Understanding Sentiment: Interpreting Attitudes, Emotions, and Opinions in Text

Understanding Sentiment: Interpreting Attitudes, Emotions, and Opinions in Text

Authors

  • Dr. Advin Manhar

Keywords:

Natural Language Processing, Twitter, Sentiment, Social Media, Analysis, Google Cloud

Abstract

Social media has gained significant attention recently, across numerous platforms, opinions on a diverse array of subjects, both public and private, are constantly being shared and spread. Twitter, along with other social media, shows an essential part. Sentiment analysis has become essential for evaluating customer opinions, which is crucial for marketplace success. This program utilizes a machine-learning approach, enhancing the accuracy of sentiment analysis by integrating NLP techniques. Twitter provides organizations with a rapid and operative method to scrutinize customer perspectives, perilous for success in the souk. The development of a sentiment analysis program facilitates. This paper outlines the development of a sentiment analysis system aimed at computationally evaluating customer feedback by processing a significant quantity of tweets. The development process employs prototyping. The resulting system classifies customer perspectives expressed in tweets and comments as either positive or negative, and these classifications are visually represented in a graph.

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References

. Rambo and J. (2013). Marketing Research: The Role of Sentiment Analysis. The 5th SNA-KDD Workshop 11. University of Porto.

. A. K. Jose, N. Bhatia, and S. K. (2010). Twitter Sentiment Analysis. National Institute of Technology Calicut.

. P. L. (2012). Extracting Strong Sentiment Trend from Twitter. Stanford University.

. Y. Zhou, and Y. F. (2013). A Sociolinguistic Study of American Slang. Theory and Practice in Language Studies, 3(12). 2209–2213. doi:10.4304/tpls.3.12.2209-2213.

. M. Comesaña, A. P.Soares, M.Perea, A.P. Piñeiro, I. Fraga, and A. P. (2013). Author’ s personal copy Computers in Human Behavior ERP correlates masked affective priming with emoticons. Computers in Human Behavior, 29, 588–595.

. A.H., D.C. Yen, & X. Z. (2008). Exploring the effects of emoticons. Information & Management, 45(7), 466–473.

. D. Boyd, S. Golder, & G. L. (2010). Tweet, tweet, retweet: Conversational aspects of retweeting on twitter. System Sciences (HICSS), Retrieved from http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnum.

. T. Carpenter, and T. W. (2010). Tracking Sentiment Analysis through Twitter. ACM computer survey. Villanova: Villanova University.

. D. Osimo, and F. M. (2010). Research Challenge on Opinion Mining and Sentiment Analysis. Proceeding of the 12th conference of Fruct association, United Kingdom.

. A. Pak,and P. P. (2010). Twitter as a Corpus for Sentiment Analysis and Opinion Mining. Special Issue of International Journal of Computer Application, France: Universite de Paris-Sud.

. S.Lohmann, M. Burch, H. Schmauder and D. W. (2012). Visual Analysis of Microblog Content Using Time-Varying Co-occurrence Highlighting in Tag Clouds. Annual conference of VISVISUS. Germany: University of Stuttgart.

. H. Saif, Y.He, and H. A. (2011). Semantic Sentiment Analysis of Twitter. Procedure of the Workshop on Information Extraction and Entity Analytics on Social Media Data. United Kingdom: Knowledge Media Institute.

. A. Agarwal, B. Xie, I. Vovsha, O. Rambow, and R.P. (2012). Sentiment Analysis of Twitter Data, Annual ' International Conferences. New York: Columbia University.

J. Zhang, Y. Qu, J. Cody and Y. W. (2010). Case study of Microblogging in Enterprise: Use, Value, and Related Issues. Proceeding of the workshop on Web 2.0.

. G. K. (2013). A Research Paper on Social Madia: An Innovative study of Microblogging in the Enterprise: Use, Educational Tool. Vol.1, pp. 43-50, Chitkara University.

. A.M. Kaplan, and M, Haenlein, (2010).'Users of the world, unite! The challenges and opportunities of social media,' France: Paris.

Q. Tang, B. Gu, and A.B. W. (2012). Content Contribution in Social Media: The case of YouTube. 2nd conference of social media. Hawaii: Maui.

. M.Taboada, J. Brooke, M. Tofiloski, K. Voll, and M.S. (2011). Lexicon- Based Methods for Sentiment Analysis,' Association for Computational Linguistics.

M. Annett, and G. K. (2009). A Comparison of Sentiment Analysis Techniques: Polarizing Movie Blogs. Conference on web search and web data mining (WSDM). University of Alberia: Department of Computing Science.

. P. Goncalves, F. Benevenuto, M. Araujo and M. C. (2013). Comparing and Combining Sentiment Analysis Methods.

. E. Kouloumpis, T. Wilson, and J. M. (2011). Twitter Sentiment Analysis: The Good the Bad and the OMG. Vol.5 . International AAAI.

S. S. (2008). Application of Support Vector Machines for Damage detection in Structure. Journal of Machine Learning Research.

. A.Sharma, and S. D. (2012). Performance Investigation of Feature Selection Methods and Sentiment Lexicons for Sentiment Analysis. the Association for the advancement of Artificial Intelligence.

J. Spencer and G. U. (2008). Sentiment or: Sentiment Analysis of Twitter Data,' Second Joint Conference on Lexicon and Computational Semantics. Brighton: University of Brighton.

A. Blom and S. T. (2012). Automatic Twitter replies with Python, International conference. Dialog.

. B. Pang, and L. L. (2008). Opinion mining and sentiment analysis, 2nd workshop on making sense of Micro posts. Ithaca: Cornell University. Vol.2(1).

. M. Hu, and B. L. (2004).'Mining and summarizing customer reviews.

. P. Nakov, Z. Kozareva, A. Ritter, S. Rosenthal, V. Stoyanov, T. Wilson, S. (2013). Eval-2013 Task2: Sentiment Analysis in Twitter (Vol.2), pp. 312-320.

. J. Wu, J., Wang, & L. L. (2006). Kernel-Based Method for Automated Walking Patterns Recognition Using Klnematics Data'. 5th Workshop on Natural Language Processing. China: Xi’an Jiao tong University.

. T. D. Smedt, and W. D. (2012). 'Pattern for Python,’ Proceeding of COLING. Belgium: University of Antwerp.

A. S. (2012). Invent your own computer games with Python. 2nd edition, Retrieved from .http://inventwithpython.com/.

C. S. (2012). 'Python. Faster and easier software development,' Annual Conference. California: San Diego.

A.Lukaszewski. (2010). MySQL for Python. Integrate the flexibility of Python and the power of MySQL to boost the productivity of your applications, UK: Birningham. Packt Publishing Ltd.

V. N. (2014). 'Why python is perfect for startups,' Retrieved 01 10, from: http://opensource.com/business/13/12/why- python-perfect-startups.

A. H. (2013). 'There is more to becoming a thought leader than giving yourself the title'. Retrieved 10 18, from: http://www.thesocialmediashow.co.uk/author/a dmin/.

R. Prabowo, and M. T. (2009). Sentiment Analysis: A Combined Approach. International World Wide Web Conference Committee (IW3C2), United Kingdom: University of Wolverhampton.

H. Saif, Y. He and H. A. (2012). Alleviating Data Scarcity for Twitter Sentiment Analysis'. Association for Computational.

. Alm, Roth, S. (2024). A Review of Sentiment Analysis: Tasks, Applications, and Deep Learning Techniques", International Journal of Data Science and Analytics.

. Nazir. (2024). A Systematic Review of Aspect-Based Sentiment Analysis: Domains, Methods, and Trends", Artificial Intelligence Review.

. Fredriksen-Goldsen, Kim, F. (2022). A Survey on Sentiment Analysis Methods, Applications, and Challenge. Artificial Intelligence Review.

. Rosa A. García-Hernández, Huizilopoztli Luna-G. (2024). Systematic Literature Review of Modalities, Trends, and Limitations in Emotion Recognition and Affective Computing", MDPI Applied Sciences.

. Yan Cathy Hua, Paul Denny, Katerina Taskova, Jörg W. (2023). A Systematic Review of Aspect-Based Sentiment Analysis (ABSA): Domains, Methods, and Trends, arXiv.

. Yanying Mao a b, Qun Liu a, Yu Z. (2024). "Sentiment Analysis: Techniques and Applications, Elsevier.

. Jianhua Zhang a, Zhong Yin b, Peng Chen c, Stefano N. (2020). Emotion Recognition Using Multimodal Data, Image and Vision Computing.

. Jianhua Zhang a, Z. (2021). Emotion Recognition. Retrieved 01 10, from: http://opensource.com/business/13/12/why-

. Louis-Philippe Morency, Rada Mihalcea, Payal D. (2011). Towards Multimodal Sentiment Analysis: Harvesting Opinions from the Web", Mining Hu, Bing Liu Authors Info & Claims KDD '04: Proceedings of the tenth ACM SIGKDD international conf.

Additional Files

Published

30-12-2024

How to Cite

Dr. Advin Manhar. (2024). Understanding Sentiment: Interpreting Attitudes, Emotions, and Opinions in Text. Vidhyayana - An International Multidisciplinary Peer-Reviewed E-Journal - ISSN 2454-8596, 10(si2), 38–55. Retrieved from https://j.vidhyayanaejournal.org/index.php/journal/article/view/2077
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