PSSD: Making Large Language Models Self-denial via Human Psyche Structure
Jinzhi Liao, Zenghua Liao, Xiang Zhao

TL;DR
This paper introduces PSSD, a multi-agent inspired framework that mimics human psyche roles to improve reasoning accuracy in large language models, addressing resource-intensive correction methods.
Contribution
PSSD is a novel multi-agent approach inspired by human psyche structure, enhancing LLM reasoning by integrating intuition, rules, and procedural execution.
Findings
Improves reasoning accuracy of LLMs.
Seamlessly integrates with existing models.
Achieves superior performance in experiments.
Abstract
The enhance of accuracy in reasoning results of LLMs arouses the community's interests, wherein pioneering studies investigate post-hoc strategies to rectify potential mistakes. Despite extensive efforts, they are all stuck in a state of resource competition demanding significant time and computing expenses. The cause of the situation lies in the failure of identifying the fundamental feature of the solutions in this line, coined as the self-denial of LLMs. In other words, LLMs should confidently determine the potential existence of mistakes and carefully execute the targeted correction. As the whole procedure conducts within LLMs, supporting and persuasive references are hard to acquire, while the absence of specific steps towards refining hidden mistakes persists even when errors are acknowledged. In response to the challenges, we present PSSD, which refers to and implements the human…
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Taxonomy
TopicsTopic Modeling
