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Twitter mining for ontology-based domain discovery incorporating machine learning

Bilal Abu-Salih (Curtin University, Perth, Australia)
Pornpit Wongthongtham (Curtin University, Perth, Australia)
Chan Yan Kit (Department of Electrical and Computer Engineering, Curtin University, Perth, Australia)

Journal of Knowledge Management

ISSN: 1367-3270

Article publication date: 6 March 2018

Issue publication date: 15 June 2018

1484

Abstract

Purpose

This paper aims to obtain the domain of the textual content generated by users of online social network (OSN) platforms. Understanding a users’ domain (s) of interest is a significant step towards addressing their domain-based trustworthiness through an accurate understanding of their content in their OSNs.

Design/methodology/approach

This study uses a Twitter mining approach for domain-based classification of users and their textual content. The proposed approach incorporates machine learning modules. The approach comprises two analysis phases: the time-aware semantic analysis of users’ historical content incorporating five commonly used machine learning classifiers. This framework classifies users into two main categories: politics-related and non-politics-related categories. In the second stage, the likelihood predictions obtained in the first phase will be used to predict the domain of future users’ tweets.

Findings

Experiments have been conducted to validate the mechanism proposed in the study framework, further supported by the excellent performance of the harnessed evaluation metrics. The experiments conducted verify the applicability of the framework to an effective domain-based classification for Twitter users and their content, as evident in the outstanding results of several performance evaluation metrics.

Research limitations/implications

This study is limited to an on/off domain classification for content of OSNs. Hence, we have selected a politics domain because of Twitter’s popularity as an opulent source of political deliberations. Such data abundance facilitates data aggregation and improves the results of the data analysis. Furthermore, the currently implemented machine learning approaches assume that uncertainty and incompleteness do not affect the accuracy of the Twitter classification. In fact, data uncertainty and incompleteness may exist. In the future, the authors will formulate the data uncertainty and incompleteness into fuzzy numbers which can be used to address imprecise, uncertain and vague data.

Practical implications

This study proposes a practical framework comprising significant implications for a variety of business-related applications, such as the voice of customer/voice of market, recommendation systems, the discovery of domain-based influencers and opinion mining through tracking and simulation. In particular, the factual grasp of the domains of interest extracted at the user level or post level enhances the customer-to-business engagement. This contributes to an accurate analysis of customer reviews and opinions to improve brand loyalty, customer service, etc.

Originality/value

This paper fills a gap in the existing literature by presenting a consolidated framework for Twitter mining that aims to uncover the deficiency of the current state-of-the-art approaches to topic distillation and domain discovery. The overall approach is promising in the fortification of Twitter mining towards a better understanding of users’ domains of interest.

Keywords

Citation

Abu-Salih, B., Wongthongtham, P. and Yan Kit, C. (2018), "Twitter mining for ontology-based domain discovery incorporating machine learning", Journal of Knowledge Management, Vol. 22 No. 5, pp. 949-981. https://doi.org/10.1108/JKM-11-2016-0489

Publisher

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Emerald Publishing Limited

Copyright © 2018, Emerald Publishing Limited

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