Comparative Analysis and Design of Different Approaches for Twitter Sentiment Analysis and classification using SVM
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Abstract
Companies and organizations have always found that the views and feedback of the community are their most important and valuable resource. With everyone using social media more and more, it makes it possible to analyze and evaluate things in ways that have never been done before. Before, organizations had to use methods that were unusual, time-consuming, and prone to mistakes. This way of analyzing fits right into the field of "sentiment analysis." Sentiment analysis is a broad field that deals with putting user-generated text into well-defined groups. There are a number of tools and algorithms that can be used to detect and analyze sentiment. For example, supervised machine learning algorithms can be trained with training data and then used to classify the target corpus. Lexical techniques, which use a dictionary-based annotated corpus to do classification, and hybrid tools, which are a mix of machine learning and lexicon-based algorithms, are also used. In this paper, we used Weka's Support Vector Machine (SVM) to analyze how people feel about something. SVM is a popular supervised machine learning algorithm used to find the polarity of text. The main objective is to analyze the emotions expressed in tweets using various simulations of artificial intelligence that classify tweets as positive or negative. If a tweet has both positive and negative components, the more prevalent component should be chosen as the closing statement. Emojis, usernames, and hashtags in tweets should be controlled and transformed into a standard development. Sincerely, these events' planners have started looking into these inconspicuous web blogs (online diaries) to acquire a feel for their niche. On other discreet sites, they routinely monitor and respond to customer feedback. Better means of seeing and combining a broad assessment are one challenge. A few people, including Facebook, Twitter, and Instagram, were really introduced to social affiliation stages a year ago. The vast majority of individuals utilize internet entertainment to express their thoughts about objects, places, or people. Systems Twitter, a less common platform for publishing material to blogs, is a huge repository of well-known reviews for various persons, services, associations, and products, among other things. Assessment examinations are reviews of the public assessment structures. What is said on Twitter has a substantial context thanks to a mixture of opinions. The widespread accessibility of online tests and virtual entertainment posts in the media provides connection with crucial examination to undermine expert judgments and direct their boosting strategies to relaxing and client conclusions. In this way, virtual distraction anticipates playing a significant role in influencing the general exposure of the companies or objects selected. This study highlights the many approaches used for item depiction analyses. Check topics on Twitter to see if the general public is acting in a favorable, negative, or neutral manner.
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N. Yadav, O. Kudale, S. Gupta, A. Rao and A. Shitole, "Twitter Sentiment Analysis Using Machine Learning For Product Evaluation," IEEE 2020 International Conference on Inventive Computation Technologies (ICICT), 2020, pp. 181-185, doi: 10.1109/ICICT48043.2020.9112381.
Pooja Kumari, Shikha Singh, Devika More and Dakshata Talpade, "Sentiment Analysis of Tweets", IJSTE - International Journal of Science Technology & Engineering, vol. 1, no. 10, pp. 130-134, 2015, ISSN 2349-784X.
A Kowcika, Aditi Gupta, Karthik Sondhi, Nishit Shivhre and Raunaq Kumar, "Sentiment Analysis for Social Media", International Journal of Advanced Research in Computer Science and Software Engineering, vol. 3, no. 7, 2013, ISSN 2277 128X.
Ali Hasan, Sana Moin, Ahmad Karim and Shahaboddin Shamshirband, "Machine Learning-Based Sentiment Analysis for Twitter Accounts", Mathematical and Computational Applications, vol. 23, no. 1, 2018, ISSN 2297-8747.
Agarwal, D. A. . (2022). Advancing Privacy and Security of Internet of Things to Find Integrated Solutions. International Journal on Future Revolution in Computer Science &Amp; Communication Engineering, 8(2), 05–08. https://doi.org/10.17762/ijfrcsce.v8i2.2067
Rasika Wagh and Payal Punde, "Survey on Sentiment Analysis using Twitter Dataset", 2nd International conference on Electronics Communication and Aerospace Technology (ICECA 2018) IEEE Conference, ISBN 978-1-5386-0965-1,2018.
Adyan Marendra Ramadhaniand Hong Soon Goo, "Twitter Sentiment Analysis Using Deep Learning Methods", 2017 7th International Annual Engineering Seminar (InAES), 2017, ISBN 978-1-5386-3111-9.
Mohammed H. Abd El-Jawad, Rania Hodhod and Yasser M. K. Omar, "Sentiment Analysis of Social Media Networks Using Machine Learning", 2018 14th International Computer Engineering Conference (ICENCO), 2018, ISBN 978-1-5386-5117-9.
Ajit kumar Shitole and Manoj Devare, "Optimization of Person Prediction Using Sensor Data Analysis of IoT Enabled Physical Location Monitoring", Journal of Advanced Research in Dynamical and Control Systems, vol. 10, no. 9, pp. 2800-2812, Dec 2018, ISSN 1943-023X.
Sally Fouad Shady. (2021). Approaches to Teaching a Biomaterials Laboratory Course Online. Journal of Online Engineering Education, 12(1), 01–05. Retrieved from http://onlineengineeringeducation.com/index.php/joee/article/view/43
Ellen Riloff, Ashequl Qadir, Prafulla Surve, Lalindra De Silva, Nathan Gilbert and Ruihong Huang, "Sarcasm as Contrast between a Positive Sentiment and Negative Situation", 2013 Conference on Emperial Methods in Natural Language Processing, pp. 704-714, 2013.
Rohit Joshi and Rajkumar Tekchandani, "Comparative analysis of Twitter data using supervised classifiers", 2016 International Conference on Inventive Computation Technologies (ICICT), 2016, ISBN 978-1-5090-1285-5.
V Prakruthi, D Sindhu and S Anupama Kumar, "Real Time Sentiment Anlysis Of Twitter Posts", 3rd IEEE International Conference on Computational System and Information Technology for Sustainable Solutions 2018, ISBN 978-1-5386-6078-2,2018.
David Alfred Ostrowski, "Sentiment Mining within Social Media for Topic Identification", 2010 IEEE Forth International Conference on Semantic Computing, 2010, ISBN 978-1-4244-7912-2.
Alrence Santiago Halibas, Abubucker Samsudeen Shaffi and Mohamed Abdul Kader Varusai Mohamed, "Application of Text Classification and Clustering of Twitter Data for Business Analytics", 2018 Majan International Conference (MIC), 2018, ISBN 978-1-53863761-6.
Monireh Ebrahimi, Amir Hossein Yazdavar and Amit Sheth, "Challenges of Sentiment Analysis for Dynamic Events", IEEE Intelligent Systems, vol. 32, no. 5, pp. 70-75, 2017, ISSN 1941-1294.
Sari Widya Sihwi, Insan Prasetya Jati and Rini Anggrainingsih, "Twitter Sentiment Analysis of Movie Reviews Using Information Gain and Na ve Bayes Classifier", 2018 International Seminar on Application for Technology of Information and Communication (iSemantic), 2018, ISBN 978-1-5386-7486-4.
Alabdulrazzaq, H., & Alenezi, M. N. (2022). Performance Evaluation of Cryptographic Algorithms: DES, 3DES, Blowfish, Twofish, and Threefish. International Journal of Communication Networks and Information Security (IJCNIS), 14(1).
Ajitkumar Shitole and Manoj Devare, "TPR PPV and ROC based Performance Measurement and Optimization of Human Face Recognition of IoT Enabled Physical Location Monitoring", International Journal of Recent Technology and Engineering, vol. 8, no. 2, pp. 3582-3590, July 2019, ISSN 2277-3878.
Sahar A. El_Rahman, Feddah Alhumaidi AlOtaib and Wejdan Abdullah AlShehri, "Sentiment Analysis of Twitter Data", 2019 International Conference on Computer and Information Sciences (ICCIS), 2019, ISBN 978-1-5386-8125-1.
Sidra Ijaz, M. IkramUllah Lali, Basit Shahzad, Azhar Imran and Salman Tiwana, "Biasness identification of talk show's host by using twitter data", 2017 13th International Conference on Emerging Technologies (ICET), 2017, ISBN 978-1-5386-2260-5.
Lokesh Singh, Prabhat Gupta, Rahul Katarya, Pragyat Jayvant, "Twitter data in Emotional Analysis - A study", I-SMAC (IoT in Social Mobile Analytics and Cloud) (I-SMAC) 2020 Fourth International Conference on, pp. 1301-1305, 2020.
Borgohain, U., Borkotokey, S., & Deka, S. (2022). A Coalition Formation Game for Cooperative Spectrum Sensing in Cognitive Radio Network under the Constraint of Overhead. International Journal of Communication Networks and Information Security (IJCNIS), 13(3).
Satish Kumar Alaria and Piyusha Sharma, “Feature Based Sentiment Analysis on Movie Review Using SentiWordNet”, IJRITCC, vol. 4, no. 9, pp. 12 - 15, Sep. 2016.
M. A. Masood, R. A. Abbasi and N. Wee Keong, "Context-Aware Sliding Window for Sentiment Classification," in IEEE Access, vol. 8, pp. 4870-4884, 2020, doi: 10.1109/ACCESS.2019.2963586.
Akshay Amolik, Niketan Jivane, Mahavir Bhandari, Dr.M.Venkatesan, “Twitter Sentiment Analysis of Movie Reviews using Machine Learning Techniques”, International Journal of Engineering and Technology (IJET), e-ISSN : 0975-4024 , Vol 7 No 6, Dec 2015-Jan 2016.
Joy, P., Thanka, R., & Edwin, B. (2022). Smart Self-Pollination for Future Agricultural-A Computational Structure for Micro Air Vehicles with Man-Made and Artificial Intelligence. International Journal of Intelligent Systems and Applications in Engineering, 10(2), 170–174. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/1743
Vishal A. Kharde and S.S. Sonawane, “Sentiment Analysis of Twitter Data: A Survey of Techniques”, International Journal of Computer Applications (0975 – 8887) Volume 139 – No.11, April 2016.
M. Rathi, A. Malik, D. Varshney, R. Sharma and S. Mendiratta, "Sentiment Analysis of Tweets Using Machine Learning Approach," 2018 Eleventh International Conference on Contemporary Computing (IC3), 2018, pp. 1-3, doi: 10.1109/IC3.2018.8530517.
M. I. Sajib, S. Mahmud Shargo and M. A. Hossain, "Comparison of the efficiency of Machine Learning algorithms on Twitter Sentiment Analysis of Pathao," 2019 22nd International Conference on Computer and Information Technology (ICCIT), 2019, pp. 1-6, doi: 10.1109/ICCIT48885.2019.9038208.
Alaria, S. K., A. . Raj, V. Sharma, and V. Kumar. “Simulation and Analysis of Hand Gesture Recognition for Indian Sign Language Using CNN”. International Journal on Recent and Innovation Trends in Computing and Communication, vol. 10, no. 4, Apr. 2022, pp. 10-14, doi:10.17762/ijritcc.v10i4.5556.
R. S. M. S. K. A. “Secure Algorithm for File Sharing Using Clustering Technique of K-Means Clustering”. International Journal on Recent and Innovation Trends in Computing and Communication, vol. 4, no. 9, Sept. 2016, pp. 35-39, doi:10.17762/ijritcc.v4i9.2524.
Patel, M. N., Shah, D. S. M., & Patel, S. B. (2022). An Adjacency matrix-based Multiple Fuzzy Frequent Itemsets mining (AMFFI) technique. International Journal of Intelligent Systems and Applications in Engineering, 10(1), 69–74. https://doi.org/10.18201/ijisae.2022.269
Pradeep Kumar Gupta, Satish Kumar Alaria. (2019). An Improved Algorithm for Faster Multi Keyword Search in Structured Organization. International Journal on Future Revolution in Computer Science &Amp; Communication Engineering, 5(5), 19–23.
Alaria, S. K. . (2019). Analysis of WAF and Its Contribution to Improve Security of Various Web Applications: Benefits, Challenges. International Journal on Future Revolution in Computer Science &Amp; Communication Engineering, 5(9), 01–03. Retrieved from http://www.ijfrcsce.org/index.php/ijfrcsce/article/view/2079.