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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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Using EarlyStopping without having a validation set?

I've noticed that when not specifying the validation_split this parameter will be automatically set to 0. Now I've used early stopping all this time without having a validation_split. What I find ...
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Beginner - How to use a matrix to train and test a CNN model instead Keras or MNIST

I watched Josh Stormer's video on how does the CNN work. I understood the Theoretical part of it and decided to implement it in python. I read TONS(I really mean it) of Articles in medium.com and ...
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How exactly class weights intervene in the backpropagation equations of a neural network?

I'm implementing a classification neural network from scratch (no libraries except numpy). I am following this tutorial : http://neuralnetworksanddeeplearning.com/chap2.html . However, I am dealing ...
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Segmentation loss function

pred = model(x)['out'] loss_value=loss(pred, target.squeeze(1)) Hi, i am trying to train deeplabv3_resnet50 from pytorch for two classes (background and dog just to try make predictions better). As i ...
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Can graph neural network estimate vertex label from input data? From a weighted complete graph

I am trying to solve a problem where data labels are verticies of an undirected, weighted, complete graph. I don't even know is this something that can be solved with graph neural network. But this is ...
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Is there a way to meaningfully alter distribution of a 3d numpy array

I have a base 3d Numpy array (150, 150, 80), which I need to create several additional meaningful alteration of that distribution. By meaningful, I mean not to use randomness to generate but to make ...
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Bad results of multioutput regression model

I am trying to build an ANN model to predict two Variables, and the code is shown below: #build_ANN: initializer = tf.keras.initializers.GlorotUniform() def ANN2(learning_rate, num_dense_layers, ...
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Transmission line fault analysis [closed]

For transmission line fault classification, I gathered three-phase voltage and current data for various faults. I want to use an artificial neural network to train and test data in Matlab. Before ...
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1 answer
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How to apply the parameters (weights of a network) to a vector of inputs using PyTorch?

I have a simple "Neural Network" that takes two inputs and computes a linear combination and outputs a scalar. In the case of one single equation, i.e., in 1D, we would have: weight1*inputA +...
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how to make a function from given set of data from artificial neural network

I want to process the 33 years of data that include inflow, evaporation and outflow data. I want to make a function between above three variables using artificial neural network. By using that ...
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Why my training loss decreases first then increases reguarly in each epoch?

In each epoch, my training loss first decreases (compared with the loss of its last epoch) but then increases till the end of this epoch. Below is an example: Epoch [29][250/940] lr: 3.298e-04, ...
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C Neural Network. error: parameter has just a forward declaration| [closed]

I am taking a Deep Learning in C Course in Udemy, my code is as it follows: main.c #include <stdio.h> #include <stdlib.h> #include "simple_neural_networks.h" #define ...
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Why my training loss suddenly increases at a random epoch

I am trying to train a U-net network using keras for lesion segmentation on prostate mri. My metric is dice coefficient. As it can be seen my training loss goes up to 0.999 on random epochs what is ...
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AssertionError during fitting model [closed]

I have a model taking input of type (None, 2), I am giving input of type (3,2) and the target data is ndaary of type (3,1). i am getting an error of AssertionError during the model. fit . My model has ...
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Fully connected network loss not decreasing over CIFAR-10 Dataset

Problem Description I have constructed a fully connected model as shown by the code below: auto* model = new Sequential({ new Linear(3072,120), new ReLU(120), new Linear(...
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Deep learning approach for multiple knapsack problem? [closed]

I have an assignment to code deep learning approach for multiple knapsack problem. I want to know which is suitable for this problem? e.g approaches Recurrent Neural network CONVOLUTIONAL ...
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Floating point vs Binary parameters in Neural Networks?

What is the reasoning that floating-point parameters are preferred over binary parameters? Is there a specific limitation of binary parameters? Is there something that is not possible using binary ...
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Store / load custom neural network to/from File

I have written a neural network from scratch in CPP and now I want to figure out how to store the weights of each node to a file. My neural network consists of layers and neurons with every neuron ...
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How to create CNN with multiple output?

I am trying to create a regression CNN for a dataset of 96 features and 21 outputs (all postive numbers). I keep getting this error on fit: "Input 0 of layer "Conv1D_1" is incompatible ...
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1 answer
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Variable input and output size for Keras

Before I start, I am quite new to Keras and machine learning. I know the theory quite well but the syntax less so. I am trying to create a reinforcement learning neural network using Keras. The ...
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2 votes
2 answers
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Why mini-batches larger than 1 doesn't work, but larger accumulating gradients work?

I am trying to implement a neural network approximating the logical XOR function, however, the network only converges when using a batch size of 1. I don't understand why: when I use gradient ...
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Is there a way to use CNN for non-image datasets?

I am studying the NSL-KDD dataset representing network traffic features and classificating it as normal or one of 4 intrusion types. I used the one-hot encoding and normalization, so each feature of ...
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How to prepare rasters for feeding into a neural net

I have a bunch of rasters and I need them all lined up left-to-right superimposed over each other (overlapping in a new coordinate system). The goal is to feed these rasters individually into a neural ...
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non-standard ML prediction problem. Target value is unknown but aggregate of target value is known

I want to ask this ML prediction problem. Each single row does not have any target value, but the aggregate of multiple rows has a target value. For example, let's have an example: Time feature1 ...
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Pausing the training of a neural network - is it possible?

I am training a neural network and the new datasets I am training it on are really big in comparison to the ones used before. Since I am also saving the time it takes to end the training, I cannot use ...
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tensorflow: NLP automatic text generator always prints the same word

I apologize in advance but I just started exploring the world of NLP text generator. After training a neural network on a text, I am trying to generate new text based on this model and an initial ...
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-1 votes
1 answer
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What to do if neural network always performs poorly even after addressing overfitting?

I have a medical image dataset of ~10K 256x256 images with which I am training a deep neural classifier for disease classification. I have been working with popular CNNs like InceptionV3 and ResNets. ...
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From an input vector of parabolic shape values, predict a scalar value using machine learning

I was wondering if you could train a neural network model where from a vector a parabolic shape values you could predict a scalar value. For example : let's say the input vector is [5, 10, 15, 20, 22,...
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Suggestion Regarding ML (Product Selector/ Recommender) project

I am a student working on a B2B project called "Digital Product Selector based on Questions". So for example, if you go to a heath care company's website and you want to find out which ...
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Why my console is getting stuck while using keras library in R? also do I need to activate keras everytime I call the keras library?

I want to learn neural network in R, but when I use keras library my operation stuck setwd("E:/R code/Deep learning") library(keras) install_keras() df = read.csv("https://raw....
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Traing Neural network with PCA

I want to do prediction with neural networks. My dataset consists of 8 columns as input and 1 as output, even though,3 out of 8 inputs do not play role in my model. One of the inputs has a linear ...
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-3 votes
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Validation loss plateauing [closed]

My question is in regards to a project I am working on in which an LSTM-RNN is trained to predict a continuous-state output. The problem I am facing is that during training of the model the validation ...
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How to train two half cheetha opengym environments using same DDPG ( neural networks) simultaneously in reinforcement learning?

How to train two half cheetha opengym environments with single neural network of DDPG in reinforcement learning? Objective is to implement single DDPG (one main actor, one main critic, one target ...
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-1 votes
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Prediction error from CNN: Giving same predictions for all test inputs

I have been training the ICBHI 2017 dataset using CNN. This was done by converting the audio files (lung audio data) into STFT and MFCC. These features were fused (and of course padded to avoid any ...
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1 answer
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Neural network cost not decreasing with gradient descent

Im working on a small neural network in python and i'm having issues figuring out why the cost doesn't go down. Any ideas/hints would be appreciated import numpy as np X = np.array([[0, 0], ...
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1 answer
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How to predict a set of output values from a set of input values with a tensorflow neural network?

The context is determining the health of components of a motorbike by reading values like acceleration, cooling water temperature, rpm, fuel consumption, braking force, ... Input Data: ...
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Backtracking filter coefficients of Convolutional Neural Networks

I'm starting to learn how convolutional neural networks work, and I have a question regarding the filters. Apparently, these are randomly generated when the model is generated, and then as the data is ...
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Forward pass in keras network

I have done some hand calculations for a small and simple neural network and wanted to try verify the result in a keras network (built the same). the network looks like this: model = keras.models....
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FeedForward Neural Network on ThingSpeak Channel

I am doing a project and I have code of a few lines in MATLAB which is trained and tested on a given data set with 70-30 % distribution. This is the code: clc clear all close all x=xlsread('Training');...
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2 votes
1 answer
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Is it possible to auto-size the subsequent input of a layer following torch.nn.Flatten within torch.nn.Sequential in PyTorch?

If I have the following model class for example: class MyTestModel(nn.Module): def __init__(self): super(MyTestModel, self).__init__() self.seq1 = nn.Sequential( nn....
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Reinforcement Learning: How do you combine a neural network for regression and for text generation?

Imagine an RL problem in which in order to execute an action in an environment you first have to predict a number x in [1, MAX_ALLOWED_NUMBER] and then generate a sequential output with no fixed size (...
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Why this ANN predicting values so far from the actual values? Why the size of split mismatch shape? [closed]

import pandas as pd import keras from keras.models import Sequential from keras.layers import Dense import tensorflow as tf from tensorflow import keras import sklearn from sklearn import metrics from ...
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-1 votes
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number of arithmetic operations in a Neural network

I have a neural network that I want to optimize. But first I need to figure out the number of trainable parameters and the number of arithmetic operations done in the neural network (multiplication, ...
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2 votes
1 answer
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Massive neural network training time increase by inverting images in a data set

I have been working with neural networks for a few months now and I have a little mystery that I can't solve on my own. I wanted to create and train a neural network which can identify simple ...
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PyTorch LayerNorm vs nnabla layer_normalization -> output with same normalized input size differ, why?

PyTorch layernorm_before = nn.LayerNorm(hidden_size) input size(normalized shape = 768) Output torch size = 768 nnabla code: input = (1,197,768) batch axis =1 means 197 and batch axis = 2 means ...
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Graph Neural Network, my loss doesn't decrease

I am trying to use a Graph Convolutional Network with PyTorch Geometric to classify some drugs as HIV active or not. I use a dataset of 2299 perfectly balanced samples, with 1167 molecules labeled 1 ...
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1 vote
1 answer
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Time delay neural network in seconds?

Refering to the link at here, about the timedelaynet(inputDelays,hiddenSizes,trainFcn), what is the unit for inputDelays? Is in in seconds?
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The NN Input Shape for a game of Snake

I am writing a DQN for the game of snake. Currently my neural network works using a input shape of (12,) with the 12 binary values representing: Food Up,Down,Left,Right . Danger Up,Down,Left,Right ...
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How can I one hot encode nii.gz files stored in two different folders?

I have read all those images, which I am going to use for binary classification, and stored them in two different NumPy arrays. Now, I need to one hot encode these images, and then feed it to a Neural ...
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1 answer
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Usage of "__call__(self,x): return self.foo_method(x)" and its difference to "class.foo_method(x)"

The code derives from a neural network implementation from scratch in python, you can check full code on this link if you want and down here the critical part concerning my question which is I hope ...
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