How to make Cosine Distance classification
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Hello.
I have 90 dataset (10 label x 9 data).
I want to classfy the dataset using Cosine Distance.
How can use the below code to classify ?
function Cs = getCosineSimilarity(x,y)
%
% call:
%
% Cs = getCosineSimilarity(x,y)
%
% Compute Cosine Similarity between vectors x and y.
% x and y have to be of same length. The interpretation of
% cosine similarity is analogous to that of a Pearson Correlation
%
% R.G. Bettinardi
% -----------------------------------------------------------------
if isvector(x)==0 || isvector(y)==0
error('x and y have to be vectors!')
end
if length(x)~=length(y)
error('x and y have to be same length!')
end
xy = dot(x,y);
nx = norm(x);
ny = norm(y);
nxny = nx*ny;
Cs = xy/nxny;
1 Comment
Abbas Cheddad
on 22 May 2024
Edited: Abbas Cheddad
on 22 May 2024
Cs = xy/nxny;
Should be written as:
Cs = 1 - xy/nx/ny;
This will give you the cosine distance.
Accepted Answer
Raunak Gupta
on 16 Mar 2020
Hi,
I think the answer to the above question is provided in a similar question here. You may find it useful.
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