Questions tagged [dropout]

Dropout is a technique to reduce overfitting during the training phase of a neural network.

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Keras Dropout Convolutional Filters

I understand that dropout doesn't have the same effect for kernels of convolutional filters of a neural network, as it does for FC layers: But does the same fact apply, if you dropout the whole ...
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21 views

Keras/Tensorflow: Writing custom Convolution dropout layer having a well defined drop out mask shape

I want to implement a Dropout layer where the dropout units in a convolution layer will be provided by a custom function. Basically instead of random masks I want to provide my own mask for dropout ...
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How to apply Variational Dropout to GRU-Layers in Keras?

I am using two bidirectional GRU Layers in a functional Keras Model. How can i implement Variational Dropout in the exact same way Gal and Gahramani proposed it? I need to implement the exact method ...
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25 views

Can we convert hdf5 model to tflite with dropout in hdf5 model? How the model architecture looks after conversion with dropout?

Can we convert .HDF5 model with dropout in it to .tflite using the tflite converter? If yes, how the model architecture with dropout should look after conversion. I am not able to justify how the ...
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23 views

Adding dropout between time-steps in pytorch RNN

I am training built-in pytorch rnn modules (eg torch.nn.LSTM) and would like to add fixed-per-minibatch dropout between each time step (Gal dropout, if I understand correctly). Most simply, I could ...
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35 views

Is it a good model in the making with validation loss remaining lower than train curve, more or less constant gap as both are decreasing?

Adding dropout layers made the val loss remain lower than train loss, is it exceptable to have a constant generalization gap over the period? Here is the architecture: tf.keras.layers.CuDNNLSTM(1024,...
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23 views

TOCO failed ConverterError for converting .pb to .tflite keras

I am loading a keras model from json file like this: with open(str(incoming_json_file),'r') as fb: con = json.load(fb) where my keras model is defined like this: { "model": "Sequential", ...
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131 views

How to use Dropout and BatchNormalization in LSTM Networks (Keras)

I am using LSTM Networks for Multivariate Multi-Timestep predictions. So basically seq2seq prediction where a number of n_inputs is fed into the model in order to predict a number of n_outputs of a ...
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18 views

Call on an initialized tf.keras.Model gives dimension mismatch on Dropout layer within the model

I'm trying to save a TF Keras Model with 2 dropout layers included within the model (This is an Attention model - first dropout is for the attention weights and 2nd is for the overall output of the ...
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2answers
116 views

Keras: how to use dropout at train and test phase?

Is it possible to use dropout at train and test phase in Keras? Like described here: https://github.com/soumith/ganhacks#17-use-dropouts-in-g-in-both-train-and-test-phase
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Dropout layer directly in tensorflow: how to train?

After I created my model in Keras, I want to get the gradients and apply them directly in Tensorflow with the tf.train.AdamOptimizer class. However, since I am using a Dropout layer, I don't know how ...
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1answer
254 views

Training model in eval() mode gives better result in PyTorch?

I have a model with Dropout layers (with p=0.6). I ended up training the model in .eval() mode and again trained the model in .train() mode, I find that the training .eval() mode gave me better ...
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how to apply MC dropout to an LSTM network keras

i have a simple LSTM network developped using keras model = Sequential() model.add(LSTM(rnn_size,input_shape=(2,w),dropout = 0.25 , recurrent_dropout=0.25)) model.add(Dense(2)) and i would like to ...
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Is there a way to save the applied Keras dropout tensors for future use?

In my Keras CNN, I'm applying dropout during inference for some uncertainty measures. For a new idea I have, I need to be able to know which units in the network were turned off. So, I want to be able ...
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53 views

How to implement variational dropout in pytorch rnn layers?

The dropout Parameters in lstm only represent dropout between layers, but I need a variational dropout between time steps. https://pytorch.org/docs/stable/nn.html?highlight=lstm#torch.nn.LSTM There ...
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1answer
31 views

How can I use dropout in Conv Layer to drop activation maps in tensorflow?

I am trying to add dropout in convolutional layers(although it seems people dont do this a lot). According to cs231n, they recommended to drop the activation maps instead of units in all activation ...
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1answer
381 views

Using Dropout on Convolutional Layers in Keras

I have implemented a convolutional neural network with batch normalization on 1D input signal. My model has a pretty good accuracy of ~80%. Here is the order of my layers: (Conv1D, Batch, ReLU, ...
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1answer
600 views

Implement dropout to fully connected layer in PyTorch

How to apply dropout to the following fully connected network in Pytorch: class NetworkRelu(nn.Module): def __init__(self): super().__init__() self.fc1 = nn.Linear(784,128) ...
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2answers
934 views

Problem with Dropout version Google Colab

I am trying to add a dropout layer and I get this warning WARNING:tensorflow:From /usr/local/lib/python3.6/dist-packages/keras/backend/tensorflow_backend.py:3445: calling dropout (from tensorflow....
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1answer
83 views

Custom Layers in tensorflow

I am trying to make some changes to the inbuilt dropout function in tensorflow. What is the best procedure to do so? I'd like to make some changes in forward and backpropogation steps. In Tensorflow ...
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18 views

How to get the activation values of the Dropout layer in the last mini-batch in Keras

I have been trying to make autoencoder with custom loss function where the loss function depends on the values masked and not masked by the dropout layer differently. So I am trying to access the ...
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15 views

Multiple dropout layers in class_head and box_head for fast MCDropout

I am using Faster R-CNN Resnet 101 of Tensorflow's API. I added multiple dropout layers to class_head and box_head prediction methods for a faster MC Dropout sampling. For instance, I want to receive ...
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30 views

Drop out in regression task for neural network

I have a neural network for regression prediction means that the output is a real value number in range 0 to 1. I used drop out for all layers and the errors suddenly increased and never converged. ...
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23 views

Shared dropout layer on input

I want to apply same dropout to two input tensors of same shape. One way to do that is to join the inputs, apply dropout and then split the tensors again. This way same features will get dropped from ...
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26 views

What is the proper way to implement an inverse dropout layer in keras? [duplicate]

I read a lot of math explanations on this here which I understood nothing. Can anyone provide a simple code example? I am looking for a keras sequential model example. Thanks for all the answers.
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2answers
378 views

How to use MC Dropout on a variational dropout LSTM layer on keras?

I'm currently trying to set up a (LSTM) recurrent neural network with Keras (tensorflow backend). I would like to use variational dropout with MC Dropout on it. I believe that variational dropout is ...
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1answer
52 views

In Keras, on which weight is the dropout applied?

I am currently trying to find a way to retrieve which weights are "ignored" for a given layer (especially when I use the "training" flag to use dropout during the test phase). Is there an easy way to ...
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2answers
944 views

Implementing dropout from scratch

This code attempts to utilize a custom implementation of dropout : %reset -f import torch import torch.nn as nn # import torchvision # import torchvision.transforms as transforms import torch ...
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1answer
272 views

How can I tell Keras the learning phase when I use train_on_batch to train a model?

I have dropout layers in my model so I want keras to figure out the training and test phases to run or ignore the dropout layers, and I found that K.set_learning_phase can do me this favor but how can ...
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2answers
104 views

How Can I Add drop out technique to the keras Retina net?

I'm working with RetinaNet NN model for object detection and I faced with over fitting problem. One of the solutions is adding "Dropout". I'm Using the keras code Here I want to Add Dropout to the ...
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1answer
67 views

Using TensorFlow Keras to Train a DNN. Why Does Accuracy Cap-Off When Using Dropout

I'm using TensorFlow Keras to build and fit a Deep Neural Network (DNN). I've been encouraged to use Dropout layers by the literature I have read. But when I add dropout layers with value of 0.5, my ...
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2answers
182 views

Input contains NaN, infinity or a value too large for dtype('float64') in Tensorflow

I am trying to train a LSTM and in my model I have an exponential learning rate decay and a dropout layer. In order to deactivate the dropout layer when testing and validating, I have put a ...
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32 views

Python code Bayesian dropout for régression task

I would like to change my code which is a convolutional network to a Bayesian network with the Monte Carlo dropout method. normally I need to add a dropout layer after each layer in the network, Can ...
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1answer
79 views

How add dropout into my tensorflow neural network with RNNCells?

I have some neural network (tensorflow) n_steps = 10 n_inputs = 3 n_outputs = 1 n_neurons = 100 n_layers = 3 X = tf.placeholder(tf.float32, [None, n_steps, n_inputs]) y = ...
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1answer
30 views

The understanding about dropout in DNN

From what I understand about DNN's dropout regularization is that: Dropout: First we randomly delete neurons from the DNN and leave only the input and output the same. Then we perform forward ...
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1answer
226 views

Keras Dropout Layer Model Predict

The dropout layer is only supposed to be used during the training of the model, not during testing. If I have a dropout layer in my Keras sequential model, do I need to do something to remove or ...
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3answers
2k views

PyTorch - How to deactivate dropout in evaluation mode

This is the model I defined it is a simple lstm with 2 fully connect layers. import copy import torch import torch.nn as nn import torch.nn.functional as F import torch.optim as optim class mylstm(...
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1answer
237 views

When using tf.data.TFRecordDataset as the input pipeline, how to have sess.run() or eval() invoked more than once in the same iteration round?

With tensorflow, I've made a dataset = tf.data.TFRecordDataset(filename) and iterator = dataset.make_one_shot_iterator(). Then in each round iterator.get_next() would give out a mini-batch of data as ...
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17 views

How to optimize a network

I have optimized a recurrent network by adding multicell LSTMs. The network adapts now faster to the training set, but in the testing set the loss increases (it goes even over 2.0!). I tried adding ...
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2answers
441 views

Dynamic switching of dropout in Keras/Tensorflow

I am building a reinforcement learning algorithm in Tensorflow and I would like to be able to dynamically turn dropout off and then on within one single call to session.run(). Rationale: I need to (...
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29 views

Changing tensor value from a saved tensorflow model

I have some models saved that have dropout layers. Unfortunately, the dropout_keep_dim value was not given as placeholders. Now when I restore the model for test purpose, it gives random output for ...
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1answer
178 views

Why do we want to scale outputs when using dropout?

From the dropout paper: "The idea is to use a single neural net at test time without dropout. The weights of this network are scaled-down versions of the trained weights. If a unit is retained ...
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1answer
474 views

Out of memory (OOM) error of tensorflow/keras model

when i tried to add dropout to the keras model it cause OOM error: tensorflow.python.framework.errors_impl.ResourceExhaustedError: OOM when allocating tensor with shape[128,128,176,216]... the model ...
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nn.Dropout vs. F.dropout pyTorch

By using pyTorch there is two ways to dropout torch.nn.Dropout and torch.nn.F.Dropout. I struggle to see the difference between the use of them - when to use what? - Does it make a difference? I ...
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1answer
144 views

How can I use dropout in keras

An error occurred while cnn modeling. When using dropout, the following error message occurs. this is error message UnboundLocalError: local variable 'a' referenced before assignment model def ...
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103 views

Lenet5 on Fashion-MNIST - “poor” accuracy and comparing different regularizations

I'm trying to train and test lenet-5 CNN on Fashion-MNIST dataset. I'm using the original paper implementation with small changes (all conv layers are connected to all channels of the previous layer ...
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218 views

Subsequent dropout layers all connected to the first in keras?

So I just installed TensorBoard and looked at a deep LSTM I have been working on and saw something on the graph that I wasn't expecting. I have 5 hidden LSTM layers, each followed by a dropout layer, ...
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1answer
38 views

Keras weight file load exception: loading 2 layers into a model with 0 layers

Exception happened when I add dropout to the input layer. The exception was mentioned in other threads as well related to another issues and most common suggested solution is to downgrade the Keras ...
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1answer
302 views

Adding Dropout to testing/inference phase

I've trained the following model for some timeseries in Keras: input_layer = Input(batch_shape=(56, 3864)) first_layer = Dense(24, input_dim=28, activation='relu', ...
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1answer
38 views

Dropout in R: randomly remove elements and replace them with NA

I want to implement dropout i.e. randomly replace elements with NAs and return the vector/list back with NA values. The wanted result is to reduce overfitting so there may be better convenience ...