Al-Bahir Journal for Engineering and Pure Sciences
Abstract
Twitter is a social media platform where users can post, read, and interact with 'tweets'. Third party like corporate organization can take advantage of this huge information by collecting data about their customers' opinions. The use of emoticons on social media and the emotions expressed through them are the subjects of this research paper. The purpose of this paper is to present a model for analyzing emotional responses to real-life Twitter data. The proposed model is based on supervised machine learning algorithms and data on has been collected through crawler “TWEEPY” for empirical analysis. Collected data is pre-processed, pruned and fed into various supervised models. Each tweet is assigned to sentiment based on the user's emotions, positive, negative, or neutral.
Recommended Citation
Dey, Paramita and Dey, Soumya
(2023)
"SENTIMENT ANALYSIS OF TEXT AND EMOJI DATA FOR TWITTER NETWORK,"
Al-Bahir Journal for Engineering and Pure Sciences: Vol. 3:
Iss.
1, Article 1.
Available at: https://doi.org/10.55810/2313-0083.1034
References
- Chandra Yogesh, Jana Antoreep. Sentiment analysis using machine learning and deep learning. In: 7th international conference on computing for sustainable global development (INDIACom); 2020. [Link](insert link here)
- Kasture N, Bhilare P. An Approach for Sentiment analysis on social networking sites. Computing Communication Control and Automation (ICCUBEA); 2015. p. 390e5. [Link](insert link here)
- Bhuta S, Doshi A, Doshi U, Narvekar M. Are view of techniques for sentiment analysis of twitter data, issues and challenges in intelligent computing techniques (ICICT). 2014. p. 583e91. [Link](insert link here)
- Subhashini L, Li Y, Zhang J, Atukorale AS, Wu Y. Mining and classifying customer reviews: a survey. Artif Intell Rev 2021;54:6343e89. [Link](insert link here)
- Mowlaei ME, Abadeh MS, Keshavarz H. Aspect-based sentiment analysis using adaptive aspect based lexicons. Expert Syst Appl 2020;148:113234. [Link](insert link here)
- Naresh Kumar KE, Uma V. Intelligent sentinet-based lexicon for context-aware sentiment analysis: optimized neural network for sentiment classification on social media. J Supercomp 2021;77:12801e25. [Link](insert link here)
- Zvarevashe K, Olugbara OO. A framework for sentiment analysis with opinion mining of hotel reviews. In: 2018 Conference on information communications technology and society (ICTAS). IEEE; 2018. p. 1e4. [Link](insert link here)
- Wankhade Mayur, Sekhara Rao Annavarapu Chandra, Kulkarni Chaitanya. A survey on sentiment analysis methods, applications, and challenges. Artificial Intelligence Review; 2022. [Link](insert link here)
- Rayala Vinod Kumar CH, Lalitha Bhaskari D, Srinivasa Rao P. “VLS Algorithm: A new approach to sentiment analysis”. Int J Technol Res MAY 2020;9(Issue 05):2277e8616. ISSN. [Link](insert link here)
- Kralj Novak P, Smailovic J, Sluban B, Mozetic I. Sentiment of emojis. PLoS One 2015;10(12). [Link](insert link here)
- Bagheri A, Saraee M, de Jong F. Care more about customers: unsupervised domain independent aspect detection for sentiment analysis of customer reviews. Knowl Base Syst 2013;52:201e13. [Link](insert link here)
- Fredriksen Valerij, Jahren BrageEkroll. Twitter sentiment analysis - exploring automatic creation of sentiment lexica. NTNU; 2016. [Link](insert link here)
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