Analysis of Active Learning for Social Media to Support Crisis Management
DOI:
https://doi.org/10.32628/IJSRSET207476Keywords:
Information Access, Social Networks, Twitter, Online Learning, Active Learning, Crisis ManagementAbstract
People use social media (SM) to describe and discuss different situations in which they are involved, such as crises. It is therefore useful to exploit SM content to support crisis management, especially by revealing useful and unknown information about real-time crises. Therefore, we propose a new active online multi-prototype classifier called AOMPC. It identifies relevant data related to a crisis. AOMPC is an online learning algorithm that runs on data streams and contains active learning algorithms for actively querying the label of obscure unnamed data. The number of queries is controlled by a consistent budget strategy. In general, AOMPC allows for somewhat labeled data streams. AOMPC evaluated using two types of data: (1) synthetic data and (2) SM data from Twitter related to two crises, the Colorado floods and the Australian pushfires. To provide a complete estimate, a complete set of known measurements was used to examine the quality of the results. Furthermore, a sensitivity analysis was conducted to show the effect of the parameters of AOMPC on the accuracy of the results. AOMPC's comparative study was conducted against other available online learning methods. Tests to handle emerging, somewhat labeled data streams showed AOMPC's excellent behavior.
References
- Daniela Pohl, Abdelhamid Bouchachia SMIEEE, and Hermann Hellwagner SMIEEE.
- Active Online Learning for Social Media Analysis to Support Crisis Management (IEEE, VOL. , NO. , —- 2015.)
- Deen SR, Withers A, Hellerstein DJ. Mental health practitioners' use and attitudes regarding the Internet and social media. J Psychiatr Pract. 2013;19:454–63
- Segerberg A, Bennett WL. Social media and the organization of collective action: using twitter to explore the ecologies of two climate change protests. Commun Rev. 2011;14:197–215.
- F. Abel, C. Hauff, G.-J. Houben, R. Stronkman, and K. Tao, “Semantics + Filtering + Search = Twitcident. Exploring Information in Social Web Streams,” in Proc. of the 23rd ACM Conf. on Hypertext and Social Media. ACM, 2012, pp. 285–294
- U. Ahmad, A. Zahid, M. Shoaib, and A. AlAmri, “Harvis: An integrated social media content analysis framework for youtube platform,” Information Systems, vol. 69, pp. 25 – 39, 2017
- G. Backfried, J. Gollner, G. Qirchmayr, K. Rainer, G. Kienast,G. Thallinger, C. Schmidt, and A. Peer, “Integration of Media Sources for Situation Analysis in the Different Phases of Disaster Management: The QuOIMA Project,” in Eur. Intel. and Security Informatics Conf., Aug 2013, pp. 143–146.
Downloads
Published
Issue
Section
License
Copyright (c) IJSRSET

This work is licensed under a Creative Commons Attribution 4.0 International License.