대규모 언어 모델 기반 정보 이론적 복잡도 지표와 언어 처리의 신경 상관성Neural Correlates of Information-Theoretic Metrics from Large Language Models in Language Processing
- Other Titles
- Neural Correlates of Information-Theoretic Metrics from Large Language Models in Language Processing
- Authors
- 김건; 남윤주
- Issue Date
- Jun-2025
- Publisher
- 한국언어학회
- Keywords
- Surprisal; Entropy; Entropy Reduction; EEG
- Citation
- 언어, v.50, no.2, pp 573 - 595
- Pages
- 23
- Indexed
- KCI
- Journal Title
- 언어
- Volume
- 50
- Number
- 2
- Start Page
- 573
- End Page
- 595
- URI
- https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/208174
- DOI
- 10.18855/lisoko.2025.50.2.006
- ISSN
- 1229-4039
2734-0481
- Abstract
- This study explores the relationship between information-theoretic metrics from large language models and neural activity during natural sentence reading. Analyzing EEG data, we found that surprisal was associated with reduced lower-beta power during initial processing, reflecting updates to an existing predictive model. Furthermore, entropy correlated with increased broadband neural power, primarily over left-hemisphere regions. In contrast, entropy reduction was associated with increased high-beta and gamma power, linked to information integration. These findings demonstrate that different information-theoretic metrics map onto distinct neural signatures of predictive processing and cognitive load. While the results provide strong evidence for these links, the fixation-locked analysis method suggests a need for future research to capture the continuous, dynamic time-course of meaning integration.
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