无监督概念提取的统一框架 / A Unifying Framework for Unsupervised Concept Extraction
1️⃣ 一句话总结
本文提出了一个统一的理论框架,将无监督概念提取的核心任务视为识别一个生成模型,并给出一个简化证明该过程可识别性(即保证提取结果唯一可靠)的通用定理,从而为开发更可靠的概念提取方法奠定了基础。
Techniques for concept extraction, such as sparse autoencoders and transcoders, aim to extract high-level symbolic concepts from low-level nonsymbolic representations. When these extracted concepts are used for downstream tasks such as model steering and unlearning, it is essential to understand their guarantees, or lack thereof. In this work, we present a unified theoretical framework for unsupervised concept extraction, in which we frame the task of concept extraction as identifying a generative model. We present a general meta-theorem for identifiability, which reduces the problem of establishing identifiability guarantees to the problem of characterizing the intersection of two sets. As we demonstrate on a range of widely-used approaches, this meta-theorem substantially simplifies the task of proving such guarantees, thus paving the way for the development of new, principled approaches for concept extraction.
无监督概念提取的统一框架 / A Unifying Framework for Unsupervised Concept Extraction
本文提出了一个统一的理论框架,将无监督概念提取的核心任务视为识别一个生成模型,并给出一个简化证明该过程可识别性(即保证提取结果唯一可靠)的通用定理,从而为开发更可靠的概念提取方法奠定了基础。
源自 arXiv: 2604.24936