Questions tagged [neural-network]

Network structure inspired by simplified models of biological neurons (brain cells). Neural networks are trained to "learn" by supervised and unsupervised techniques, and can be used to solve optimization problems, approximation problems, classify patterns, and combinations thereof.

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How to build a neural network from scratch for a genetic algorithm? [closed]

I am working on a DIY project in which I want to be able to train a neural network to play Snake. I should begin by saying I am an absolute newbie in the field. I grasp the concept of a neural network ...
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Why are weights not initialized with mean=1?

I wonder why weights are initialized with zero-mean. It is one of the reasons, why deep architectures cannot be trained without skip connections. Without the skip connections, the zero initialization ...
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Can we calculate the space and time complexity of Generative Adversarial networks?

I was just curious if it is possible to calculate the space and time complexity of a GAN.
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Is a fair comparison of deep learning algorithms possible - Training efficiency

I came across a big problem, when reading through recent (2017-2021) papers, which introduce new learning algorithms or optimzers in deep learning and likewise reinforcement learning: Their benchmarks ...
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How to train my brain.js model from a csv file?

I just learned brain.js and have been using it for quiet a while and now I have an idea for a project. I want to predict house prices for a given area in a specific city and the training data for this ...
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What is the correct formula for updating the weights in a 1-single hidden layer neural network?

I'm creating a neural network in CUDA C with 3 layers and no bias. On internet I saw that the expression for the derivative of the weights between the hidden layer and the output layer was: derivative[...
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Vanishing and Exploding Gradients

In the case of the vanishing gradient problem, the loss value would be approx. stagnant. And in exploding gradients problem, the loss value would increase. Right?
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Undefined columns in neural network classifier in r

I am using r program to fit a neural network classifier for a random standard random variable with 100 observations and 3 attributes (x,y, & z). I need to have two classes in the data and ...
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How can I pass the gradient of a tensor as a parameter in the loss function in PyTorch?

I am trying to implement a neural network in PyTorch to solve an ordinary differential equation (ODE). The network architecture is straight-forward. It is just a feed-forward neural network with n ...
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Unknown activation function in r

enter image description hereI am working in r. I need to fir a neural network that will contain four levels of output. Below is the code that I wrote: wifiLocDat <- read.table("...
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Image Recognition - Finding glowing object

Most game anti-cheat use heuristic approach such as detecting known binaries signature or preventing third party library injection. But, Valve software use deep learning to combat cheat. Valve feed ...
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How can I save the weight and biases of trained Neural Network

I built neural network using tensorflow. After training it and get the minimum cost, I need to save the weights and biases as matrices in order to be use in e.g., Matlab. How I can do that? When I ...
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saving a tensor output to csv file or at least an array

batch_size = 48 train_data = TensorDataset(train_inputs, train_masks, train_labels) #Training train_loss_set = [] iterate = 4 for _ in trange(iterate, desc="Iterate"): model.train() ...
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Getting error while predicting the output using my own custom image

So I am trying to learn Tensorflow and I am predicting the result of model using a custom image I am uploading from my drive. This is the function for predicting the result. # Get prediction from the ...
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Error in `[.data.frame`(data, , model.list$variables) : undefined columns selected [closed]

I am trying to fit neural network for a 3 dimensional dataset (x, y, z) for a random variable with 100 observations. Below is my code in r library(scatterplot3d) set.seed(1) nObs <- 100 z <- ...
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How to extract an equation behind the trained DNN model using tf.keras

Is it possible to extract an equation behind the trained model using Keras/Tensorflow with multiple hidden layers and 64 neurons. For example I have two input variables x1 and x2 and ine outout ...
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1answer
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Implementing Backprop for custom loss functions

I have a neural network Network that has a vector output. Instead of using a typical loss function, I would like to implement my own loss function that is a method in some class. This looks something ...
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ResNet shortcuts downsampling

How does ResNet create identity shortcuts? I understand that in order to add X to F(X) I need X and F(X) to have the same shape. Two issues may arise. Different number of channels The paper proposes 3 ...
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CUDA kernel return only zeroes [closed]

I'm trying to create a Neural Network in CUDA C but, it's first kernel return only zeroes or a random number. Here is the kernel code __global__ void activateAndDeriveMatrixByVectorMultiplication( ...
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Generating 3D data with cube as a decision surface

I am new to using r program. I have a task to use r to create a function to simulate standard normal distribution containing 500 observations and three variables, x,y,& z. I am to use cube as a ...
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Can we have inputs that is more than 1D in Pytorch (e.g word-embedding)

Say I have some text and I want to classify them into three groups food, sports, science. If I have a sentence I dont like to each mushrooms we can use wordembedding (say 100 dimensions) to create a ...
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1answer
43 views

Understanding Keras predictions

I've got the following code: import tensorflow as tf from tensorflow import keras from tensorflow.keras.preprocessing.text import Tokenizer from tensorflow.keras.preprocessing.sequence import ...
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How does a convolutional layer in a neural network handle data when input a feature map? [closed]

Let's say for a single-channel greyscale image, each filter in the convolutional layer will convolve over the input image and return a single image result. The combined output of the layer is then a ...
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An error when declaring the variable placeholder

I am building sample Neural Network using Pycharm, tensorflow 2.4 and python v3.8.5. When Running this command: X = tf.placeholder("float", [None, num_input]) #num_input is the sized of ...
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keras Dense Artificial Nueral network Hidden Layers: Not able to create a suitable model

I am trying to create a simple ANN with this data: 2 columns (say height and weight) and a target column (say age, which is continuous). I dont know how many hidden layers to have in the model. When I ...
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1answer
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How can I have Neural Network output values strictly between 5 to -5? [closed]

I am using a small NN 2 layers with 256 neurons I want my output to be strictly between 5 to -5 or 10 to -10 . I thought of using tanh activation and then multiply by the 5 or 10. but I gives me ...
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Predict a value using known weights, biases and neural network structure [closed]

Let's say that I know the structure of a neural network with its activation functions. I also know the weights and biases for every node. how do I use this information to make a single prediction ...
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nnz is too large even I have set the max_feature to 500 and float to 32bit

I would like to find the similarity between teleplays from sklearn.feature_extraction.text import TfidfVectorizer #define a tfidf vectorizer object and remove all english stop words such as 'the','a' ...
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1answer
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how to test a model with photo after creation

i have created a model for Day night classification problem i have achieved (loss: 0.0209 - accuracy: 1.0000 - val_loss: 0.0283 - val_accuracy: 0.9964) for last epoch(epoch no 10) ,i think the data ...
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How does multiplying matrices in backpropagation work

I'm new to neural networks and im tasked to create my own neural network in python. So far i've managed to create layers with their own weights, outputs, and derivatives. I'm currently working on the ...
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Tensorflow: How to build a feedforward neural network efficiently [closed]

I am new to Tensorflow. I am trying to build a feedforward neural network using Tensorflow 2. The input layer is a vector which has dimension over 800,000. The first hidden layer is a 20,000 ...
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1answer
24 views

Sequential network with the VGG layers

I want to have a sequential network with the characteristics of VGG network (I want to pass my network to another function, which doesn't support VGG objects and supports nn.sequential). I added the ...
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35 views

Creating an XOR gate with existing gates

So I'm stuck with a logic gate problem. I'm trying to create an XOR gate by combining existing gates like OR,AND,NOR or NAND. I have 2 helper functions: def logic_gate(w1, w2, b): # weight_x1, ...
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Training Network with sub networks

I am planning to train the following network from end-to-end. I have two questions: Question 1 I have 4 ground truths. Segmentation of distorted images Parameters Corrected images Segmentation of ...
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Is it possible to “save” information in neural network?

I have 6 time-series data and ~1000 of dataset with high peak. Each time-series data corresponds to one store and it contains the number of sales made every min. The high sales datasets contain the ...
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Loading Custom Dataset into ((x_train, y_train), (x_test, y_test)

Any Idea how to load the custom dataset into (x_train, y_train), (x_test, y_test) into Following >Code: I have a folder that contains all images and a CSV file which contains labels( train.csv, Val....
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How do i correctly shape my input data for a keras model?

I'm currently working on a Keras neural network for fun. I'm just learning the basics, but cant get over this dimension problem: So my input data (X) should be a 12x6 matrix, with 12 timestamps and 6 ...
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Combine fireTS library with neupy library for NARX network based on Levenberg Marquardt

I want to create a NARX (Nonlinear Autoregressive with exogenous variables) model based on LM (Levenberg Marquardt) method. Since this two method are not implemented in keras, I search for the library ...
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33 views

Importing Keras Neural Network to Matlab

I developed a neural network in Keras that forecasts energy consumption. Now, I want to import that neural network to Matlab where I will use the NN forecast to solve a Linear Programming problem. I ...
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1answer
34 views

Is it possible to print the sequence of the selected image in the dataset for the trained neural network?

When training our dataset into a deep learning model such as CNN. I wanted to track the sequence of each image in the dataset that is selected for training each epoch in the neural network. Is it ...
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1answer
23 views

How to map RNN output to tensor of class size?

I'm building a binary text classifier using GLOVE embeddings and RNN. The output of nn.RNN is torch.Size([1, 12, 150]). I need to map this to a dimension of size 2 so that i can calculate loss against ...
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How is the number of Dense parameters decided? [closed]

I got this 4 lines of code from an article. model = Sequential() model.add(Dense(27, input_dim=27, activation='relu')) model.add(Dense(15, activation='relu')) model.add(Dense(4, activation='softmax')) ...
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1answer
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multiple layer perceptron to classify mnist dataset

I need some help for a project I am working on for a data science course. In this project I classy the digits of the MNIST datasets in three ways: using the dissimilarity matrices induced by the ...
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How to get probability distributions in neural network containing keras Embeddings layer?

I am trying to train a neural network for text classification using word embeddings. I've gotten the word embeddings using the keras.preprocessing.text.Tokenizer and I have padded them using the keras....
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Unable to print confusion matrix

I am trying to print the confusion matrix for the BERT model for the binary class. I have used the code implemented at https://github.com/raquelsilveira/bert_classification_text/blob/master/...
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Making a network with a variable number of inputs

I want a NN that can process a list of objects that with variable length and point at one of the objects. Similar to this: https://arxiv.org/pdf/1511.06391.pdf The problem is, that the objects in the ...
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How to use attention for feature fusion [closed]

I am struggling to understand how would a self-attention layer be used for features of different modalities fusion. What I understand until now is that : Every unique modality is fed into a self-...
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50 views

How to interpret NEAT-Python's output

I'm learning about Neural Networks using the NEAT algorithm. To understand the results I'm tryling to reproduce the calculations for a few values by hand using Excel. Running the XOR demo of NEAT-...
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1answer
22 views

How to train and save multi class artificial neural network model using tensorflow?

I'm trying to train a multi class classification neural network model using tensorflow. So I have 24 feature vectors that's in the form of numpy array that looks like this when I print it: [[1 0 0 ... ...
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1answer
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RuntimeError: Given groups=1, weight of size [32, 1, 5, 5], expected input[256, 3, 256, 256] to have 1 channels, but got 3 channels instead

I am trying to run following code but getting an error: import torch.nn as nn import torch.nn.functional as F class EmbeddingNet(nn.Module): def __init__(self): super(EmbeddingNet, self)....

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