The kernlab package for R provides kernel-based machine learning methods for classification, regression and clustering.

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How to present multiple time-series data to an SVM (ksvm) in R (or, How to present two-dimensional input data to an SVM)

How can I make a ksvm model aware that the first 100 numbers in a dataset are all time series data from one sensor, while the next 100 numbers are all time series data from another sensor, etc, for ...
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How to calculate AIC for a SVM model built using “ksvm” in “kernlab” package?

I built a SVM using "ksvm" from "kernlab" package. Here is my code: library(kernlab) load("landslides2.Rd") ...
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91 views

How to get ksvm to predict non-scaled values after scaled training

When I run an SVM with ksvm from the kernlab package, all the outputs from the predict command on my final model are scaled. I know this is because I initiate scaled = T but I also know scaling your ...
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44 views

kernel matrix computation outside SVM training in kernlab

I was developing a new algorithm that generates a modified kernel matrix for training with a SVM and encountered a strange problem. For testing purposes I was comparing the SVM models learned using ...
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68 views

All Vs All classification with kernlab R [closed]

I could not find any documentation on how to perform All vs All multi-class classification with kernlab package in R. Any kind of help would be appreciated.
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What does this error mean while running the ksvm of kernlab package in R

I am calling the ksvm method of the kernlab package in R using the following syntax svmFit = ksvm(x=solTrainXtrans, y=solTrainYSVM, kernel="stringdot", kpar="automatic", C=1, epsilon=0.1) The x ...
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46 views

Heavy-tailed RBF kernel function

I'm trying to run a SVM regression on some data and I want to use ksvm from kernlab or svm from e1071. But the number and type of kernels available is too restrictive. So I'm thinking of writing my ...
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110 views

Tuning ksvm from kernlab

I want to use an SVM implementation in R to do some regression. I tried using svm from e1071 already but I am limited by the kernel functions there. So I moved on to ksvm from kernlab. But I have a ...
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slidify not using size from arules

I am using Slidify in order to make a presentation. On previous slides I have loaded library(kernlab), which has a size() function. On my current slide I want to use the size() function of the ...
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125 views

R: How to use specc() with a corpus

I am trying to replicate the example here: http://www.jstatsoft.org/v25/i05/paper on page 36. Namely performing text clustering with string kernel on the reuters data set. I copied the exact syntax ...
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User-defined kernels in kernlab library

Lately I've worked with kernlab library in R-statistical software. In specific, I use the ksvm function to identify patterns. I'm trying to implement a new kernel in SVM, my code is: ...
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Editing default functions: Changing the default color of plot function in kernlab in R

Per the example in the kernlab documentation, plot makes a nice figure of the decision weights and boundary of an SVM model. require(kernlab) x<- ...
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55 views

Equation of rbfKernel in kernlab is different from the standard?

I have observed that kernlab uses rbfkernel as, rbf(x,y) = exp(-sigma * euclideanNorm(x-y)^2) but according to this wiki link, the rbf kernel should be of the form rbf(x,y) = ...
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79 views

Error in outer() function in R for a specific case

I have a matrix X of dimensions 942*50. I want to create an affinity matrix with the Gaussian RBF Kernel. ie, for every pair of rows in the X matrix, I want to compute exp(-sigma*norm(x_i-x_j)^2) ...
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64 views

Kernel for classification of variable length sequences of factors in kernlab

Which is the best approach to define a suitable kernel for classification of variable length sequences of factors. I'm using kernlab with R. Thanks!
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Applying function to cartesian product of two unequal vectors

I am trying to avoid looping by using an documented apply function, but have not been able to find any examples to suit my purpose. I have two vectors, x which is (1 x p) and y which is (1 x q) and ...
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printing 'plot' method of 'ksvm' class [duplicate]

I would like to see the function of the nice 2D feature space plots produced when plotting an object of the ksvm class. I want to create such plots for other predictive models and I am sure to find ...
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107 views

Using different kernel functions in the specc function in the kernlab package

I am using the specc function in the kernlab package. For some reason, no matter which kernel function I specify, the function will only cluster using the Gaussion Radial Basis function! sc1 <- ...
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R - “ksvm object contains no probability model” error for one class svm?

I am trying to detect outliers and output as probabilities using one class svm in R kernlab package. The import data and model building process all seems fine, but when I tried to predict the model by ...
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kernelMatrix function in kernlab doesn't return anything

Am I missing something obvious? This works fine: library(kernlab) kernelMatrix(rbfdot(1), c(1,2,3)) Returning: An object of class "kernelMatrix" [,1] [,2] [,3] [1,] ...
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624 views

creating a 2D plot in R with KSVM (kernlab) with 3 or more class variables

I am trying to create a 2D plot using SVM in library(kernlab), but it appears the plot function is only appropriate for binary classification. I would like to be able to plot 3 (or more) groups, as ...
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predict with kernlab package error Error in .local(object, …) : test vector does not match model R

I'm testing the kernlab package in a regression problem. It seems it's a common issue to get 'Error in .local(object, ...) : test vector does not match model ! when passing the ksvm object to the ...
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Vastly different results for SVM model using e1071 and caret

I'm training two SVM models using two differnt packages on my data and getting vastly different results. Is this something to be expected? model1 using e1071 library('e1071') model1 <- ...
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611 views

How to customize a kernel function in ksvm of kernlab package?

I have latitudes and longitudes, so I need to redefine the RBF kernel into exp(-1/2||sophere distrance||^2), which means I need to rewrite a kernel function myself. I write my kernel as follows: ...
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544 views

Error plotting SVM classification results for the spam dataset

I am having problem with plotting results of SVM classification for the spam dataset from kernlab package.. Code: require(kernlab) data(spam) index <- sample(1:dim(spam)[1]) spamtrain <- ...
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222 views

parameter C. epsilon as vector in kernlab's ksvm in R

I am trying to use ksvm function of kernlab package in R for epsilon-SVM regression. I want to put parameters C(regularization constant) and epsilon (insensitivity) as vectors(length of vector = ...
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Line search fails in training ksvm prob.model

Following up from Invalid probability model for large support vector machines using ksvm in R: I am training an SVM using ksvm from the kernlab package in R. I want to use the probability model, but ...
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292 views

Invalid probability model for large support vector machines using ksvm in R

I train support vector machines using the ksvm function from the kernlab package in R, on large numbers of observations (300k) with not very many features (1-8). I want to use the resulting ...
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985 views

Why are probabilities and response in ksvm in R not consistent?

I am using ksvm from the kernlab package in R to predict probabilities, using the type="probabilities" option in predict.ksvm. However, I find that sometimes using predict(model,observation,type="r") ...
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2k views

SVM Classification with Caret Error (Basic)

I am probably making a very simple (and stupid) mistake here but I cannot figure it out. I am playing with some data from Kaggle (Digit Recognizer) and trying to use SVM with the Caret package to do ...
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437 views

R ksvm support vectors

I am trying to extract weights for R's ksvm package. Usually I use the e1071 package and the weights can be computed by weights = t(svmmodel$coefs) %*% svmmodel$SV However, when I look into the ...
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392 views

How to overcome “Error in .local(object, …) : test vector does not match model !”?

I removed 100 records from the original data set, then rebuilt a SVM model using the following coding. uk<-read.csv("Riskx.csv", header=TRUE, sep=",") attach(uk) library(e1071) library(kernlab) ...
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455 views

Access the estimated var in kernlab::gausspr function in R

I am looking at the R function gausspr from the kernlab package for Gaussian process regression. The process is defined by the hyperparameters of the kernel function and by the noise in the data. I ...
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1k views

How can I perfrom novelty detection with ksvm in R?

I am trying to implement a novelty detector using the kernlab library (ksvm function) in R. Here is a simple example of what I am trying to do: # Training data xxTrain <- matrix(rnorm(2000), ...
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R ksvm kernlab unused arguments [closed]

I'm learning how to use ksvm from kernlab to do classification. I've played with some examples (i.e. iris etc). However, when I try with my data, I keep getting an error: Error in rbfdot(length = 4, ...
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1answer
643 views

R: SVM performance using custom kernel (user defined kernel) is not working in kernlab

I'm trying to use user defined kernel. I know that kernlab offer user defined kernel(custom kernel functions) in R. I used data spam including package kernlab. (number of variables=57 number of ...
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808 views

Assign new data point to cluster in kernel k-means (kernlab package in R)?

I have a question about the kkmeans function in the kernlab package of R. I am new to this package and please forgive me if I'm missing something obvious here. I would like to assign a new data ...
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1answer
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Issue with R-Kernlab SVM Predict

I have been trying to build SVM classifier but having trouble with predict. > modelrbf<-ksvm(set,y,kernel="rbfdot",type="C-svc") Using automatic sigma estimation (sigest) for RBF or laplace ...
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511 views

kernlab regression

Anyone encountered this difficulty with kernlab regression? It seems like it's losing some scaling factors or something, but perhaps I'm calling it wrong. library(kernlab) df <- ...
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1k views

Problem installing Kernlab from Source (lazy loading failed)

I have been trying to install the R package, Kernlab from source, but i have been running into problems. At first, i had some error related to, gfortran, so i downloaded the GNU fortran complier from ...
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972 views

Class Weight Syntax in Kernlab?

Hi I am trying out classification for imbalanced dataset in R using kernlab package, as the class distribution is not 1:1 I am using the option of class.weights in the ksvm() function call however I ...
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Help using predict() for kernlab's SVM in R?

I am trying to use the kernlab R package to do Support Vector Machines (SVM). For my very simple example, I have two pieces of training data. A and B. (A and B are of type matrix - they are adjacency ...