How Reliable are Causal Probing Interventions?

IJCNLP-AACL 2025

*Indicates Equal Contribution
University of Illinois Urbana-Champaign
Overview

Causal Probing and Our Reliability Framework. The process of causal probing is shown in the gray box, with our reliability framework in the purple box.

Abstract

Causal probing aims to analyze foundation models by examining how intervening on their representation of various latent properties impacts their outputs. Recent works have cast doubt on the theoretical basis of several leading causal probing methods, but it has been unclear how to systematically evaluate the effectiveness of these methods in practice. To address this, we define two key causal probing desiderata: completeness (how thoroughly the representation of the target property has been transformed) and selectivity (how little non-targeted properties have been impacted). We find that there is an inherent tradeoff between the two, which we define as reliability, their harmonic mean. We introduce an empirical analysis framework to measure and evaluate these quantities, allowing us to make the first direct comparisons between different families of leading causal probing methods (e.g., linear vs. nonlinear, or concept removal vs. counterfactual interventions). We find that:

  1. All methods show a clear tradeoff between completeness and selectivity.
  2. More complete and reliable methods have a greater impact on LLM behavior.
  3. Nonlinear interventions are almost always more reliable than linear interventions.

Results

BibTeX

@inproceedings{canby2025how,
  title={How Reliable are Causal Probing Interventions?},
  author={Canby, Marc and Davies, Adam and Rastogi, Chirag and Hockenmaier, Julia},
  booktitle={International Joint Conference on Natural Language Processing {\&} Asia-Pacific Chapter of the Association for Computational Linguistics 2025},
  year={2025},
  url={https://openreview.net/forum?id=sn24J5JIob}
}