Dr. Chandrashekhar Uppin Profile Dr. Chandrashekhar Uppin

A natural language processing approach to determine the polarity and subjectivity of iphone 12 twitter feeds using textblob

  • Authors Details :  
  • Chandrashekar Uppin,  
  • Usman Bello Abubakar

394 Views Original Article

Sentiment analysis and opinion mining is a branch of computer science that has gained considerable growth over the last decade. This branch of computer science deals with determining the emotions, opinions, feelings amongst others of a person on a particular topic. Social media has become an outlet for people to voice out their thoughts and opinions publicly about various topics of discussion making it a great domain to apply sentiment analysis and opinion mining. Sentiment analysis and opinion mining employ Natural Language Processing (NLP) in order to fairly obtain the mood of a person’s opinion about any specific topic or product in the case of an ecommerce domain. It is a process involving automatic feature extractions by mode of notions of a person about service and it functions on a series of different expressions for a given topic based on some predefined features stored in a database of facts. In an ecommerce system, the process of analyzing the opinions of customers about products is vital for business growth and customer satisfaction. This proposed research will attempt to implement a model for sentiment analysis and opinion mining on Twitter feeds. In this paper, we address the issues of combining sentiment classification and the domain constraint analysis techniques for extracting opinions of the public from social media. The dataset that was employed in the paper was gotten from Twitter through the tweepy API. The TextBlob library was used for the analysis of the tweets to determine their sentiments. The result shows that more tweets were having a positive subjectivity and polarity on the subject matter.

Article Subject Details


Article Keywords Details



Article File

Full Text PDF





More Article by Dr. Chandrashekhar Uppin

Enhancing viral pneumonia diagnosis accuracy using transfer learning and ensemble technique from chest x-ray images

Pneumonia is an acute pulmonary infection that can be caused by bacteria, viruses, or fungi. it infects the lungs, causing inflammation of the air sacs and pleural effusion: a cond...

A proactive approach to network forensics intrusion (denial of service flood attack) using dynamic features, selection and convolution neural network

Currently, the use of internet-connected applications for storage by different organizations have rapidly increased with the vast need to store data, cybercrimes are also increasin...

A comprehensive review for security analysis of iot platforms

Due to the rapid growth in the field of science and technology, iot (internet of things) has become emerging technique for connecting heterogeneous technologies related to our dail...

Smartphone based ischemic heart disease (heart attack) risk prediction using clinical data and data mining approaches

We designed a mobile application to deal with ischemic heart disease (ihd) (heart attack) an android based mobile application has been used for coordinating clinical information ta...