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Main Authors: Zhou, Jinfeng, Chen, Zheyu, Wang, Shuai, Dai, Quanyu, Dong, Zhenhua, Wang, Hongning, Huang, Minlie
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.22546
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author Zhou, Jinfeng
Chen, Zheyu
Wang, Shuai
Dai, Quanyu
Dong, Zhenhua
Wang, Hongning
Huang, Minlie
author_facet Zhou, Jinfeng
Chen, Zheyu
Wang, Shuai
Dai, Quanyu
Dong, Zhenhua
Wang, Hongning
Huang, Minlie
contents LLMs trained for logical reasoning excel at step-by-step deduction to reach verifiable answers. However, this paradigm is ill-suited for navigating social situations, which induce an interpretive process of analyzing ambiguous cues that rarely yield a definitive outcome. To bridge this gap, we introduce Cognitive Reasoning, a paradigm modeled on human social cognition. It formulates the interpretive process into a structured cognitive flow of interconnected cognitive units (e.g., observation or attribution), which combine adaptively to enable effective social thinking and responses. We then propose CogFlow, a complete framework that instills this capability in LLMs. CogFlow first curates a dataset of cognitive flows by simulating the associative and progressive nature of human thought via tree-structured planning. After instilling the basic cognitive reasoning capability via supervised fine-tuning, CogFlow adopts reinforcement learning to enable the model to improve itself via trial and error, guided by a multi-objective reward that optimizes both cognitive flow and response quality. Extensive experiments show that CogFlow effectively enhances the social cognitive capabilities of LLMs, and even humans, leading to more effective social decision-making.
format Preprint
id arxiv_https___arxiv_org_abs_2509_22546
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Think Socially via Cognitive Reasoning
Zhou, Jinfeng
Chen, Zheyu
Wang, Shuai
Dai, Quanyu
Dong, Zhenhua
Wang, Hongning
Huang, Minlie
Computation and Language
LLMs trained for logical reasoning excel at step-by-step deduction to reach verifiable answers. However, this paradigm is ill-suited for navigating social situations, which induce an interpretive process of analyzing ambiguous cues that rarely yield a definitive outcome. To bridge this gap, we introduce Cognitive Reasoning, a paradigm modeled on human social cognition. It formulates the interpretive process into a structured cognitive flow of interconnected cognitive units (e.g., observation or attribution), which combine adaptively to enable effective social thinking and responses. We then propose CogFlow, a complete framework that instills this capability in LLMs. CogFlow first curates a dataset of cognitive flows by simulating the associative and progressive nature of human thought via tree-structured planning. After instilling the basic cognitive reasoning capability via supervised fine-tuning, CogFlow adopts reinforcement learning to enable the model to improve itself via trial and error, guided by a multi-objective reward that optimizes both cognitive flow and response quality. Extensive experiments show that CogFlow effectively enhances the social cognitive capabilities of LLMs, and even humans, leading to more effective social decision-making.
title Think Socially via Cognitive Reasoning
topic Computation and Language
url https://arxiv.org/abs/2509.22546