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Using E-Reputation for Sentiment Analysis

Dhai Eddine Salhi, Abelkamel Tari, Tahar Kechadi

2021International Journal of Cloud Applications and Computing14 citationsDOI

Abstract

In a competitive world, companies are looking to gain a positive reputation through these clients. Electronic reputation is part of this reputation mainly in social networks, where everyone is free to express their opinion. Sentiment analysis of the data collected in these networks is very necessary to identify and know the reputation of a companies. This paper focused on one type of data, Twits on Twitter, where the authors analyzed them for the company Djezzy (mobile operator in Algeria), to know their satisfaction. The study is divided into two parts: The first part was the pre-processing phase, where this research filtered the Twits (eliminate useless words, use the tokenization) to keep the necessary information for a better accuracy. The second part was the application of machine learning algorithms (SVM and logistic regression) for a supervised classification since the results are binary. The strong point of this study was the possibility to run the chosen algorithms on a cloud in order to save execution time; the solution also supports the three languages: Arabic, English, and French.

Topics & Concepts

ReputationSentiment analysisLexical analysisComputer scienceSupport vector machineOrder (exchange)Point (geometry)Artificial intelligenceWorld Wide WebBusinessMathematicsSociologyGeometrySocial scienceFinanceSentiment Analysis and Opinion MiningStock Market Forecasting MethodsAdvanced Text Analysis Techniques
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