2(2), June 2023:109-116. DOI: https://doi.org/10.46632/jdaai/2/2/15
Esha Bansal
Nisha Bansal
The usage of violent language has significantly increased due to social media and networking. A key component in this is the younger generation. More than half of young people who use social media are affected by cyberbullying. Harmful interactions occur as a result of insults expressed on social net-working websites. These comments foster an unprofessional tone on the internet, which is usually un-derstood and mitigated through passive mechanisms and techniques. Additionally, the recall rates of current systems that combine insult detection with machine learning and natural language processing are incredibly poor. To establish a viable classification scheme for such concepts, the research ana-lyzes how to identify bullying in writing by examining and testing various approaches. We propose an effective method to assess bullying, identify aggressive comments, and analyze their veracity. NLP and machine learning are employed to examine social perception and identify the aggressive impact on in-dividuals or groups. The ideal prototyping system for identifying cyber dangers in social media relies heavily on an efficient classifier. The goal of the paper is to emphasize the critical role that learning strategies play in enhancing natural language processing efficiency.
Nagarhalli, Tatwadarshi P., Vinod Vaze, and N. K. Rana. “Impact of machine learning in natural language processing: A review.” In 2021 third international conference on intelligent communication technologies and virtual mobile networks (ICICV), pp. 1529-1534. IEEE, 2021.
Ofer, Dan, Nadav Brandes, and Michal Linial. “The language of proteins: NLP, machine learning & protein sequences.” Computational and Structural Biotechnology Journal19 (2021): 1750-1758.
Garg, Ravi, Elissa Oh, Andrew Naidech, Konrad Kording, and Shyam Prabhakaran. “Automating ischemic stroke subtype classification using machine learning and natural language processing.” Journal of Stroke and Cerebrovascular Diseases28, no. 7 (2019): 2045-2051.
Goldberg, Simon B., Nikolaos Flemotomos, Victor R. Martinez, Michael J. Tanana, Patty B. Kuo, Brian T. Pace, Jennifer L. Villatte et al. “Machine learning and natural language processing in psychotherapy research: Alliance as example use case.” Journal of counseling psychology67, no. 4 (2020): 438.
Houssein, Essam H., Rehab E. Mohamed, and Abdelmgeid A. Ali. “Machine learning techniques for biomedical natural language processing: a comprehensive review.” IEEE Access9 (2021): 140628-140653.
Hodorog, Andrei, Ioan Petri, and Yacine Rezgui. “Machine learning and Natural Language Processing of social media data for event detection in smart cities.” Sustainable Cities and Society85 (2022): 104026.
Aone, Chinatsu, Mary Ellen Okurowski, and James Gorlinsky. “Trainable, scalable summarization using robust NLP and machine learning.” In 36th Annual Meeting of the Association for Computational Linguistics and 17th International Conference on Computational Linguistics, Volume 1, pp. 62-66. 1998.
Ebadi, Ashkan, Pengcheng Xi, Stéphane Tremblay, Bruce Spencer, Raman Pall, and Alexander Wong. “Understanding the temporal evolution of COVID-19 research through machine learning and natural language processing.” Scientometrics126 (2021): 725-739.
Olthof, Allard W., Prajakta Shouche, Eelco M. Fennema, Frank FA IJpma, RH Christian Koolstra, Vincent MA Stirler, Peter MA van Ooijen, and Ludo J. Cornelissen. “Machine learning based natural language processing of radiology reports in orthopaedic trauma.” Computer Methods and Programs in Biomedicine208 (2021): 106304.
Sharma, Hitesh Kumar, and K. Kshitiz. “Nlp and machine learning techniques for detecting insulting comments on social networking platforms.” In 2018 International Conference on Advances in Computing and Communication Engineering (ICACCE), pp. 265-272. IEEE, 2018.
Nikiforos, Stefanos, Spyros Tzanavaris, and Katia-Lida Kermanidis. “Virtual learning communities (VLCs) rethinking: influence on behavior modification—bullying detection through machine learning and natural language processing.” Journal of Computers in Education7 (2020): 531-551.
Bao, Yujia, Zhengyi Deng, Yan Wang, Heeyoon Kim, Victor Diego Armengol, Francisco Acevedo, Nofal Ouardaoui et al. “Using machine learning and natural language processing to review and classify the medical literature on cancer susceptibility genes.” JCO Clinical Cancer Informatics1 (2019): 1-9.
François, Thomas, and Eleni Miltsakaki. “Do NLP and machine learning improve traditional readability formulas?.” In Proceedings of the First Workshop on Predicting and Improving Text Readability for target reader populations, pp. 49-57. 2012.
Ren, Lifeng, Yanqiong Zhang, Yiren Wang, and Zhenqiu Sun. “Comparative analysis of a novel M-TOPSIS method and TOPSIS.” Applied Mathematics Research eXpress2007 (2007).
Çelikbilek, Yakup, and Fatih Tüysüz. “An in-depth review of theory of the TOPSIS method: An experimental analysis.” Journal of Management Analytics7, no. 2 (2020): 281-300.
Zavadskas, Edmundas Kazimieras, Abbas Mardani, Zenonas Turskis, Ahmad Jusoh, and Khalil MD Nor. “Development of TOPSIS method to solve complicated decision-making problems—An overview on developments from 2000 to 2015.” International Journal of Information Technology & Decision Making15, no. 03 (2016): 645-682.
Jahanshahloo, Gholam Reza, F. Hosseinzadeh Lotfi, and Mohammad Izadikhah. “Extension of the TOPSIS method for decision-making problems with fuzzy data.” Applied mathematics and computation181, no. 2 (2006): 1544-1551.
García-Cascales, M. Socorro, and M. Teresa Lamata. “On rank reversal and TOPSIS method.” Mathematical and computer modelling56, no. 5-6 (2012): 123-132.
Chu, T-C., and Y-C. Lin. “A fuzzy TOPSIS method for robot selection.” The International Journal of Advanced Manufacturing Technology21 (2003): 284-290.
Chen, Pengyu. “Effects of normalization on the entropy-based TOPSIS method.” Expert Systems with Applications136 (2019): 33-41.
Esha Bansal, Nisha Bansal, “Finding Harmful Comments on Social Networking Sites Using NLP and Machine Learning Methods”, REST Journal on Data Analytics and Artificial Intelligence, 2(2), June 2023:109-116.