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2018 | OriginalPaper | Chapter

Challenges in the Field of Aspect Level Sentiment Analysis

Authors : Neha Nandal, Jyoti Pruthi, Amit Choudhary

Published in: Smart Trends in Information Technology and Computer Communications

Publisher: Springer Singapore

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Abstract

In the field of technology, organizations come up with their brandlines and it is becoming a trend where organizations wisely launch their on-series of their respective sources and then put it offline. The field of sentiment analysis has been playing a great role for organizations. It is becoming possible now to get to know about the opinions of customers about various sources produced by organizations in terms of positive, negative and neutral polarities. The field of aspect-level sentiment analysis comprises a goal to find and aggregate sentiment on entities mentioned within documents. This paper presents the various challenges occurred in field of sentiment analysis and Aspect level sentiment analysis. The objective is also to present the methods and tools used by various researchers to get the effective results in field of machine learning.

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Metadata
Title
Challenges in the Field of Aspect Level Sentiment Analysis
Authors
Neha Nandal
Jyoti Pruthi
Amit Choudhary
Copyright Year
2018
Publisher
Springer Singapore
DOI
https://doi.org/10.1007/978-981-13-1423-0_7

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