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6

download.file(url= "https://cloud.mail.ru/public/6e188e2baa1f%2Fdata.RData", destfile = "data.RData") load("C:\\Users\\jmiller\\Downloads\\data.RData") require(nnet) require(caret) set.seed(1) set.seed(123) seeds <- vector(mode = "list", length = 51) for(i in 1:50) seeds[[i]] <- sample.int(1000, 22) fitControl <- ...


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A standard neural network would be a reasonable choice and would work, however a convolutional neural network (CNN) would probably be the best choice (see http://deeplearning.net/tutorial/lenet.html). CNNs are great for image recognition since their sparse connectivity allows for spatially local correlation (i.e. they take into account the relationships ...


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First a little bit of meta content about the question itself (and not about the answers to your questions). I have to laugh a little that you say 'I apologize if these questions are too "elementary."' and then proceed to ask the single most thorough and well thought out question I've seen as someone's first post on SO. I wouldn't be too worried that you'll ...


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I assume you are treating the problem as a classification problem. In the training time, you have input X and output Y. Since you are training the neural network for classification, your expected output is always like: -1 -0.9 ... 0.3 0.4 0.5 ... 1.0 m/s Y1 = [0, 0, ..., 1, 0, 0, ..., 0] // speed x component Y2 = [0, 0, ..., 0, 0, 1, ...


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The bias node/term is there only to ensure the predicted output will be unbiased. If your input has a dynamic (range) that goes from -1 to +1 and your output is simply a translation of the input by +3, a neural net with a bias term will simply have the bias neuron with a non-zero weight while the others will be zero. If you do not have a bias neuron in that ...


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Can you describe your network and data a little bit? How many dimensions are your data? How many hidden layers, with how many nodes in your network? My initial thought is that if you have a fairly simple data set, with a good amount of data, and a fairly simple network, your network just won't have enough alternative hypothesis to overfit.


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Since you seem to know C#, here is a good tutorial on ANN, that you may be able to convert in Swift after doing it in C#


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I understand neural networks with any number of hidden layers can approximate nonlinear functions, however, can it approximate: Yes it can. I don't know what makes you think that is a hard function to approximate, its a very easy one. Given sufficient hidden units a neural network can approximate any function to an arbitrary precision on an arbitrary ...


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There are a number of options for variable inputs, but two relatively simple ones are: 1) inputs which are not present are coded as 0.5, while inputs that are present are coded as either 0 or 1 2) in addition you could split the input into two, one for "present" vs. "not present", the other for "active" vs. "silent". Then, the network will have to use the ...


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It is a reasonable approach, but genetic algorithms are not known for being very fast/efficient. Try hillclimbing and see if that is any faster. There are numerous other optimization methods, but nothing is great if you assume the function is a black box that you can only sample from. Reinforcement learning might work. Using random seeds should prevent ...


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You seem to be a bit confused (I remember I was too) so I am going to simplify things for you. ;) Sample Neural Network Scenario Whenever you are given a task such as devising a neural network you are often also given a sample dataset to use for training purposes. Assuming a simple neural network system Y = W * X where Y is the output computed from ...


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In MATLAB an epoch can be thought of as a completed iteration of the training procedure of your artificial neural network. That is, once all the vectors in your training set have been used in your training algorithm one epoch has passed. Thus the "real-time duration" of an epoch is dependent on the training method used (batch vs sequential, for example). ...


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This is a challenging problem actually. Representation of labels It's difficult to represent your target labels for learning. As you pointed out, If Server A1 has alarm 1 & 2 as DOWN, then we can say that service a is down on that server and is the cause of the problem. If alarm 1 is down on all servers, then we can say that service a is the cause. ...


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I would look at this section: http://pybrain.org/docs/tutorial/netmodcon.html#using-recurrent-networks In particular, The RecurrentNetwork class has one additional method, .addRecurrentConnection(), which looks back in time one timestep.


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See if the codes and the comments alongside them make sense to you - function Output = GetweightedSumGPU(mat1,mat2, RF,overlap) %// Create parameters gap = RF(1) - overlap; output_size=[6,6]; sz1 = output_size(1); sz2 = output_size(2); nrows = size(mat1,1); %// get number of rows in mat1 %// Copy data to GPU gmat1 = gpuArray(mat1); gmat2 = ...


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I want to thank all previous authors in this discussion, because it is the most informative source on the neuralnet package usage over the net! This discussion was VERY helpful for me to study neuralnet R package. On Question 2: it is possible to use neuralnet to predict digit Labels with better accuracy using these hints: use more neurons. 10 neurons in ...


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It's not that MATLAB doesn't support substreams with Mersenne twister, it's that Mersenne twister doesn't support substreams. If the choice of RNG is affecting the performance of your NN, something bigger is going wrong.


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Your error can be positive and negative. In the first run, the error is -1. Hence, the errorCount is incremented and the code for exiting the loop is never executed. The condition for complete training should be based on the error itself, not an errorCount. When the error reaches a minimum level (that you will set based on your inputs), the training will be ...


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It appears that the question has very much been answered in your thread at MathsWorks. Question 1: As for the first question, both your previous question here and that of MathsWorks have indicated that Position 3 is a suitable placement for the initialisation of weights. Question 2: As stated here, 'rng is used once and only once before the outer loop'


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I'm not quite sure if it would matter how the player numbers are represented. I am assuming that the Neural Network would be trained on the time, court, surface, rank etc. and not on the player number, so the Player ID would likely be independent of the algorithm. It sounds like you have a data structure that contains the players and their historical ...


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I understand neural networks with any number of hidden layers can approximate nonlinear functions, however, can it approximate: f(x) = x^2 The only way I can make sense of that question is that you're talking about extrapolation. So e.g. given training samples in the range -1 < x < +1 can a neural network learn the right values for x > ...


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Weights are usually randomised when the Neural Network is constructed for training. I do not fully understand your question, but I believe what you are asking is 'When should the weights be initialised and why?'. I am also assuming that you are creating five different Neural Networks with different fold subsets of training data, with the results averaged ...


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Possible in the igraph library! library(igraph) betterC <- graph.data.frame(c) E(betterC)$arrow.size <- .1 plot(betterC) Gives the following: Not as pretty, but it works! Hope this is useful to someone!


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Would the simplest plausible explanation not be that your train and test sets are balanced, and the feedback is stable, so nothing changes any longer? In other words, you have converged on the optimal result you can obtain for this problem with this data and this technology. A simple test would be to reduce the training data substantially, and see if that ...


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According to the documentation for MATLAB's ga, the signature of the fitness function is described as ...should accept a row vector of length nvars and return a scalar value. That means that your function signature has to change from one with two input variables like function out = rendimentoRete(iDelay, oDelay) to a signature with just one input ...



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