Tweet semantic classification in civic engagement research
Document Type
Article
Publication Date
12-1-2018
Abstract
This paper presents a proposal to apply Latent Semantics Indexing to automatically classify Twitter tweets into different categories, in order to create a location-based geographic map of students' civic engagement intensity and correlate it with social behavior. Since the work is at the proposal stage, the focus of this paper is on the proposed research methodology stemming from a pilot study we conducted with Facebook data. We implemented the methodology in a posting classification tool working with Facebook API. During our validation, the tool extracted 100 postings and classified them into five categories of politics, entertainment, science, technology, and daily life. Once adopted to analyzing tweets, we hope to contribute to the field by applying machine learning algorithms to the study of social behavior with focus on measuring youth civic engagement.
Publication Title
International Journal of Machine Learning and Computing
First Page Number
595
Last Page Number
599
DOI
10.18178/ijmlc.2018.8.6.751
Recommended Citation
Compion, Sara; Croft, P.; Li, J. J.; Ngoy, Kikombo Ilunga; and Qi, Feng, "Tweet semantic classification in civic engagement research" (2018). Kean Publications. 1444.
https://digitalcommons.kean.edu/keanpublications/1444