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정원길(garden path) 문장 처리에 관한 GPT-2 신경망 언어 모델과 인간의 비교 연구Comparing GPT-2 and Humans in Processing Garden Path Sentences

Other Titles
Comparing GPT-2 and Humans in Processing Garden Path Sentences
Authors
김유영박명관
Issue Date
Jul-2022
Publisher
한국중원언어학회
Keywords
artificial neural-network language model; garden path; humans; language learning; sentence processing; .
Citation
언어학 연구, no.64, pp 69 - 91
Pages
23
Indexed
KCI
Journal Title
언어학 연구
Number
64
Start Page
69
End Page
91
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/2861
DOI
10.17002/sil..64.202207.69
ISSN
1975-8251
2508-4259
Abstract
This study is to compare the GPT-2-based neural-network language model (NLM) and humans in processing sentences with three different types of garden-path structure: NP/S(noun phrase/sentential complement); NP/Z(noun phrase/zero complement); MV/RR(main verb/reduced relative clause). It is to see whether the surprisal values calculated from the GPT-2 NLM display a similar pattern as human reading times in processing the three types of garden-path construction at issue; the surprisal of a sentence-internal word input, measured as the negative log-likelihood of the current observation according to the autoregressive language model, is used as a measure of input difficulty. It is found in this study that like humans, the GPT-2 NLM effectively distinguishes ambiguous from unambiguous sentences in each of them. However, the GPT-2 NLM deviates drastically from humans in recognizing garden-path effects, namely, the magnitude of cognitive load induced by processing a particular type of garden-path structure. Pending further articulations on the parallelism between reading time and surprisal, the GPT-2 NLM as a language learner is yet to attain a human-like ability to discern different types of garden-path structure in a fine-grained way.
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