Questions tagged [softmax]

Use this tag for programming-related questions about the softmax function, also known as the normalized exponential function. Questions specific to a certain programming language should also be tagged with that language.

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tf.nn.softmax does not operate as expected, why?

I have built a two-layer encoder-decoder ConvLSTM network and on top of that, I use a convolution layer (number of filters= 1). I feed the convolution layer output into a softmax, but softmax produces ...
2
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1answer
54 views

The output of softmax makes the binary cross entropy's output NAN, what should I do?

I have implemented a neural network in Tensorflow where the last layer is a convolution layer, I feed the output of this convolution layer into a softmax activation function then I feed it to a cross-...
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3answers
32 views

Difference in having Sigmoid activation function instead of linear activation and using sigmoid in loss

I am fairly new to the loss-functions and I have a 800 binary classification problem (meaning 800 neurons at the output that are not effected by eachother - probablity of each is 0 or 1). Now looking ...
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0answers
13 views

Replacement of softmax function with SVM in output layer of LSTM Network

I am implementing an LSTM Network to classify news into 4 categories. I want to replace the softmax function in the output layer with an SVM classifier. I tried changing the loss function to 'hinge' ...
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0answers
48 views

How to intepret Keras Dense layer with rank of 3

I am using Keras and Tensorflow. I understand that Dense lyer with softmax activation will output a set of probablities. Suddenly, I notice that other people use Dense layer with softmax activation ...
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1answer
16 views

How to get classification probabilities in Keras?

I am trying to get classification probabilities out of my trained Keras model but when I use the model.predict (or model.predict_proba) method, all I get is an array of this form: array([[0., 0., 0., ...
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0answers
27 views

Same probability output in LSTM

I have an LSTM (return sequences=True) that classify a sequence in one of two classes. The output comes in form of probabilities (softmax output function). The problem: each class has its own ...
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1answer
19 views

How to squish a continuous cosine-theta score to a discrete (0/1) output?

I implemented a cosine-theta function, which calculates the relation between two articles. If two articles are very similar then the words should contain quite some overlap. However, a cosine theta ...
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1answer
12 views

How do i get the maximum valued label when using a softmax activation function in the output layer of neural network?

in a model I have trained I am applying softmax function in the output layer of the neural network. the output has 41 categories and I want to fetch the label with max value and the value itself ..i. ...
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1answer
33 views

Terms in neural networks: what is annealing temperature parameter in a softmax activation function?

I’m reading this paper about sound separation by using neural network method. It uses the term "annealing the temperature parameter in a softmax activation function". What does it mean?
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1answer
25 views

Cross Entropy Error remains unchanged for various values

I am using Cross Entropy with Softmax as loss function for my neural network. The cross entropy function I have written is as follows: def CrossEntropy(calculated,desired): sum=0 n=len(...
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0answers
40 views

Multitask classification with softmax function

I'm trying to train a multi-task classification neural network using softmax as output function. The idea comes from the paper "Beyond the hype: deep neural networks outperform established methods ...
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1answer
29 views

How does softmax loss works in multi-task learning

I got a little bit lost while studying loss functions for multi-task learning. For instance, in binary classification with only one task, for example classifying emails as spam or not, the sum of ...
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0answers
13 views

Multi Class Classification using XGBClassifier

I am using XGBClassifier for multiclass classification(5 classes - [1,2,3,4,5]). I have set objective parameter as 'multi:softmax' but still when I predict using my model I am getting continuous ...
2
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0answers
52 views

Keras Tensorflow works well in training and test, but predict same class for all inputs in final dataset

I'm having trouble using Tensorflow to solve a classification problem I have a dataset with 259,514 rows, classified into the following groups: Groups: [0,1) - 171.646 rowns [1,55) - 17....
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1answer
50 views

Keras masking zero before softmax

Suppose that I have the following output from an LSTM layer [0. 0. 0. 0. 0.01843184 0.01929785 0. 0. 0. 0. 0. 0. ] and I want ...
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1answer
48 views

How to change to sigmoid to learn multi-label classification

I'm trying to use 'inception resnet v2.py' to do a multi-label classification. I used sigmoid, but the result is not good. Do you know exactly where to change? https://github.com/tensorflow/models/...
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0answers
32 views

what difference does it make to use sigmoid over softmax? (autoencoders, keras)

I came across this problem while I was training an autoencoder neural network (multilayer perceptron). Here is my code # AE encoding arch model=Sequential() model.add(Dense(units= 2000, activation= '...
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1answer
25 views

Take accuracy of n high probability output from Keras Lstm model

I have a Lstm model for sequence prediction,which is shown here: def create_model(max_sequence_len, total_words): input_len = max_sequence_len - 1 model = keras.models.Sequential() model....
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1answer
41 views

Clear Implementation of Softmax and Its Derivative

I'm currently writing my first multilayer neural net with python 3.7 and numpy, and I'm having trouble implementing softmax (I intend to use my network for classification, so having a working ...
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0answers
44 views

Why does the loss of vgg16 equal nan, but performs normally when adding an extra Softmax layer?

I am coding a vgg16 net with Tensorflow low-level api. The model is test in imagenet12 dataset. Due to computation cost, I split the validation set into 80% training data and 20% test data. First, ...
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0answers
22 views

Is there a method that can change from softmax to svm in CNN?

I am working on CNN for image classification. I implemented CNN with Softmax network as below, but I want to change this code to CNN with SVM. Can anyone help me solve my problem? def _build_net(self)...
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0answers
27 views

Is there any proper numpy function for the derivative of Sotfmax?

I'm beginner of deep learning and numpy and trying to implement numpy codes in this tutorial < https://medium.com/@14prakash/back-propagation-is-very-simple-who-made-it-complicated-97b794c97e5c > ...
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1answer
250 views

Should I use softmax as output when using cross entropy loss in pytorch?

I have a problem with classifying fully connected deep neural net with 2 hidden layers for MNIST dataset in pytorch. I want to use tanh as activations in both hidden layers, but in the end, I should ...
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1answer
32 views

Obtaining Logits of the output from deeplab model

I'm using a pre-trained deeplab model (from here) to obtain segmentations for an input image. I'm able to obtain the sematic labels (i.e. SemanticPredictions) which is argmax applied to logits (link). ...
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1answer
40 views

Creating softmax from a tf.distributions.Categorical output layer

I'm training an agent to act in a discrete environment, and I'm using a tf.distributions.Categorical output layer which I then sample to create a softmax output to determine what action to take. I ...
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1answer
68 views

Invalid value encountered in subtract - Softmax, Python

I'm using a numerically stabilised version of softmax as:- def softmax(arr): print(arr) expArr=np.exp(arr-np.max(arr)) print(expArr) return expArr/np.sum(expArr) It is being used as:-...
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2answers
79 views

How to perform tf.nn.softmax in two selected dimension in tensorflow?

I want to implement the tf.nn.softmax() for the selected two dimension of a tensor with shape (batch_size=?, height, width, channel). But it seems not possible for tf.nn.softmax() to receive 2 axis ...
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1answer
34 views

Converting normal distribution to softmax

I've found a good reinforcement learning example on github that I'd like to use. My issue is that the output is a normal distribution layer (code below) because it's used for continuous action spaces, ...
3
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1answer
57 views

tf.gather runs out of bound, while using a custom softmax_loss function, even though it shouldn't

I'm using a small custom function inside of tf.contrib.seq2seq.sequence_loss(softmax_loss_function=[...]) as a custom sofmax_loss_function: def reduced_softmax_loss(self, labels, logits): ...
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1answer
41 views

Is there a simple way to extend an existing activation function? My custom softmax function returns: An operation has `None` for gradient

I want to implement an attempt to make softmax faster by using only the top k values in the vector. For that I tried implementing a custom function for tensorflow to use in a model: def ...
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0answers
48 views

Softmax activation function output (with Tanh)

I am working on an MLP-neural network using supervised learning. For the hidden layers I am using Tanh (-1,1) and for the output layer Softmax (which gives the probability distribution btw 0 and 1. ...
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1answer
506 views

Derivative of softmax function in Python

Below is the softmax activation function for a neural network. What is the derivative of this function? def softmax(z): e = np.exp(z) return e / np.sum(e, axis=1)
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1answer
108 views

How to evaluate the results of multi-class classification by using keras?

I want to use deep learning for multi-class classification (softmax, keras). So, I constructed model, and I got the error, which was about that expected output shape and actual output shape is ...
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1answer
48 views

why softmax get small gradient when the value is large in paper 'Attention is all you need'

This is the screen of the original paper: the screen of the paper. I understand the meaning of the paper is that when the value of dot-product is large, the gradient of softmax will get very small. ...
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3answers
264 views

Implementation of softmax function returns nan for high inputs

I am trying to implement softmax at the end of cnn, The output I got is nan and zeros. I am giving high input values to softmax around 10-20k I'm giving an array of X=[2345,3456,6543,-6789,-9234] My ...
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0answers
19 views

Softmax Jacobian

I have a two dimensional numpy array and I performed the softmax operation on the array along axis -1. Now while performing backpropagation I have to compute the derivative of the softmax. I am a ...
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2answers
51 views

Softmax not resulting in a probability distribution in Python Implementation

I have a simple softmax implementation: softmax = np.exp(x) / np.sum(np.exp(x), axis=0) For x set as array here: https://justpaste.it/6wis7 You can load it as: import numpy as np x = np.as (...
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1answer
167 views

Derivative of Softmax function

I am trying to compute the derivative of softmax function. I have a 2d numpy array and I am calculating the softmax for the array along axis 1. My python code for the same is: def softmax(z): ...
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1answer
78 views

pytorch loading model not same softmax probabilities

I cannot reproduce the same results after loading a model using pytorch. I am training a model 'net' and in the same file, after training (kfold) then the model is saved and also tested in 1 specific ...
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1answer
69 views

Python - a way to train softmax keras model?

I'm using keras for a personal project very close to implementation of word2vec using keras. I got everything ready including the model but whenever I try to actually train the model on batch (in my ...
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2answers
45 views

implementing softmax method in python

I'm trying to understand this code from lightaime's Github page. It is a vetorized softmax method. What confuses me is "softmax_output[range(num_train), list(y)]" What does this expression mean? def ...
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1answer
16 views

What's the different of “classify” between softmax, logistic and svm?

I'm using caffe to do the object detection with SSD model, and recently work I adjust the loss type of "MultiBoxLoss". In the multibox_loss_layer.cpp file, its loss has SOFTMAX as default and LOGISTIC ...
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1answer
233 views

Pytorch softmax along different masks without for loop

Say I have a vector a , with an index vector b of the same length. The indexs are in range 0~N-1, corresponding to N groups. How can I do softmax for every group without for loop? I'm doing some sort ...
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1answer
85 views

Softmax Tensorflow Lite not behaving properly

I've made a simple convolutional Tensorflow model which uses softmax for inference. When I run the model in python and feed the model an image everything works accordingly. However when I convert the ...
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1answer
191 views

How tensorflow softmax add an unknown class?

I set up an ocr classification system using Tensorflow. Here is graph: def build_graph(top_k): # with tf.device('/cpu:0'): keep_prob = tf.placeholder(dtype=tf.float32, shape=[], name='...
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1answer
48 views

create deep network in matlab with logsig layer instead of softmax layer

I want to create a deep classification net, but my classes aren't mutually exclusive (that is what sofmaxlayer do). Is it possible to define a non mutually exclusive classification layer (i.e., a data ...
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0answers
70 views

Tensorflow: CNN softmax loss increasing

I am trying to implement die U-Net in Tensorflow but I don't get my loss to converge, it is increasing (significantly) no matter what learning rate. I tried learning rates from 0.1 to 1.0E-8, the ...
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1answer
27 views

Custom layer with Keras: Is it possible to have output neurons set to 0 in the output of a softmax layer based on zeros as data in an input layer?

I have a neural network with 13 output neurons in the last layer using softmax activation (soft_out). I also know exactly that based on the input values, certain neurons in the output layer shall have ...
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2answers
260 views

Keras custom softmax layer: Is it possible to have output neurons set to 0 in the output of a softmax layer based on zeros as data in an input layer?

I have a neural network with 10 output neurons in the last layer using softmax activation. I also know exactly that based on the input values, certain neurons in the output layer shall have 0 values. ...