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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What is the difference between curve fitting/fitting neural network and patter recognition neural network?

Can fitting be used instead of pattern recognition? In which situations are fitting better and which situations for pattern recognition? We are novice in this topic, so simple explanations will be ...
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4 views

How to use complex data with MLDataSet Encog

I was reading this question and I would still like some more information about how you pass more complex data into Encog. There don't seem to be any tutorials on complex data in Encog.
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6 views

Could someone explain the output of lemur project RankLib?

I am trying to use the RankNet algorithm from the lemur project which can be found at http://sourceforge.net/p/lemur/wiki/RankLib/. Can someone explain me what the output file wants to tell. I tried ...
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1answer
4 views

MLP with both Pattern Recognition & Forecasting Inputs: Bad Idea?

This is regarding a 3-layer MLP (Input, Hidden, Output) in Ward Systems NeuroShell 2 I would prefer to split these input layer classes (PR & F) into 2 separate nets with their own hidden layers ...
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9 views

Why can't I compile this C API (NeMo Spiking Neural Network Simulator)

Hi I am trying to utilize this library http://nemosim.sourceforge.net to play around with Spiking Neural Networks. I am new to C and C++. What I've done is, downloaded the installer from here: ...
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11 views

Find angle form set of images

I have set of 2000 plane images similar to image below. Plane has different angle on every image. Image size is 512x512 and in every image is always this same plane. My goal is to find angle on ...
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1answer
34 views

Machine learning - Calculating the importance of a “value” in a variable [on hold]

I’m analyzing a medical dataset containing 15 variables and 1.5 million data points. I would like to predict hospitalization and more importantly which type of medication may be responsible. The ...
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1answer
25 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 ...
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2answers
63 views

Encog Neural Net - How to structure training data?

Every example I've seen for Encog neural nets has involved XOR or something very simple. I have around 10,000 sentences and each word in the sentence has some type of tag. The input layer needs to ...
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31 views

Caffe: Can't seem to learn y = x^2 function

I was trying to train a neural network to learn the function y = x^2 in the deep learning framework Caffe. Here is my code: Data generation code: import numpy as np import lmdb import caffe Ntrain ...
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6 views

Encog Neural Network - Jar file seems incomplete

I downloaded encog-core-3.3.0 jar file, but there are a number of imports that don't exist. For instance, import org.encog.neural.networks.synapse.Synapse; is not in my Jar file. Has there been an ...
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17 views

Gaussian RBM implementation in Python [on hold]

I am totally blocked in a bunch of formula and article about Gaussian RBM in which the visible units are real-valued and not binary. Is there anyone who could implement Gaussian RBM in python so far? ...
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6 views

How to get weka commandline equivalent from GUI?

I am using the Weka AI platform to build a Multilayer Perceptron model (using a single hidden layer). When creating the neural network, I can set "GUI" to true and create my network with any topology ...
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15 views

LSTM with 12 input and output nodes with no embedding

all I need is a RNN LSTM with 12 input nodes, 12 output nodes and have ability to tweak hidden layers (their number and size). The elements of input and output vectors can be real numbers or ...
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2answers
30 views

Theano gradient calculation creates float64

I have some standard NN code on Theano with two separate compiled functions. One that calculates the cost and one that calculates the cost with AdaGrad updates. For GPU speed, I'm trying to keep ...
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19 views

Why does pre-training a deep belief network produce good feature detectors?

The pre-training procedure seeks to increase the probabilities of the data sets P(d), which are defined by the generative weights, through pushing up variational lower bounds on P(d) with stacks of ...
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7 views

How to print final weights in a neural network?

https://github.com/lwitteman/Neural-Network Refer to the link for the actual code of the network. Currently when I print out the weights, W1 and W2, it prints out the values for each iteration. I am ...
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43 views

How can neural networks learn functions with a variable number of inputs?

A simple example: Given an input sequence, I want the neural network to output the median of the sequence. The problem is, if a neural network learnt to compute the median of n inputs, how can it ...
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19 views

Getting an error message “Error in if(reached.threshold < min.reached.threshold)…” while training network using neuralnet package

I'm using R to create train and test a neural network on a time series (the annual sales of a company over a large period of time). As using the package's default learning algorithm (resilient ...
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17 views

How to add Convolution2D Layers? Theano

Im having issues on how to understand how Convolution Layers are added. Im trying to add Convolution Layers but i get this error : ValueError: GpuCorrMM shape inconsistency: bottom shape: 128 32 ...
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18 views

Torch tutorial Convolution Network Model training all the results infered as 1

I am learning torch&lua and following the official tutorial When I am running linear model, although error rate high, but at least prediction is distributed, i.e. there are entries in each class ...
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1answer
44 views

Having trouble training multidimensional data (4d numpy matrix) in sklearn and pybrain

I have am training an emotion recognition system that detects emotions through facial movement and I have a 4 dimensional matrix that I am trying to train. However, sklearn is not allowing me to train ...
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19 views

how to warm start my SciPy.Optimize.Minimize function with previously calculated gradient as initial guess

I'm using the scipy.optimize.minimize method using Newton-CG to minimize a Neural Network cost. The cost function implements back propagation algorithm. I have parallelized the cost function to scale ...
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16 views

Difference between feedforward neural network with lagged inputs and NARX network

In time series analysis, what is the difference in using feedforward neural network with lagged inputs and using NARX network with input and feedback delays in MATLAB?
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1answer
31 views

Can I use multiple labels for one feature vector with Lasagne?

I have a semantic segmentation problem where it would be very nice if I could have multiple labels for one feature vector. So I have some parts of my data which belong to class 1, 2 AND 3 (and others ...
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10 views

Prediction with function fitting approximation using neural networks

I am a new to AI. Right now I am trying to approximate a function using different inputs. I trained a feedforward network, and I tested new data to see how it worked. It works great! The function is ...
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1answer
50 views

Caffe: Extremely high loss while learning simple linear functions

I'm trying to train a neural net to learn the function y = x1 + x2 + x3. The objective is to play around with Caffe in order to learn and understand it better. The data required are synthetically ...
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1answer
26 views

Using Neural Networks Without Training Them

My task for my university assignment is to create AI for a "MOBA" style strategy game. I have looked into using neural networks for this. I cannot see any need to train the network beforehand. In ...
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15 views

Echo state network output weight confusion

I was reading the Scholarpedia article on ESNs, and I got up to the bit about the output weights before I became confused. My math-fu is weak, so I'm having trouble understanding 2 1 thing (as far as ...
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2answers
32 views

How to compute a loop in a neural network?

If two nodes point to each other in a neural network, how would you prevent the network from being stuck in an infinite loop?
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1answer
23 views

Why does normalizing one dimension of the input give different accuracy?

Below is my Neural Network code that I adapted from the YouTube series by Stephen Welch. I am wondering why when I change the value of all my X's, (normalize it) it seems to produce different results. ...
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18 views

Training neural network on a sequence of moves

I've been playing with neural networks just out of personal curiosity and wanting to learn. So far, it's been a success. I've written a code for one from scratch, with backpropagation for training, ...
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27 views

Need Code for quick prop

I am trying to implement quick prop, and still not able to code it after studying it from different sources. Nobody provide me the solution where to use learning rate in quick prop as quick prop in my ...
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1answer
48 views

NARX Neural network prediction?

I am trying to solve a time series problem using the NARX Neural Network solution that Matlab provides. I am trying to understand how to predict actual values, but the results I get are almost ...
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1answer
23 views

Error in R using neuralnet package

I'm running a script to estimate a Neural Network in R using the package neuralnet. I'm using a Linux OS and the script is the following: # useful libraries library("XLConnect") ...
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22 views

Face recognition algorithms

I am trying to work with MSRA-CFW dataset for face recognition. I have tried two algorithms for this dataset: Eigenfaces and FisherFaces Eigenfaces, as expected, performed poorly (because of ...
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32 views

How to train new fast-rcnn imageset

I am using fast-rcnn and try to train the system for new class (label) I followed this: https://github.com/EdisonResearch/fast-rcnn/tree/master/help/train Placed the images Placed the annotations ...
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1answer
15 views

How to properly model ANN to find relationship between real value input-output data?

I'm trying to make an ANN which could tell me if there is causality between my input and output data. Data is following: My input are measured values of pesticides (19 total) in an area eg: ...
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60 views

Neural Networks and GPU Programming

I'm currently developing a Spiking Neural Network with GPU parallelism. It goes well, I guess, but I'm not entirely sure of what could be the best way to optimize it. I divide my neurons in multiple ...
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27 views

How to vectorize a text document (.txt) file?

(A Python3 approach would be most appreciated.) I've got a code to simulate Kohonen's Neural Network (SOM) which receives a set of numeral vectors then cluster them based on their similaity to given ...
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22 views

How do a single layer perceptron separate the feature space

I'm trying to understand how a single layer perceptron would separate the feature space into classes. Let's assume the single layer perceptron consists of 3 neurons which take a two dimensional ...
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1answer
101 views

How to pick a layer in a neural network and enhance it

I am interested in a recent blog post by Google that describes the use of nn to make art. I am particularly interested in one technique: 'In this case we simply feed the network an arbitrary image or ...
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16 views

How do you make a prediction (forecast) from a trained network for a given input in Matlab?

I am using the neural network toolbox that Matlab provides. I trained a NARX neural network for time series problems. I am trying to predict future values using the inputs I am giving to the neural ...
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13 views

Is there a generic training set to compare different neural network-building techniques?

Is there a generic training set that is used to compare different techniques in building neural networks? There should be some research on comparing them, I assume, and such papers, usually tend ...
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18 views

Neural Network Data Strucutres

I was implementing a simple feed forward neural network and was thinking about how to optimize its efficiency using the back propagation algorithm. Since we're dealing with a complete (layer to ...
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0answers
22 views

Strange neural network output

I am programming in MATLAB and I am trying to use the Neural Network Toolbox but I have troubles in calculating the output of a network. I will try to explain my problem: I have defined a very simple ...
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1answer
30 views

Support Vector Machine in Torch7

I have based my model upon the following tutorial: https://github.com/torch/tutorials/tree/master/2_supervised For the last stage a neural network is used upon the features extracted from the CNN. I ...
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25 views

How to deal with different sizes of sentences when giving them as input to a Neural Network?

I am giving a sentence as input to a tree structured Neural Network, where the leaf nodes will be the word vectors of the words in the sentence. That tree will be a binarized constituency(see the ...
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13 views

MATLAB- Simultaneous use of Neural network toolbox and optimization toolbox

I am currently occupied in training an ANN using different techniques. I was wondering if there is any way to use the optimization toolbox's functions for training my ANN. Basically, is there a way to ...
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1answer
42 views

Does Andrew Ng's ANN from Coursera use SGD or batch learning?

What type of learning is Andrew Ng using in his neural network excercise on Coursera? Is it stochastic gradient descent or batch learning? I'm a little confused right now...