LiDDA: Data Driven Attribution at LinkedIn
LiDDA: Data Driven Attribution at LinkedIn
Data Driven Attribution, which assigns conversion credits to marketing interactions based on causal patterns learned from data, is the foundation of modern marketing intelligence and vital to any marketing businesses and advertising platform. In this paper, we introduce a unified transformer-based attribution approach that can handle member-level data, aggregate-level data, and integration of external macro factors. We detail the large scale implementation of the approach at LinkedIn, showcasing significant impact. We also share learning and insights that are broadly applicable to the marketing and ad tech fields.
Changshuai Wei、John Bencina、Erkut Aykutlug、Yue Chen、Zerui Zhang、Stephanie Sorenson、Shao Tang
计算技术、计算机技术贸易经济财政、金融
Changshuai Wei,John Bencina,Erkut Aykutlug,Yue Chen,Zerui Zhang,Stephanie Sorenson,Shao Tang.LiDDA: Data Driven Attribution at LinkedIn[EB/OL].(2025-05-14)[2025-06-03].https://arxiv.org/abs/2505.09861.点此复制
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