缓解营销推荐中的匹配偏差

Junpeng Fang, Qing Cui, Gongduo Zhang, Caizhi Tang, Lihong Gu, Longfei Li, Jinjie Gu, Jun Zhou, Fei Wu
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引用次数: 1

摘要

在营销建议中,活动组织者将向用户分发优惠券以鼓励消费。通常,会采用一系列策略来干扰优惠券的分配过程,导致用户与优惠券之间的交互越来越不平衡,从而导致对转换概率的估计出现偏差。我们把估计偏差称为匹配偏差。本文从因果关系的角度探讨了如何缓解匹配偏差。我们将用户和优惠券的历史分布视为混杂因素,并将匹配偏差描述为混杂效应,以揭示和消除用户优惠券表示与转换概率之间的虚假相关性。然后,我们提出了一种新的训练范式,即去匹配偏差推荐(DMBR),通过后门调整来消除模型训练过程中的混杂影响。我们在两个代表性模型上实例化了DMBR: DNN和MMOE,并进行了大量的离线和在线实验来证明我们提出的范式的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Alleviating Matching Bias in Marketing Recommendations
In marketing recommendations, the campaign organizers will distribute coupons to users to encourage consumption. In general, a series of strategies are employed to interfere with the coupon distribution process, leading to a growing imbalance between user-coupon interactions, resulting in a bias in the estimation of conversion probabilities. We refer to the estimation bias as the matching bias. In this paper, we explore how to alleviate the matching bias from the causal-effect perspective. We regard the historical distributions of users and coupons over each other as confounders and characterize the matching bias as a confounding effect to reveal and eliminate the spurious correlations between user-coupon representations and conversion probabilities. Then we propose a new training paradigm named De-Matching Bias Recommendation (DMBR) to remove the confounding effects during model training via the backdoor adjustment. We instantiate DMBR on two representative models: DNN and MMOE, and conduct extensive offline and online experiments to demonstrate the effectiveness of our proposed paradigm.
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