plot count values

I have a function that finds the correct and mistaken results of tests of four persons. i.e in each run correct has 4 entries same as mistaken.

the test will be performed 10 times. This should be obvious from the answer of corrects.

I want to graphically represent the performance or progress of 1 student.

hope I am clear now. example:

`````` run = 1     correct = 5     mistake=5
.
.
.
run = n     correct = 3     mistake=7
``````

my question is how to represent my results graphically? need to see a graphical representation of the counts of correct and mistake for n runs.

I tried plot and histogram but they are not a good representation

Not pro in Matlab can you suggest pls.

example: for 10 runs:

`````` corrects =

[1x4 double]    [1x4 double]    [1x4 double]    [1x4 double]    [1x4 double]    [1x4   double]    [1x4 double]    [1x4 double]    [1x4 double]    [1x4 double]
``````

I did: figure(5); bar([mistakes{1}; corrects{1}]);

but what i need is the 10 test of person 1

I tried :

`````` bar([mistakes{test}(1) ; corrects{test}(1)]);
``````

these are not good presentations

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Please refine the phrase 'how to plot correct mistaken results', I don't understand what you want to do. –  Richante Apr 12 '12 at 18:03
What would be a "good presentation"? Please describe your problem (I mean general problem) in more details. What is this analysis about? What do you want to illustrate? –  yuk Apr 13 '12 at 15:58
`cell2mat` will be helpful, to get everything into a 2-D array (indexed by test and person). Then you can grab all tests for person 1 like `correct_mat(:, 1)` –  Ben Voigt Apr 13 '12 at 16:55

I'd calculate misclassification rate for each run.

Let's say you have vector `run = 1:n;` and `correct = randi(11,1,n)-1;`. Then `mistake = 10 - correct;`.

Misclassification rate would be `MCR = mistake./10;`.

You can plot distribution of as a boxplot:

``````boxplot(MCR)
``````

The important thing would be compare MCR distribution between runs with different parameters. So you will have groups of runs and you can separate them on `boxplot`.

In addition, you can plot real MCR values istead of their quantiles on boxplot. See my question on how to do beeswarm plot.

EDIT:

If your correct results depends on some score you can generate so called ROC (Receiver operating characteristic) curve. At this points I would refer you to a wiki article. Check if it's what you want.

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you mean do boxplot of (correct/total) @yuk? –  pac Apr 13 '12 at 14:21
I meant to plot mistake/total. But you can do correct/total too. Can call it negative rate and positive rate. –  yuk Apr 13 '12 at 14:48
tried boxplot it didn't work for me @yuk i added my values –  pac Apr 13 '12 at 15:14

So, to compare correct vs wrong for all n runs:

``````correct = zeros(n, 1);
wrong = zeros(n, 1);
for run=1:n
[correct(run), wrong(run)] = your_function();
end
bar([correct wrong]);
``````

So, you store correct/wrong for each run in the arrays. correct(1) will be the number correct on the first run, etc.. bar([correct wrong]); will display two bars for each run - the blue bar for correct and the red bar for wrong.

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thanks @Richante.this will give all as bar how to know which is which can we color? Also this is for 1 run how to see n runs? –  pac Apr 12 '12 at 18:35
looks like I misunderstood your question, I'll just edit my post. –  Richante Apr 12 '12 at 18:37
all are blue @Richante –  pac Apr 12 '12 at 23:34