Cold-Starting Podcast Ads and Promotions with Multi-Task Learning on Spotify
- URL: http://arxiv.org/abs/2601.02306v1
- Date: Mon, 05 Jan 2026 17:48:15 GMT
- Title: Cold-Starting Podcast Ads and Promotions with Multi-Task Learning on Spotify
- Authors: Shivam Verma, Hannes Karlbom, Yu Zhao, Nick Topping, Vivian Chen, Kieran Stanley, Bharath Rengarajan,
- Abstract summary: We present a unified multi-objective model for targeting both advertisements and promotions within the Spotify podcast ecosystem.<n>Online A/B tests show up to a 22% reduction in effective Cost-Per-Stream.<n>Our experience shows that a unified modeling strategy improves maintainability, cold-start performance, and coverage.
- Score: 2.204478225790133
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We present a unified multi-objective model for targeting both advertisements and promotions within the Spotify podcast ecosystem. Our approach addresses key challenges in personalization and cold-start initialization, particularly for new advertising objectives. By leveraging transfer learning from large-scale ad and content interactions within a multi-task learning (MTL) framework, a single joint model can be fine-tuned or directly applied to new or low-data targeting tasks, including in-app promotions. This multi-objective design jointly optimizes podcast outcomes such as streams, clicks, and follows for both ads and promotions using a shared representation over user, content, context, and creative features, effectively supporting diverse business goals while improving user experience. Online A/B tests show up to a 22% reduction in effective Cost-Per-Stream (eCPS), particularly for less-streamed podcasts, and an 18-24% increase in podcast stream rates. Offline experiments and ablations highlight the contribution of ancillary objectives and feature groups to cold-start performance. Our experience shows that a unified modeling strategy improves maintainability, cold-start performance, and coverage, while breaking down historically siloed targeting pipelines. We discuss practical trade-offs of such joint models in a real-world advertising system.
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