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Assessing Public Opinions of Products Through Sentiment Analysis

C. Y. Ng, Kris M. Y. Law, W.H. Ip

2021Journal of Organizational and End User Computing34 citationsDOIOpen Access PDF

Abstract

In the world of social networking, consumers tend to refer to expert comments or product reviews before making buying decisions. There is much useful information available on many social networking sites for consumers to make product comparisons. Sentiment analysis is considered appropriate for summarising the opinions. However, the sentences posted online are generally short, which sometimes contains both positive and negative word in the same post. Thus, it may not be sufficient to determine the sentiment polarity of a post by merely counting the number of sentiment words, summing up or averaging the associated scores of sentiment words. In this paper, an unsupervised learning technique, k-means, in conjunction with sentiment analysis, is proposed for assessing public opinions. The proposed approach offers the product designers a tool to promptly determine the critical design criteria for new product planning in the process of new product development by evaluating the user-generated content. The case implementation proves the applicability of the proposed approach.

Topics & Concepts

Sentiment analysisProduct (mathematics)Computer scienceProcess (computing)Social mediaWord (group theory)User-generated contentData scienceInformation retrievalNatural language processingWorld Wide WebLinguisticsMathematicsPhilosophyOperating systemGeometrySentiment Analysis and Opinion MiningDigital Marketing and Social MediaText and Document Classification Technologies
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