Understanding repmat(6,,(1:n*N),1)

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Andrea Ciufo
Andrea Ciufo am 30 Mai 2017
Bearbeitet: Andrea Ciufo am 30 Mai 2017
If i compute
repmat((1:n*N),6,1)
with n=3 and N=3 the complier gives me a 6X9 matrix.
Why if a create a
repmat (6,(1:n*N),1)
it gives me a 9-D double?
  1. 9-D is nine dimensions?
  2. What the compiler is doing?
  4 Kommentare
Steven Lord
Steven Lord am 30 Mai 2017
That's correct, based on the Release Notes for release R2013b, when we introduced those warnings (and errors) for certain types of repmat calls including repmat(A, b, c) where b and c are row vectors (that are not both scalar.)
Andrea Ciufo
Andrea Ciufo am 30 Mai 2017
Bearbeitet: Andrea Ciufo am 30 Mai 2017
Yep, in fact my two questions was a confirm on what i thought, but, sure, i read the documentation before asking, not only once :) Since i am a self taught i prefer to ask silly questions for a senior instead of learning the wrong concept :)

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Rik
Rik am 30 Mai 2017
Have you even considered looking at the documentation? It really helps answering your question.
Looking at the documentation, I could find how supplying a vector as the second argument would work, but I get a warning. "repmat(A,M,N) where M or N is a row vector will return an error in a future release. Use repmat(A,[M,N]) instead." This hints at what is happening: it concatenates all inputs into 1 vector.
The first argument is the scalar/vector/matrix that you want to replicate. Then you have 3 options:
  1. using 1 value, which will result in that many replications in the first two dimensions (rows and cols)
  2. using 1 vector, which specifies the number of replications in each dimension (e.g. [1 1 3] will replicate a value/vector/matrix into the 3rd dimension, useful for going from greyscale to RGB images)
  3. splitting the vector over separate arguments
Knowing this it is obvious why your results are what they are. The first replicates a 1x9 vector (1:9) 6 times in the first dimensions (the rows), so you get a 6x9. The second replicates a scalar (so 1x1), using [1:9,1] as the repetition scheme, so the result is a 1x2x3x4x5x6x7x8x9x1 matrix, which is an 9-dimensional matrix (as any trailing x1 can be ignored).

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