Questions tagged [loss-function]

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TensorFlow error on custom loss function: ValueError: No gradients provided for any variable

QUESTION: What is the cause of this error and how do I fix it? BACKGROUND: I am attempting to implement a custom ("hierarchical") loss function to classify CIFAR-100 images that leverages ...
0 votes
2 answers
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Multi-target loss recommendations

I'm working on a classification problem. The number of classes is 5. I have a ground truth vector that has the shape (3) instead of 1. The values in this target vector are the possible classes and the ...
-1 votes
0 answers
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Issue with y_true argument that in passed into `CustomLoss` class while running `model.fit()`

I am training a custom model for YOLO style object detection with custom input pipeline and custom loss. The issue with this is it is giving me the following error in model.fit(). I traced this error ...
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1 answer
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Custom objective function in XGBoost not overriding default

I am trying to implement this loos function weighted_loss, as a custom objective in XGBoost, using the sklearn XBGClassifier wrapper, as follows: def weighted_binary_cross_entropy(dtrain, pred): # ...
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Return value of MRAE Loss

I want to calculate the mean absolute relative error. I found this function. But when I run it returns a very large number. Someone can help me ?? def mrae_loss(im_true, im_fake): error = torch....
-1 votes
1 answer
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what does reducing losses in a GAN mean?

I have built a GAN and I am training it manually according to the the concept of optimizing several functions at a time. The loss of the discriminator and the generator is reduced at the same time ...
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How to customize LightGBM cost function if it is in asymmetric form?

I am working on a binary classification excise, and trying to add a regularization item into the cost function of lightGBM. I understand it's necessary to provide gradient and hess in fobj, and ...
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0 answers
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Keras: regularizing loss for an output based on the other outputs

Setup I have a model with 3 inputs and 2 outputs (figure below). I have a defined loss per each output, but then I want to add a regularization term to each loss which is a function of two outputs: ...
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Matrix Tensor multiplication in YOTO implementation

I am trying to implement Loss conditional training (YOTO) which allows you to train a whole spectrum of losses by using a loss function that takes parameters. I am training an autoencoder that takes ...
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Why is eager execute required when using my custom loss function?

QUESTION: Why does my custom loss function require run_eagerly parameter to be set to True in the compile method in TensorFlow? BACKGROUND: I have built a CNN with TensorFlow 2.8.1 to classify CIFAR-...
-1 votes
0 answers
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HuggingFace Trainer's training loss has a staircase shape with sharp drop at start of each epoch

I am training an NLP model using HuggingFace Trainer's API. When doing training with trainer.train() it prints out the loss after N training steps (I can specify the logging steps in the ...
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Is the loss function wrong in the following code for binary classification of images using soft labels? Or is there some other problem?

We are using CNN to classify images with labels 0 and 1 in tensorflow. However, in reality, images have probability values between 0 and 1, not one-hot labels of 0 and 1. Images with probabilities in ...
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Add a regularization term to the objective of a stable-baseline3 model

I'm using stable-baseline3's PPO implementation (see here) and wanted to play with the model a little bit further. More specifically, I wanted to add a regularization term to the objective which ...
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1 answer
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'RuntimeError: Expected object of scalar type Long but got scalar' for torch.nn.CrossEntropyLoss()

I'm using this loss function for xlm-roberta-large-longformer and it gives me this error: import torch.nn.functional as f from scipy.special import softmax loss_func = torch.nn....
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Keras Creating custom loss function that takes into account only certain features

I want to create a custom loss function that takes into account some output features (not all). I am training sequence regression LSTM neural network on data that looks like this: my input shape is (...
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1 answer
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What is "cross entropy loss" really doing when input is 3D?

I'm working on a text-generating RNN. I found out that when calculating cross entropy loss, if the input has a size of[batch_size, vocab_size, seq_len] and the target has a size of[batch_size, seq_len]...
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R-GAN (recurrent Generative adversial network) for timeseries generation

Hey guys im working on an R-GAN in python. I use pytorch and i have a problem. I use LSTM for my GAN to create about 240 time steps with an input size of 8(loc vetkor). I generate a Multivariate ...
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1 answer
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Implementation subclass model and loss function as a layer

I wanted to implement a subclass model with some inputs. and in first you see my loss layer. class CTCLayer(layers.Layer): ''' Implementation of loss layer. Attributes ---------- ...
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0 answers
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loss too erratic unless I put complete data in a batch on simple pytorch network

I am trying out a tutorial from https://analyticsindiamag.com/step-by-step-guide-to-build-a-simple-neural-network-in-pytorch-from-scratch/ The training data shape is (67,4). When I put the batch size &...
-2 votes
0 answers
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Loss function for NN training which doesn't penalize inside given margin

Is there any loss function for neural network training in regression problems which does not penalize inside a given margin from given tensor (e.g. one unit far from given tensor) and out of this ...
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0 answers
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Understanding DRAGAN-Loss

I have problems understanding the DRAGAN loss function in On Convergence and Stability of GANs, because I don't understand what the term N_d(0, cI) means. I can't find it in the paper.
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Semantic segmentation loss is stuck, what's the reason?

I am doing simple tasks on Kaggle, and I came across one problem that I don't know how to explain. See my GitHub repo on this task. Basically, my problem is that the loss is stuck at a certain value ...
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DILATE (pytorch) custom loss function in keras

I'm trying to implement DILATE loss function (https://github.com/vincent-leguen/DILATE) developed for PyTorch into a keras framework as custom loss function. At the moment this is my code: def ...
1 vote
1 answer
29 views

Trouble with loss function tf.nn.weighted_cross_entropy_with_logits

I am trying to train a u-net network with binary targets. The usual Binary Cross Entropy loss does not perform well, since the lables are very imbalanced (many more 0 pixels than 1s). So I want to ...
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1 answer
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VGG-16 and ResNet-9 loss values not corresponding to accuracy on test set

I have two models whose performance I am comparing, a ResNet-9 model and a VGG-16 model. They are being used for image classification. Their accuracies on the same test set are: ResNet-9 = 99.25% ...
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Multiclass CNN is not performing well

I've been trying to build a classifier but it's giving terrible accuracy even on increasing the dense layers the validation accuracy is not improving. I've used a 2D spectrogram image Dataset where ...
1 vote
1 answer
52 views

Building a custom loss function in TensorFlow

I want to create a neural network with my own loss function. For this purpose, I created this loss function: class my_loss(tf.keras.losses.Loss): def __init__(self,e1,e2,**kwargs): assert ...
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0 answers
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Keras custom loss function with dictionary at compiling

I have a custom loss function and due to the reason I have multiple outputs I using a dictionary scheme to set loss functions: model.compile(optimizer=opt, loss={ 'speed_output': '...
0 votes
1 answer
33 views

Pytorch: binary input and probabilistic output

I am attempting a deep Reinforcement algorithm that takes a connect-4 position and outputs the probability of winning for Red (first player) using PyTorch in Python. Problem is my input, output, and ...
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Custom Losss Function Tensorflow datatype error

I am trying implement a custom arcface loss function: def call(self, y_true: FloatTensor, y_pred: FloatTensor) -> FloatTensor: projector = tf.math.l2_normalize(y_true, axis=1) predictor = ...
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How to pass multiple samples in a neural network for training

I have a neural network which takes Only one input with dimension (n * m). I have data set with a pair of data A, and B both data have same dimension (n * m). Now i will pass A to my neuralgic ...
-3 votes
1 answer
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How do I make a loss function for a Weibull Distribution model? [closed]

I want to make a model using TensorFlow which will return the 2 characteristics of a Weibull distribution. In order to make it I need to create a loss function which fits the Weibull Distribution. I ...
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1 answer
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Loss function trainable parameters are not working in keras

en = encoder(encoder_input) de = decoder(en[0]) vae = keras.Model(encoder_input, [en, de]) reconstruction_loss1 = tf.keras.metrics.mse(encoder_input, de[0]) * n_inputs reconstruction_loss2 = tf....
1 vote
0 answers
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Tensorflow custom cost function: NaN/Inf values despite clipping_by_value

I'm trying to play around with a custom cost function on the MNIST data set (28x28 images of handwritten digits from 0 to 9). I use this simple architecture: model = tf.keras.models.Sequential([ tf....
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1 vote
0 answers
58 views

LSTM Custom Loss function based on stock return

I am trying to create a custom loss function based on the minimizing the return difference between actual and predicted. I want to base my loss function on model return not on accuracy of any other ...
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0 answers
39 views

Compute custom loss for multi class problem

I am using this custom loss function, but loss value is constant. Is there anything that I am missing? Or can this be solved using a built-in loss functions? class Customloss(tf.keras.losses.Loss): ...
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1 answer
30 views

Cross Regularization between two Neural Networks

I am trying to add a loss term to regularise between two neural networks and make them as similar as possible while still performing different tasks. The closes I could find is the answers in this ...
2 votes
0 answers
56 views

How can I write an asymmetric loss function for XGBoost?

I have been following this article to come up with a custom asymmetric loss function that penalises underestimates more than the overestimates: The 'a' factor in the code for some reason just cannot ...
0 votes
1 answer
82 views

Writing a custom loss function

I want to write a custom loss function for comparing the generated 2D curves corresponding to y_prediction and y_true, and calculate the signed distance function of them. And for the loss, compare ...
2 votes
0 answers
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Custom Loss Function Leads to High MSE and an offset in the output Keras

I am training a neural network for time series regression. The model is #################################################################################################################### # Define ...
1 vote
1 answer
50 views

Create Custom Loss Function to Minimize the Attitude Error

I want to use IMU (accelerometer and gyroscope) readings to compute the attitude via Neural Network. The input will be input_shape = (time steps, 6) and the output is in the quaternion form ...
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0 answers
55 views

Why the predicted MSE loss is hundreds of times the training loss?

def loss_train(y_true, y_pred): square_diff = tf.math.squared_difference(y_true, y_pred) loss = tf.reduce_mean(square_diff) return loss I use tensorflow_2.5, training a regression model, ...
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0 answers
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Normalized Binary Cross Entropy for Semantic Segmentation

I am currently struggling with implementing a normalized binary cross entropy for semantic segmentation based on a normalized cross entropy in this publication (relevant pages are 2-3) as a custom ...
1 vote
2 answers
68 views

Tensorflow define lossfunction

The following code works, converges and the neural net approximates the exponential on the interval from 0 to 1: # code works import tensorflow as tf import numpy as np import matplotlib.pyplot as ...
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0 answers
28 views

Model Subclassing ValueError No gradients provided for any variable

I'm trying to create a model that trains other models, and I've created a custom loss function that bases the main model's loss on the final loss of the smaller model that it creates. I'm trying to ...
0 votes
0 answers
38 views

Custom loss function returns correct values, but sets all of my model weights to nan

I am attempting to train an LSTM with a custom loss function. The model's goal is to read in some sequential noisy points on a curve, and generate coefficients for an nth degree polynomial that fits ...
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Tensoflow Keras custom loss gets slow

I tried to define a custom loss function for an AE according to the Keras spec. that takes y, y_hat. The loss is a combination of the MSE and the Frobenius norm of the Jacobian. When using the loss, ...
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ANN - Constraints - Independence

I try to model time-series of plant biophysiological responses to various ecosystem drivers using ANN. During the night, I would like to remove some variables' influences, because science has proved ...
0 votes
1 answer
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LSTM custom Loss function caued error. ValueError: too many values to unpack (expected 4)

I tried to implement LSTM with custom function by tf.random.set_seed(7) model = Sequential() model.add(LSTM(100, input_shape=(18,1 ), return_sequences=True)) model.add(Dropout(0.2)) #model.add(LSTM(...
0 votes
1 answer
287 views

How can I show validation loss and validation accuracy evaluation for the detectron2 model?

I have split the data to train and test (0.85) and here's my loss visualization code : import pandas as pd metrics_df = pd.read_json("./output/metrics.json", orient="records", ...

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