VNU-UET Repository

Learning to Filter User Explicit Intents in Online Vietnamese Social Media Texts

Thai Le Luong and Thi Hanh Tran and Quoc Tuan Truong and Thi Minh Ngoc Truong and Thi Thu Phi and Xuan Hieu Phan (2016) Learning to Filter User Explicit Intents in Online Vietnamese Social Media Texts. In: The 8th Asian Conference on Intelligent Information and Database Systems (ACIIDS), 14-16 March 2016, Da Nang, Vietnam.

[img] PDF - Published Version
Restricted to Registered users only


Official URL:


Today, Internet users are much more willing to express themselves on online social media channels. They commonly share their daily activities, their thoughts or feelings, and even their intention (e.g., buy a camera, rent an apartment, borrow a loan, etc.) about what they plan to do on blogs, forums, and especially online social networks. Understanding intents of online users, therefore, has become a crucial need for many enterprises operating in different business areas like production, banking, retail, e–commerce, and online advertising. In this paper, we will present a machine learning approach to analyze users’ posts and comments on online social media to filter posts or comments containing user plans or intents. Fully understanding user intent in social media texts is a complicated process including three major stages: user intent filtering, intent domain identification, and intent parsing and extraction. In the scope of this study, we will propose a solution to the first one, that is, building a binary classification model to determine whether a post or comment carries an intent or not. We carefully conducted an empirical evaluation for our model on a medium-sized collection of posts in Vietnamese and achieved promising results with an average accuracy of more than 90%.

Item Type:Conference or Workshop Item (Paper)
Subjects:Information Technology (IT)
Divisions:Faculty of Information Technology (FIT)
ID Code:1883
Deposited By: Prof. Xuan Hieu Phan
Deposited On:14 Nov 2016 02:31
Last Modified:14 Nov 2016 02:31

Repository Staff Only: item control page