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Main Authors: Liu, Guangliang, Mao, Haitao, Cao, Bochuan, Xue, Zhiyu, Zhang, Xitong, Wang, Rongrong, Tang, Jiliang, Johnson, Kristen
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.02378
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author Liu, Guangliang
Mao, Haitao
Cao, Bochuan
Xue, Zhiyu
Zhang, Xitong
Wang, Rongrong
Tang, Jiliang
Johnson, Kristen
author_facet Liu, Guangliang
Mao, Haitao
Cao, Bochuan
Xue, Zhiyu
Zhang, Xitong
Wang, Rongrong
Tang, Jiliang
Johnson, Kristen
contents Large Language Models (LLMs) are able to improve their responses when instructed to do so, a capability known as self-correction. When instructions provide only the task's goal without specific details about potential issues in the response, LLMs must rely on their internal knowledge to improve response quality, a process referred to as intrinsic self-correction. The empirical success of intrinsic self-correction is evident in various applications, but how and why it is effective remains unknown. In this paper, we unveil that intrinsic self-correction can be progressively improved, allowing it to approach a converged state. Our findings are verified in: (1) the scenario of multi-round question answering, by comprehensively demonstrating that intrinsic self-correction can progressively introduce performance gains through iterative interactions, ultimately converging to stable performance; and (2) the context of intrinsic self-correction for enhanced morality, in which we provide empirical evidence that iteratively applying instructions reduces model uncertainty towards convergence, which then leads to convergence of both the calibration error and self-correction performance, ultimately resulting in a stable state of intrinsic self-correction. Furthermore, we introduce a mathematical formulation and a simulation task indicating that the latent concepts activated by self-correction instructions drive the reduction of model uncertainty. Based on our experimental results and analysis of the convergence of intrinsic self-correction, we reveal its underlying mechanism: consistent injected instructions reduce model uncertainty which yields converged, improved performance.
format Preprint
id arxiv_https___arxiv_org_abs_2406_02378
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle On the Intrinsic Self-Correction Capability of LLMs: Uncertainty and Latent Concept
Liu, Guangliang
Mao, Haitao
Cao, Bochuan
Xue, Zhiyu
Zhang, Xitong
Wang, Rongrong
Tang, Jiliang
Johnson, Kristen
Computation and Language
Large Language Models (LLMs) are able to improve their responses when instructed to do so, a capability known as self-correction. When instructions provide only the task's goal without specific details about potential issues in the response, LLMs must rely on their internal knowledge to improve response quality, a process referred to as intrinsic self-correction. The empirical success of intrinsic self-correction is evident in various applications, but how and why it is effective remains unknown. In this paper, we unveil that intrinsic self-correction can be progressively improved, allowing it to approach a converged state. Our findings are verified in: (1) the scenario of multi-round question answering, by comprehensively demonstrating that intrinsic self-correction can progressively introduce performance gains through iterative interactions, ultimately converging to stable performance; and (2) the context of intrinsic self-correction for enhanced morality, in which we provide empirical evidence that iteratively applying instructions reduces model uncertainty towards convergence, which then leads to convergence of both the calibration error and self-correction performance, ultimately resulting in a stable state of intrinsic self-correction. Furthermore, we introduce a mathematical formulation and a simulation task indicating that the latent concepts activated by self-correction instructions drive the reduction of model uncertainty. Based on our experimental results and analysis of the convergence of intrinsic self-correction, we reveal its underlying mechanism: consistent injected instructions reduce model uncertainty which yields converged, improved performance.
title On the Intrinsic Self-Correction Capability of LLMs: Uncertainty and Latent Concept
topic Computation and Language
url https://arxiv.org/abs/2406.02378