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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11 views

Learning ANN in Matlab (Multi-layer Back-propagation )

I'm writing this code for learning process of ANN (multi-layer back-propagation ) but the result of learning is very bad it's not near to 1 at any time I know we can not give any guaranty to make ...
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2answers
25 views

How do I train a neural network from many sets of data?

I have many sets of related data that I want to use to train a neural network. The data is from racing pigeons that fly a set distance. The inputs could be weight, age, size, wing span, sex, distance, ...
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1answer
24 views

Perceptron Learning - Input Intuition in Weight Update

I've been trying to teach myself how to create perceptrons, and I'm mostly following quite well. The only issue I have encountered so far is understanding what the intuition behind the presence of the ...
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1answer
12 views

Caffe - Feedforward image using trained caffemodel from shell

Suppose I have a trained caffe model (.caffemodel weights file and .prototxt file with the description of the net) and an image that I want to classify using this net (a simple feed-forward, then get ...
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1answer
19 views

Obsolete/erroneous code in convolutional_mlp.py at DeepLearningTutorials?

This code contains the following tidbit: from theano.tensor.nnet import conv2d ... # convolve input feature maps with filters conv_out = conv2d( input=input, filters=self.W, ...
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1answer
12 views

Max-pooling VS Sum-pooling

I have partially understood Max-pooling, after reading Convolutional Neural Networks (LeNet): Another important concept of CNNs is max-pooling, which is a form of non-linear down-sampling. ...
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0answers
21 views

Price optimization using Neural Network approach in R; Is the approach going in right path ? [on hold]

I have implemented price optimization with 5 parameters for 3 companies using neural network in R language. And i have attached a copy of input dataset and fully implemented R code. Kindly advice me ...
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0answers
16 views

Unable to see the validation and test performance plot in a custom neural network

I have made a function "neuralnetfunc" which takes cell array input and target to make a neural network. This is a multilayer perceptron. I have used data division function. Unfortunately, I can not ...
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1answer
21 views

Plotting a decision boundary python ( give a good idea of how contourf matplotlib function works )

This can be considered mostly as a duplicate of another thread, but it's meant to a be granular level explanation intended question. In Machine Learning algorithms (let's consider a perceptron), I am ...
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0answers
11 views

Text recognition system pre requirements

I would like to implement a text recognition system for my Artificial Intelligence assignment. But I am bit stuck: From where to start What sort of techniques (NN,Machine Learning) that I have to ...
2
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0answers
24 views

Recurrent neural network on multi-layered input (not images)

I would like to design a neural network, that can act on input as shown in the image attached. First input is a scalar value. Next, I have scalar arrays (spectral coefficients), that all are related ...
2
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1answer
22 views

Multi-output neural network combining regression and classification

If you have both a classification and regression problem that are related and rely on the same input data, is it possible to successfully architect a neural network that gives both classification and ...
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1answer
22 views

How to write comments in prototxt files?

I can't find how to write comments in prototxt files. Is there any way to have comments in a prototxt file, how? Thanks
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1answer
24 views

Backpropagation neural network, too many neurons in layer causing output to be too high

Having neural network with alot of inputs causes my network problems like Neural network gets stuck and feed forward calculation always gives output as 1.0 because of the output sum being too ...
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0answers
12 views

Q Learning vs NFQ wrt PyBrain

In Q-Learning using PyBrain, after training, we get a matrix for state vs action which can be used for testing. Similarly for NFQ using PyBrain, how do we test? It would be really helpful if anyone ...
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0answers
16 views

How to interpret Weka multilayer perceptron output to get a formula?

I've got something like this: === Classifier model (full training set) === Linear Node 0 Inputs Weights Threshold -0.9961419698978499 Node 10 2.0600583898757376 Node 11 ...
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0answers
8 views

How to apply Oja's Neural Network to an image in MATLAB to extract 1st PC?

I want to apply Oja's learning rule to an image to extract the 1st Principal Component. How can this be done in MATLAB?
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1answer
18 views

Standalone image patch extraction op in Tensorflow

In the Tensorflow docs, the tf.nn.conv2d-operation is described to: Flatten the filter to a 2-D matrix with shape [filter_height * filter_width * in_channels, output_channels]. Extract image patches ...
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1answer
18 views

caffe: what does BACKEND and SCALE mean in data layer definition?

I'm a fresh guy to caffe. and was following mnsit handwritten digits recognize example. when seeing layer { name: "mnist" type: "Data" transform_param { scale: 0.00390625 } data_param ...
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1answer
30 views

Advice for a species identification program using a reference database (python) [on hold]

my aim is to develop a species identification program for a specific insect family, which should be able to identify a specific species by using morphological and ecological traits and comparing them ...
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0answers
15 views

Using BAM for OCR in Neural Networks

I am trying to implement OCR through BAM, but when I multiple the input vector with Weight matrix generated from 36 characters including numbers and letters, it wont recognize any character just give ...
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0answers
32 views

How to change the blob size into 5D

In general, the dimension of blobs for input data is 4D. How can I set the size blob in training prototxt file? The input data are saved in HDF5 format with 5D including ...
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1answer
57 views

Neural network model not learning?

I tried to model a NN using softmax regression. After 999 iterations, I got error of about 0.02% for per data point, which i thought was good. But when I visualize the model on tensorboard, my cost ...
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0answers
18 views

KL-divergence with SGD and BGD

I have a question about how to use KL-divergence as regularization with stochastic gradient descent(SGD). Let's say, I have a training set which contains 10000 examples and every example is a ...
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1answer
40 views
+50

How do I interpret pycaffe classify.py output?

I created a GoogleNet Model via Nvidia DIGITS with two classes (called positive and negative). If I classify an image with DIGITS, it shows me a nice result like positive: 85.56% and negative: ...
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0answers
7 views

Fully connected neural network in Encog?

Is it possible to create and train fully connected ANN in Encog framework? By fully connected I mean all neurons to be connected to all others and to it selves. In practice there are not layers. If ...
2
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0answers
31 views

Multdimensionnal input for LSTM for Tensor Flow

I have a series of multdimensionnal time series as follow: Input Xi i=1..N samples Xi=[y1,..yk..., yT] K=1..T , yk is a vector, T= 50 (sequence length) with yk= [yk1, ... ykm] ...
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0answers
23 views

Matlab mini batch gradient descent

I finished machine learning course on Coursera. I`m currently working on speech separation problem. For minimizing cost function we have used fmincg. The problem is that I don t have enough RAM for ...
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1answer
21 views

Neural Networks back propogation

I have gone through neural networks and have understood the derivation for back propagation almost perfectly(finally!). However, I had a small doubt. We are updating all the weights simultaneously, so ...
1
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1answer
21 views

sigmoid - back propagation neural network

I'm trying to create a sample neural network that can be used for credit scoring. Since this is a complicated structure for me, i'm trying to learn them small first. I created a network using back ...
2
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2answers
25 views

Machine learning model suggestion for large imbalance data

I have data set for classification problem. I have in total 50 classes. Class1: 10,000 examples Class2: 10 examples Class3: 5 examples Class4: 35 examples . . . and so on. I tried to ...
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1answer
34 views

How can I see what my simple neural network in python dream of?

I have built a basic multi-layer perceptron which can learn from the MNIST dataset. After the learning, I wanted to obtain an input from an output, meaning reversing the feedforward function in order ...
2
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2answers
52 views

What type of machine learning algorithm is more suitable for predicting next destination of a ship based on previous visits?

I'm looking at machine learning algorithms in order to investigate which category of algorithms are more appropriate for this type of problem. Problem: There are history of ship voyages available ...
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0answers
12 views

Is it necessary to permute image dimensions in caffe if I am learning a network from scratch?

I am relatively new to caffe and still figuring everything out. I am trying to train a network from scratch using the AlexNet structure for regression purposes. My main question is the following : ...
2
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1answer
52 views

Neural network testing error range

I'm implementing a neural network in Java, which only uses fully connected layers. I'm training the net with a simple sine function, where x (in [0, 1]) is given as an input, and (1 + Math.sin(x * 2 ...
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0answers
13 views

MATLAB - train stacked network error

i am working right now on deep-learning for classification. Specyfically i am using MATLAB, sparse autoencoders and a softmax layer for classification. The problem comes here, when i train the ...
2
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0answers
49 views

Why the CNN arrived at highest accuracy only after 100 iterations and cannot get improved?

First of all, truly thanks for your watching. This output confuse me in several days. Whyyyy the CNN arrived at 90% accuracy after 100 iterations and cannot improve any more? Though I reduce or ...
3
votes
1answer
39 views

Gradient descent vectorised computation dimensions not correct

I have 1 input layer, 2 hidden layers and 1 output layer and for a single training example x with output y I have computed following : x = [1;0;1]; y = [1;1;1]; theta1 = 4.7300 ...
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0answers
41 views

How do I determine the training “accuracy” for a TensorFlow network with dropout?

I'm aware that "accuracy" isn't what measured against the training set for a neural network during training, but I'd like to know, essentially what would happen if I stop trianing now and try to ...
0
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1answer
37 views

Forearm posture prediction based on arm and hand angles

I have 2 sensors: on an upper arm and on a hand, each gives me a quaternion (or Euler angles) of its position in global 3d space, do you have any ideas, how can I find the forearm position? For ...
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votes
1answer
80 views

Can someone explain this piece of code that recognises a digit from the Coursera Machine Learning course

This is a snippet from the predict function of exercise 4 of the Coursera machine learning course. What it does is it stores the predicted digit from a trained neural network in p. Can someone explain ...
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0answers
9 views

Using DL4J for Evaluating an Image kind of like in AlphaGo

I recently downloaded Deeplearning for Java (DL4J) and am now experimenting a bit with convolutional nets. I found some working samples on the homepage and the internet, for example how to classify ...
2
votes
1answer
47 views

Non-converging Neural Network in C

I wrote my first feed-forward neural network in C, using the sigmoid 1.0 / (1.0 + exp(-x)) as activation function and gradient descent to adjust the weights. I tried to approximate sin(x) to make sure ...
2
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0answers
28 views

Detecting reflection on objects or curved images inside images

I need to detect reflection on objects (i.e. on a car) or an curved image inside another image. Does anybody know how to do that? Some examples of what I'm looking for: Also, I don't need to ...
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2answers
33 views

Formula in neuralnet classifier and trained weight matrix

I am using the neuralnet package in R to fit the neural net classifier to my data. net <- neuralnet(Y1+Y2+Y3~X1+X2+X3, binary.data, hidden=45, rep=10, err.fct="ce", linear.output=FALSE) Now my ...
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1answer
26 views

Applying Neural network for doing Image recognition

How is image recognition done by neural network after doing canny edge detection of the image? I don't seek for the code, I want to know how neural networks actually work in order to match similarity ...
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0answers
14 views

Artificial Neural Network Project [closed]

I am helping a professor to do research work on Artificial Neural Network and he asked me for a topic in which I would like to create a project. I am a beginner in artificial neural network, so I ...
0
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1answer
16 views

Get caffe intermediate result when calling python from caffe binary lib

I am using python interface of caffe. In the layer implementation file softmax_loss_layer.cu, the loss of every single sample in a mini-batch will be summed and divided by the batch size. So the ...
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1answer
26 views

TensorFlow: 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 ...
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0answers
29 views

Implementation of multilayer perceptron neural network on FPGA using system generator

I'm trying to implement a multilayer perceptron neural network on FPGA using system generator for the implemented architecture. The training phase is performed in Matlab and the resulting weights and ...