A Non-Entity Approach for Intent-Based Classification: A Case Study of Thai News

dc.contributor.authorChaianun Damrongrat
dc.contributor.authorChatchawal Sangkeettrakarn
dc.contributor.authorApivadee Piyatumrong
dc.contributor.authorKanokorn Trankultaweekoon
dc.contributor.authorPachit Seekhem
dc.contributor.authorPiyawat Chuangkrud
dc.date.accessioned2026-05-08T19:22:54Z
dc.date.issued2022-5-24
dc.description.abstractConjunction and stop words are normally ignored in text classification task that is content-based, such as classifying news into entertainment or sports. However, they are useful in this study, since the content and the intention of the document are independent. This paper studies intent-based classification that specifically desires to classify the author’s intention of Thai news article into three intents, ‘inform’, ‘explain’, and ‘give solution’. These three intents subtly co-exist with the content of the article and thus is our classification challenge. Our experiments confirm that intent-based classification needs a different approach from those techniques used for content-based classification. Accordingly, we propose a new pipeline for Thai intent-based classification such that conjunction and others can play a significant role above entity. Our contributions include (1) proving the need for a new methodology to handle intent-based classification and (2) proposing the Non-Entity data processing approach to managing intent-based classification problems. The proposed methodology shows partially promising results. Nonetheless, flags for enhancement are also discussed in the conclusion for future works.
dc.identifier.doi10.1109/ecti-con54298.2022.9795568
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/18790
dc.publisher2022 19th International Conference on Electrical Engineering/Electronics, Computer, Telecommunications and Information Technology (ECTI-CON)
dc.subjectSentiment Analysis and Opinion Mining
dc.subjectText and Document Classification Technologies
dc.subjectTopic Modeling
dc.titleA Non-Entity Approach for Intent-Based Classification: A Case Study of Thai News
dc.typeArticle

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