选择性概念模型:允许在测试时对涉众进行定制

Matthew Barker, Katherine M. Collins, Krishnamurthy Dvijotham, Adrian Weller, Umang Bhatt
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引用次数: 0

摘要

基于概念的模型使用一组对涉众可解释的概念执行预测。然而,这样的模型通常涉及固定的、大量的概念,这可能会给涉众带来大量的认知负担。我们提出了选择性概念模型(scom),该模型仅使用概念子集进行预测,并且可以由利益相关者在测试时根据他们的偏好进行定制。我们表明,scom只需要总概念的一小部分就可以在多个真实数据集上实现最佳精度。此外,我们收集并发布了一个新的数据集CUB- sel,该数据集由来自流行的CUB数据集的900幅鸟类图像的人类概念集选择组成。使用CUB-Sel,我们展示了人类在选择他们喜欢推理的概念时具有独特的个人偏好,并努力识别最具理论信息量的概念。SCOM提供的定制化和概念选择提高了利益相关者解释和干预的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Selective Concept Models: Permitting Stakeholder Customisation at Test-Time
Concept-based models perform prediction using a set of concepts that are interpretable to stakeholders. However, such models often involve a fixed, large number of concepts, which may place a substantial cognitive load on stakeholders. We propose Selective COncept Models (SCOMs) which make predictions using only a subset of concepts and can be customised by stakeholders at test-time according to their preferences. We show that SCOMs only require a fraction of the total concepts to achieve optimal accuracy on multiple real-world datasets. Further, we collect and release a new dataset, CUB-Sel, consisting of human concept set selections for 900 bird images from the popular CUB dataset. Using CUB-Sel, we show that humans have unique individual preferences for the choice of concepts they prefer to reason about, and struggle to identify the most theoretically informative concepts. The customisation and concept selection provided by SCOM improves the efficiency of interpretation and intervention for stakeholders.
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