用因果分析法分析CNN的类可解释性

Ankit Yadu, P. Suhas, N. Sinha
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引用次数: 4

摘要

影响机器学习(ML)模型广泛适用性的一个单一问题是缺乏泛化性和可解释性。ML社区正越来越多地致力于弥合这一差距。其中最突出的是研究特征因果意义的方法,如平均因果效应(ACE)技术。在本文中,我们的目标是利用因果分析框架来衡量二元分类任务中特征的显著性水平。为此,我们提出了一种新的基于ACE的度量,称为“ACE下的绝对面积(a -ACE)”,它计算不同允许干预水平下ACE绝对值的面积。通过考虑对二元分类问题,在(i) ILSVRC (Imagenet)数据集和(ii) MNIST数据集$(\sim 42000$ images)上说明了所提出度量的性能。在这两个数据集上已经观察到令人鼓舞的结果。计算的度量值被发现更高——ILSVRC数据集的峰值性能比其他数据集高10倍,MNIST数据集的峰值性能比其他数据集高50%——正是在人类直觉标记为区分区域的位置。该方法有助于捕获可量化的度量,该度量表示模型所学习的类之间的区别。这个度量有助于模型预测的可视化解释,因此,使模型更值得信赖。
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Class Specific Interpretability in CNN Using Causal Analysis
A singular problem that mars the wide applicability of machine learning (ML) models is the lack of generalizability and interpretability. The ML community is increasingly working on bridging this gap. Prominent among them are methods that study causal significance of features, with techniques such as Average Causal Effect (ACE). In this paper, our objective is to utilize the causal analysis framework to measure the significance level of the features in binary classification task. Towards this, we propose a novel ACE-based metric called “Absolute area under ACE (A-ACE)” which computes the area of the absolute value of the ACE across different permissible levels of intervention. The performance of the proposed metric is illustrated on (i) ILSVRC (Imagenet) dataset and (ii) MNIST data set $(\sim 42000$ images) by considering pair-wise binary classification problem. Encouraging results have been observed on these two datasets. The computed metric values are found to be higher - peak performance of 10x higher than other for ILSVRC dataset and 50% higher than others for MNIST dataset - at precisely those locations that human intuition would mark as distinguishing regions. The method helps to capture the quantifiable metric which represents the distinction between the classes learnt by the model. This metric aids in visual explanation of the model’s prediction and thus, makes the model more trustworthy.
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