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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6 views

Recurrent vs Recursive Neural Networks: Which applies better for NLP?

So, we have Recurrent Neural Networks and Recursive Neural Networks. Both are usually denoted by the same acronym: RNN. According to Wikipedia, Recurrent NN are in fact Recursive NN, but I don't ...
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6 views

What determines the ratio in “splitForTrainingAndTest” RSNNS

I'm going through the RSNNS demos and I'm unsure about some things. Here I'm wondering about the ratio option. This is the example they give in their demo using the iris dataset. data("iris") ...
1
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0answers
16 views

Image Similarity - Deep Learning vs hand-crafted features

I am doing research in the field of computer vision, and am working on a problem related to finding visually similar images to a query image. For example, finding t-shirts of similar colour with ...
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0answers
9 views

Binary Classification Cost Function, Neural Networks

I've been tweaking the Deep Learning tutorial to train the weights of a Logistic Regression model for a binary classification problem and the tutorial uses the negative log-likelihood cost function ...
2
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0answers
10 views

number of parameters in Caffe LENET or Imagenet models

How to calculate number of parameters in a model e.g. LENET for mnist, or ConvNet for imagent model etc. Is there any specific function in caffe that returns or saves number of parameters in a model. ...
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0answers
11 views

darch package for time series regression

Have you ever used the darch package for time series regression? As a starting point I want to fit a simple polynomial function using deep neural network with RBM pre-train, but unfortunately the ...
1
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1answer
28 views

What are units in neural network (backpropagation algorithm)

Please help me to understand unit thing in neuron networks. From the book I understood that a unit in input layer represents an attribute of training tuple. However, it is left unclear, how exactly it ...
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0answers
8 views

Simulating a network that trained with ADAPT

I used ADAPT for incremental training a simple network, and i know that ADAPT changes weights and biases,i used this: clc clear all net = linearlayer([0 1 2]); pi = {[1; 1] [2;2]}; p = {[3 ;4] [5; 6] ...
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0answers
14 views

Why the last RBM hidden units of Hinton's autoencode can use linear output without a sigmoid

According to Hinton's paper "Reducing the Dimensionality of Data with Neural Networks". The hidden units of the top RBM had stochastic real-valued states drawn from a unit variance Gaussian. Why can ...
1
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1answer
39 views

How to use Rs neuralnet package in a Kaggle competition about Titanic

I am trying to run this code for the Kaggle competition about Titanic for exercise. Its forfree and a beginner case. I am using the neuralnet package within R in this package. This is the train data ...
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0answers
32 views

how to setup Caffe imagenet_solver.prototxt file for fewer jpgs, program exited after iteration 0

We need help to understand the parameters to use for smaller set of training (6000 jpgs) and val (170 jpgs) jpgs. Our execution was killed and exited after test score 0/1 in Iteration 0. We are ...
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0answers
19 views

Solve Record Linkage as a Constraint Satisfaction with Machine Learning

I have pairs of sets such as A = { L, M, N, P } = { <"Lll", 47, 0.004>, <"Mm", 60, 0.95>, <"Nnnn", 33, 0.2892>, <"P", 47, 0.0125> } B = { l, m, n, o } = { <"l", 46, ...
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0answers
18 views

Some questions about artificial neural networks [on hold]

I've learned about stacked RBMs, and have a vague understanding of convolutional networks. But during my study I have some questions : RBMs produce some alternative representation of the input data, ...
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1answer
17 views

Train neural-net with a sequence ( currently not converging )

Due to the recursive nature, I've been able to activate an lstm, which has only 1 input-neuron, with a sequence by inputting one item at a time. However, when I attempt to train the network with the ...
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1answer
43 views

Can the validation error of a dataset be higher than the test error during the whole process of training a neural network?

I'm training a convolutional neural network using pylearn2 library and during all the ephocs, my validation error is consistently higher than the testing error. Is it possible? If so, in what kind of ...
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1answer
12 views

Why learning rate is change in SOM with Iterations

Normally learning rate is a value that we decide in the begining and normally it doesn't change with no of iterations. But in SOM learning rate is change with the iteration, what is the idea behind ...
0
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1answer
18 views

Image quality neural network project

I am trying to create a Neural Network project to determine the quality of color image and return whether or not it passes the quality check. This quality check will be determined and trained among ...
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0answers
16 views

Multilayer perceptron Python

i am trying to teach a multilayer perceptron to classify data from UCI SPECT database using backpropagation method. the problem is that the classification accuracy is low(about 50% of images are ...
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1answer
55 views

Neural Network Error oscillating with each training example

I've implemented a back-propagating neural network and trained it on my data. The data alternates between sentences in English & Africaans. The neural network is supposed to identify the language ...
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1answer
24 views

Torch, “size mismatch” in StochasticGradient function training

I'm implementing a deep neural network in Torch7 with a dataset made of two torch.Tensor() objects. The first is made of 12 elements (completeTable), the other one is made of 1 element (presentValue). ...
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0answers
14 views

How can I add scikit-neuralnetwork package in Enthought Canopy

How can I add scikit-neuralnetwork package in Enthought Canopy? There isn't any package with the name of sknn as discussed here in package manager of Enthought Canopy. I'm using academic version of ...
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0answers
21 views

Machine Leaning Language

I'm working on a Machine Learning and so far I'm having only one issue. I'm testing an API which I found online (Datumbox) but the file they use to train their machine is in English. I want to train ...
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0answers
11 views

Encog:: non-converging error rate

I am using (encog 3.3.0 library) to build a neural network for image recognition. I have converted my images to 50x50 grayscale to avoid confusion for my neural network because I basically want to do ...
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0answers
18 views

Stochastic gradient descent overflow error

I implemented a mini batches stochastic gradient descent using python. The model here is SVM and softmax model. Here is the content of the optimizer: loss, grad = loss(X_batch, y_batch, reg) W -= ...
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0answers
8 views

Image database for neural network training

I need a large dataset of medium-sized images of any kind for training a neural network... So far the only decent result I got is this, but it's an OCR-only training set, whereas I would need ...
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2answers
46 views

Class probabilities in Neural networks

I use the caret package with multi-layer perception. My dataset consists of a labelled output value, which can be either A,B or C. The input vector consists of 4 variables. I use the following lines ...
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1answer
19 views

Supervised machine learning for several coefficient

I have a set of items that are each described by 10 precise numbers n1, .., n10. I would like to learn the coefficients k1, .., k10 that should be associated to those numbers to rank them according to ...
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0answers
23 views

how to calculate instance error in neural network

I have a neural network with two output nodes and I am writing back propagation algorithm for it in c#. and this is how I am calculating instance error instanceErr += (double)((Math.Pow(error1[0], ...
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0answers
9 views

CACLA or other Reward Neural Networks

I'm trying to do this in javascript, so if you have any tips for where I could go in this language, I would be very happy :) Neural Networks traditionally used backpropagation (usually meaning ...
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2answers
42 views

Neural network receptive field visualization in python

I have a neural network with 300 hidden layers that I want to visualize(all together). What is the best way to do it in python? I have already tried it using subplot but the receptive fields are too ...
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0answers
11 views

Theano. Flatten all the parameters for later optimization

I opened the following issue with my problem: https://github.com/Theano/Theano/issues/2920 Basically, I want to prepare all my model's parameters for future optimization. And I need to flatten and ...
-4
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0answers
39 views

How should i implement feedforward backpropagation? [on hold]

I have a problem with my project. In the project, there is a table of crops. The column contains the crop name, ph level, water level, Soil type and Temperature. There is data of 10 crops row wise ...
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0answers
35 views

Using neural network trained by weka

I used weka to train a neural network and I have all the weights and thresholds from weka saved in a file. Now I want to use that data inside my mobile application and I want to do only the forward ...
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0answers
47 views

Neural network back propagation writing in Java

I'm trying to illustrate back-propagation algorithm. I follow the online course "Machine Learning" teach by Prof Andrew Ng and I completed code in Octave. With Octave program, it uses optimized ...
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1answer
26 views

How to apply weights in neural network?

I am attempting to learn how to implement neural networks. The one main thing I can't seem to find anywhere is how to apply and store the weights. I got this to work in a simple [2 Input, 4 Output] ...
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1answer
24 views

Train neural network to determine color image quality [closed]

I'm looking for someone who know if it is possible to train a neural network to tell if the image provided live up to the trained expectation. Let's say we have a neural network which trained to read ...
-1
votes
1answer
45 views
+50

Feature Vectors in Radial Basis Function Network

I am trying to use RBFNN for point cloud to surface reconstruction but I couldn't understand what would be my feature vectors in RBFNN. Can any one please help me to understand this one. A goal to ...
0
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1answer
24 views

Feature Extraction for Digit Speech Recognition

I'm looking for a way to extract features from audio where I said a digit for speech recognition of the digits 1-10 using backpropagation with neural networks (10 samples for each digit and 5 samples ...
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0answers
27 views

Neural Networks for integer values

I have approximately 5000 integer vectors (=SIZE) that look like: [1 0 4 2 0 1 3 ...] They have the same length N=32 and their values ranges from 0 to 4 but let's say [0 MAX]. I created a NN that ...
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0answers
10 views

design a neural network to recognize leaf

i have an assignment to recognize leaf. but after reading so much about neural networks i am still very confuse. any recommendation which type of neural network will be used here? input: 64*64 ...
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0answers
15 views

Neural network partial least square [migrated]

I'm trying to use neural network partial least square proposed by Qin and McAvoy. The whole network trained based on the scaled values. I want to know how can I rewrite the general neural network ...
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0answers
18 views

R language - neural network training using AMORE [closed]

Is there any tutorial/manual for using AMORE, choosing its parameters(learning rate, momentum, error.citerium etc.) and interpreting its results? I've tried and I've tried but I couldn't find ...
3
votes
1answer
47 views

XOR neural network backprop

I'm trying to implement basic XOR NN with 1 hidden layer in Python. I'm not understanding the backprop algo specifically, so I've been stuck on getting delta2 and updating the weights...help? import ...
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0answers
16 views

Neural Network Auto regression with Python

Is there a library for Neural Network Auto Regression for Python? It seems that neither PyBrain or Neurolab provides this.
1
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1answer
17 views

How does the back-propagation algorithm deal with non-differentiable activation functions?

while digging through the topic of neural networks and how to efficiently train them I came across the method of using very simple activation functions, such as the recified linear unit (ReLU), ...
1
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0answers
31 views

What's wrong with my matlab programming of a hopfield neural network?

Sorry if the code is sloppy. The code is supposed to set up a Hopfield network from memory vectors of firing rates (a cross, a square, etc), converting between membrane potential and firing rate with ...
2
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0answers
11 views

How can I deal with a randomization issue in Echo State Networks?

I am using Echo State Networks(ESN) as a Q-function in a Reinforcement Learning task. I have managed to achieve high accuracy, 90% in average, on the test phase with particular reservoir topology ...
0
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1answer
24 views

What are some advantages of Convolutional Neural Networks compared to Neural Networks? [closed]

In simple terms, what are some disadvantages of Convolutional Neural Networks compared to Neural Networks? I am able to find advantages but I have difficulty finding disadvantages. I was wondering if ...
2
votes
0answers
48 views

Have problems using Matlab coding Deep Neural Network

I was trying to build a 5-layer neural network to classify a 3 classes, 178 instances and 13 features dataset. Basically I was following the guideline given here. I have written down my own code in ...
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0answers
18 views

WEKA - neural network - MLP - data model

My aim is to predict weather parameters (air_temp, humidity) using data from Station X,Y on Station Z. Where X is the official data, Y and Z stations are observations. All of these stations ...