1
vote
0answers
15 views

Diffference between Bayesian Network and other graphical model

Referring to this answer Difference between Bayesian network and neural network, I have come across another graphical model (1) Fuzzy Cognitive Map and (2) Neuro-Fuzzy. Bayesian Network (BN), Fuzzy ...
-1
votes
0answers
7 views

Details of time and memory in Weka classifiers

I'm using Weka 3.6 and I want below information in Weka classifiers: (Training Time), (Classification time), (Testing Time) and (Memory usage) for each algorithm of classify tab; please help me... ...
1
vote
0answers
19 views

Is the training method of a Convolutional Network still known as deep learning?

In papers such as ImageNet Classification with Deep Convolutional Neural Networks http://www.cs.toronto.edu/~fritz/absps/imagenet.pdf the training method seems to be basic backpropagation with ...
0
votes
0answers
18 views

“Expanding” the Kernel Trick to recover a neural network

I am wondering whether there are any techniques out there to take the result of a kernel SVM, and "expand" it to recover a (possibly deep) neural network where a simple, standard nonlinearity is ...
0
votes
0answers
7 views

Echo State Network stops working with only 32 bit precision

I am trying port the code of an already working example of an echo state network that is running in python on the CPU to code that trains the network using the GPU. The library I am using is Theano. ...
0
votes
0answers
15 views

Echo State Networks (ESNs) - N Point Ahead Time Series Prediction - Mackey-Glass17 vs My own Time Series

My question is related to predicting 3 minutes ahead i.e. 180 points ahead. Because I compressed my time series data as taking the mean of every 2 points as one, I have to predict (N=90) step-ahead ...
0
votes
0answers
23 views

Why counterpropagation network doesnt work?

I've implemented counterpropagation network on C++ for prediction problem and also found this one in java http://paste.ubuntu.com/7240780/. Then i tried to learn this network on next input vectors: ...
0
votes
2answers
42 views

Which is more efficient to use on a mobile platform SVM or Neural Networks ? [closed]

I'm currently working on a framework for emotions and I'm planing on using input from a camera on a mobile platform to recognize the user's current emotional expression, using the CI2CV i managed to ...
1
vote
0answers
44 views

Neural network learning fast, false positives

I've recently started implementing a feed-forward neural network and I'm using back-propagation as the learning method. I've been using http://galaxy.agh.edu.pl/~vlsi/AI/backp_t_en/backprop.html as a ...
4
votes
1answer
121 views

Conceptual issues on training neural network wih particle swarm optimization

I have a 4 Input and 3 Output Neural network trained by particle swarm optimization (PSO) with Mean square error (MSE) as the fitness function using the IRIS Database provided by MATLAB. The fitness ...
0
votes
1answer
50 views

Neural net model training error

I'm getting started with R, I really like it but recently I found myself in a corner. I'd like to build neural network model that predicts heat consumption. I have historical data that contains ...
1
vote
0answers
37 views

Where can I find fully trained deep networks for download?

I'm trying to examine a hypothesis about the statistics of trained "deep" networks. There have been quite a few impressive results published in recent years (most recently, state of the art state ...
1
vote
0answers
36 views

What is the network size limit in PyBrain?

I have recently constructed a neural network in PyBrain, but ran in to a problem of my network being to big. So what are the exact limits in PyBrain? How can I construct a network with 750000 ...
0
votes
0answers
23 views

Gradients with iRPROP

I am learning how to implement a simple feedforward neural network. I have three layers with 2 input, 2 hidden and 1 output nodes, all with the Sigmoid activation, processing the simple XOR set. I've ...
0
votes
0answers
17 views

Python FANN library error value 0 after epoch 2

I'm making a program for determining an face image if it's happy or not in Python using FANN library. Here's my code: from pyfann import libfann connection_rate = 1 learning_rate = 0.5 num_input = ...
1
vote
2answers
65 views

Having a batch program learn

I am making a chat bot for my sister in batch but it is consuming so much time I figured I would let it have her tell it what to say when it does not know. However I can not get it working and I ...
2
votes
0answers
49 views

Handwritten digit recognition with neural network - using RBM

assume there are many training samples of 20x20 pixel'd handwritten digits. I trained them with multi-layered Restriected Boltzmann Machine neural network. The top layer consists of 10-neuron that ...
1
vote
0answers
21 views

Unable to set up Pybrain LSTM module for Reber Grammar

I'm trying to use Pybrain to predict sequences of characters belonging to the Reber grammar. Concretely what I'm doing is generating strings using the Reber grammar graph (you can check it here : ...
0
votes
2answers
52 views

Pause Python program on the fly (and resume)

I am building a machine learning algorithm(like neural network) where class variables(i.e numpy matrices) represent various parameters of the system Training the system is done by iteratively update ...
0
votes
0answers
51 views

Hamming distance learning

The Hopfield neural network architecture is popularly used for the purpose of memory storage and pattern retrieval. It is referred to as context-addressable memory. I have N training examples and ...
0
votes
1answer
87 views

How to use the custom neural network function in the MATLAB Neural Network Toolbox

I'm trying to create the neural network shown below. It has 3 inputs, 2 outputs, and 2 hidden layers (so 4 layers altogether, or 3 layers of weight matrices). In the first hidden layer there are 4 ...
-1
votes
1answer
92 views

Using a single weight matrix for Back-Propagation in Neural Networks

In my Neural Network I have combined all of the weight matrices into one large matrix: e.g A 3 layer matrix usually has 3 weight matrices W1, W2, W3, one for each layer. I have created one large ...
8
votes
4answers
792 views

Can a Neural Network Find the i-th Permutation of a fixed size list?

Briefly Can a neural network emulate factorial decomposition (or some other method) to provide a list permutation given the permutations unique index? Application I have a list of 10 things, and ...
1
vote
1answer
25 views

how to set custom hiddenclass function in pybrain?

I want to train a neural network with (1,Nh,1,1) (one input, Nh neurons in the first hidden layer , 1 neuron in the second hidden layer and 1 output). In the second hidden layer I would like to use ...
0
votes
0answers
103 views

Matlab recurrent neural network: what does layerDelays in layrecnet mean?

Explain the meaning and effect of the layerDelays parameter in the matlab recurrent neural network command layrecnet. In particular, explain the difference if layerDelays is set to for instance these ...
1
vote
3answers
54 views

More accurate approach than k-mean clustering

In Radial Basis Function Network (RBF Network), all the prototypes (center vectors of the RBF functions) in the hidden layer are chosen. This step can be performed in several ways: Centers can be ...
11
votes
5answers
2k views

Can any existing Machine Learning structures perfectly emulate recursive functions like the Fibonacci sequence?

To be clear I don't mean, provided the last two numbers in the sequence provide the next one: (2, 3, -> 5) But rather given any index provide the Fibonacci number: (0 -> 1) or (7 -> 21) ...
0
votes
0answers
20 views

nonlinear algorithm of one-dimensional using hopfield

I'm new in hopfield neural network , so I would like to do simple try out of this neut using one-dimensional point.. for example if given point such { 0.6 0.5 0.7} the first phase "as my graduation ...
2
votes
3answers
49 views

Software for Image classification

Currently I am working for a project to classify a given set of test images into one of the 5 predefined categories. I implemented Logistic Regression with a feature vector of 240 features for each ...
1
vote
1answer
63 views

PyBrain multiple target values

I'm trying to train ANN to predict probabilities of an image belonging to a several number of classes, and my target values are sets of such probabilities. Input is simple reshaped 28x28 grayscale ...
2
votes
2answers
63 views

Geometric representation of Perceptrons (Artificial neural networks)

I am taking this course on Neural networks in coursera by geoffrey hilton (not current). I have a very basic doubt on weight spaces. ...
0
votes
1answer
39 views

Looking for training data for music accompaniment

I am building a system that uses machine learning to generate an accompanying melody in real time as a leading melody is being played. It uses a type of Recurrent Neural Networks and at every step it ...
0
votes
2answers
94 views

Why is sigmoid function used to determine posterior probability?

I'm trying to implement a neural network in Java. I came across this in my machine learning textbook, while studying neural networks: To give some background, the section was talking about using a ...
-6
votes
1answer
24 views

What is the structure of the MLP's input?

Each complex number, component of either an input or an output pattern, is associated with two adjacent neurons of the MLP input or output layer respectively, having its real part assigned to the left ...
2
votes
1answer
264 views

Programming a Basic Neural Network from scratch in MATLAB

I have asked a few questions about neural networks on this website in the past and have gotten great answers, but I am still struggling to implement one for myself. This is quite a long question, but ...
0
votes
3answers
95 views

Artificial Neural Network training with 6 features

I want to ask the following question : I am trying to train an artificial neural network with backpropagation. I have a feedforward neural network with 6 input layers 7 hidden and 1 output. I will ...
1
vote
1answer
57 views

Backpropogation neural network - error not converging

I am using backpropogation algorithm for my model. It works perfectly fine a simple xor case and when I tested it for a smaller subset of my actual data. There are 3 inputs in total and a single ...
1
vote
1answer
112 views

Unsupervised learning in artificial neural networks

If I were to train an artificial neural network's weights using a genetic algorithm what type of learning would this be classed as? I believe it's unsupervised but does it have a name? It seems like ...
-2
votes
1answer
40 views

How do i scale neural network output?

I am using a neural network with Resilient Propagation for time-series prediction. My activation function is the hyperbolic tangent activation function for all layers. My network's input is normalized ...
2
votes
1answer
99 views

Echo State Network learning Mackey-Glass function, but how?

I got this example of a minimal Echo State Network (ESN) which I analyse while trying to understand Echo State Networks. Unfortunately I have some problems understanding why this really works. It all ...
1
vote
1answer
158 views

Early-stopping while training neural network in scikit-learn

This questions is very specific to the Python library scikit-learn. Please let me know if it's a better idea to post it somewhere else. Thanks! Now the question... I have a feed-forward neural ...
1
vote
1answer
99 views

Classifying human activities from accelerometer-data with neural network

I've been tasked to carry out a benchmark of an existing classifier for my company. The biggest problem currently is differentiating between different type of transportation's, like recognizing if i'm ...
0
votes
2answers
49 views

How to set number of clusters in Kohonen SOM in R?

I have a data set and want to cluster by Kohonen SOM in R. I want to vary number of clusters from 2 to 40, but I didn't find package, where I can set the number of clusters before clustering, as ...
0
votes
0answers
103 views

Backpropagation neural networks implemented in C++

I'm currently learning BPNN through Prof. Andrew Ng's online course on Coursera. I think I've kind of understood this method, and trying to implement it using C++ and Armadillo (a linear algebra ...
1
vote
2answers
68 views

Neural networks - Do training set and validation set need separate standardization?

I have this 5-5-2 backpropagation neural network I'm training, and after reading this awesome article by LeCun I started to put in practice some of the ideas he suggests. Currently I'm evaluating it ...
0
votes
0answers
31 views

Pairing of softmax and cross entropy gradient

I appear to be having difficulties calculating the gradients of my final layer in a neural net consisting of a softmax followed by cross entropy layer. Here is a worked example of how I understand ...
2
votes
0answers
38 views

Encog Framework not giving acceptable error rate

I have a very small dataset, only 200 rows. I have only 3 columns; the first two are numeric (negative and positive) and the last is letter. I am attempting to classify the last column based on ...
1
vote
1answer
46 views

Radial basis network character recognition

I want to develop a simple character recognition program by implementing a given neural network kind; a simple command line-type is enough. The radial basis function neural network was assigned to me ...
4
votes
0answers
133 views

Audio signal source separation with neural network

What I am trying to do is separating the audio sources and extract its pitch from the raw signal. I modeled this process myself, as represented below: Each sources oscillate in normal modes, often ...
3
votes
3answers
119 views

Which algorithms have been proposed to learn the architecture of a deep neural network?

Yoshua Benhgio's Learning Deep Architectures for AI book mentions that we should [...] strive to develop learning algorithms that use the data to determine the depth of the final architecture. ...