Sentiment Analysis Of Twitter Data By Using Deep Learning And Machine Learning

Author:

Et. al. Prof. Manisha Sachin Dabade,

Abstract

In today’s world, social media is viral and easily accessible. The Social media sites like Twitter, Facebook, Tumblr, etc. are a primary and valuable source of information.Twitter is a micro-blogging platform, and it provides an enormous amount of data. Such type of information can use for different sentiment analysis applications such as reviews, predictions, elections, marketing, etc. It is one of the most popular sites where peoples write tweets, retweets, and interact daily. Monitoring and analyzing these tweets give valuable feedback to users. Due to this data's large size, sentiment analysis is using to analyze this data without going through millions of tweets manually. Any user writes their reviews about different products, topics, or events on Twitter, called tweets and retweets. People also use emojis such as happy, sad, and neutral in expressing their emotions, so these sites contain expansive volumes of unprocessed data called raw data. The main goal of this research is to recognize the algorithms by using Machine Learning Classifiers. The study intends to categorize Fine-grain sentiments within Tweets of Vaccination (89974 tweets) through machine learning and a deep learning approach. The study takes consideration of both labeled and unlabeled data. It also detects emojis from tweets using machine learning libraries like Textblob, Vadar, Fast text, Flair, Genism, spaCy, and NLTK.

Publisher

Auricle Technologies, Pvt., Ltd.

Subject

Computational Theory and Mathematics,Computational Mathematics,General Mathematics,Education

Cited by 6 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Sentiment Analysis of Election Result Prediction using Twitter Data By NLP and ML;2024 International Conference on Innovations and Challenges in Emerging Technologies (ICICET);2024-06-07

2. Sentiment Analysis of Twitter Feeds Using Flask Environment: A Superior Application of Data Analysis;Annals of Data Science;2022-10-12

3. Cluster-Based Knowledge Graph and Entity-Relation Representation on Tourism Economical Sentiments;Applied Sciences;2022-08-12

4. Sentimental Analysis (SA) of Employee Job Satisfaction from Twitter Message Using Flair Pytorch (FP) Method;Intelligent Communication Technologies and Virtual Mobile Networks;2022-07-20

5. Application of Machine Learning for Sentiment Analysis of Movies Using IMDB Rating;2022 IEEE 11th International Conference on Communication Systems and Network Technologies (CSNT);2022-04-23

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