Segment Discovery: Enhancing E-commerce Targeting
Modern e-commerce services frequently target customers with incentives or interventions to engage them in their products such as games, shopping, video streaming, etc. This customer engagement increases acquisition of more customers and retention of existing ones, leading to more business for the co...
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Zusammenfassung: | Modern e-commerce services frequently target customers with incentives or
interventions to engage them in their products such as games, shopping, video
streaming, etc. This customer engagement increases acquisition of more
customers and retention of existing ones, leading to more business for the
company while improving customer experience. Often, customers are either
randomly targeted or targeted based on the propensity of desirable behavior.
However, such policies can be suboptimal as they do not target the set of
customers who would benefit the most from the intervention and they may also
not take account of any constraints. In this paper, we propose a policy
framework based on uplift modeling and constrained optimization that identifies
customers to target for a use-case specific intervention so as to maximize the
value to the business, while taking account of any given constraints. We
demonstrate improvement over state-of-the-art targeting approaches using two
large-scale experimental studies and a production implementation. |
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DOI: | 10.48550/arxiv.2409.13847 |