Understanding the inner workings of deep learning models is crucial for advancing artificial intelligence, particularly in high-stakes fields such as healthcare, where accurate explanations are as vital as precision. This paper introduces Batch- CAM, a novel training paradigm that fuses a batch implementation of the Grad- CAM algorithm with a prototypical reconstruction loss. This combination guides the model to focus on salient image features, thereby enhancing its performance across classification tasks. Our results demonstrate that Batch-CAM achieves a simultaneous improvement in accuracy and image reconstruction quality while reducing training and inference times. By ensuring models learn from evidence- relevant information, this approach makes a relevant contribution to building more transparent, explainable, and trustworthy AI systems.
Batch-CAM: introduction to better reasoning in convolutional deep learning models
Ignesti G.
;Moroni D.
;Martinelli M.
2025
Abstract
Understanding the inner workings of deep learning models is crucial for advancing artificial intelligence, particularly in high-stakes fields such as healthcare, where accurate explanations are as vital as precision. This paper introduces Batch- CAM, a novel training paradigm that fuses a batch implementation of the Grad- CAM algorithm with a prototypical reconstruction loss. This combination guides the model to focus on salient image features, thereby enhancing its performance across classification tasks. Our results demonstrate that Batch-CAM achieves a simultaneous improvement in accuracy and image reconstruction quality while reducing training and inference times. By ensuring models learn from evidence- relevant information, this approach makes a relevant contribution to building more transparent, explainable, and trustworthy AI systems.| File | Dimensione | Formato | |
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Descrizione: Batch-CAM: Introduction to better reasoning in convolutional deep learning models
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