Decoding BERT’s Internal Processing of Garden-Path Structures through Attention Maps
Citations

SCOPUS

3

초록

Recent advancements in deep learning neural models, such as BERT, have demonstrated remarkable performance in natural language processing tasks, yet understanding their internal processing remains a challenge. This study employs the method of examining attention maps to uncover the internal processing of BERT, specifically when dealing with garden-path sentences. The analysis focuses on BERT's utilization of linguistic cues, such as transitivity, plausibility, and the presence of a comma, and evaluates its capacity for reanalyzing misinterpretations. The results revealed that BERT exhibits human-like syntactic processing by attending to the presence of a comma, showing sensitivity to transitivity, and reanalyzing misinterpretations, despite initially lacking sensitivity to plausibility. By concentrating on attention maps, the present study provides valuable insights into the inner workings of BERT and contributes to a deeper understanding of how advanced neural language models acquire and process complex linguistic structures. © 2023 KASELL. All rights reserved.

키워드

attention mapgarden-path structureNatural Language ProcessingPsycholinguisticsTransformers
제목
Decoding BERT’s Internal Processing of Garden-Path Structures through Attention Maps
저자
Lee, JonghyunShin, Jeong-Ah
DOI
10.15738/kjell.23..202306.461
발행일
2023-06
유형
Article
저널명
영어학
23
페이지
461 ~ 481