International Journal of Emerging Trends & Technology in Computer Science
A Motivation for Recent Innovation & Research
ISSN 2278-6856
www.ijettcs.org
Call for Paper, Published Articles, Indexing Infromation
Title: |
Machine Learning Algorithm For Sentimental Analysis of Twitter Feeds
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Author Name: |
Mr. Mane Mayur R., Mr. Kalambate Akshay R., Mr. Rane Zilu Ramkrishna, Prof. Gamare P. S. |
Abstract: |
Abstract
A sentiment can be defined as a personal positive or negative
feeling. Opinion mining is the computational technique for
extracting data, classifying it then understanding, and
assessing the opinions expressed in various contents. Huge
amount of data is generated daily on various social
networking sites. Millions of people are posting their likes,
dislikes, comments about anything daily on social networking
sites. This paper discusses an approach where a publicized
stream of tweets from the Twitter microblogging site are
preprocessed and classified based on their emotional content
as positive, negative and neutral and algorithm which is used
to classify these sentiments. Algorithm performance is
improved by reducing words in tweet to their root form
through mechanism of pre-processing before passing them to
sentiment analyzer. Hence, the algorithm classifies tweets as
neutral, positive or negative with respect to a query term. This
is very useful for the companies and other organizations who
want to know the people’s opinion about their products or the
customers who want to get the feedback from others about
product before purchase or also for election exit polls. |
Cite this article: |
Mr. Mane Mayur R., Mr. Kalambate Akshay R., Mr. Rane Zilu Ramkrishna, Prof. Gamare P. S. , "
Machine Learning Algorithm For Sentimental Analysis of Twitter Feeds " , International Journal of Emerging Trends & Technology in Computer Science (IJETTCS),
Volume 5, Issue 2, March - April 2016 , pp.
114-117 , ISSN 2278-6856.
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