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.
This work has been partially subsidised by “Agencia Española de Investigación” (Spain) (grant ref.: PID2020-115454GB-C22/AEI/10.13039/501100011033). Javier Barbero-Gómez’s research has been subsidised by the FPI Predoctoral Program of the Spanish Ministry of Science, Innovation and Universities (MCIU) [grant reference PRE2018-085659].
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Notes
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Note that the area contribution can be negative for those cases where the performance of the LeRF curve is higher than that of the MoRF curve.
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Barbero-Gómez, J., Cruz, R., Cardoso, J.S., Gutiérrez, P.A., Hervás-Martínez, C. (2023). Evaluating the Performance of Explanation Methods on Ordinal Regression CNN Models. In: Rojas, I., Joya, G., Catala, A. (eds) Advances in Computational Intelligence. IWANN 2023. Lecture Notes in Computer Science, vol 14135. Springer, Cham. https://doi.org/10.1007/978-3-031-43078-7_43
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