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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5 views

Encog Workbench error creating multiple targets

I am creating a feedforward regression project with 8 input and 3 output neurons. I manually edited the .ega file to reflect "output" for all outputs since multiple can not be entered in the analyst ...
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0answers
9 views

Neural network architecture for 2048 playing

I'm trying to make a system that learn how to play 2048. I'm using genetic algorithm to choose biases and weights for the neural network. What neraul network architecture choose? Is 4 layer (input ...
0
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1answer
15 views

How do I use a pre-trained Caffe model?

I have some questions about how to actually interact with a pre-trained Caffe model. In my case I'm using a model for scene recognition. In the caffe git repository, there are some code examples in ...
1
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0answers
13 views

Neurolab provide many training samples for network newff

I need a network that will return me some points that are representation of a curve (lets assume that these are just points from -1 to 1). I have 4 learning sets (very simplified example provided): ...
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0answers
22 views

image classification, what java library or gui interface

I want to compare 1 image to 2 different image sets to see which set it belongs to. The 2 image sets will be spectrometer images generated from different substances. A spectrometer will then generate ...
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1answer
41 views

Back Propagation Neural Network Hidden Layer all output is 1

everyone I have created a neural network with 1600 input, one hidden layer with different number of neurons nodes and 24 output neurons. My code shown that I can decrease the error each epoch, but the ...
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0answers
38 views

Load data for RNN

In RNN training examples, I noticed input data and target data are all 3-dimension arrays, and need to define time-step delay between input and output. input_seqs = np.zeros((num_batches, ...
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0answers
16 views

Ensemble model of Neural Network with Boosting in R

I have a simple neural network model and I wanted to apply boosting on top of it . I have tried using Ada and Adabag package of R but they are mostly used for trees. Is there any approach for creating ...
1
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1answer
17 views

How Backpropagation works?

I have a question on backpropagation algorithm which is used in Deep Learning. How should I update the weights when we have n training samples? Should I update the weights for each sample and then ...
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0answers
13 views

Is validation process necessary in neural networks?

I build neural network for time series forecasting , I divided the series into two sets , training and test without validation process , the neural network working well but is it OK to build ANN model ...
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0answers
14 views

Evaluating time series predictions made using Pybrain LSTM recurrent neural network

I have been developing an LSTM recurrent neural network with a single input node and a single output node to perform time series prediction based on this example: ...
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0answers
11 views

Functional Link Neural Network Via Chebyshev Polynomials

We know that functional link neural network is called single layer neural network due to no hidden layer.I am using this neural network for classification, but i am unable to classify more than two ...
2
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1answer
36 views

Custom Spatial Convolution In Torch

I need to perform a custom spatial convolution in Torch. Rather than simply multiplying each input pixel by a weight for that pixel and adding them together with the filter's bias to form each output ...
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1answer
21 views

Compute all paths in graph that has multiple inputs and one output

I want to compute all the paths in directed acyclic graph from multiple inputs (x1, .., xn) to one output. The graph has the same depth which d and the inputs come to the graph at the same time (the ...
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1answer
12 views

How to denormalise (de-standardise) neural net predictions after normalising input data

How does one return original data scale after normalising input data for the neural net. Normalising was made with the standard deviation method. But the problem has already discussed, it belongs to ...
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1answer
16 views

Backpropogation in octave for iris dataset

Implement back-propagation algorithm in Matlab from scratch (without using any predefined neural network toolbox ). I did tried to implement this in Matlab But result is not desirable, I did try hard ...
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1answer
21 views

The best method for training a neural network?

I am trying to implement an OCR application that reads arabic numbers using Neural Network by openCV. My Question is What give me the best performance and speed ? entering the numbers to the NN in ...
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1answer
39 views

Python audio signal classification MFCC features neural network

I am trying to classify audio signals from speech to emotions. For this purpose I am extracting MFCC features of the audio signal and feed them into a simple neural network (FeedForwardNetwork trained ...
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1answer
255 views

Error in backpropagation python neural net

Darn thing just won't learn. Sometimes weights seem to become nan. I haven't played with different numbers of hidden layers/inputs/outputs but the bug appears consistent across different sizes of ...
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0answers
26 views

What is the best neural networks package in R for continuous data? [on hold]

I want to use neural networks to predict rainfall. What is the best neural networks package in R for continuous data?
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0answers
35 views

deep neural nets for signal processing [on hold]

I want to make deep neural network for signal processing . I am confused which algorithm to use ? There are two signals with different frequencies. known variables while training the network ...
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2answers
58 views

Can neural network actually learn?

I'm creating an evolution-artificial-life-simulation game in 2D (purely for fun purposes). It combines neural networks (for behaviour controlling) and genetic algorithm (for breeding and mutations). ...
3
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1answer
46 views

What is Depth of a convolutional neural network?

I was taking a look at Convolutional Neural Network from CS231n Convolutional Neural Networks for Visual Recognition. In Convolutional Neural Network, the neurons are arranged in 3 dimensions(height, ...
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0answers
18 views

Matlab Neural Network Weights

In Matlab I ran the neural networks toolbox and received weights titled the following: b1 = {...}; IW1_1 = {...}; b2 = {...}; LW2_2 = {...}; What part of the neural network are ...
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39 views

Rainfall pattern Recognition / Classification using Neural Network

I am working on assignment titled "Pattern Recognition of Rainfall using ANN". for training and validation proposes, i have time-series rainfall data ranging from 1976 - 2006 of two metro-logical ...
2
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1answer
22 views

How to use convert_imageset in caffe for images which are not put in one folder?

I'm trying to train a CNN on my own dataset using Caffe framework, and it is highly recommended that the dataset be converted to the lmdb or leveldb formats due to speed efficiency. To do so, all ...
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0answers
8 views

Neighbour search issue in a Kohonen network

I have implemented a Kohonen neural network that's work fine except a detail. My problem is about the search of neighbour networks. I used the method described in this paper: ...
3
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1answer
46 views

How to implement a neural network in space Invaders?

I am working on a space invaders clone in unity game engine. I want to make the enemies intelligent. One approach I tried was using a min max algorithm. I took the x-coordinates of player and made the ...
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0answers
6 views

Synaptic JS LSTM taking too much memory

Using https://github.com/cazala/synaptic package I've tried LSTM module via Architect with following configuration: var LSTM = new synaptic.Architect.LSTM(100, 100, 20); My algorithm then make ...
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1answer
19 views

In Lasagne/Theano, do I need a 4d numpy array for a 4d Theano tensor?

I'm building a neural network with lasagne and am following the example from the github. I'm curious on how exactly to input into the network. In the example they state that the input layer is 4 ...
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0answers
25 views

How to online train a neural network in pybrain?

I created a pacman game and trained a pacman agent using Q-learning algorithm. Now I'm trying to use it with neural networks. I'm using pybrain. For training, at any particular state, the state ...
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0answers
22 views

Feed Forward Artificial Neural Network in PyBrain trains for Supervised Classification but does not predict

I made a trainer which learns ok with acceptable error rate, but when I try to predict the classes on my trainer, it is not able to predict the classes.The code looks like this: data = ...
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0answers
22 views

Looking for a Deep Recurrent Neural Net (RNN) implementation/toolbox in MATLAB [closed]

Could you please advise me about any Deep Recurrent Neural Net (RNN) implementation/toolbox in MATLAB (using pre-training and fine-tuning). Thanks
0
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0answers
30 views

basic implementation of a neural network or perceptron in python [closed]

I'm new to neural networks and I've attempted to build the basic building block of one, I believe this to be a perceptron but need some help with the intuition of what its doing, and if it actually is ...
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1answer
18 views

Parameters in Weka Multilayer Perceptron Classifier

I'm doing some experiments with Weka Multilayer Perceptron, and I have some questions relating to its parameters. I've checked the help document but couldn't understand: What is ...
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0answers
27 views

How to evaluate a multi-class classification model in R?

I am currently doing a project in college. Evaluating the KDD 99 set using Neural Network. I am using nnet in R library. However, the KDD 99 have 23 types of attack, my net is learning to classify it. ...
2
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2answers
378 views

Caffe predicts same class regardless of image

I modified the MNIST example and when I train it with my 3 image classes it returns an accuracy of 91%. However, when I modify the C++ example with a deploy prototxt file and labels file, and try to ...
1
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1answer
21 views

Caffe output layer number accuracy

I've modified the Caffe MNIST example to classify 3 classes of image. One thing I noticed was that if I specify the number of output layers as 3, then my test accuracy drops horribly - down to the low ...
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0answers
46 views

How I can insert 10 input and for each input as 2D or 3D to neural network using Matlab.Thanks [closed]

How I can insert 10 input and for each input as 2D to neural network using Matlab. For example : I have two column and 10 raw ,so i want make it 10 input and for each input as 2 Dimensional. (Input ...
0
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1answer
39 views

Error with Caffe C++ example with different deploy.prototxt file

I trained a model using the MNIST example architecture (but on my own set of 3 image classes) and have been trying to integrate it into the C++ example. I modified the MNIST architecture file to make ...
0
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1answer
19 views

Neural network (non) linearity

I am somewhat confused by the use of the term linear/non-linear when discussing neural networks. Can anyone clarify these 3 points for me: Each node in a neural net is the weighted sum of inputs. ...
2
votes
1answer
17 views

Best way to re-initialise a compiled Theano function

I want to refresh my compiled MLP model in Theano as I want to repeat a model with different hyper-parameters. I am aware that I can redefine all the functions, however, compile time for each ...
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votes
1answer
26 views

How to extract trained caffe kernels filter of the first layer

I am using caffe and I wonder if I just can use one of the filters separately. So basically I just need the trained kernel of that filters (using in the first layer). I could not find the formula of ...
0
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0answers
24 views

Neural network dimension mis-match

I have a neural network setup for the MNIST digits dataset in Keras that looks like this: input_size = features_train.shape[1] hidden_size = 200 output_size = 9 lambda_reg = 0.2 learning_rate = 0.01 ...
2
votes
3answers
201 views
+50

Compiling Caffe C++ Classification Example

I recently modified the Caffe C++ classification example file and I am trying to recompile it. However, I'm having trouble linking a simple g++ compilation to the .hpp files in the include directory. ...
0
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1answer
20 views

Scaling OpenCV Mat for Caffe

I've been following the Caffe MINST example and trying to deploy a test of the trained model with C++ where I use OpenCV to read in the images. In the example, they mention how for the training and ...
0
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0answers
57 views

Neuroevolution is not converging (Genetic Algorithm + Neural Network)

I'm trying to make my first neuroevolution example and even though I believe the logic is okay, for some reason it is not working. I've set a population of 20 creatures with a random generated brain ...
0
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1answer
122 views

Neural Network giving wrong outputs

I have this neural network I'm trying to make work ( my first one ), though no matter what I do, the network never seems to get to the correct answer.. Here is the output after the network reached an ...
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0answers
12 views

What is the upper bound for training Linear separable set with Perceptron, Rosenblatt rule?

I have the following neural networks problem and couldnt find any answer on the web. Any hints would help. I am not looking for a complete solution, just some pointing in the right direction. ...
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1answer
79 views

How to modify Caffe network input for C++ API?

I'm trying to use the MINST Caffe example via the C++ API, but I'm having a bit of trouble working out how to restructure the network prototxt file I'll deploy after training. I've trained and tested ...