A business intelligent technique for sentiment estimation by management sectors

Rady, Sherine;

Abstract


People express emotions in response to everyday situation and personal communication. With diversity of language expressions, it is challenging to provide an accurate estimation of emotion or sentiment. This paper proposes intelligent technique and system for sentiment estimation and prediction in the business domain. It is useful for management sectors where tools can automatically analyze collected data and reveal employees' opinion about their organization, or any ongoing topic. The challenge in this work is to detect sentiment classes from relatively long text, where writers merge sentences and expressions when asked to write reviews, instead of being directly asked to write their sentiment degree. The approach is data-driven, which uses machine learning to train classifier features to recognize the sentiment. A system is implemented and tested (on real data collected from employee reviews at big IT organizations) towards two and five classification degrees problems. Recorded results prove efficiency of the technique.


Other data

Title A business intelligent technique for sentiment estimation by management sectors
Authors Rady, Sherine 
Keywords Bayesian classification;sentiment/emotion analysis;text analytics;machine learning;Business intelligence
Issue Date 2-Feb-2016
Journal 2015 IEEE 7th International Conference on Intelligent Computing and Information Systems, ICICIS 2015 
Conference 2015 IEEE 7th International Conference on Intelligent Computing and Information Systems, ICICIS 2015
ISBN 9781509019496
DOI 10.1109/IntelCIS.2015.7397247
Scopus ID 2-s2.0-84969945011

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