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I have two tensors: A is a second order tensor and B is a fourth order tensor. I know that when computing the double dot product (:) of two tensors, the rank of the resulting tensor will be decreased by two, so in my example the result should be a second order tensor.

However, when I write this code in MATLAB, it gives the following error:

Matrix dimensions must agree.

How can I solve this problem?

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1. provide some code to show how the tensors are represented and also how you are doing the product. 2. by double dot product do you mean (:) operator in MATLAb like A(:)? – Mohsen Nosratinia Jul 4 '13 at 13:42
You have not provided ANY code. How can we know what you are doing wrong? – user85109 Jul 4 '13 at 14:36
@ISarasky Did you have a look at my answer? – Eitan T Jul 21 '13 at 11:28
Yes,Thank you. your guidance is very helpful.thanks so much – ISara sky Jul 25 '13 at 8:22
up vote 1 down vote accepted

The colon operator in MATLAB doesn't do what you expect, as it serves another functionality. In fact, there is no built-in implementation for a double inner product in MATLAB. You need to implement it by yourself, for instance:

idx = max(0, ndims(A) - 1); %// Index of first common dimension
B_t = permute(B, circshift(1:ndims(A) + ndims(B), [0, idx - 1]));
double_dot_prod = squeeze(sum(squeeze(sum(bsxfun(@times, A, B_t), idx)), idx));

where A and B are your tensors (i.e multi-dimensional matrices). Vectorizing this was a hard nut to crack, so I hope I got the math right!

If you want, you can put this code in a function for convenience. For the sake of good practice, also verify that both tensors are of second rank or higher. Here's a friendly copy-paste version for you:

function C = double_dot(A, B)
    assert(~isvector(A) && ~isvector(B))
    idx = max(0, ndims(A) - 1);
    B_t = permute(B, circshift(1:ndims(A) + ndims(B), [0, idx - 1]));
    C = squeeze(sum(squeeze(sum(bsxfun(@times, A, B_t), idx)), idx));

A word of advice: I suggest that you read online tutorials to get yourself familiar with the basics of the MATLAB language.

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Thank you Eitan for your guidance. – ISara sky Jul 25 '13 at 8:29
@ISarasky Happy to help :) – Eitan T Jul 25 '13 at 8:31
My goodness, how did you manage to vectorise that beast?! Good work! – Cramer Oct 9 '13 at 2:49
>> A=rand(3,3); %A and B random matrices
>> B=rand(3,3);
>> trace(A*B') % or alternatively
>> sum(dot(A,B))
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