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Leaving No One Behind: A Multi-Scenario Multi-Task Meta Learning Approach for Advertiser Modeling

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Advertisers play an essential role in many e-commerce platforms like Taobao and Amazon. Fulfilling their marketing needs and supporting their business growth is critical to the long-term prosperity of platform economies. However, compared with extensive studies on user modeling such as click-through rate predictions, much less attention has been drawn to advertisers, especially in terms of understanding their diverse demands and performance. Different from user modeling, advertiser modeling generally involves many kinds of tasks (e.g. predictions of advertisers' expenditure, active-rate, or total impressions of promoted products). In addition, major e-commerce platforms often provide multiple marketing scenarios (e.g. Sponsored Search, Display Ads, Live Streaming Ads) while advertisers' behavior tend to be dispersed among many of them. This raises the necessity of multi-task and multi-scenario consideration in comprehensive advertiser modeling, which faces the following challenges: First, one model per scenario or per task simply doesn't scale; Second, it is particularly hard to model new or minor scenarios with limited data samples; Third, inter-scenario correlations are complicated, and may vary given different tasks. To tackle these challenges, we propose a multi-scenario multi-task meta learning approach (M2M) which simultaneously predicts multiple tasks in multiple advertising scenarios.

Qianqian Zhang, Xinru Liao, Quan Liu, Jian Xu, Bo Zheng• 2022

Related benchmarks

TaskDatasetResultRank
Multi-scenario Multi-task RecommendationMovieLens 1M
AUC (S1, T1)0.816
13
Multi-scenario Multi-task RecommendationKuaiRand-Pure
S1 T1 AUC69.83
13
How predictionIntTravel
Acc65.52
9
Multi-task RecommendationTenrec QK-video
Click AUC82.28
9
Via predictionIntTravel
HR@156.86
9
When predictionIntTravel
Accuracy83.13
9
Where predictionIntTravel
HR@156.11
9
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