Evaluating the Performance of Explanation Methods on Ordinal Regression CNN Models
Hits: 2171
- Research areas:
- Uncategorized
- Year:
- 2023
- Type of Publication:
- In Proceedings
- Keywords:
- Convolutional Neural Networks, Interpretability, Ordinal Regression
- Authors:
-
- Barbero-Gómez, Javier
- Cruz, Ricardo
- Cardoso, Jaime S.
- Gutiérrez, Pedro Antonio
- Hervás-Martínez, César
- Volume:
- 14135
- Book title:
- IWANN 2023: Advances in Computational Intelligence
- Series:
- Lecture Notes in Computer Science (LNCS)
- Pages:
- 529-540
- Organization:
- Ponta Delgada, Portugal
- Month:
- 19th-21th June, 2023
- BibTex:
- Abstract:
- This paper introduces an evaluation procedure to validate the efficacy of explanation methods for Convolutional Neural Network (CNN) models in ordinal regression tasks. Two ordinal methods are contrasted against a baseline using cross-entropy, across four datasets. A statistical analysis demonstrates that attribution methods, such as Grad-CAM and IBA, perform significantly better when used with ordinal regression CNN models compared to a baseline approach in most ordinal and nominal metrics. The study suggests that incorporating ordinal information into the attribution map construction process may improve the explanations further.