How to use svmtrain() with a custom kernel in Matlab?
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svmtain() is a function in MATLAB for SVM learning. The help doc is here:
How can I use it with a custom kernel? In the help doc, it says:
------------------------------------------------------------------------------------
@kfun — Function handle to a kernel function. A kernel function must be of the form
function K = kfun(U, V)
The returned value, K, is a matrix of size M-by-N, where U and V have M and N rows respectively. ------------------------------------------------------------------------------------
It mentions nothing about what U and V are and what M and N mean. I just don't know how to use it in the right format. Can anyone tell me what U and V are and what M and N mean? For example, the training data are 5-dimensional vectors and the kernel function is the sum of the length of the vectors. How can I write the kernel function?
Thank you!
Answers (1)
Ilya
on 22 Dec 2012
By convention adopted for svmtrain, observations are in rows and predictors are in columns. The same convention would hold for kfun. This means U is of size M-by-P, and V is of size N-by-P, where P is the number of predictors (P=5 for you). Other functions such as pdist2 in the Statistics Tlbx follow the same convention. If you want your kernel function to be a simple dot product, you would do
kfun = @(U,V) U*V';
5 Comments
Tom
on 22 Dec 2012
U is M vectors, each of size 1-by-P, concatenated vertically, and V is, similarly, N such vectors. You could compute dot products between M and N observations by defining a function of two vectors and writing a nested loop. You would go over 1:M indices in the outer loop and over 1:N indices in the inner loop, and compute M*N dot products of two vectors. This could be slow. svmtrain tries to speed up by vectorizing this code. That's why svmtrain wants you to write a vectorized function capable of computing all dot products between M and N observations at once.
Fatih Temiz
on 30 Mar 2018
I have the same issue. I could not even understand how to call the function. I have a code
xdata=meas(1:end,1:5);
group = species(1:end);
svmStruct = svmtrain(xdata,group,'kernel_function' ,'polynomial', 'ShowPlot',0)
result = svmclassify(svmStruct,newdata,'ShowPlot',0)
which runs perfectly. As far as I understand, I should replace 'polynomial' with @kfun as
svmStruct = svmtrain(xdata,group,'kernel_function' ,@kfun, 'ShowPlot',0)
However it does not run. I thought, the purpose is lack of the inputs. I tried this time
svmStruct = svmtrain(xdata,group,'kernel_function' ,@kfun(U,V), 'ShowPlot',0)
but it gives an error again. What is my mistake? Is it about the function? Or do I miss anything else?
Defne Ozan
on 31 Mar 2021
For anyone else having similar problems, writing the kernel function in a separate file (instead of at the bottom of the same file) and then calling it with 'KernelFunction','kernel' worked for me.
jyoti lele
on 22 Jul 2021
can you please give the code of 'kernel' you wrote
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