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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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Why are the efficiencies of the two pytorch writing methods in solving softmax so different?

The problem occurred when I was completing eecs-498-007 A2. In the method softmax_loss_vectorized,I got a way to vectorize: def softmax_loss_vectorized( W: torch.Tensor, X: torch.Tensor, y: torch....
break go break's user avatar
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1 answer
38 views

Analytical gradient of Softmax entropy loss does not match the numerical gradient

I'm trying to implement the gradient of the softmax entropy loss in Python. However, I can see that the analytical gradient does not match the numeric gradient. Here is my Python code: import numpy as ...
Jawad Damir's user avatar
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2 answers
43 views

How to get the output of the model, before the softmax, without chaning the model architecture?

I have a trained sequential keras model. The last layer is a Dense layer with softmax activation function: model = keras.models.Sequential() model.add(...) model.add(...) model.add(...) model.add(...
user3668129's user avatar
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1 answer
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What's inside inner vertices in Word2Vec Hierarchical Softmax?

I have a question about Hierarchical Softmax. Actually, I do not quite understand what is stored in inner vertices (which are not leaf vertices). I clearly understand the main idea of this algorithm, ...
myfakeaccount's user avatar
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53 views

Implementation details of softmax backpropagation in PyTorch

I'm implementing a tiny autograd engine in pure Python with numpy. My code is following the PyTorch API. I'm using gradients calculated by PyTorch's autograd to test my implementation of different ...
JacekDuszenko's user avatar
1 vote
0 answers
54 views

pytorch softmax outputs several values

I'm trying to calculate the softmax to get the probability of the text being real or not. When I use the openai weights and load the checkpoint for their detector I get the following results using the ...
Jesper Ezra's user avatar
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10 views

How to replace the softmax function by an approximate softmax function inside a transformer application like NMT

To calculate the BLEU score of both accurate and approximate softmax and compare.
Shareefa Fairoose's user avatar
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0 answers
26 views

libtorch forward result unexpected

I use a small net. The net converges and the accuracy is 1.0 after 400 iterations. So far, so good. conv1(torch::nn::Conv2dOptions(1, 15, /*kernel_size=*/3)), conv2(torch::nn::Conv2dOptions(15, 30,...
Dirk10000's user avatar
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1 answer
40 views

What is causing my softmax classifier to have an extremely high loss and a validation accuracy of 1.0 in the first epoch?

I'm writing my first CNN using a dataset of my own making consisting of 1400 training images and 600 testing images. Each image has a corresponding label. The softmax classifier should give a binary ...
C Torgs's user avatar
1 vote
1 answer
178 views

Implementing a Softmax output layer with cross-entropy loss

I am playing with this repo (https://github.com/SnailWalkerYC/LeNet-5_Speed_Up) and try to learn NN details. This repo implemented LeNet5 in C and CUDA. I am focusing on the CPU part now and its code ...
bssrdf's user avatar
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1 answer
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Implementing a Gumbel sigmoid to restructure the data tensor

Suppose that we have a tensor(shape:B,W,1) of logits, each value representing a binary prediction that needs to be sampled and based on the output of sampling I want to add extra dimensions to data ...
Barah Fazili's user avatar
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47 views

Softmax output and probabilities not matching up?

I'm trying to test how well a GPT model can classify verbs according to the left-side context in a given input sentence with a masked term. For example, Input sentence: "The ballerinas' costumes ...
karak87rt0's user avatar
-4 votes
1 answer
238 views

Can you describe how to apply SoftMax derivatives in generic terms for C++?

This question is regarding Softmax’s derivatives. I looked around for SoftMax function and found this useful language agnostic resource: Which Translates to C/C++ nicely. void TransformToSoftMax(...
Adrian E's user avatar
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110 views

Is there an efficient way of implementing sparsemax in pytorch-geometric?

My implementation of sparsemax in pytorch-geometric is having cuda memory problems and is too slow compared to softmax implementation in This is my code: from typing import Optional import torch from ...
Sofia's user avatar
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1 answer
51 views

getting the error as value error , what should i do if i get this error

F.softmax(Model(input_ids, attention_mask), dim=1) and the error is Found unexpected instance while processing input tensors for keras functional model. Expecting KerasTensor which is from tf.keras....
Santhoshi Vaasanthi's user avatar
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87 views

How to handle softmax derivatives matrix size when performing backpropagation with neural network?

So I have an input layer, a hidden layer and an output layer. The forward makes sense to me and I've got the basic backpropagation steps down and after using a tutorial online. I'm using a softmax ...
S F's user avatar
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362 views

Analyzing BERT-models -- Using raw output logits or softmax values?

In the description of BERT's output it says: Prediction scores of the language modeling head (scores for each vocabulary token before SoftMax). I have problems in understanding what this output ...
Joan C's user avatar
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1 answer
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index 1 is out of bounds for axis 0 with size 1 for softmax function

I'm trying to write a code that calculates hinge loss and softmax loss for each picture of cifar10, and I'm getting this error: "index 1 is out of bounds for axis 0 with size 1" for the log ...
Melina's user avatar
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0 answers
99 views

pyTorch autoencoder for unsupervised classification: loss not changing

I'm new to pyTorch. I want to use the autoencoder concept to get an unsupervised classification. It seems like you should be able to use the minimum dimension from the autoencoder as input to a ...
Wick's user avatar
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1 answer
170 views

Why does my MLP model's loss explode when using softmax and cross entropy in Python?

I am writing an NLP model from scratch in Python, using only NumPy for most of the functions. import numpy as np # my loss and activation functions def relu(x): return np.maximum(0, x) def ...
Capta1n_n9m0's user avatar
2 votes
0 answers
286 views

unnormalized vs log probability in gumbel softmax

I am trying to figure out the input of the torch.gumbel_softmax, or just gumbel softmax in general. From its original paper it seems like the authors are using the normalized categorical log ...
Sammy Cui's user avatar
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Keras softmax layer output not summing 1 [duplicate]

I'm working on a four class multi-class text classification problem. I used a pretrained masked language model and add a classification head. The model takes two text sources as input and should ...
Santiago Esteban's user avatar
-2 votes
1 answer
63 views

How to make a prediction using karas TensorFlow?

Ive coded this machine learning algoritm but it retured to me a wierd array. I want to input 2 numbers and then those numbers be clasified into similar results found in Y, How do I make a prediction ...
Kawith's user avatar
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Issues with calculating new weights in a neural network

I have written a simple digit recognition neural network and it does not seem to be learning. It has 2 hidden layers and uses the softmax activation function and whenever it runs it seems to converge ...
Dhdhdh 's user avatar
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1 answer
216 views

Softmax as activation function in CNN while doing convolution

I was working on segmentation using unet, its a multiclass segmentation problem with 21 classes. Thus Ideally we go with softmax as activation in the last layer, which contains 21 kernels so that ...
JAGADEESHA R G 's user avatar
-1 votes
1 answer
137 views

How to square a row in NumPy to go from a 2-d array to a 3-d one where each row was squared?

I am trying to figure out a way to get the rows of a 2-d matrix squared. The behaviour I would like to have is something like this: in[1] import numpy as np in[2] a = np.array([[1,2,3], ...
ggustavs's user avatar
1 vote
1 answer
122 views

Neural Network: For Binary Classification use 1 or 2 output neurons with VGG19

I have two groups of images (concrete cracks and uncracked concrete) so they are binary classification, I am making classification for them by using vgg19. when I used (1) neuron for the output layer ...
yasmin's user avatar
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1 vote
1 answer
69 views

analyze the train-validation accuracy learning curve

I am building a two-layer neural network from scratch on the Fashion MNIST dataset. In between, using the RELU as activation and on the last layer, I am using softmax cross entropy. I am getting the ...
Akshat's user avatar
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How to implement the Softmax function to each element in a 3d numpy array/matrix?

I have defined the softmax function as def softmax(x): """Compute softmax values for each sets of scores in x.""" e_x = np.exp(x) return e_x / e_x.sum(axis = ...
XYZ's user avatar
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1 answer
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MNIST creating multinomal model with 0~5 labels (low accuracy)

I am supposed to run a model with 0,1,2,3,4,5 labels from MNIST data and check accuracy. I have to use one-hot encoding as well. This is what I got: > import tensorflow as tf from tensorflow import ...
pyCaraOL's user avatar
0 votes
1 answer
144 views

BERT Transformer model gives an error for multiclass classification

I am trying to train a sentiment analysis model with 5 classes (1-Very Negative, 2-Negative, 3-Neutral, 4-Positive, 5-Very Positive) with the BERT model. from transformers import BertTokenizer, ...
Kay's user avatar
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1 vote
1 answer
163 views

Same script computes different results on Matlab and Python

I am trying to implement softmax function but weirdly I am getting two different outputs on MATLAB and on Python: MATLAB script: function sm = softmax(Y) e_y = exp(Y - max(Y)) sm = e_y / sum(...
Anna's user avatar
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1 answer
224 views

Softmax and its derivative along an axis

I'm trying to implement a Softmax activation that can be applied to arrays of any dimension and softmax can be obtained along a specified axis. Let's suppose I've an array [[1,2],[3,4]], then if I ...
pranftw's user avatar
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2 votes
1 answer
341 views

CrossEntropyLoss showing poor accuracy on 2d output

I'm trying some experiments on a simple neural network that just tries to learn the squares of some random numbers, represented as arrays of decimal digits, code copied below, with changes indicated ...
rwallace's user avatar
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1 answer
690 views

Why does Softmax(dim=0) produce poor results?

I'm getting weird results from a PyTorch Softmax layer, trying to figure out what's going on, so I boiled it down to a minimal test case, a neural network that just learns to decode binary numbers ...
rwallace's user avatar
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1 vote
2 answers
921 views

how to calculate the confidence of a softmax layer

I am working on a multi-class computer vision classification task and using a CNN with FC layers stacked on top using softmax activation, the problem is that lets say im classifying animals categories,...
mahdi bazzi's user avatar
2 votes
0 answers
240 views

Boltzmann Exploration (softmax) efficient action probabilities update (and roulette wheel action selection)

I have reinforcement learning problem which for this purpose can be substituted by multi-armed bandit. There are various reinforcement learning techniques applicable to this problem, two being: ...
eXPRESS's user avatar
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1 vote
0 answers
160 views

Temperature Probability Distribution using datetime

I am trying to build a model which predicts the temperature probability distribution at a given day and time. For eg: The temperature can take upto 46 values (each rounded off to nearest whole number ...
Zara's user avatar
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2 answers
124 views

Tensorflow Prediction in Bigquery Softmax

I have a multiclass classification TensorFlow model imported into GCP BigQuery. When you make predictions, the output is the probabilities which is a type FLOAT (the probabilities) and a mode ...
Data Scientist's user avatar
1 vote
1 answer
290 views

Implementation of softmax derivative for matrix input

I followed this blog post to implement a derivative of softmax function in a neural network. def forward(x): e_x = np.exp(x - np.max(x, axis=1, keepdims=True)) softmax = e_x / np....
pan_bagieta's user avatar
0 votes
1 answer
807 views

is Softmax a must have in NN?

I was wondering if softmax is a must-have in a multi-class(more than 2) classification neural network? I was reading some stack-overflow topics and I saw people talking that it's necessary to have ...
Solruhama's user avatar
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1 answer
357 views

How to apply softmax to CNN-LSTM time series

I've build the following model: steps=52 fips=1263 features=92 classes=6 modelo = Sequential() #CNN modelo.add(TimeDistributed(Conv1D(16,(3),activation='relu',padding='same'), ...
Guilherme Araujo's user avatar
0 votes
1 answer
1k views

Get the NaN and Infinity when calculating the Softmax

I'm trying to implement the Softmax function in android. Here is the original softmax function from Stackoverflow for reference: Softmax Activation Implementation private double softmax(double input, ...
stackbiz's user avatar
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0 votes
1 answer
72 views

Things I am Confused about

I am a little confused about a few things, and I was wondering if I could get some help. the necessity of softmax layers: I thought that for classification models the softmax layer converts creates ...
ThatGuyMuddy's user avatar
1 vote
1 answer
724 views

How can i get top 5 prediction in Image Classifier?

this code gives me top 1 prediction but i want top 5. how can i do that? # Get top 1 prediction for all images predictions = [] confidences = [] with torch.inference_mode(): ...
Mehdi Gholinejad's user avatar
0 votes
0 answers
444 views

neural network binary classification softmax logsofmax and loss function

I am building a binary classification where the class I want to predict is present only <2% of times. I am using pytorch The last layer could be logosftmax or softmax. self.softmax = nn.Softmax(dim=...
user2543622's user avatar
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2 votes
1 answer
264 views

How can I reduce dimension of a tensor after using Softmax?

I got a tensor of scores (lets' call it logits_tensor) that has shape: (1910, 164, 33). Taking a look at it, logits_tensor[0][0]: tensor([-2.5916, -1.5290, -0.8218, -0.8882, -2.0961, -2.1064, -0.7842, ...
Marco's user avatar
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1 answer
528 views

Is this softmax activation function using torch.exp() correct?

I am trying to develop a function for softmax activation. The function should do torch.Tensor, 2D matrix with sum over rows is 1. Is this function correct? def softmax(x): return torch.exp(x)/...
mike's user avatar
  • 13
1 vote
0 answers
159 views

IndexError: 'tuple index out of range' for Training set while doing SDG Softmax

Please help me understand where I might be going wrong in the following code because while calculating accuracy for the training data, the above IndexError: Tuple index out of range is constantly ...
Vasu Gupta's user avatar
1 vote
1 answer
431 views

Loss is NaN using activation softmax and loss function categorical_crossentropy

I'm trying to make this model work. Initially x.shape is (6703, 56) and y.shape is a binary column having shape (6703, ). Then I run y = y.to_numpy() y = y.astype("float32") y = tf.keras....
Gaetano L's user avatar

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