improve the performance of nprtool
4 views (last 30 days)
Show older comments
I used the neural network toolbox ( nprtool ) for classifying my objects. i used 75% of data for training and 15% for both validation and testing.also i considered 50 neurons for hidden layers. the progress stops because of validation checks (at 6). how can i improve the performance of this network? i couldn't find out how to change validation check or gradient ,....if you have any suggestion i will be very appreciate to hear that.
0 Comments
Accepted Answer
Greg Heath
on 22 Feb 2015
Insufficient information
Which of the MATLAB classification example datasets are you using?
help nndatasets
doc nndatasets
Number of classes c =?
Input vector dimensionality I = 1
Number of examples N = ?
[ I N ] = size(input)
[ O N ] = size(target)% O = c
Default 70/15/15 data division? (75/15/15 doesn't add to 100)
Some problems require multiple(e.g., 10) designs for every value of hidden nodes that are tried.
For example, search the NEWSGROUP and ANSWERS using
greg patternnet Ntrials
Sorry I can't give you much advice on how to optimize the use of nprtool. However, consulting my command line code should be more than worthwhile.
Hope this helps.
Thank you for formally accepting my answer
Greg.
2 Comments
Greg Heath
on 22 Feb 2015
Edited: Greg Heath
on 25 Oct 2015
I recommend substantially reducing the 300-dimensional inputs using PLS. Then consult some of my classification posts as recommended above.
Hope this helps.
Greg
More Answers (1)
smriti garg
on 23 Oct 2015
Hello Sir,
As in the GUI of nprtool there is a option of 'retrain' to achieve better performance....Similarly, when using the advanced script of nprtool is there some method to retrain the 'net' function to achieve better peroformance.
Please suggest some solution.
Thanx in advance for help.
0 Comments
See Also
Categories
Find more on Image Data Workflows in Help Center and File Exchange
Products
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!