JSAI2024

Presentation information

Organized Session

Organized Session » OS-10

[1J5-OS-10c] OS-10

Tue. May 28, 2024 5:00 PM - 6:40 PM Room J (Room 43)

オーガナイザ:砂山 渡(滋賀県立大学)、森 辰則(横浜国立大学)、高間 康史(東京都立大学)、笹嶋 宗彦(兵庫県立大学)、西原 陽子(立命館大学)

6:00 PM - 6:20 PM

[1J5-OS-10c-04] Generation of zero-shot label sets and attribute classification of listening test dialogues

〇YANGDI NI1, Junjie SHAN1, Yoko NISHIHARA1 (1. Ritsumeikan University)

Keywords:Zero-shot classification, JLPT listening test

Zero-shot classification will produce different classification results for the same texts depending on the input label set.In this paper, we propose a method to generate a large number of candidate label sets for the same zero-shot classification target by antonym substitution and conversion to synonyms using WordNet and find appropriate labels from themFour zero-shot classification methods are evaluated: 1. cosine similarity of text by BERT model, 2. cosine similarity of text by OpenAI's model, and 3. pre-trained zero-shot model of MoritzLauer.In the evaluation experiment, we collected 50 listening test dialogues from each of the N5 to N1 levels of the past Japanese Language Proficiency Test (JLPT) and classified them manually.Three classification attributes of Dialogue Location (6 categories), Speaker's Relationship (2 categories and 4 categories), and Dialogue Style (2 categories) were evaluated.We prepared 212 candidate label sets and counted the RMSE (Root Mean Square Error) of these labels for the four zero-shot classification methods. The results confirmed that the proposed method can obtain higher accuracy label sets for zero-shot classification.

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