Business Intelligent Framework Using Sentiment Analysis for Smart Digital Marketing in the E-Commerce Era

IF 0.3 Q3 AREA STUDIES
Khin Sandar Kyaw, Praman Tepsongkroh, Chanwut Thongkamkaew, F. Sasha
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引用次数: 4

Abstract

Since trading has been transformed into online platforms, marketing strategies have adapted to digital systems in order to enhance the Customer Relationship Management (CRM) in the E-commerce era. E-commerce systems are the most widely used digital platforms where customer information including personal, and behavioral information, flows as a big data stream. Conducting business intelligent observation on digital big data assists to improve digital marketing policy through the customer intention prediction, decision-making to advertise based on the target group clustering, and customer assist recommendation. To discover the business intelligent, sentiment analysis technology can assist as a solution to understand the customer behavior through the opinion mining where the natural language processing, text analysis, computational linguistics, and biometrics are conducted to analysis the customer information and feedbacks, for smart digital marketing applications. This research observes the applications of sentiment analysis in E-commerce systems as a comprehensive study, and the critical role of discovering business intelligent for smart digital marketing in E-commerce platforms is pointed out according to the technical perspective. Furthermore, the concept of a business intelligent framework integrated with the modelling of decision-making, prediction, and recommendation systems using the contribution of hybrid feature selection which is based on rule-based and machine learning-based sentiment analysis, is proposed for the future innovative smart digital marketing trend.
基于情感分析的商务智能框架在电子商务时代的智能数字营销
由于交易已经转变为在线平台,为了加强电子商务时代的客户关系管理(CRM),营销策略已经适应了数字系统。电子商务系统是应用最广泛的数字平台,客户信息(包括个人信息和行为信息)作为大数据流流动。对数字大数据进行商业智能观察,通过预测客户意向、基于目标群体聚类的广告决策、客户辅助推荐,帮助完善数字营销策略。为了发现商业智能,情感分析技术可以作为一种解决方案,通过意见挖掘来帮助理解客户行为,其中进行自然语言处理,文本分析,计算语言学和生物识别,分析客户信息和反馈,为智能数字营销应用提供帮助。本研究对情感分析在电子商务系统中的应用进行了全面的研究,并从技术角度指出了发现商业智能对于电子商务平台智能数字营销的关键作用。此外,针对未来的创新智能数字营销趋势,提出了利用基于规则和基于机器学习的情感分析的混合特征选择,集成决策、预测和推荐系统建模的商业智能框架的概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.20
自引率
11.10%
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