Analyzing Customers in E-Commerce Using Dempster-Shafer Method
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Abstract
This research explores the analysis of consumer sentiment in the context of e-commerce by applying the sophisticated Dempster-Shafer method. We started with the collection of more than 20,000 consumer reviews from various leading e-commerce platforms and continued with a detailed data pre-processing stage to obtain a clean and structured dataset. Next, we leverage the Dempster-Shafer method to represent and combine information from multiple sources, addressing uncertainty in diverse consumer opinions. The results of the sentiment analysis show that the Dempster-Shafer method achieves an accuracy of around 85%, with good evaluation metrics. Additionally, this research provides insight into the factors that influence consumers' views of products or services in the growing e-commerce context. The literature review also reveals the potential application of the Dempster-Shafer method in other aspects of e-commerce business, such as risk management and consumer trust. This research highlights the contribution of the Dempster-Shafer method in addressing uncertainty and complexity in consumer sentiment analysis, yielding a deep understanding of consumer perceptions, and enabling more accurate decision making in a dynamic e-commerce context. This research also provides a foundation for further development in consumer sentiment analysis and the application of the Dempster-Shafer method in e-commerce.
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References
Simbolon, N., 2023. PERANCANGAN E-COMMERCE JUAL-BELI HASIL PETERNAKAN BERBASIS WEB. Jurnal Indonesia: Manajemen Informatika dan Komunikasi, 4(3), pp.1245-1253.
Kiedrowsky, F.F., 2023. Sentiment Analysis Marketplaces Digital menggunakan Machine Learning. Jurnal JTIK (Jurnal Teknologi Informasi dan Komunikasi), 7(3), pp.493-499.
Zayana, M.R., Fitri, I., Fauziah, F. and Gunaryarti, A., 2022. Penerapan Message Diggest Algorithm MD5 untuk Pengamanan Data Karyawan PT. Swifect Berbasis Desktop. Jurnal JTIK (Jurnal Teknologi Informasi dan Komunikasi), 6(3), pp.386-394.
Saravanakumar, M. and SuganthaLakshmi, T., 2012. Social media marketing. Life science journal, 9(4), pp.4444-4451.
Turnbull, P.W., Leek, S. and Ying, G., 2000. Customer confusion: The mobile phone market. Journal of Marketing Management, 16(1-3), pp.143-163.
Safitri, R., Alfira, N., Tamitiadini, D., Dewi, W.W.A. and Febriani, N., 2021. Analisis Sentimen: Metode Alternatif Penelitian Big Data. Universitas Brawijaya Press.
Xu, Q.A., Chang, V. and Jayne, C., 2022. A systematic review of social media-based sentiment analysis: Emerging trends and challenges. Decision Analytics Journal, 3, p.100073.
Mukhtar, M. and Munawir, M., 2018. Aplikasi Decision Support System (DSS) dengan Metode Fuzzy Multiple Attribute Decission Making (FMADM) Studi Kasus: AMIK Indonesia Dan STMIK Indonesia. Jurnal JTIK (Jurnal Teknologi Informasi dan Komunikasi), 2(1), pp.57-70.
Basiri, M.E., Naghsh-Nilchi, A.R. and Ghasem-Aghaee, N., 2014. Sentiment prediction based on dempster-shafer theory of evidence. Mathematical Problems in Engineering, 2014.
Maghsoudi, A., Nowakowski, S., Agrawal, R., Sharafkhaneh, A., Kunik, M.E., Naik, A.D., Xu, H. and Razjouyan, J., 2022. Sentiment Analysis of Insomnia-Related Tweets via a Combination of Transformers Using Dempster-Shafer Theory: Pre–and Peri–COVID-19 Pandemic Retrospective Study. Journal of Medical Internet Research, 24(12), p.e41517.
Zhang, Y., Deng, X., Wei, D. and Deng, Y., 2012. Assessment of E-Commerce security using AHP and evidential reasoning. Expert Systems with Applications, 39(3), pp.3611-3623.
Basiri, M.E. and Kabiri, A., 2018, April. Uninorm operators for sentence-level score aggregation in sentiment analysis. In 2018 4th International Conference on Web Research (ICWR) (pp. 97-102). IEEE.
Kyaw, K.S., Tepsongkroh, P., Thongkamkaew, C. and Sasha, F., 2023. Business Intelligent Framework Using Sentiment Analysis for Smart Digital Marketing in the E-Commerce Era. Asia Social Issues, 16(3), pp.e252965-e252965.
Panigrahi, S., Kundu, A., Sural, S. and Majumdar, A.K., 2009. Credit card fraud detection: A fusion approach using Dempster–Shafer theory and Bayesian learning. Information Fusion, 10(4), pp.354-363.
Zhou, L., Tang, L. and Zhang, Z., 2023. Extracting and ranking product features in consumer reviews based on evidence theory. Journal of Ambient Intelligence and Humanized Computing, 14(8), pp.9973-9983.
Basiri, M.E., Ghasem-Aghaee, N. and Naghsh-Nilchi, A.R., 2014. Exploiting reviewers’ comment histories for sentiment analysis. Journal of Information Science, 40(3), pp.313-328.
Fouladfar, F., Dehkordi, M.N. and Basiri, M.E., 2020. Predicting the helpfulness score of product reviews using an evidential score fusion method. IEEE Access, 8, pp.82662-82687.
Song, B., Yan, W. and Zhang, T., 2019. Cross-border e-commerce commodity risk assessment using text mining and fuzzy rule-based reasoning. Advanced Engineering Informatics, 40, pp.69-80.
Huang, D. and Xu, S., 2023. A Transaction Frequency Based Trust for E-Commerce. Computers, Materials & Continua, 74(3).