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I try to read data from a text file. I can do it via import. It works fine. My data imported as: UserID|SportID|Rating

There are a lot of users that can like any sport with any rating for example:

User|SportID|Rating
1      2       10
1      3        5
2      1       10
2      3        2

I try to create a new matrix like below

UserID  Sport1  Sport2  Sport3
 1      (null)    10      5
 2        10    (null)    2

I tried to this via "for" and "loop" however there are almost 2000 user and 1000 sports and their data is almost 100000. How can I do this?

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If you have parallel processing you can use a parfor loop. –  KronoS Jun 10 '13 at 21:51
1  
What problem are you actually having? Is it too slow? Do you run out of memory? Is your problem actually in creating your matrix or in looking things up? –  Henry Keiter Jun 10 '13 at 22:04
    
It was too slow.. but i used kronos answer it works like charm :) –  Palindrom Jun 14 '13 at 23:47

3 Answers 3

up vote 1 down vote accepted

You can do the following:

% Test Input
inputVar = [1 2 10; 1 3 5; 2 1 10; 2 3 2]; 

% Determine number of users, and sports to create the new table
numSports = max(inputVar(1:end,2));
numUsers = max(inputVar(1:end,1));
newTable = NaN(numUsers, numSports);

% Iterate for each row of the new table (# of users)
for ii = 1:numUsers
    % Determine where the user rated from input mat, which sport he/she rated, and the rating
    userRating = find(inputVar(1:end,1) == ii);
    sportIndex = inputVar(userRating, 2)';
    sportRating = inputVar(userRating, 3)';
    newTable(ii, sportIndex) = sportRating; % Crete the new table based on the ratings.
end

newTable

Which produced the following:

newTable =

   NaN    10     5
    10   NaN     2

This would only have to run for the amount of users that are in your input table.

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Its working like i want.. thank you so much –  Palindrom Jun 10 '13 at 22:46
    
@MichaelAdam: Hi, I have a question: aren't sub2ind or accumarray faster than this method? or sparse. Can you explain why have you chosen this method? –  pm89 Jun 11 '13 at 16:24
1  
@pm89 perhaps this is an easier to understand answer. Your answer, though it may be faster, is a bit more confusing to some. –  KronoS Jun 11 '13 at 16:33
    
@KronoS: Thanks! I was really curious to know the reason, since the original question is interesting for me. –  pm89 Jun 11 '13 at 16:36

To do this fast, you can use a sparse matrix with one dimension UserID and the other Sports. The sparse matrix will behave for most things like a normal matrix. Construct it like so

out = sparse(User, SportID, Rating)

where User, SportID and Rating are the vectors corresponding to the columns of your text file.

Note 1: for duplicate of User and SportID the Rating will be summed.

Note 2: empty entries, as were written as (null) in the question are not stored in sparse matrices, only the non-zero ones (that is the main point of sparse matrices).

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Thank you very much.. –  Palindrom Jun 10 '13 at 22:16

I suppose you have already defined null as a number for simplification.

Null = -1; % or any other value which could not be a rating.

Considering:

nSports = 1000; % Number of sports
nUsers = 2000; % Number of users

Pre-allocate the result:

Rating_Mat = ones(nUsers, nSports) * Null; % Pre-allocation

Then use sub2ind (similar to this answer):

Rating_Mat (sub2ind([nUsers nSports], User, SportID) = Rating;

Or accumarray:

Rating_Mat = accumarray([User, SportID], Rating);

assuming that User and SportID are Nx1.

Hope it helps.

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