衡量关键要素:概念瓶颈模型的合成基准测试 / Measuring What Matters: Synthetic Benchmarks for Concept Bottleneck Models
1️⃣ 一句话总结
本文针对概念瓶颈模型缺乏真实概念标签数据集的问题,设计了一套可控制数据模态、概念选择、标注质量等关键因素的合成基准测试,用于评估模型在辅助决策和自动化任务中的表现,并帮助诊断其失败模式。
Concept bottleneck models predict outcomes from high-level concepts detected in inputs. Although concepts provide a simple way to reap benefits from interpretability, very few datasets include concept labels. This limits researchers' ability to determine which problems are suitable for these models, isolate the factors that drive their performance or lead to failures, or uncover which algorithms perform well. In this paper, we develop synthetic benchmarks for concept-bottleneck models, focusing on their two main use cases: decision support, in which models assist humans in making better decisions, and automation, in which models handle routine tasks without supervision. Our benchmarks can generate labeled datasets while controlling for properties that affect performance, including data modality, concept choice, annotation quality, and completeness. We demonstrate how the benchmarks can be used to evaluate representative classes of concept bottleneck models. Our demonstrations show how the benchmarks can diagnose failure modes and guide follow-up testing.
衡量关键要素:概念瓶颈模型的合成基准测试 / Measuring What Matters: Synthetic Benchmarks for Concept Bottleneck Models
本文针对概念瓶颈模型缺乏真实概念标签数据集的问题,设计了一套可控制数据模态、概念选择、标注质量等关键因素的合成基准测试,用于评估模型在辅助决策和自动化任务中的表现,并帮助诊断其失败模式。
源自 arXiv: 2606.04326