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I have the data of the following form in a text file

Userid Gameid Count
Jason  1      2
Jason  2      10
Jason  4      20
Mark   1      2
Mark   2      10
................
.................

There are a total of 81 Gameids and I have around 2 million distinct users.

What I want is to read this text file and create a sparse matrix of the form

      Column 1 2  3 4  5 6 .
Row1  Jason  2 10   20
Row2  Mark   2 10

Now I can load this text file in matlab and read the users one by one, reading their count and initializing the sparse array. I have tried this, it takes 1 second to initialize the row of one user. So for a total of 2 million users, it will take me a lot of time.

what would be the most efficient way to do this?

Here is my code

data = sparse(10000000, num_games);
loc = 1;

for f=1:length(files)
  file = files(f).name;

  fid = fopen(file,'r');

  s = textscan(fid,'%s%d%d');

  count = (s(:,2));
  count = count{1};
  position = (s(:,3));
  position = position{1};

  A=s{:,1};
  A=cellstr(A);

  users = unique(A);

  for aa = 1:length(Users)
      a = strfind(A, char(Users(aa)));
      ix=cellfun('isempty',a);
      index = find(ix==0);
      data(loc,position(index,:)) = count(index,:);
      loc = loc + 1;
  end
end
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I'm not sure how you want your sparse matrix to look like. Do you want it to contain both values and player name strings? Alternatively, do you want to create a sparse matrix for each player? –  Eitan T Dec 17 '13 at 5:39

1 Answer 1

  • Avoid the inner loop by usingunique once more for GameID.
  • Store the user names, because in your original code you can't tell which name - relates to each row. The same thing for game IDs.
  • Make sure to close the file after opening it.
  • sparse matrix does not support 'int32' you need to store your data as double.

% Place holders for Count
Rows = [];
Cols = [];

for f = 1:length(files)
    % Read the data into 's'
    fid = fopen(files(f).name,'r');
    s = textscan(fid,'%s%f%f');
    fclose(fid);

    % Spread the data
    [U, G, Count{f}] = s{:};

    [Users{f},~, r] = unique(U); % Unique user names
    [GameIDs{f},~,c] = unique(G); % Unique GameIDs

    Rows = [Rows; r + max([Rows; 0])];
    Cols = [Cols; c + max([Cols; 0])];
end

% Convert to linear vectors
Count = cell2mat(Count');
Users = reshape([Users{:}], [], 1);
GameIDs = cell2mat(GameIDs');

% Create the sparse matrix
Data = sparse(Rows, Cols, Count, length(Users), length(GameIDs), length(Count));

The Users will contain be the Row header (user names) and GameIDs the Column header.

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