.
As you can see in the image,
At 8th epoch I got an val_acc = 0.9845 but val_loss = 0.629 and precision and recall is also high here.
But at 3rd epoch I got val_acc = 0.9840 but val_loss = 0.590
I understand the difference is not huge but in such cases what's the ideal metric to believe on imbalanced dataset?
The most important factors are the the validation and training error.
If the validation loss (error) is going to increase so means overfitting. You must set the number of epochs as high as possible and avoid the overfitting and terminate training based on the error rates. . As long as it keeps dropping training should continue. Till model start to converge at nth epochs. Indeed it should converge quite well to a low val_loss.
Just bear in mind an epoch is one learning cycle where the learner can see the whole training data set. If you have two batches, the learner needs to go through two iterations for one epoch.
This link can be helpful.
You can divide data in 3 data sets, training, validation and evaluation. Train each network along enough number of epochs to track the training Mean Squared Error to be stuck in a minimum.
The training process uses training data-set and should be executed epoch by epoch, then calculate the Mean Squared Error of the network in each epoch for the validation set. The network for the epoch with the minimum validation MSE is selected for the evaluation process.
This can happen for several reasons. Assuming you have used proper separation of train, test and validation set and preprocessing of datasets like min-max scaler, adjusting missing values, you can do the following.
First run the model for several epoch and plot the validation loss graph.
If the loss is first reducing and after reaching a certain point it is now increasing, if the graph is in U shape, then you can do early stopping.
In other scenario, when loss is steadily increasing, early stopping won't work. In this case, add dropout layer of 0.2-0.3 in between the major layers. This will introduce randomness in the layers and will stop the model from memorising.
Now once you add dropouts, your model may suddenly start to behave strange. Tweak with activation functions and number of output nodes or Dense layer and it will eventually get right.
I am training a model, and using the original learning rate of the author (I use their github too), I get a validation loss that keeps oscillating a lot, it will decrease but then suddenly jump to a large value and then decrease again, but never really converges as the lowest it gets is 2 (while training loss converges to 0.0 something - much below 1)
At each epoch I get the training accuracy and at the end, the validation accuracy. Validation accuracy is always greater than the training accuracy.
When I test on real test data, I get good results, but I wonder if my model is overfitting. I expect a good model's val loss to converge in a similar fashion with training loss, but this doesn't happen and the fact that the val loss oscillates to very large values at times worries me.
Adjusting the learning rate and scheduler etc etc, I got the val loss and training loss to a downward fashion with less oscilliation, but this time my test accuracy remains low (as well as training and validation accuracies)
I did try a couple of optimizers (adam, sgd, adagrad) with step scheduler and also the pleateu one of pytorch, I played with step sizes etc. but it didn't really help, neither did clipping gradients.
Is my model overfitting?
If so, how can I reduce the overfitting besides data augmentation?
If not (I read some people on quora said it is nothing to worry about, though I would think it must be overfitting), how can I justify it? Even if I would get similar results for a k-fold experiment, would it be good enough? I don't feel it would justify the oscilliating. How should I proceed?
The training loss at each epoch is usually computed on the entire training set.
The validation loss at each epoch is usually computed on one minibatch of the validation set, so it is normal for it to be more noisey.
Solution: You can report the Exponential Moving Average of the validation loss across different epochs to have less fluctuations.
It is not overfitting since your validation accuracy is not less than the training accuracy. In fact, it sounds like your model is underfitting since your validation accuracy > training accuracy.
My team is training a CNN in Tensorflow for binary classification of damaged/acceptable parts. We created our code by modifying the cifar10 example code. In my prior experience with Neural Networks, I always trained until the loss was very close to 0 (well below 1). However, we are now evaluating our model with a validation set during training (on a separate GPU), and it seems like the precision stopped increasing after about 6.7k steps, while the loss is still dropping steadily after over 40k steps. Is this due to overfitting? Should we expect to see another spike in accuracy once the loss is very close to zero? The current max accuracy is not acceptable. Should we kill it and keep tuning? What do you recommend? Here is our modified code and graphs of the training process.
https://gist.github.com/justineyster/6226535a8ee3f567e759c2ff2ae3776b
Precision and Loss Images
A decrease in binary cross-entropy loss does not imply an increase in accuracy. Consider label 1, predictions 0.2, 0.4 and 0.6 at timesteps 1, 2, 3 and classification threshold 0.5. timesteps 1 and 2 will produce a decrease in loss but no increase in accuracy.
Ensure that your model has enough capacity by overfitting the training data. If the model is overfitting the training data, avoid overfitting by using regularization techniques such as dropout, L1 and L2 regularization and data augmentation.
Last, confirm your validation data and training data come from the same distribution.
Here are my suggestions, one of the possible problems is that your network start to memorize data, yes you should increase regularization,
update:
Here I want to mention one more problem that may cause this:
The balance ratio in the validation set is much far away from what you have in the training set. I would recommend, at first step try to understand what is your test data (real-world data, the one your model will face in inference time) descriptive look like, what is its balance ratio, and other similar characteristics. Then try to build such a train/validation set almost with the same descriptive you achieve for real data.
Well, I faced the similar situation when I used Softmax function in the last layer instead of Sigmoid for binary classification.
My validation loss and training loss were decreasing but accuracy of both remained constant. So this gave me lesson why sigmoid is used for binary classification.
I have run deep learning models(CNN's) using tensorflow. Many times during the epoch, i have observed that both loss and accuracy have increased, or both have decreased. My understanding was that both are always inversely related. What could be scenario where both increase or decrease simultaneously.
The loss decreases as the training process goes on, except for some fluctuation introduced by the mini-batch gradient descent and/or regularization techniques like dropout (that introduces random noise).
If the loss decreases, the training process is going well.
The (validation I suppose) accuracy, instead, it's a measure of how good the predictions of your model are.
If the model is learning, the accuracy increases. If the model is overfitting, instead, the accuracy stops to increase and can even start to decrease.
If the loss decreases and the accuracy decreases, your model is overfitting.
If the loss increases and the accuracy increase too is because your regularization techniques are working well and you're fighting the overfitting problem. This is true only if the loss, then, starts to decrease whilst the accuracy continues to increase.
Otherwise, if the loss keep growing your model is diverging and you should look for the cause (usually you're using a too high learning rate value).
I think the top-rated answer is incorrect.
I will assume you are talking about cross-entropy loss, which can be thought of as a measure of 'surprise'.
Loss and accuracy increasing/decreasing simultaneously on the training data tells you nothing about whether your model is overfitting. This can only be determined by comparing loss/accuracy on the validation vs. training data.
If loss and accuracy are both decreasing, it means your model is becoming more confident on its correct predictions, or less confident on its incorrect predictions, or both, hence decreased loss. However, it is also making more incorrect predictions overall, hence the drop in accuracy. Vice versa if both are increasing. That is all we can say.
I'd like to add a possible option here for all those who struggle with a model training right now.
If your validation data is a bit dirty, you might experience that in the beginning of the training the validation loss is low as well as the accuracy, and the more you train your network, the accuracy increases with the loss side by side. The reason why it happens, because it finds the possible outliers of your dirty data and gets a super high loss there. Therefore, your accuracy will grow as it guesses more data right, but the loss grows with it.
This is just what I think based on the math behind the loss and the accuracy,
Note :-
I expect your data is categorical
Your models output :-
[0.1,0.9,0.9009,0.8] (used to calculate loss)
Maxed output :-
[0,0,1,0] (used to calculate acc )
Expected output :-
[0,1,0,0]
Lets clarify what loss and acc calculates :
Loss :- The overall error of y and ypred
Acc :- Just if y and maxed(ypred) is equal
So in a overall our model almost nailed it , resulting in a low loss
But in maxed output no overall is seen its just that they should completely match ,
If they completely match :-
1
else:
0
Thus resulting in a low accuracy too
Try to check mae of the model
remove regularization
check if your are using correct loss
You should check your class index (both train and valid) in training process. It might be sorted in different ways. I have this problem in colab.
I use the tensorflow to train a simple two-layer RNN on my data set. The training curve is shown as follows:
where, the x-axis is the steps(in one step, a batch_size number of samples is used to update the net parameters), the y-axis is the accuracy. The red, green, blue line is the accuracy in training set, validation set, and the test set, respectively. It seems the training curve is not smooth and have some corrupt change. Is it reasonable?
Have you tried gradient clipping, Adam optimizer and learning rate decay?
From my experience, gradient clipping can prevent exploding gradients, Adam optimizer can converge faster, and learning rate decay can improve generalization.
Have you shuffled the training data?
In addition, visualizing the distribution of weights also helps debugging the model.
It's absolutely OK since you are using SGD. General trend is that your accuracy increases as number of used minibatches increases, however, some minibatches could significantly 'differ' from most of the others, therefore accuracy could be poor on them.
The fact that your test and validation accuracy drops horribly at times 13 and 21 is suspicious. E.g. 13 drops the test score below epoch 1.
This implies your learning rate is probably too large: a single mini-batch shouldn't cause that amount of weight change.