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워드임베딩에 기반한 러시아어 감정어휘의미 연구 -슬픔의 감정형용사를 중심으로Lexical Meaning of Russian Emotion Words based on Word Embedding: Focusing on Adjectives of Sadness

Other Titles
Lexical Meaning of Russian Emotion Words based on Word Embedding: Focusing on Adjectives of Sadness
Authors
김보라
Issue Date
Jun-2024
Publisher
연세대학교 인문학연구원
Keywords
Russian; Word Embedding; Emotional Adjectives; Similarity Analysis; Word2Vec; Analogy Evaluation; 러시아어; 워드임베딩; 감정형용사; 유사도 분석; 워드투벡; 유추평가
Citation
유럽사회문화, no.32, pp 91 - 116
Pages
26
Indexed
KCI
Journal Title
유럽사회문화
Number
32
Start Page
91
End Page
116
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/70976
DOI
10.23017/eurosc.2024..32.91
ISSN
2005-8055
Abstract
This study aims to demonstrate the linguistic significance of classifying Russian emotional adjectives based on word embeddings. To achieve this, the study examines the types of emotional vocabulary. Secondly, it reviews previous research on the semantics of Russian emotional vocabulary. Thirdly, it explores semantic associates based on word embeddings. Fourthly, the study groups Russian emotional adjectives using word embedding-based semantic associates and analyzes differences between these results and those of traditional lexical semantic research. Finally, it discusses the potential role of word embeddings in the semantic analysis of emotional vocabulary. This study utilized three models built by the Language Technology Group at the University of Oslo. To evaluate the performance of the models, an analogy evaluation was conducted to assess how well the language models understand the semantic relationships between words. As a result, it was confirmed that a sufficient quantity and quality of data, accurate preprocessing, and effective parameter combinations for learning are necessary to construct high-quality models. Through the analysis of the similarity between "тоскливый" and "грустный", it was examined how the synonyms of these adjectives are represented. Therefore, exploring the semantic relationships of emotional vocabulary through word embeddings can serve as a valuable tool in linguistic research, demonstrating the complementary relationship between linguistic intuition and machine learning results.
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