Mining Users' Intentions from Thai Tweets Using BERT Models
รหัสดีโอไอ
Creator Nattapong Sanchan
Title Mining Users' Intentions from Thai Tweets Using BERT Models
Publisher The Association of Council of IT Deans (CITT)
Publication Year 2566
Journal Title Journal of Information Science and Technology
Journal Vol. 13
Journal No. 1
Page no. 17-25
Keyword Intent Mining, Intention Mining, Intent Classification, Intent Detection, Text Mining, Natural Language Processing
URL Website https://tci-thaijo.org/index.php/JIST
Website title Journal of Information Science and Technology
ISSN 2651-1053
Abstract In this paper, we explore the mining of users' intentions in text. We viewed that being able to identify the intentions of users expressed in textual data provides us to specifically know aims and what users want to do.In the experiment, we collected tweets, constructed a Thai intention corpus, and performed a binary classification task on the corpus. We investigated the intent classification results derived through the application of 3 different Bidirectional Encoder Representations from Transformers(BERT), Word Embedding, and Bag of Words models. The results revealed that BERT Based EN-TH Cased model outperforms other models in both classification and processing time aspects. It achieves the F1 Score of 0.81 and performs the classification task faster than other BERT models up to 15%.
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