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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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732
votes
19answers
297k views

Role of Bias in Neural Networks

I'm aware of the Gradient Descent and the Back-propagation Theorem. What I don't get is: When is using a bias important and how do you use it? For example, when mapping the AND function, when I use 2 ...
371
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6answers
118k views

What are advantages of Artificial Neural Networks over Support Vector Machines? [closed]

ANN (Artificial Neural Networks) and SVM (Support Vector Machines) are two popular strategies for supervised machine learning and classification. It's not often clear which method is better for a ...
366
votes
11answers
183k views

Epoch vs Iteration when training neural networks

What is the difference between epoch and iteration when training a multi-layer perceptron?
175
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2answers
77k views

Keras input explanation: input_shape, units, batch_size, dim, etc

For any Keras layer (Layer class), can someone explain how to understand the difference between input_shape, units, dim, etc.? For example the doc says units specify the output shape of a layer. ...
174
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10answers
73k views

What is the meaning of the word logits in TensorFlow?

In the following TensorFlow function, we must feed the activation of artificial neurons in the final layer. That I understand. But I don't understand why it is called logits? Isn't that a mathematical ...
167
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3answers
130k views

How to interpret “loss” and “accuracy” for a machine learning model

When I trained my neural network with Theano or Tensorflow, they will report a variable called "loss" per epoch. How should I interpret this variable? Higher loss is better or worse, or what does it ...
137
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7answers
130k views

Where do I call the BatchNormalization function in Keras?

If I want to use the BatchNormalization function in Keras, then do I need to call it once only at the beginning? I read this documentation for it: http://keras.io/layers/normalization/ I don't see ...
134
votes
5answers
149k views

What's is the difference between train, validation and test set, in neural networks?

I'm using this library to implement a learning agent. I have generated the training cases, but I don't know for sure what the validation and test sets are. The teacher says: 70% should be train ...
134
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8answers
72k views

When should I use genetic algorithms as opposed to neural networks? [closed]

Is there a rule of thumb (or set of examples) to determine when to use genetic algorithms as opposed to neural networks (and vice-versa) to solve a problem? I know there are cases in which you can ...
130
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7answers
35k views

How to train an artificial neural network to play Diablo 2 using visual input?

I'm currently trying to get an ANN to play a video game and and I was hoping to get some help from the wonderful community here. I've settled on Diablo 2. Game play is thus in real-time and from an ...
129
votes
9answers
29k views

Why use softmax as opposed to standard normalization?

In the output layer of a neural network, it is typical to use the softmax function to approximate a probability distribution: This is expensive to compute because of the exponents. Why not simply ...
122
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5answers
68k views

What does tf.nn.conv2d do in tensorflow?

I was looking at the docs of tensorflow about tf.nn.conv2d here. But I can't understand what it does or what it is trying to achieve. It says on the docs, #1 : Flattens the filter to a 2-D matrix ...
122
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7answers
97k views

Why do we have to normalize the input for an artificial neural network?

It is a principal question, regarding the theory of neural networks: Why do we have to normalize the input for a neural network? I understand that sometimes, when for example the input values are ...
121
votes
11answers
59k views

Why must a nonlinear activation function be used in a backpropagation neural network?

I've been reading some things on neural networks and I understand the general principle of a single layer neural network. I understand the need for aditional layers, but why are nonlinear activation ...
117
votes
11answers
127k views

Keras binary_crossentropy vs categorical_crossentropy performance?

I'm trying to train a CNN to categorize text by topic. When I use binary crossentropy I get ~80% accuracy, with categorical crossentropy I get ~50% accuracy. I don't understand why this is. It's a ...
111
votes
4answers
36k views

Tensorflow Strides Argument

I am trying to understand the strides argument in tf.nn.avg_pool, tf.nn.max_pool, tf.nn.conv2d. The documentation repeatedly says strides: A list of ints that has length >= 4. The stride of the ...
109
votes
16answers
46k views

What are some good resources for learning about Artificial Neural Networks? [closed]

I'm really interested in Artificial Neural Networks, but I'm looking for a place to start. What resources are out there and what is a good starting project?
97
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3answers
48k views

What's the difference between sparse_softmax_cross_entropy_with_logits and softmax_cross_entropy_with_logits?

I recently came across tf.nn.sparse_softmax_cross_entropy_with_logits and I can not figure out what the difference is compared to tf.nn.softmax_cross_entropy_with_logits. Is the only difference that ...
96
votes
3answers
45k views

multi-layer perceptron (MLP) architecture: criteria for choosing number of hidden layers and size of the hidden layer?

If we have 10 eigenvectors then we can have 10 neural nodes in input layer.If we have 5 output classes then we can have 5 nodes in output layer.But what is the criteria for choosing number of hidden ...
92
votes
4answers
12k views

Pytorch, what are the gradient arguments

I am reading through the documentation of PyTorch and found an example where they write gradients = torch.FloatTensor([0.1, 1.0, 0.0001]) y.backward(gradients) print(x.grad) where x was an initial ...
90
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6answers
38k views

Why should weights of Neural Networks be initialized to random numbers?

I am trying to build a neural network from scratch. Across all AI literature there is a consensus that weights should be initialized to random numbers in order for the network to converge faster. But ...
89
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10answers
56k views

How to add regularizations in TensorFlow?

I found in many available neural network code implemented using TensorFlow that regularization terms are often implemented by manually adding an additional term to loss value. My questions are: Is ...
85
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2answers
29k views

Many to one and many to many LSTM examples in Keras

I try to understand LSTMs and how to build them with Keras. I found out, that there are principally the 4 modes to run a RNN (the 4 right ones in the picture) Image source: Andrej Karpathy Now I ...
80
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5answers
41k views

Ordering of batch normalization and dropout?

The original question was in regard to TensorFlow implementations specifically. However, the answers are for implementations in general. This general answer is also the correct answer for TensorFlow. ...
76
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2answers
39k views

How to train images for classification, when they have different size?

I am trying to train my model which classifies images. The problem I have is, they have different sizes. Is there any possibilty to train those images without resizing them.
75
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3answers
39k views

Estimating the number of neurons and number of layers of an artificial neural network [closed]

I am looking for a method on how to calculate the number of layers and the number of neurons per layer. As input i only have the size of the input vector, the size of the output vector and the size of ...
74
votes
2answers
40k views

How to choose cross-entropy loss in tensorflow?

Classification problems, such as logistic regression or multinomial logistic regression, optimize a cross-entropy loss. Normally, the cross-entropy layer follows the softmax layer, which produces ...
73
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3answers
82k views

How to concatenate two layers in keras?

I have an example of a neural network with two layers. The first layer takes two arguments and has one output. The second should take one argument as result of the first layer and one additional ...
72
votes
9answers
79k views

How to assign a value to a TensorFlow variable?

I am trying to assign a new value to a tensorflow variable in python. import tensorflow as tf import numpy as np x = tf.Variable(0) init = tf.initialize_all_variables() sess = tf.InteractiveSession()...
70
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4answers
27k views

Common causes of nans during training

I've noticed that a frequent occurrence during training is NANs being introduced. Often times it seems to be introduced by weights in inner-product/fully-connected or convolution layers blowing up. ...
70
votes
0answers
2k views

Neural Network in Haskell

I'm trying to implement a neural network architecture in Haskell, and use it on MNIST. I'm using the hmatrix package for the linear algebra. My training framework is built using the pipes package. ...
68
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2answers
45k views

How to update the bias in neural network backpropagation?

Could someone please explain to me how to update the bias throughout backpropagation? I've read quite a few books, but can't find bias updating! I understand that bias is an extra input of 1 with a ...
67
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5answers
51k views

Loading a trained Keras model and continue training

I was wondering if it was possible to save a partly trained Keras model and continue the training after loading the model again. The reason for this is that I will have more training data in the ...
66
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4answers
40k views

How to tell Keras stop training based on loss value?

Currently I use the following code: callbacks = [ EarlyStopping(monitor='val_loss', patience=2, verbose=0), ModelCheckpoint(kfold_weights_path, monitor='val_loss', save_best_only=True, ...
65
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3answers
52k views

Role of “Flatten” in Keras

I am trying to understand the role of the Flatten function in Keras. Below is my code, which is a simple two-layer network. It takes in 2-dimensional data of shape (3, 2), and outputs 1-dimensional ...
63
votes
14answers
66k views

Tensorflow One Hot Encoder?

Does tensorflow have something similar to scikit learn's one hot encoder for processing categorical data? Would using a placeholder of tf.string behave as categorical data? I realize I can manually ...
62
votes
4answers
52k views

Open Source Neural Network Library [closed]

I am looking for an open source neural network library. So far, I have looked at FANN, WEKA, and OpenNN. Are the others that I should look at? The criteria, of course, is documentation, examples, ...
61
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2answers
27k views

Training a Neural Network with Reinforcement learning

I know the basics of feedforward neural networks, and how to train them using the backpropagation algorithm, but I'm looking for an algorithm than I can use for training an ANN online with ...
60
votes
3answers
58k views

TensorFlow - regularization with L2 loss, how to apply to all weights, not just last one?

I am playing with a ANN which is part of Udacity DeepLearning course. I have an assignment which involves introducing generalization to the network with one hidden ReLU layer using L2 loss. I wonder ...
60
votes
4answers
23k views

Perceptron learning algorithm not converging to 0

Here is my perceptron implementation in ANSI C: #include <stdio.h> #include <stdlib.h> #include <math.h> float randomFloat() { srand(time(NULL)); float r = (float)rand() / (...
57
votes
8answers
24k views

OpenCL / AMD: Deep Learning [closed]

While "googl'ing" and doing some research I were not able to find any serious/popular framework/sdk for scientific GPGPU-Computing and OpenCL on AMD hardware. Is there any literature and/or software I ...
56
votes
24answers
19k views

Math optimization in C#

I've been profiling an application all day long and, having optimized a couple bits of code, I'm left with this on my todo list. It's the activation function for a neural network, which gets called ...
56
votes
6answers
21k views

How are neural networks used when the number of inputs could be variable?

All the examples I have seen of neural networks are for a fixed set of inputs which works well for images and fixed length data. How do you deal with variable length data such sentences, queries or ...
56
votes
7answers
35k views

What's the difference between convolutional and recurrent neural networks?

I'm new to the topic of neural networks. I came across the two terms convolutional neural network and recurrent neural network. I'm wondering if these two terms are referring to the same thing, or, ...
55
votes
1answer
23k views

How does Keras handle multilabel classification?

I am unsure how to interpret the default behavior of Keras in the following situation: My Y (ground truth) was set up using scikit-learn's MultilabelBinarizer(). Therefore, to give a random example, ...
52
votes
8answers
73k views

How to implement the ReLU function in Numpy

I want to make a simple neural network and I wish to use the ReLU function. Can someone give me a clue of how can I implement the function using numpy. Thanks for your time!
51
votes
7answers
26k views

How to count total number of trainable parameters in a tensorflow model?

Is there a function call or another way to count the total number of parameters in a tensorflow model? By parameters I mean: an N dim vector of trainable variables has N parameters, a NxM matrix has ...
51
votes
7answers
66k views

How to initialize weights in PyTorch?

How to initialize the weights and biases (for example, with He or Xavier initialization) in a network in PyTorch?
50
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2answers
50k views

Meaning of an Epoch in Neural Networks Training

while I'm reading in how to build ANN in pybrain, they say: Train the network for some epochs. Usually you would set something like 5 here, trainer.trainEpochs( 1 ) I looked for what is that ...
48
votes
11answers
9k views

How useful is Turing completeness? are neural nets turing complete?

While reading some papers about the Turing completeness of recurrent neural nets (for example: Turing computability with neural nets, Hava T. Siegelmann and Eduardo D. Sontag, 1991), I got the feeling ...