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Customer Segmentation in e-Commerce using ML

Jenita J, Yash Vishwakarma, Yash Ashok Vishwakarma, Akhil Reddy, Arifulla .

Abstract


ABSTRACT

Many small online outlets and newcomers to the online retail territories are keen to record and promote the shopper-centric stores, but technically lack the know-how and information needed to do so. doing. This article provides his case study on the use of information mining strategies in customer-centric business intelligence for an online retailer. The primary purpose of this assessment is to help the company better understand its customers and, as a result, make its customer-centric advertising and her marketing more efficient. Under the assumptions of recency, frequency, and economic version, the customer firms were divided into a number of significant firms using the ordering method clustering rule set and selection tree derivation,  and the main features of the customer phase have been fully identified. For this reason, the company is provided with his customer-centric marketing tips.


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References


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