How do I deal with different class sizes when classifying data with a petternnet?

8 visualizzazioni (ultimi 30 giorni)
I want to classify datasets using a patternnet. I have 2 classes (labelled 1 and 2). However, class 2 is significantly smaller than class 1 (ratio 1:9). The patternnet always classifies every sample into class 1, reaching 90% accuracy with it.
Is there any way to weigh or prioritize my classes so that this is not viewed as the best solution? (e.g. a cost matrix like for a decision tree (fitctree))
  4 Commenti
MaHa
MaHa il 17 Mar 2021
I see I misunderstood sorry. What happens if you reduce the number of labbelled 1 to the number of labbelled 2 ? Does it still classes everything in L1 ?

Accedi per commentare.

Risposta accettata

Shravan Kumar Vankaramoni
Shravan Kumar Vankaramoni il 25 Mar 2021
Hi Anne,
Have a look at the below thread. Hope that answers your question

Più risposte (0)

Categorie

Scopri di più su Deep Learning Toolbox in Help Center e File Exchange

Prodotti


Release

R2020b

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by