Twitter’s User Opinion About Master and Doctoral Degrees: A Model of Sentiment Comparison

https://doi.org/10.22146/ijccs.58579

Victor Wiley(1*), Thomas Lucas(2)

(1) Cemerlang research
(2) Cemerlang research
(*) Corresponding Author

Abstract


This paper examines the opinion of student candidate about their plan to study further to master degree (S2) and doctoral degree (S3). There is lack of approach in finding public opinion about the interest of student candidate in continuing study to higher level such as master degree or doctoral degree. Through this paper, the Twitter’s user opinions are extracted using certain data mining technique to find out three sentiment types (negative, neutral, and positive) by taking the most dominant type of emotions (i.e., anger, anticipation, love, fear, joy, sadness, surprise, trust). The dataset is divided into two groups of Twitter’s users. Both datasets represent group A those opinion is about continuing study further to master degree versus group B whose continuing to doctoral degree. The groups are then divided into three types of sentiment statements about master degree versus doctoral degree. The first group is their sentiment about continuing study further to master degree with the result: (a) 109 negative tweets, 1683 neutral tweets and 131 positive tweets. For the second group (e.g., student’s sentiments about continuing to doctoral degree), it has results: (a) 421 negative tweets, 7666 neutral tweets and 1805 positive tweets. The data are tested to give accuracy value of 85%. The result of this sentiment analysis is useful as a reference for universities to understand the development of sentiments (opinion) from Twitter’s users and help the institutions to improve their reputation and quality

Keywords


sentiment; Naïve Bayes; twitter

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References

[1] Zhao, Jichang, Li Dong, Junjie Wu, and Ke Xu. "Moodlens: an emoticon-based sentiment analysis system for chinese tweets." In Proceedings of the 18th ACM SIGKDD international conference on Knowledge discovery and data mining, pp. 1528-1531, 2012. [Online]. Available: https://dl.acm.org/doi/abs/10.1145/2339530.2339772 [Accessed: 17-Des-2019]

[2] Farzindar, Atefeh, and Diana Inkpen. "Natural language processing for social media." Synthesis Lectures on Human Language Technologies 8, no. 2 ,2015 [Online]. Available: https://www.morganclaypool.com/doi/abs/10.2200/S00659ED1V01Y201508HLT030 [Accessed: 17-Des-2019]

[3] Shoukry, Amira, and Ahmed Rafea. "Preprocessing Egyptian dialect tweets for sentiment mining." In The Fourth Workshop on Computational Approaches to Arabic Script-based Languages, 2012. [Online]. Available: https://www.researchgate.net/profile/Mounir_Zrigui/publication/233746674_Proposal_of_a_method_of_enriching_queries_by_statistical_analysis_to_search_for_information_in_Arabic/links/00463514f316c46113000000.pdf#page=54 [Accessed: 17-Des-2019]

[4] Tripathy, Abinash, Ankit Agrawal, and Santanu Kumar Rath. "Classification of sentiment reviews using n-gram machine learning approach." Expert Systems with Applications 57 (2016): 117-126. [Online]. Available: https://www.sciencedirect.com/science/article/abs/pii/S095741741630118X [Accessed: 29-Okt-2020]

[5] Soheily-Khah, Saeid, Pierre-François Marteau, and Nicolas Béchet. "Intrusion detection in network systems through hybrid supervised and unsupervised machine learning process: A case study on the iscx dataset." In 2018 1st International Conference on Data Intelligence and Security (ICDIS), pp. 219-226. [Online]. IEEE, 2018. [Online]. Available: https://ieeexplore.ieee.org/abstract/document/8367767 [Accessed: 29-Okt-2020]

[6] Zhou, Shusen, Qingcai Chen, and Xiaolong Wang. "Active deep learning method for semi-supervised sentiment classification." Neurocomputing 120 (2013): 536-546. [Online]. Available: https://www.sciencedirect.com/science/article/abs/pii/S0925231213004888 [Accessed: 29-Okt-2020]

[7] Sarkar, Kamal, Mita Nasipuri, and Suranjan Ghose. "Machine learning based keyphrase extraction: Comparing decision trees, naïve Bayes, and artificial neural networks." JIPS 8, no. 4 (2012): 693-712. [Online]. Available: http://jips-k.org/journals/jips/digital-library/manuscript/file/22564/JIPS-2012-8-4-693.pdf [Accessed: 29-Okt-2020]

[8] Dhande, Lina L., and Girish K. Patnaik. "Analyzing sentiment of movie review data using Naive Bayes neural classifier." International Journal of Emerging Trends & Technology in Computer Science (IJETTCS) 3, no. 4 (2014): 313-320. [Online]. Available: http://student.blog.dinus.ac.id/windalistyaningsih/wp-content/uploads/sites/316/2017/07/IJETTCS-2014-08-25-138.pdf [Accessed: 29-Okt-2020]

[9] Khairnar, Jayashri, and Mayura Kinikar. "Machine learning algorithms for opinion mining and sentiment classification." International Journal of Scientific and Research Publications 3, no. 6 (2013): 1-6. [Online]. Available: http://www.ijcst.org/Volume4/Issue6/p12_4_6.pdf [Accessed: 29-Okt-2020]

[10] Saif, Hassan, Yulan He, Miriam Fernandez, and Harith Alani. "Contextual semantics for sentiment analysis of Twitter." Information Processing & Management 52, no. 1 (2016): 5-19. [Online]. Available: https://publications.aston.ac.uk/id/eprint/25812/1/Contextual_semantics_for_sentiment_analysis_of_Twitter.pdf [Accessed: 29-Okt-2020]

[11] Dey, Lopamudra, Sanjay Chakraborty, Anuraag Biswas, Beepa Bose, and Sweta Tiwari. "Sentiment analysis of review datasets using naive bayes and k-nn classifier." arXiv preprint arXiv:1610.09982 (2016). [Online]. Available: https://arxiv.org/ftp/arxiv/papers/1610/1610.09982.pdf [Accessed: 29-Okt-2020]

[12] Mukherjee, Saurabh, and Neelam Sharma. "Intrusion detection using naive Bayes classifier with feature reduction." Procedia Technology 4,pp. 119-128, 2012 [Online]. Available: https://www.sciencedirect.com/science/article/pii/S2212017312002964 [Accessed: 17-Des-2019]

[13] Calders, T., & Verwer, S. Three naive Bayes approaches for discrimination-free classification. Data Mining and Knowledge Discovery, 21(2), pp. 277-292, 2010. [Online]. Available: https://link.springer.com/article/10.1007/s10618-010-0190-x [Accessed: 20-Des -2019]

[14] Peling, I. B. A., Arnawan, I. N., Arthawan, I. P. A., & Janardana, I. G. N. Implementation of Data Mining To Predict Period of Students Study Using Naive Bayes Algorithm. International Journal of Engineering and Emerging Technology, 2(1), pp.53-57, 2017. [Online]. Available: https://ojs.unud.ac.id/index.php/ijeet/article/view/34457 [Accessed: 17-Des-2019]

[15] Carlin, B. P., & Louis, T. A. Bayes and empirical Bayes methods for data analysis. Chapman and Hall/CRC, 2010. [Online]. Available: https://link.springer.com/article/10.1023/A:1018577817064 [Accessed: 17-Des-2019]

[16] Zaidi, N. A., Cerquides, J., Carman, M. J., & Webb, G. I. Alleviating naive Bayes attribute independence assumption by attribute weighting. The Journal of Machine Learning Research, 14(1), pp.1947-1988, 2013. [Online]. Available: https://dl.acm.org/doi/abs/10.5555/2567709.2567725 [Accessed: 17-Des-2019]

[17] Pandey, U. K., & Pal, S. Data Mining: A prediction of performer or underperformer using classification. arXiv preprint arXiv:1104.4163,2011. [Online]. Available: https://arxiv.org/abs/1104.4163 [Accessed: 17-Des-2019]

[18] Calders, T., & Verwer, S. Three naive Bayes approaches for discrimination-free classification. Data Mining and Knowledge Discovery, 21(2), pp.277-292, 2010. [Online]. Available: https://link.springer.com/article/10.1007/s10618-010-0190-x [Accessed: 20-Des -2019]

[19] Liu, B. Sentiment analysis and opinion mining. Synthesis lectures on human language technologies, 5(1),pp. 1-167, 2012. [Online]. Available: https://www.morganclaypool.com/doi/abs/10.2200/s00416ed1v01y201204hlt016 [Accessed: 17-Des-2019]

[20] Zhu, W., Zeng, N., & Wang, N. Sensitivity, specificity, accuracy, associated confidence interval and ROC analysis with practical SAS implementations. NESUG proceedings: health care and life sciences, Baltimore, Maryland, 19,pp. 67, 2010. [Online]. Available: https://www.lexjansen.com/nesug/nesug10/hl/hl07.pdf [Accessed: 20-Des -2019]

[21] Ho, C. Y., Lai, Y. C., Chen, I. W., Wang, F. Y., & Tai, W. H. Statistical analysis of false positives and false negatives from real traffic with intrusion detection/prevention systems. IEEE Communications Magazine, 50(3), pp. 146-154, 2012. [Online]. Available: https://ir.nctu.edu.tw/bitstream/11536/15580/1/000301198700019.pdf [Accessed: 20-Des -2019]

[22] Bellazzi, R., Ferrazzi, F., & Sacchi, L. Predictive data mining in clinical medicine: a focus on selected methods and applications. Wiley Interdisciplinary Reviews: Data Mining and Knowledge Discovery, 1(5), pp. 416-430, 2011. [Online]. Available: https://onlinelibrary.wiley.com/doi/abs/10.1002/widm.23 [Accessed: 17-Des-2019]

[23] Caleffi, P. M. The'hashtag': a new word or a new rule?. SKASE journal of theoretical linguistics, 12(2), 2015. [Online]. Available: http://www.skase.sk/Volumes/JTL28/pdf_doc/05.pdf [Accessed: 17-Des-2019]

[24] Bruns, A., Weller, K., Borra, E., & Rieder, B. Programmed method: Developing a toolset for capturing and analyzing tweets. Aslib Journal of Information Management, 2014. [Online]. Available: https://www.emerald.com/insight/content/doi/10.1108/AJIM-09-2013-0094/full/html [Accessed: 20-Des-2019]



DOI: https://doi.org/10.22146/ijccs.58579

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