A Survey of Various Opinion Mining in Social Media

International Journal of Computer Science (IJCS Journal) Published by SK Research Group of Companies (SKRGC) Scholarly Peer Reviewed Research Journals

Format: Volume 4, Issue 1, No 1, 2016.

Copyright: All Rights Reserved ©2016

Year of Publication: 2016

Author: Jata Shankar Jha, Asst. Prof. Vimal Shukla

Reference:IJCS-108

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Abstract

Opinion Mining is a technique of providing and giving opinion on a particular topic so that a final conclusion can be extracted from it. Here in this paper a complete survey of all the technique that is used for the opinion mining. A complete survey of all the technique implemented for the social media opinion is discussed and analyzed here so that various advantages and limitations can be analyzed and hence on the basis of which a new and efficient technique can be implemented in future.

References

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Keywords

World Wide Web, Opinion Mining, WCM, WUM, Social Network.

This work is licensed under a Creative Commons Attribution 3.0 Unported License.   

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