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arXiv 提交日期: 2026-02-17
📄 Abstract - The Information Geometry of Softmax: Probing and Steering

This paper concerns the question of how AI systems encode semantic structure into the geometric structure of their representation spaces. The motivating observation of this paper is that the natural geometry of these representation spaces should reflect the way models use representations to produce behavior. We focus on the important special case of representations that define softmax distributions. In this case, we argue that the natural geometry is information geometry. Our focus is on the role of information geometry on semantic encoding and the linear representation hypothesis. As an illustrative application, we develop "dual steering", a method for robustly steering representations to exhibit a particular concept using linear probes. We prove that dual steering optimally modifies the target concept while minimizing changes to off-target concepts. Empirically, we find that dual steering enhances the controllability and stability of concept manipulation.

顶级标签: theory machine learning model evaluation
详细标签: information geometry representation learning softmax linear probes concept steering 或 搜索:

Softmax的信息几何:探测与引导 / The Information Geometry of Softmax: Probing and Steering


1️⃣ 一句话总结

这篇论文提出,对于使用Softmax输出概率的AI模型,其表示空间的自然几何结构应是信息几何,并基于此发展了一种名为“双重引导”的方法,能更优、更稳地线性操控模型对特定概念的表示。

源自 arXiv: 2602.15293