|国家预印本平台
首页|Deeply Explainable Artificial Neural Network

Deeply Explainable Artificial Neural Network

Deeply Explainable Artificial Neural Network

来源:Arxiv_logoArxiv
英文摘要

While deep learning models have demonstrated remarkable success in numerous domains, their black-box nature remains a significant limitation, especially in critical fields such as medical image analysis and inference. Existing explainability methods, such as SHAP, LIME, and Grad-CAM, are typically applied post hoc, adding computational overhead and sometimes producing inconsistent or ambiguous results. In this paper, we present the Deeply Explainable Artificial Neural Network (DxANN), a novel deep learning architecture that embeds explainability ante hoc, directly into the training process. Unlike conventional models that require external interpretation methods, DxANN is designed to produce per-sample, per-feature explanations as part of the forward pass. Built on a flow-based framework, it enables both accurate predictions and transparent decision-making, and is particularly well-suited for image-based tasks. While our focus is on medical imaging, the DxANN architecture is readily adaptable to other data modalities, including tabular and sequential data. DxANN marks a step forward toward intrinsically interpretable deep learning, offering a practical solution for applications where trust and accountability are essential.

David Zucker

计算技术、计算机技术

David Zucker.Deeply Explainable Artificial Neural Network[EB/OL].(2025-05-10)[2025-06-28].https://arxiv.org/abs/2505.06731.点此复制

评论