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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NCS2: How can i use Neural Compute Stick 2

I'm a student who learn Deep learning using Tensorflow. Recently, I gave Stick called Neural Compute Stick 2 from my Professor. But, I could not find any documentation about this stick. I made a ...
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pretrained googlenet using tensorflow

Using pretrained DCNN GoogleNet I need to measure accuracy for certain parameters. Also need to run pretrained model from scratch with RBF as classifier, using tensorflow only in both cases. using ...
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Conceptual Question about Neural Networks

so I've been trying to make a simple machine learning AI where you basically have a cube try to find another cube that's randomly placed in a x,y coordinate space (I'm using a simple 2d game engine to ...
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How are the bias neurons created in NEAT?

I am trying to implement simple NEAT. I read from various sources that there are 4 types of "nodes": input neurons, hidden neurons, output neurons and so-called bias neurons. I don't see which process ...
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15 views

Error decreasing but accuracy fluctuating between 0 to 40 in a deep LSTM network

I am trying to train a deep LSTM network for classification. I am feeding as input, a feature vector of length 1000 to the LSTM network. linput = tf.placeholder(tf.float32,shape=[None,20,1000],name=...
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TensorFlow: Variables become uninitialized when training neural network again

Here's what I have done: 1) I have trained an autoencoder first. It consists only 3 layers: Input -> hidden -> output 2) Then I connected the hidden layer of the autoencoder with a clustering layer....
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Assignment problem with variable number of jobs using Neural Networks

I want to train a neural network to solve the assignment problem(x jobs assigned to x people with the aim of minimizing the overall cost of all the jobs) where "x" is variable. Detailed Problem: ...
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9 views

Convert columns of pixel for Convolutional Neural Networks

I have the following dataset composed by a label and pixel values of images (48x48): print(df) emotion pixels Usage 0 0 70 80 82 ...
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1answer
17 views

Error: valueError: input arrays should have the same number of samples as target arrays. Find 1 input samples and 0 target samples

I'm trying to do task for system calls classification. The code bellow is inspired from a text classification project. My system calls are represented as sequences of integers between 1 and 340. The ...
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18 views

How to prepare image dataset in MNIST format

I have trained a neural network model on MNIST dataset using the script mnist_3.1_convolutional_bigger_dropout.py provided in this tutorial. I wanted to test the trained model on the custom dataset, ...
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45 views

which classification model allows user to choose importance of data inputs? [on hold]

I am working on a match analytics project where I have to deal with the situation in which I am having some inputs like skills, experience, certifications etc. and my output is candidate selected Yes ...
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VGG16 Tensorflow implementation does not learn on cifar-10

This VGGNet was implemented using Tensorflow framework, from scratch, where all of the layers are defined in the code. The main problem I am facing here is that the training accuracy, not to mention ...
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Scalar Output Tensorflow JS

Using a sequential model, how do you take an array of 2d dimensional inputs (a three dimensional input) and have the model perform a prediction on each 2d input, to produce a scalar? Input shape (...
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1answer
23 views

When should you update weights in neural network using backpropagation?

Let's say I have a 3 layer fully-connected neural network. I am implementing backpropagation algorithm. My question is, should I first calculate deltas and then after backpropagation is done, update ...
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14 views

neural network on matlab

I want to train neural network on matlab, i found many example on how the data set must be organized. i have a couple of question to confirm my understanding of the proper way to train neural network ...
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1answer
26 views

Multilabel with binary classification in Keras

At this moment, i working with image classification using Keras, sci-kit learn, etc. I will try to explain all the problem. Like i said before, it's an image classification with multilabel. My ...
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37 views

Cost Function Neural Network

The following code is my implementation of neural network (1 hidden layer) trying to predict some number based on input data. Number of input node: 11 Number of nodes in hidden layer: 11 Number of ...
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18 views

Problem with gradient checking in deep neural network

I'm currently writing code for a deep neural network. I've implemented forward porp and back prop. To check that my backpropagation was well done I implemented gradient checking. The difference ...
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convolution neural network for image recognition in python

I want to build image recognition model using CNN in python. I was create the bellow CNN model using keras and trained the dataset on it. model.add(Conv2D(32, (3, 3), padding="same", input_shape=...
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1answer
29 views

TensorFlow: integrate output of neural network

I have a neural network that takes as input two parameters: t = tf.placeholder(tf.float32, [None, 1]) x = tf.placeholder(tf.float32, [None, 1]) in my loss function I need to integrate the output ...
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20 views

How implement this distribution in my model?

I have a NN model that classify statements between 3 categories [-1, 0, 1] stop = EarlyStopping(monitor='val_loss', min_delta=0.01, patience=15, verbose=1, mode='auto', restore_best_weights=True) ...
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42 views

Demystifying Deepmind's AlphaStar [on hold]

In one of their most recent endeavours, the Deepmind team developed an engine to play RTS games, in particular Starcraft 2 (sc2). This was after their success with alphazero, the self-trained engine ...
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1answer
27 views

How do I use TensorFlow Neural Network output

After running the code below I get values for accuracy and I can get the values for all the Ws and bs. My question is how do I use the output to classify things in the future? and how do I save the ...
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Advice for building AI for Phase 10 (card game) [on hold]

I'm an experienced developer, just not in AI or neural networks. Looking to build an AI for the card game Phase 10. For each hand, each player's object is to complete and lay down the current phase, ...
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27 views

Neural Network Data Normalization Setup [on hold]

I am fairly new to Neural Networks and have some questions regarding data normalization. I am trying to build a regression neural network with two neurons on the output layer using a '...
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1answer
14 views

Sigmoid tensorflow computational graph

What am i doing wrong here? The equation and data are pretty straight forward.
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After using labelencoder on categorical data while applying onehotencoder it says tuple out of range. what to do

#importing libraries import pandas as pd import numpy as np #import data data=pd.read_csv('India_Key_Commodities_Retail_Prices_1997_2015.csv') x=data.iloc[:,[0,1,2,4]].values y=data.iloc[:,[3]]....
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Advanced deep learning program with Python (Design advice) [on hold]

I've been tinkering with python and tensor flow for a month or so and I have really been enjoying it. I however would like some input from more experienced people about the design of my next project ...
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36 views

How to use Deep Reinforcement Learning with a Snake Game

Ideally I want to use a neural network using a deep reinforcement learning method. However I don’t want to gather data from initially running the game like 1000 times for instance, and then use that ...
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17 views

Unable to get proper output in Generative Adverserial networks (GANs)

Hey i made a Pytorch implementation of GAN and it seems to run but the generated images are not improving even after long training session. Is the model too simple? or is it because of the improper ...
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18 views

How to fuse an additional feature in training deep neural networks?

I am training a Convolutional Neural Network (CNN) to classify Spectrogram images (frequency over time). These Spectrograms were created from some signals on specific times, therefore the time of ...
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1answer
34 views

Optimizing Neural Network Keras Regressor

I have created a keras regressor model to predict nitrate concentrations from several land cover attributes. However, I am not sure how to interpret the following outcomes: loss: 0.0517 ...
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Is it possible to use a trained neural network to predict a feature given other features and output? [migrated]

I have a neural network that is already trained to predict two continuous outputs from a set of 7 continuous features. Is there any way to used the network to predict one of the input features given ...
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1answer
20 views

Adding more layers to tensorflow MNIST tutorial makes accuracy drop and sometimes accuracy remains constant over iteration for batch

i was checking this tutorial for deep learning ,he made a simply nueral network with one hidden layer. i did same and it was working fine(accuracy 94%) ,now i added one more layer and its accuracy got ...
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1answer
29 views

How could we combine two trained model (deep learning network: GAN network with CNN and ResNet)

I have a GAN network (Generative Adversarial Network), consisting of some CNN, ResNet as the structure. I was wondering if I could combine two trained models into one model that maintains functions of ...
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24 views

How to fix smile NeuralNetwork for regression which outputs always the same prediction

I am using the smile library for training a neural network for a simple nonlinear regression problem. For every input I get the same prediction. Maybe I am doing something wrong with the construction ...
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13 views

Tensorflow boolean feature column

I am trying to train a model that requires to input some boolean parameters. I need them to be in boolean, because those fatures are binary/discrete values. Because of that, I am using tensorflow ...
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35 views

Applying LSTM algorithm to Time Series Data

i am a neewbie when it comes to neural networks / artificial intelligence. I hope somebody can help me. I have a server system by adding multiple hosts with the respective services. Here is an ...
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Why is the initializer in Word2Vec model is initialized in this particular way?

I see that the example code for word2vec in tensorflow model uses the initializer values in range of -init_width to init_width where init_width = 0.5 / opts.emb_dim. Intuitively I am not grasping the ...
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1answer
48 views

How to implement an image(2D array) sequence sliding window in tensorflow?

Context We have out data stored in .tfrecord files, X is our training data > 40x40 grey scale images and Y: are labels. Those images are ordered in a sequence (order is important). We would like to ...
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1answer
52 views

different prediction after load a model in keras

I have a Sequential Model built in Keras and after trained it give me good prediction but when i save and then load the model i don't obtain the same prediction on the same dataset. Why? Note that I ...
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14 views

constant learning rate in updating weights in neural network

I have a question about learning rate and how we should update weights. I know that for updating weights we use formula like this new_weight = existing_weight — learning_rate * gradient But there ...
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2answers
30 views

In neural Networks back propagation, how to get differential equations?

I am confused why dz=da*g'(z)? as we all know, in forward propagation,a=g(z),after taking the derivative of z, I can get da/dz=g'(z),so dz=da*1/g'(z)? Thanks!!
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2answers
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Should the random noise given to a GAN kept constant?

I am working on a Generative Adversarial Network ( GAN ). At every step, in the training, I call a method generate_noise which returns a tensor of some random noise. # Generates noise of normal ...
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1answer
26 views

How save Tensorflow model in protobuf format?

Please, help me with my problem. I want to save my neural network in protobuf (pb) format for OpenCV DNN. In input I have 3 files: .meta, .data, .index. As output I need to .pb and .pbtxt files. Code,...
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1answer
29 views

How to define a MLPR with two hidden layers for RandomSearchCV

I am trying to figure out how to define the paramerer grid for the a MLPR with two hidden layers for input into RandomSearchCV in SkLearn? Below is what I have been trialing. So, how can I randomise ...
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Which machine-learning model to choose for this task? [on hold]

I have a lot of logs of urls, for example: user1 /url1 user1 /url2 user2 /some-url3 user3 /one-more-url user3 /more-and-more-url Every url have a tag, for example: /url1 - [sciense, biology, video] ...
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1answer
44 views

Python Keras Prediction returning nan

I am having problems with understanding how Keras works with data and why my model is not working accordingly. I am trying to build small model that could predict cities based on input of longitude ...
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1answer
19 views

Formatting inputs for LSTM layer with variable timestep using Tensorflow

According to documentation, the LSTM layer should handle inputs with (None, CONST, CONST) shape. For variable timestep, it should be able to handle inputs with (None, None, CONST) shape. Let say my ...
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1answer
45 views

How do Convolutional Layers (CNNs) work in keras?

I notice that in the keras documentation there are many different types of Conv layers, i.e. Conv1D, Conv2D, Conv3D. All of them have parameters like filters, kernel_size, strides, and padding, ...