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ROC of multiclass classification in MATLAB

3 vues (au cours des 30 derniers jours)
Chenhui
Chenhui le 11 Juin 2015
Hi, guys,
I just used the AdaBoost.M2 in a dataset with four-class response variable. I want to produce the ROC curve. The documentation uses the 'plotroc(targets, outputs)' to do it. My question is about the argument of 'outputs'. The documentation says "S-by-Q matrix, where each column contains values in the range [0,1]. The index of the largest element in the column indicates which of S categories that vector presents. ". How to determine the 'outputs' with the results of AdaBoost.M2?
Another question about the '[X,Y] = perfcurve(labels,scores,posclass) '. What is the 'scores' for a AdaBoos.M2 model?
  1 commentaire
mehbob ali
mehbob ali le 28 Déc 2017
i want to know how you implemented Adaboost.M2

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Réponses (1)

Alka Nair
Alka Nair le 17 Juin 2015
Hi, The PERFCURVE function can be used to plot the ROC for AdaBoostM2. Please see the documentation of function PREDICT, to understand what score referes to for ensemble:
It is mentioned that, for ensembles, a classification score represents the confidence of a classification into a class. The higher the score, the higher the confidence.
The documentation of PERFCURVE mentions that perfcurve can be used with any classifier or, more broadly, with any method that returns a numeric score for an instance of input data. Please refer to the following page for more information:
  3 commentaires
Apoorva Srivastava
Apoorva Srivastava le 19 Août 2019
The column that corresponds to the score for the normal class
Ismat Mohd Sulaiman
Ismat Mohd Sulaiman le 9 Août 2021
For multiclass, e.g. 3 classes, which one to choose?

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