Bridging the Know-Act Gap via Task-Level Autoregressive Reasoning
Abstract
LLMs often generate seemingly valid answers to flawed or ill-posed inputs. This is not due to missing knowledge: under discriminative prompting, the same models can mostly identify such issues, yet fail to reflect this in standard generative responses. This reveals a fundamental know-act gap between discriminative recognition and generative behavior. Prior work largely characterizes this issue in narrow settings, such as math word problems or question answering, with limited focus on how to integrate these two modes. In this work, we present a comprehensive analysis using FaultyScience, a newly constructed large-scale, cross-disciplinary benchmark of faulty scientific questions. We show that the gap is pervasive and stems from token-level autoregression, which entangles task selection (validate vs. answer) with content generation, preventing discriminative knowledge from being utilized. To address this, we propose DeIllusionLLM, a task-level autoregressive framework that explicitly models this decision. Through self-distillation, the model unifies discriminative judgment and generative reasoning within a single backbone. Empirically, DeIllusionLLM substantially reduces answer-despite-error failures under natural prompting while maintaining general reasoning performance, demonstrating that self-distillation is an effective and scalable solution for bridging the discriminative-generative know-act gap
Cite
@article{arxiv.2603.22619,
title = {Bridging the Know-Act Gap via Task-Level Autoregressive Reasoning},
author = {Jihyun Janice Ahn and Ryo Kamoi and Berk Atil and Renze Lou and WonWoo Kang and Heehyun Park and Sarkar Snigdha Sarathi Das and Zhuoyang Zou and Xiaoxin Lu and Yusen Zhang and Asfahan Shah and Ridwanul Hasan Tanvir and Lingxiao Zhao and Hongxi Huang and Vignesh Venkatesh and Dianjun Lin and Hamid Shah and Wentao Wang and Zhanpeng Song and Joshua Reed Bassin and Dax Patel and Ishan Appareddy Agrahar and Sahil Pardasani and Xin Dong and Fatemeh Rahbari and Benjamin David Rishel and Soochan Andrew Lee and Yuv Boghani and Ali B. AlNaseeb and Pranav Suby and Seokhyeon Bae and Shreya Buddharaju and Damien Kula and Soumyadeep Das and Hanyang Frank Liu and Faye Mo and Wenpeng Yin},
journal= {arXiv preprint arXiv:2603.22619},
year = {2026}
}
Comments
12 pages