Sentimental Analysis – Detecting Tweets on Twitter

Authors

  • Milisha Student, Department of Computer Science & Engineering, Amity School of Engineering and Technology, Gurugram, India Author
  • Aman Jatain Associate Professor, Department of Computer Science & Engineering, Amity School of Engineering and Technology, Gurugram, India Author
  • Priyanka Makkar Assistant Professor, Department of Computer Science & Engineering, Amity School of Engineering and Technology, Gurugram, India Author

DOI:

https://doi.org/10.55524/

Keywords:

Twitter Data, Sentimental Analysis, NLP & Mining, Naive-Bayes, Python

Abstract

As we all know social media is a growing  industry in the current world. People of every age are using  social media directly or indirectly. Millions of people are  share their thoughts on Twitter day by day. Every tweet has  its own characteristics and expressions. The technologies I  have used for analyzing the datasets of Twitter are data  mining and NLP with Python. After collecting the data, we  have trained it and made the tweets capable of testing, so it  can give us the proper sentimental output. This paper will  help us to understand the sentiment analysis techniques and  also helps us to extract sentiments from Twitter datasets.  The Twitter datasets collected from Kaggle and other  sources. In this paper, we have focused on the comparative  study of the different algorithms as well as on techniques. 

Downloads

Download data is not yet available.

References

Prerna Mishra, Dr. Ranjana Rajnish, Dr. Pankaj Kumar, “Sentiment Analysis of Twitter Data: Case study on Digital India”, InCITe-2016

Rasika Wagh, Payal Punde, “Survey on Sentiment Analysis using Twitter Datasets”, ICECA-2018

Shikha Tiwari, Anshika Verma, Peeyush Garg, Deepika Bansal, “Social Media Sentiment Analysis on Twitter Datasets”, ICACCS-2020

Chirag Kariya, Preeti Khodke “Twitter Sentiment Analysis”, PRMCEAM, Bandera,India, INCET-2020

Nehal Mamgain, Ekta Mehta, Ankush Mittal, Gaurav Bhatt “Sentiment Analysis of Top Colleges in India Using Twitter Data”, ICCTICT-2016

Sahar A. El Rahman, " Sentiment Analysis of Twitter Data", Computer and Information sciences College Princess Nourah Bint Abdulrahman University,

(Mtech): Department of Computer Science and IT. Dr. BAMU Aurangabad, India, ICECA 2018

Singh, Prabhsimran, Ravinder Singh Sawhney, and Karanjeet Singh Kahlon. "Sentiment analysis of demonetization of 500 & 1000 rupee banknotes by Indian government." ICT Express (2017)

Amolik, Akshay, et al. "Twitter sentiment analysis of movie reviews using machine learning techniques." International Journal of Engineering and Technology 7.6 (2016)

Kharche, S. R., and Lokesh Bijole. "Review on Sentiment Analysis of Twitter Data." International Journal of Computer Science and Applications 8 (2015)

Fang, Xing, and Justin Zhan. "Sentiment analysis using product review data." Journal of Big Data 2.1 (2015) [12] Gautam, Geetika, and Divakar Yadav. "Sentiment analysis of Twitter data using machine learning approaches and semantic analysis." Contemporary computing (IC3), 2014 seventh international conference on. IEEE, 2014.

Anurag P. Jain, "Sentiments Analysis Of Twitter Dat Using Data Mining", Dept. of Information Technology Pimpri Chinchwad College of Engineering Pune, India,2015 ICIP.

Huma Parveen & Prof. Shikha Pandey "Sentiment Analysis on Twitter Data-set using Naive Bayes Algorithm". Dept. of Computer Science and Engineering Rungta College of Engineering and Technology Bhilai. India, 2016.

Agarwal, Apoorv. "Teaching the Basics of NLP and ML in an Introductory Course to Information Science." Proceedings of the Fourth Workshop on Teaching NLP and CL. 2013.A

Seyed-Ali Bahrainian and Andreas Dengel, “Sentiment Analysis and Summarization of Twitter Data", Computational Science and Engineering (CSE), 2013 IEEE 16th International Conference on.3-5 Dec. 2013.

Neethu, M. & Rajasree, R.. (2013). Sentiment analysis in Twitter using machine learning techniques. 2013 4th International Conference on Computing, Communications and Networking Technologies, ICCCNT 2013. 1-5. 10.1109/ICCCNT.2013.6726818.

Gurkhe, Dhiraj & Pal, Niraj & Bhatia, Rishit. (2014). Effective Sentiment Analysis of Social Media Datasets using Naive Bayesian Classification. International Journal of Computer Applications. 99. 1-4. 10.5120/17430-8274.

Gautam, Geetika & Yadav, Divakar. (2014). Sentiment Analysis of Twitter Data Using Machine Learning Approaches and Semantic Analysis. 2014 7th International Conference on Contemporary Computing, IC3 2014. 10.1109/IC3.2014.6897213.

Downloads

Published

2022-09-30

How to Cite

Sentimental Analysis – Detecting Tweets on Twitter . (2022). International Journal of Innovative Research in Computer Science & Technology, 10(5), 50–53. https://doi.org/10.55524/