International Journal of Scientific Development and Research - IJSDR
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Paper Title: Exploration of Sentiment Analysis using feature-based classification, and addressing negations using NLP
Authors Name: Tripti Anand , Rekha
Unique Id: IJSDR2004084
Published In: Volume 5 Issue 8, August-2020
Abstract: Sentiment analysis is techniques of text analysis which detect text polarity automatically. Sentiment research is often called impression mining and is one of the NLP's (Natural Language Processing) main activities. Study of the emotions has attracted tremendous popularity in recent years. Individuals are supposed to build a mechanism capable of defining and classifying thoughts or emotions as expressed in an online document. Consumers frequently face the trade-off in purchasing choices and nowadays if you choose to purchase a consumer good you choose customer feedback and conversation regarding the product in online forums on the internet. When taking their purchasing choices, often customers use feedback shared by other users. People have a propensity to speak out about various institutions. Opinion mining has grown in popularity as a result. Sentiment Analysis assesses how this viewpoint shared regarding the object has a favorable or a negative orientation. Consumers ought to determine which subset of knowledge they choose to use. The method by which contextual meaning is defined and derived from raw data is known as sentiment analysis. An effective method for predicting feelings may enable one to collect views from the internet and predict the tastes of online consumers, which could prove useful for economic or marketing research. There are so far few specific problems that predominate in this research community, namely, classification of emotions, feature-based classification, and addressing negations. This paper provides a study of the approaches and strategies that exist in the area of sentiment analysis, and obstacles.
Keywords: Natural Language Processing, negative orientation, Sentiment analysis, Sentiment research
Cite Article: "Exploration of Sentiment Analysis using feature-based classification, and addressing negations using NLP", International Journal of Science & Engineering Development Research (www.ijsdr.org), ISSN:2455-2631, Vol.5, Issue 8, page no.461 - 464, August-2020, Available :http://www.ijsdr.org/papers/IJSDR2004084.pdf
Downloads: 00060115
Publication Details: Published Paper ID: IJSDR2004084
Registration ID:192363
Published In: Volume 5 Issue 8, August-2020
DOI (Digital Object Identifier):
Page No: 461 - 464
Publisher: IJSDR | www.ijsdr.org
ISSN Number: 2455-2631

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