论文标题

一种模型不足的方法,用于产生显着图来解释深度学习模型的推断决策

A model-agnostic approach for generating Saliency Maps to explain inferred decisions of Deep Learning Models

论文作者

Karatsiolis, Savvas, Kamilaris, Andreas

论文摘要

Black-Box AI模型的广泛使用增加了对解释这些模型做出决定的算法和方法的需求。近年来,AI研究界对模型的解释性越来越感兴趣,因为Black-Box模型接管了越来越复杂且具有挑战性的任务。考虑到深度学习技术在广泛的应用中的主导地位,包括但不限于计算机视觉,解释性变得至关重要。在理解深度学习模型的推理过程的方向上,已经开发了许多为AI模型决策提供人类可理解证据的方法,其中绝大多数依赖于他们的操作来访问这些模型的内部体系结构和参数(例如,神经网络的权重)。我们提出了一种模型 - 反应方法,用于生成仅访问模型输出的显着图,并且不需要其他信息,例如梯度。我们使用差分进化(DE)来确定哪些图像像素在模型的决策过程中最有影响力,并产生类激活图(CAM),其质量与使用模型特异性算法创建的CAM的质量相当。 DE-CAM在不需要以更高的计算复杂性而访问模型体系结构的内部细节的情况下实现良好的性能。

The widespread use of black-box AI models has raised the need for algorithms and methods that explain the decisions made by these models. In recent years, the AI research community is increasingly interested in models' explainability since black-box models take over more and more complicated and challenging tasks. Explainability becomes critical considering the dominance of deep learning techniques for a wide range of applications, including but not limited to computer vision. In the direction of understanding the inference process of deep learning models, many methods that provide human comprehensible evidence for the decisions of AI models have been developed, with the vast majority relying their operation on having access to the internal architecture and parameters of these models (e.g., the weights of neural networks). We propose a model-agnostic method for generating saliency maps that has access only to the output of the model and does not require additional information such as gradients. We use Differential Evolution (DE) to identify which image pixels are the most influential in a model's decision-making process and produce class activation maps (CAMs) whose quality is comparable to the quality of CAMs created with model-specific algorithms. DE-CAM achieves good performance without requiring access to the internal details of the model's architecture at the cost of more computational complexity.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源