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Autori principali: Li, Bin, Pei, Jiayan, Xiao, Feiyang, Zhao, Yifan, Zhang, Zhixing, Liu, Diwei, He, HengXu, Jia, Jia
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2406.14132
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author Li, Bin
Pei, Jiayan
Xiao, Feiyang
Zhao, Yifan
Zhang, Zhixing
Liu, Diwei
He, HengXu
Jia, Jia
author_facet Li, Bin
Pei, Jiayan
Xiao, Feiyang
Zhao, Yifan
Zhang, Zhixing
Liu, Diwei
He, HengXu
Jia, Jia
contents In the mobile internet era, the Online Food Ordering Service (OFOS) emerges as an integral component of inclusive finance owing to the convenience it brings to people. OFOS platforms offer dynamic allocation incentives to users and merchants through diverse marketing campaigns to encourage payments while maintaining the platforms' budget efficiency. Despite significant progress, the marketing domain continues to face two primary challenges: (i) how to allocate a limited budget with greater efficiency, demanding precision in predicting users' monotonic response (i.e. sensitivity) to incentives, and (ii) ensuring spatio-temporal adaptability and robustness in diverse marketing campaigns across different times and locations. To address these issues, we propose a Constrained Monotonic Adaptive Network (CoMAN) method for spatio-temporal perception within marketing pricing. Specifically, we capture spatio-temporal preferences within attribute features through two foundational spatio-temporal perception modules. To further enhance catching the user sensitivity differentials to incentives across varied times and locations, we design modules for learning spatio-temporal convexity and concavity as well as for expressing sensitivity functions. CoMAN can achieve a more efficient allocation of incentive investments during pricing, thus increasing the conversion rate and orders while maintaining budget efficiency. Extensive offline and online experimental results within our diverse marketing campaigns demonstrate the effectiveness of the proposed approach while outperforming the monotonic state-of-the-art method.
format Preprint
id arxiv_https___arxiv_org_abs_2406_14132
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Enhancing Monotonic Modeling with Spatio-Temporal Adaptive Awareness in Diverse Marketing
Li, Bin
Pei, Jiayan
Xiao, Feiyang
Zhao, Yifan
Zhang, Zhixing
Liu, Diwei
He, HengXu
Jia, Jia
Artificial Intelligence
In the mobile internet era, the Online Food Ordering Service (OFOS) emerges as an integral component of inclusive finance owing to the convenience it brings to people. OFOS platforms offer dynamic allocation incentives to users and merchants through diverse marketing campaigns to encourage payments while maintaining the platforms' budget efficiency. Despite significant progress, the marketing domain continues to face two primary challenges: (i) how to allocate a limited budget with greater efficiency, demanding precision in predicting users' monotonic response (i.e. sensitivity) to incentives, and (ii) ensuring spatio-temporal adaptability and robustness in diverse marketing campaigns across different times and locations. To address these issues, we propose a Constrained Monotonic Adaptive Network (CoMAN) method for spatio-temporal perception within marketing pricing. Specifically, we capture spatio-temporal preferences within attribute features through two foundational spatio-temporal perception modules. To further enhance catching the user sensitivity differentials to incentives across varied times and locations, we design modules for learning spatio-temporal convexity and concavity as well as for expressing sensitivity functions. CoMAN can achieve a more efficient allocation of incentive investments during pricing, thus increasing the conversion rate and orders while maintaining budget efficiency. Extensive offline and online experimental results within our diverse marketing campaigns demonstrate the effectiveness of the proposed approach while outperforming the monotonic state-of-the-art method.
title Enhancing Monotonic Modeling with Spatio-Temporal Adaptive Awareness in Diverse Marketing
topic Artificial Intelligence
url https://arxiv.org/abs/2406.14132