MAC: A Conversion Rate Prediction Benchmark Featuring Labels Under Multiple Attribution Mechanisms
Jinqi Wu, Sishuo Chen, Zhangming Chan, Yong Bai, Lei Zhang, Sheng Chen, Chenghuan Hou, Xiang-Rong Sheng, Han Zhu, Jian Xu, Bo Zheng, Chaoyou Fu

TL;DR
This paper introduces MAC, a novel multi-attribution CVR prediction benchmark with multiple labels, and proposes MoAE, a new MAL method that leverages multi-attribution knowledge for improved performance.
Contribution
The paper establishes the first public multi-attribution CVR dataset and provides a comprehensive analysis of MAL approaches, introducing the MoAE model that outperforms existing methods.
Findings
MAL consistently improves performance across attribution settings.
Adding auxiliary objectives can be counterproductive for first-click prediction.
Effective MAL requires learning and leveraging multi-attribution knowledge.
Abstract
Multi-attribution learning (MAL), which enhances model performance by learning from conversion labels yielded by multiple attribution mechanisms, has emerged as a promising learning paradigm for conversion rate (CVR) prediction. However, the conversion labels in public CVR datasets are generated by a single attribution mechanism, hindering the development of MAL approaches. To address this data gap, we establish the Multi-Attribution Benchmark (MAC), the first public CVR dataset featuring labels from multiple attribution mechanisms. Besides, to promote reproducible research on MAL, we develop PyMAL, an open-source library covering a wide array of baseline methods. We conduct comprehensive experimental analyses on MAC and reveal three key insights: (1) MAL brings consistent performance gains across different attribution settings, especially for users featuring long conversion paths.…
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Taxonomy
TopicsMachine Learning and Data Classification · Explainable Artificial Intelligence (XAI) · Domain Adaptation and Few-Shot Learning
