Home > Published Issues > 2023 > Volume 14, No. 6, 2023 >
JAIT 2023 Vol.14(6): 1240-1253
doi: 10.12720/jait.14.6.1240-1253

Towards a Transparent and an Environmental-Friendly Approach for Short Text Topic Detection: A Comparison of Methods for Performance, Transparency, and Carbon Footprint

Sami Al Sulaimani * and Andrew Starkey
School of Engineering, University of Aberdeen, Aberdeen AB24 3UE, UK
*Correspondence: s.alsulaimani1.19@abdn.ac.uk (S.A.S.)

Manuscript received June 7, 2023; revised July 7, 2023; accepted July 14, 2023; published November 22, 2023.

Abstract—Online social media platforms have contributed sig-nificantly t o t he d issemination o f u ser-generated information. Many studies have proposed various techniques to analyze publicly available short texts to automatically extract topics. The majority of these works have mainly focused on the competitive performance of the proposed approaches. In this paper, our main focus is on how to tackle this problem by incorporating two other important qualities: Transparency and Carbon Footprint. These two pillars are cornerstones to fulfill the emerging international demands and to adhere to the new regulations, such as “Right to Explanation” and “Green AI”. Based on these three qualities, this paper compares the most prominent algorithms in this field ( specifically within the category of unsupervised-retrospective learning), such as: Latent Dirichlet Allocation, Non-Negative Matrix Factoriza-tion, and K-Means, as well as two most recent approaches, such as: BERTopic and Contextual Analysis. By using two different datasets, the methods were evaluated for Perfor-mance. On average, the results show that BERTopic is the best-performing approach overall in terms of Performance. However, Contextual Analysis achieves the best Performance in one of the two datasets used. When considering the three qualities together, the results demonstrate the effectiveness and the benefits of the Contextual Analysis method towards a more transparent and greener approach for the topic detection task.
 
Keywords—text analysis, topic detection, contextual analy-sis, unsupervised machine learning, carbon footprint, trans-parency, explainability

Cite: Sami Al Sulaimani and Andrew Starkey, "Towards a Transparent and an Environmental-Friendly Approach for Short Text Topic Detection: A Comparison of Methods for Performance, Transparency, and Carbon Footprint," Journal of Advances in Information Technology, Vol. 14, No. 6, pp. 1240-1253, 2023.

Copyright © 2023 by the authors. This is an open access article distributed under the Creative Commons Attribution License (CC BY-NC-ND 4.0), which permits use, distribution and reproduction in any medium, provided that the article is properly cited, the use is non-commercial and no modifications or adaptations are made.