Research on Prediction of Coupon Redemption Rate and Precision Targeting Strategy for M Platform Users Based on Big Data Analysis

Li Yixin,Zhang Zhongyun,He Zhiyi,Pan Zhen,Xu Xuan,Ning Jing

Chengdu Jincheng College,The National University of Malaysia,Xian International Studies University,The National University of Malaysia,The National University of Malaysia, Chengdu Jincheng College

Abstract: With the decline of mobile internet traffic dividends, issues such as low coupon redemption rates on local lifestyle service platforms (96.8% unredeemed in 2023) and resource encroachment by black markets (annual losses exceeding ¥1.8 billion) have become increasingly prominent. This study takes Platform M as the research object, leveraging 1.54 million orders and 2.82 million user behavior data points, integrating signaling theory and behavioral economics theory to construct a redemption rate prediction and precision targeting strategy system combining multimodal feature engineering and dynamic risk control. By introducing user responsiveness (Responsiveness) to extend the RFM model into an RFM-R segmentation model, the study employs a random forest algorithm (AUC=0.867) to predict redemption probabilities and integrates an isolation forest algorithm with a five-dimensional business rule matrix to identify anomalous transactions (detection rate: 72%). Empirical results show: the redemption rate of high-value sensitive users increased to 82%, while differentiated strategies boosted the overall redemption rate by 18%; dynamic risk control intercepted 12,167 anomalous orders, reducing resource waste by 18%. The study proposes a spatiotemporal coupling distribution mechanism (e.g., late-night limited-time coupons accounting for 35% of redemptions) and a senior-friendly design, optimizing user experience and complying with regulatory requirements. The outcomes provide data-driven decision support for platforms, promoting a shift toward precision and intelligent marketing, with practical implications for resource efficiency optimization, user value enhancement, and social responsibility fulfillment.

 Keywords: coupon redemption rate prediction; precision targeting strategy RFM-R model; dynamic risk control mechanism; signaling theory; multimodal feature engineering; spatiotemporal coupling distribution; compliance governance.


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