Sentiment Analysis for Multi-Attribute Data in OSNs Using Hybrid Approach
-
Published:2020-12-01
Issue:2
Volume:981
Page:022050
-
ISSN:1757-8981
-
Container-title:IOP Conference Series: Materials Science and Engineering
-
language:
-
Short-container-title:IOP Conf. Ser.: Mater. Sci. Eng.
Author:
Thallapalli Ravikumar,Narasimha G.,Pramod Kumar P.,Srinivas K,Pallavi P.
Abstract
Abstract
Increasing popularity of social networks like LinkedIn, MySpace and other networks in present days. Communication is also increased in between users present in social networks. Large amount of data being move on social media because of increase data outsourcing. Sentiment analysis is impressive and interest concept for online social networks, while different types of existing methods to find sentiment in online social networks to define communication between different users to categorize patterns with respect to similar attributes to analyze large data. We present and suggest the Hybrid Machine Learning method in this paper.(which is combination of Balanced Window and Classification based on Parts of Speech) to handle outsourced data of social networks from Face Book and other blogging services are trained and then classify the relation based on emotional aspect like positive or negative and other relations in social streams. The performance of our proposed approach is to extensively close to machine learning and identify important relevant features randomly and perform sentiment analysis in different data streams. Our experimental results show exhaustive level of classification results with comparison of existing approaches in real time environment.
Reference21 articles.
1. Sentiment Analysis for Sarcasm Detection on Streaming Short Text Data;Prasad,2017
2. Sentiment Analysis on the Social Networks Using Stream Algorithms;Aston;Journal of Data Analysis and Information Processing,2014
3. Opinion Mining and Sentiment Analysis on a Twitter Data Stream;Gokulakrishnan,2012
4. Sentiment Analysis in Social Streams;Saif,2014