Improved Twitter Sentiment Prediction through Cluster-then-Predict Model

09/08/2015
by   Rishabh Soni, et al.
0

Over the past decade humans have experienced exponential growth in the use of online resources, in particular social media and microblogging websites such as Facebook, Twitter, YouTube and also mobile applications such as WhatsApp, Line, etc. Many companies have identified these resources as a rich mine of marketing knowledge. This knowledge provides valuable feedback which allows them to further develop the next generation of their product. In this paper, sentiment analysis of a product is performed by extracting tweets about that product and classifying the tweets showing it as positive and negative sentiment. The authors propose a hybrid approach which combines unsupervised learning in the form of K-means clustering to cluster the tweets and then performing supervised learning methods such as Decision Trees and Support Vector Machines for classification.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/06/2021

Identifying negativity factors from social media text corpus using sentiment analysis method

Automatic sentiment analysis play vital role in decision making. Many or...
research
01/03/2022

Sentiment Analysis and Sarcasm Detection of Indian General Election Tweets

Social Media usage has increased to an all-time high level in today's di...
research
09/14/2015

Twitter Sentiment Analysis

This project addresses the problem of sentiment analysis in twitter; tha...
research
06/17/2021

Classifying vaccine sentiment tweets by modelling domain-specific representation and commonsense knowledge into context-aware attentive GRU

Vaccines are an important public health measure, but vaccine hesitancy a...
research
09/25/2015

Sentiment of Emojis

There is a new generation of emoticons, called emojis, that is increasin...
research
05/17/2016

Enhanced Twitter Sentiment Classification Using Contextual Information

The rise in popularity and ubiquity of Twitter has made sentiment analys...

Please sign up or login with your details

Forgot password? Click here to reset