Evaluation metrics for deep learning model model
1 view (last 30 days)
Show older comments
Sushma TV
on 18 Nov 2021
Commented: Pranjal Kaura
on 26 Nov 2021
What is the command to be used for computing the evaluation metrics for a deep learning model such as precision, recall, specificity, F1 score.
Should it explicitly computed from the Confusion matrix by using the standard formulas or can it be directly computed in the code and displayed.
Also are these metrics computed on the Validation dataset.
Kindly provide inputs regarding the above.
0 Comments
Accepted Answer
Pranjal Kaura
on 23 Nov 2021
Edited: Pranjal Kaura
on 23 Nov 2021
Hey Sushma,
Thank you for bringing this up. The concerned parties are looking at this issue and will try to roll it in future releases.
Hope this helps!
2 Comments
Pranjal Kaura
on 26 Nov 2021
'perfcurve' is used for plotting performance curves on classifier outputs. To plot a Precision-Recall curve you can set the 'XCrit' (Criterion to compute 'X') and YCrit to 'reca' and 'prec' respectively, to compute recall and precision. You can refer the following code snippet:
[X, Y] = perfcurve(labels, scores, posclass, 'XCrit', 'reca', 'YCrit', 'prec');
More Answers (0)
See Also
Categories
Find more on Detection in Help Center and File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!