← Home

Quick answer

Large Language Models (LLMs) achieve strong performance on diverse tasks but often exhibit cognitive inertia, struggling to follow instructions that conflict with the standardized patterns learned during supervised fine-tuning (SFT). To evaluate this limitation, we propose Inverse IFEval, a...

Claim

Inverse IFEval: Can LLMs Unlearn Stubborn Training Conventions to Follow Real Instructions?

Authors
Qinyan Zhang·
Xinping Lei·
Ruijie Miao·
Yu Fu·
Haojie Fan·
Le Chang·
Jiafan Hou·
Dingling Zhang·
Zhongfei Hou·
Ziqiang Yang·
Changxin Pu·
Fei Hu·
Jingkai Liu·
Mengyun Liu·
Yang Liu·
Xiang Gao·
Jiaheng Liu·
Tong Yang·
Zaiyuan Wang·
Ge Zhang·
Wenhao Huang

ABSTRACT

Large Language Models (LLMs) achieve strong performance on diverse tasks but often exhibit cognitive inertia, struggling to follow instructions that conflict with the standardized patterns learned during supervised fine-tuning (SFT). To evaluate this limitation, we propose Inverse IFEval, a benchmark that measures models Counter-intuitive Abilitytheir capacity to override training-induced biases and comply with adversarial instructions. Inverse IFEval introduces eight types of such challenges, including Question Correction, Intentional Textual Flaws, Code without Comments, and Counterfactual Answering. Using a human-in-the-loop pipeline, we construct a dataset of 1012 high-quality Chinese and English questions across 23 domains, evaluated under an optimized LLM-as-a-Judge framework. Experiments on existing leading LLMs demonstrate the necessity of our proposed Inverse IFEval benchmark. Our findings emphasize that future alignment efforts should not only pursue fluency and factual correctness but also account for adaptability under unconventional contexts. We hope that Inverse IFEval serves as both a diagnostic tool and a foundation for developing methods that mitigate cognitive inertia, reduce overfitting to narrow patterns, and ultimately enhance the instruction-following reliability of LLMs in diverse and unpredictable real-world scenarios.

Review Snapshot

Explore ratings

0.0
★★★★★
0 ratings
5 star
0%
4 star
0%
3 star
0%
2 star
0%
1 star
0%

Recommendation

0%

recommend this content.

Review this content

Share your opinion to help other learners triage faster.

Write a review

Invite a reviewer

Invite someone by email to share an invited review for Inverse IFEval: Can LLMs Unlearn Stubborn Training Conventions to Follow Real Instructions?.

Author Inquiries

Public questions about this content. Attendemia will route your question to the author. Vote on the most important ones. No guarantee of response.
Post an inquiry
Sort by: Most helpful