How to separate rows of cells in a matrix using logical indexing?

``````l2 = [{'walk', 'water', 'warm', 'cheer', 'word', 'happy', 'whim', 'womb', 'wear', 'well'};
{'hello', 'here', 'hat', 'that', 'happy', 'hide', 'awesome', 'there', 'howl', 'harry'};
{'look', 'listen', 'lyer', 'hateful', 'lost', 'hatred', 'plot', 'player', 'plow', 'lay'};
{'goat', 'meat', 'hope', 'house', 'love', 'wall', 'down', 'up', 'sky', 'mount'};
{'go', 'golf', 'loser', 'gyrus', 'terrible', 'gallore', 'tug', 'thor', 'gear', 'leg'}];
``````

So I have this data above, and I want to be able to separate each row in terms of it being either positive or negative. As you can see above: My first row has 2 positive targets amongst neutral words and the third row has 2 negative targets amongst neutral words.

Now if I was running this where the participant saw each word in a sequence per row, how can I get an accuracy for their response to a row with positive targets vs negative target?

So far I was thinking of using logical indexing to separate positive targets and negative target, but how do I do that with cell rows?

I have this:

``````positive_t = [1 1; 1 1; 0 0; 1 1; 0 0]
``````

This above denotes all the positive targets as 1 and negative targets as 0 but how would I be able to separate them properly row by row? Also. Then if I want to find how many time the participants got the answer for positive row vs negative row. How can I save the accuracy of that?

• You need some dictionary which contains words that are positive, and one that contains words that are negative. Then you simply use `ismember`: `ismember(l2,dictionary)` Nov 29, 2015 at 21:04
• How do I make that dictionary? Can you please help me? Nov 29, 2015 at 21:20
• No. I cannot help you. You'd need to copy the entire Oxford dictionary and say for each word whether it's positive, neutral or negative. Seems like a lot of work to me, but since you cannot determine by other ways (perhaps advanced Neural Network or machine-learning) what you are looking for, this is the way to go imho. Nov 29, 2015 at 21:22
• But thats too much work. All I need to do is separate those CERTAIN positive and negative targets. I can accomplish it through logical indexing, i just dont know how and i need help with that. Nov 29, 2015 at 21:28
• Just a comment in general: text processing is not a strongpoint of Matlab. If I had a big Natural Language Processing (NLP) project, I probably would use something else. Nov 29, 2015 at 22:07

I assume 1) you want to test a person's ability to pick out positive or negative words and 2) you already have a standard answer ( as your test standard ) that you're going to compare testee's answer against.

I don't know what your definition of positive is, so I'm also being tested by you in a sense, but let's assume that you have this standard answer :

``````std_answer = logical([ 0 0 0 0 0 1 0 0 0 1;...  % 'happy' and 'well'
0 0 0 0 1 0 1 0 0 0;...          % 'happy' and 'awesome'
0 0 0 1 0 1 0 0 0 0;...          % 'hateful' and 'hatred'
0 0 1 0 1 0 0 0 0 0;...          % 'hope' and 'love'
0 0 1 0 1 0 0 0 0 0 ]);          % 'loser' and 'terrible'
``````

The `std_answer` here is an logical array that has the same number of elements as your `l2`. It has value of 1 wherever your answer is ( which of course, as a tester you already know. Here I'm just taking some guess and assume the standard answer to make an example) and 0 otherwise.

You can apply this mask to your `l2` and the result will be your answers

``````answers = l2(std_answer);
``````

If you really wish to do it row by row, of course you can do this:

``````for ii = 1:size(l2, 1)
sublist = l2(ii, :);
``````score = test_response & std_answer ;
`score` will also be a logical array whose 1 indicate a match between testee response and standard answer.