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I have implemented 2 evolutionary Algorithm. and run each of them for 100 trials.

I have saved the final best fitness values of each trial.

How can I use T-Test to compare final mean fitness of each algorithm with matlab?

I want to see whether a significant difference between Algorithm performance or not?

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I hope there is nothing wrong with the normal distribution assumption in your data... depends on your algorithm ofcourse –  BioSP Apr 28 '13 at 13:00

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If you have a set of 100 best fitness values for each algorithm you can use the ttest2 function.

For example:

algo1 = your_results_for_algorithm1; %a 1x100 vector
algo2 = your_results_for_algorithm2; %a 1x100 vector

[h] = ttest2(algo1, algo2);

h will be true if the two algorithms have a significantly different level of performance with a significance level of p < 0.05.

Note: The ttest2 function requires the stats toolbox.

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do you can explain to me the retaurn values of ttest2() –  user1924748 Apr 28 '13 at 11:30
    
i can not understand the output of this function –  user1924748 Apr 28 '13 at 11:31
    
how can i send and email for you? –  user1924748 Apr 28 '13 at 11:32
    
Read the ttest2 documentation by typing doc ttest2 in the command window of matlab. Also read students t-test on wikipedia. If you have a lecturer/professor/teacher available, try asking them. And finally: no, you may not email me. –  Alan Apr 28 '13 at 11:50

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