2018
DOI: 10.11591/ijece.v8i4.pp2367-2383
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Clustering Prediction Techniques in Defining and Predicting Customers Defection: The Case of E-Commerce Context

Abstract: <p><span>With the growth of the e-commerce sector, customers have more choices, a fact which encourages them to divide their purchases amongst several e-commerce sites and compare their competitors’ products, yet this increases high risks of churning. A review of the literature on customer churning models reveals that no prior research had considered both partial and total defection in non-contractual online environments. Instead, they focused either on a total or partial defect. This study propose… Show more

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Cited by 11 publications
(10 citation statements)
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“…Many researchers work in this prominent sector. Rachid et al [20] study the E-commerce customer defection rate. In contrast, Zaim et al [21] investigate how to identify the satisfied electronic customer (E-customer) from social media regarding their clickstream behavior.…”
Section: Review Of Related Literaturementioning
confidence: 99%
“…Many researchers work in this prominent sector. Rachid et al [20] study the E-commerce customer defection rate. In contrast, Zaim et al [21] investigate how to identify the satisfied electronic customer (E-customer) from social media regarding their clickstream behavior.…”
Section: Review Of Related Literaturementioning
confidence: 99%
“…Additionally, several research papers utilized different machine learning techniques to predict customer churn in the telecom industry [20]- [23]. Other studies aimed to measure the degree of Telecom operator's sincerity [24].…”
Section: Literature Reviewmentioning
confidence: 99%
“…c. Random initialization of values for each cluster. d. Repeat steps a, b and c until the data convergence [22], [23]. e. Based on the above, the process behind K-means is applied…”
Section: K-meansmentioning
confidence: 99%