Active online Multiple Prototype Classifier to Support Crisis Management

Authors

  • Vankipuram Lavanya  Department of Computer Science and Engineering, Chadalawada Ramanamma Engineering College, Tirupati, Andhra Pradesh, India
  • Dr. D. Shobha Rani  Department of Computer Science and Engineering, Chadalawada Ramanamma Engineering College, Tirupati, Andhra Pradesh, India

DOI:

https://doi.org//10.32628/IJSRSET2310611

Keywords:

AOMPC, Support Crisis Management, Social Media, Sensitivity Analysis, Machine Learning

Abstract

In times of crisis, social networks have emerged as crucial channels for open communication. The traditional methods employed for analysing social media data in crisis situations have faced criticism due to their mixed results and limited applicability beyond the scope of the initial study. To address these issues, a novel online active multi-prototype classifier, known as AOMPC, has been proposed. AOMPC operates with data streams and incorporates active learning mechanisms to actively request labels for unlabeled and ambiguous data points, managing the number of requests through a fixed budget strategy. Typically, AOMPC is designed to handle partially labelled data streams. To assess its effectiveness, AOMPC was evaluated using two types of data: synthetic data and Twitter data related to two specific crises—the Colorado floods and the Australian wildfires. During the evaluation, established parameters were utilized to gauge the quality of results, and a sensitivity analysis was conducted to understand how AOMPC's parameters impacted result accuracy. Furthermore, a comparative study was carried out to contrast AOMPC with other available e-learning algorithms. The experiments demonstrated AOMPC's capability to perform exceptionally well in processing partially labelled scalable data streams, potentially offering valuable insights during crises.

References

  1. Mayuri, S., Waghmare., Tarun, Yengantiwar. (2020). Analysis of Active Learning for Social Media to Support Crisis Management. International journal of scientific research in science, engineering and technology, 7(4):291-294. doi: 10.32628/IJSRSET207476
  2. Daniela, Pohl., Abdelhamid, Bouchachia., Hermann, Hellwagner. (2020). Active Online Learning for Social Media Analysis to Support Crisis Management. IEEE Transactions on Knowledge and Data Engineering, 32(8):1445-1458. doi: 10.1109/TKDE.2019.2906173
  3. Claudio, Sapateiro., Pedro, Antunes., Gustavo, Zurita., Nelson, Baloian., Rodrigo, Vogt. (2009). Supporting Unstructured Activities in Crisis Management: A Collaboration Model and Prototype to Improve Situation Awareness. 101-111.
  4. P. Krishna Kishore, S. Ramamoorthy, V.N. Rajavarman, ARTP: Anomaly based real time prevention of Distributed Denial of Service attacks on the web using machine learning approach, International Journal of Intelligent Networks, Volume 4, 2023, Pages 38-45, ISSN 2666-6030, https://doi.org/10.1016/j.ijin.2022.12.001.
  5. Patrycja, Krawczuk., Shubham, Nagarkar., Ewa, Deelman. (2021). CrisisFlow: Multimodal Representation Learning Workflow for Crisis Computing. doi: 10.1109/ESCIENCE51609.2021.00052
  6. Mayuri, S., Waghmare., Tarun, Yengantiwar. (2020). Analysis of Active Learning for Social Media to Support Crisis Management. International journal of scientific research in science, engineering and technology, 7(4):291-294. doi: 10.32628/IJSRSET207476
  7. Daniela, Pohl., Abdelhamid, Bouchachia., Hermann, Hellwagner. (2018). Batch-based active learning: Application to social media data for crisis management. Expert Systems With Applications, 93:232-244. doi: 10.1016/J.ESWA.2017.10.026
  8. Ming-Fu, Hsu., Ping-Feng, Pai. (2013). Incorporating support vector machines with multiple criteria decision making for financial crisis analysis. Quality & Quantity, doi: 10.1007/S11135-012-9735-Y
  9. Abderrazak, Boumahdi., Mahmoud, El, Hamlaoui., Mahmoud, Nassar. (2020). Crisis Management Systems: Big Data and Machine Learning Approach.. doi: 10.5220/0009790406030610
  10. Lida, Huang., Gang, Liu., Tao, Chen., Hongyong, Yuan., Panpan, Shi., Miao, Yujia. (2021). Similarity-based emergency event detection in social media. doi: 10.1016/J.JNLSSR.2020.11.003
  11. Krishna Kishore, P., Prathima, K., Eswari, D.S., Goud, K.S. (2023). Bidirectional LSTM-Based Sentiment Analysis of Context-Sensitive Lexicon for Imbalanced Text. In: Bhateja, V., Sunitha, K.V.N., Chen, YW., Zhang, YD. (eds) Intelligent System Design. Lecture Notes in Networks and Systems, vol 494. Springer, Singapore. https://doi.org/10.1007/978-981-19-4863-3_27
  12. Julien, Bohné., Yiming, Ying., Stéphane, Gentric., Massimiliano, Pontil., Massimiliano, Pontil. (2018). Learning local metrics from pairwise similarity data. Pattern Recognition, doi: 10.1016/J.PATCOG.2017.04.002
  13. Xingfa, Qiu., Qiaosha, Zou., C., J., Richard, Shi. (2021). Single-Pass On-Line Event Detection in Twitter Streams. doi: 10.1145/3457682.3457762
  14. Kilaru, S., Lakshmanachari, S., Kishore, P.K., Surendra, B., Vishnuvardhan, T. (2017). An Efficient Probability of Detection Model for Wireless Sensor Networks. In: Satapathy, S., Prasad, V., Rani, B., Udgata, S., Raju, K. (eds) Proceedings of the First International Conference on Computational Intelligence and Informatics . Advances in Intelligent Systems and Computing, vol 507. Springer, Singapore. https://doi.org/10.1007/978-981-10-2471-9_56
  15. Liu, Yaopeng., Hao, Peng., Jianxin, Li., Yangqiu, Song., Xiong, Li. (2020). Event detection and evolution in multi-lingual social streams. Frontiers of Computer Science, doi: 10.1007/S11704-019-8201-6
  16. Minale, Ashagrie, Abebe., Joe, Tekli., Fekade, Getahun., Richard, Chbeir., Gilbert, Tekli. (2020). Generic metadata representation framework for social-based event detection, description, and linkage. Knowledge Based Systems, doi: 10.1016/J.KNOSYS.2019.06.025
  17. Munivara Prasad, K., Samba Siva, V., Krishna Kishore, P., Sreenivasulu, M. (2019). DITFEC: Drift Identification in Traffic-Flow Streams for DDoS Attack Defense Through Ensemble Classifier. In: Peng, SL., Dey, N., Bundele, M. (eds) Computing and Network Sustainability. Lecture Notes in Networks and Systems, vol 75. Springer, Singapore. https://doi.org/10.1007/978-981-13-7150-9_32
  18. Xi, Chen., Xiangmin, Zhou., Timos, Sellis., Xue, Li. (2018). Social event detection with retweeting behavior correlation. Expert Systems With Applications, doi: 10.1016/J.ESWA.2018.08.022
  19. Jonathon, S., Hare., Sina, Samangooei., Mahesan, Niranjan., Nicholas, Gibbins. (2015). Detection of Social Events in Streams of Social Multimedia. International Journal of Multimedia Information Retrieval, doi: 10.1007/S13735-015-0085-0
  20. Momna, Anam., Basit, Shafiq., Shafay, Shamail., Soon, Ae, Chun., Nabil, R., Adam. (2019). Discovering Events from Social Media for Emergency Planning. doi: 10.1145/3325112.3325213
  21. Wanlun, Ma., Zhuo, Liu., Xiangyu, Hu. (2019). Online Event Detection in Social Media with Bursty Event Recognition. doi: 10.1007/978-981-15-0758-8_14

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Published

2023-12-30

Issue

Section

Research Articles

How to Cite

[1]
Vankipuram Lavanya, Dr. D. Shobha Rani, " Active online Multiple Prototype Classifier to Support Crisis Management, International Journal of Scientific Research in Science, Engineering and Technology(IJSRSET), Print ISSN : 2395-1990, Online ISSN : 2394-4099, Volume 10, Issue 6, pp.267-277, November-December-2023. Available at doi : https://doi.org/10.32628/IJSRSET2310611