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Main Authors: Shen, Siqi, Singh, Mehar, Logeswaran, Lajanugen, Lee, Moontae, Lee, Honglak, Mihalcea, Rada
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.13490
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author Shen, Siqi
Singh, Mehar
Logeswaran, Lajanugen
Lee, Moontae
Lee, Honglak
Mihalcea, Rada
author_facet Shen, Siqi
Singh, Mehar
Logeswaran, Lajanugen
Lee, Moontae
Lee, Honglak
Mihalcea, Rada
contents There has been extensive research on assessing the value orientation of Large Language Models (LLMs) as it can shape user experiences across demographic groups. However, several challenges remain. First, while the Multiple Choice Question (MCQ) setting has been shown to be vulnerable to perturbations, there is no systematic comparison of probing methods for value probing. Second, it is unclear to what extent the probed values capture in-context information and reflect models' preferences for real-world actions. In this paper, we evaluate the robustness and expressiveness of value representations across three widely used probing strategies. We use variations in prompts and options, showing that all methods exhibit large variances under input perturbations. We also introduce two tasks studying whether the values are responsive to demographic context, and how well they align with the models' behaviors in value-related scenarios. We show that the demographic context has little effect on the free-text generation, and the models' values only weakly correlate with their preference for value-based actions. Our work highlights the need for a more careful examination of LLM value probing and awareness of its limitations.
format Preprint
id arxiv_https___arxiv_org_abs_2507_13490
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Revisiting LLM Value Probing Strategies: Are They Robust and Expressive?
Shen, Siqi
Singh, Mehar
Logeswaran, Lajanugen
Lee, Moontae
Lee, Honglak
Mihalcea, Rada
Computation and Language
There has been extensive research on assessing the value orientation of Large Language Models (LLMs) as it can shape user experiences across demographic groups. However, several challenges remain. First, while the Multiple Choice Question (MCQ) setting has been shown to be vulnerable to perturbations, there is no systematic comparison of probing methods for value probing. Second, it is unclear to what extent the probed values capture in-context information and reflect models' preferences for real-world actions. In this paper, we evaluate the robustness and expressiveness of value representations across three widely used probing strategies. We use variations in prompts and options, showing that all methods exhibit large variances under input perturbations. We also introduce two tasks studying whether the values are responsive to demographic context, and how well they align with the models' behaviors in value-related scenarios. We show that the demographic context has little effect on the free-text generation, and the models' values only weakly correlate with their preference for value-based actions. Our work highlights the need for a more careful examination of LLM value probing and awareness of its limitations.
title Revisiting LLM Value Probing Strategies: Are They Robust and Expressive?
topic Computation and Language
url https://arxiv.org/abs/2507.13490