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Keywords: Automatic classification
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Journal Articles
Automatic classification of research data sets into the Chinese Library Classification with generative large language model
Available to Purchase
Journal:
The Electronic Library
The Electronic Library (2025) 43 (4): 600–618.
Published: 10 June 2025
... Classification (CLC) codes to data sets to facilitate user searching and browsing data sets. Design/methodology/approach This study experiments with a three-step method for the automatic classification of research data sets: firstly, a multilingual classification model is trained to identify data sets...
Journal Articles
A method of identifying domain-specific academic user information needs based on academic Q&A communities
Available to Purchase
Journal:
The Electronic Library
The Electronic Library (2024) 42 (5): 741–765.
Published: 11 July 2024
... information needs. Design/methodology/approach This study’s method consists of two main parts: the first is the automatic classification of academic user information needs based on the bidirectional encoder representations from transformers (BERT) model. The second is the key content extraction...
