## Hot answers tagged matlab

4

You could apply accumarray. Note that accumarray only works when X is a column. So, if X has two columns, you can call accumarray twice:
centroids(:,1) = accumarray(idx, X(:,1), [], @mean)
centroids(:,2) = accumarray(idx, X(:,2), [], @mean)
Alternatively, if X contains two columns of real numbers, you can use complex to "pack" the two columns into one ...

4

The NumPy function np.std takes an optional parameter ddof: "Delta Degrees of Freedom". By default, this is 0. Set it to 1 to get the Matlab result:
>>> np.std([1,3,4,6], ddof=1)
2.0816659994661326

3

You can avoid the bsxfun by using logical indexing, this seems to be a worthwhile performance increase, at least for small matrices X. It is best for small K, and for a small number of rows of X.
K = 3;
X = [1 2; 3 4; 5 6; 7 8];
idx = [1;2;3;1];
centroids=zeros(K,2);
for i = 1:K
ids = (idx == i);
centroids(i,:) = sum(X(ids,:),1)./sum(ids);
end
If ...

2

You can use cellfun,
A = cellfun( @(x) isequal(x,V), S );
or
A = cellfun(@isequal,S,repmat({V},size(S)));
will give,
A =
0 0 0 0 0
and sum(A) > 0 will give final results.

2

Problem case #1: Assuming you want to find if for each cell in S, there is at least one element that is also present in V, you can use this arrayfun based approach -
out = arrayfun(@(n) any(ismember(S{n},V)),1:numel(S))
For the given inputs, you would get -
>> out
out =
1 1 0 1 1
Or cellfun based approach (though I would bet ...

2

The standard deviation is the square root of the variance. The variance of a random variable X is defined as
An estimator for the variance would therefore be
where denotes the sample mean. For randomly selected , it can be shown that this estimator does not converge to the real variance, but to
If you randomly select samples and estimate the sample ...

2

If your IDs are unique, positive integers, you could do the following:
Approach #4 [ With sparse and indexing]
Construct a sparse vector that corresponds to the mapping: ID -> rowIndex and evaluate this vector:
indexOfID = sparse(A(:,1), 1, 1:size(A,1));
C = A(indexOfID(B),:);
This could be beneficial, when you want to query your IDs more than ...

2

I don't think you can do that really but you could 'spoof' it using a sparse matrix perhaps (depending strongly on what your application is):
b(1001:1005) = sparse(A)
However for what you've mentioned in your comments it makes much more sense to do something like this:
study = 1001:1005;
results = 1:5; %// This is your A
ind = A == 3;
%// Now find the ...

1

A few things to note:
400 kB is not a large file.
4000 files in 4 minutes is 0.06 seconds each.
You dont appear to use the variable c.
Your matrix index starts at 40020 and each loop the next struct index containing data is +10 etc.... This is very sparse which is a waste of memory and a small amount of time.
You state you use dlmread and import data -> ...

1

You need to go over each vector in the set and check if it's the same as the vector V:
for i=1:length(S)
if (isequal(S{i},V))
% V is in S
end;
end;
Take notice that you address S with curly brackets {} to get the value of the cell and not the cell itself.

1

The exception ME is an MException object which contains an identifier, the message, a cause and the stack. The identifier is only there to allow MATLAB an unique identification of an error. The message contains a description of the error.
The cause contains an array of MExceptions which have led to the current exception. This allows you to track the ...

1

The idea behind bsxfun is to evaluate a certain function for all possible combinations of two elements (b in bsxfun stands for binary), each coming from one of the arrays. (NB: This is valid if you use it with a row and a column vector. But bsxfun can also do more.)
What you want to achieve is simply: For all entries of a single array, evaluate a function.
...

1

You are multiplying two 1xn vectors, that is not possible. This multiplication causes the error:
y2= -5*((4-6*x0)*cos(-x0.^3+2*x0.^2+1)-(4*x0-3*x0.^2).^2*sin(-x0.^3+2*x0.^2+1));
^ ^
| |
Using element-wise multiplication .* might be the solution, but ...

1

It's an ugly hack, but you can disable Matlab's plotting before running the eye() function and re-enable it after the function. Something like the following might work:
set(0,'DefaultFigureVisible','off');
eyediagram(...);
saveas(gcf, 'myfig', 'fig'); # save it in a file myfig.fig
set(0,'DefaultFigureVisible','on');
And when you want to show it
...

1

In Octave, you can decrease the size of the marker like this:
x = 0:0.1:100;
fx = rand(length(x), 1)';
plot(x, fx, ".", "markersize", 1)

1

You could use textscan here for reading first N entries, which is supposedly pretty fast in latest versions of MATLAB -
fid = fopen(inputfile); %// inputfile is the path to the input text file
C = textscan(fid, '%d %d %d64',N); %// N is the number of first entries to be read
fclose(fid);
%// Get data into three separate variables (if needed)
...

1

In matlab2014a 64bit windows,
you only change
[vbar,s,convergence] = eigs_new(@mex_w_times_x_symmetric,size(P,1),nbEigenValues,'LA',options,tril(P));
in line 81 of ncut.m
into
[vbar,s,convergence] = eigs(@mex_w_times_x_symmetric,size(P,1),nbEigenValues,'LA',options,tril(P));
and then eigs_new.m is useless which don't care.
Becaus in 2014 (or more than ...

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