PIANO: Personalized Reranking via Information Aggregation Node for Music Search Optimization

June 15, 2026 ยท Grace Period ยท ๐Ÿ› ECML PKDD 2026

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Authors Weisheng Li, Chuqiao Huang, Pengcheng Li, Zhengchao Peng, Qiang Xiao, Zhongqian Xie, Qiang Huang, Chuanjiang Luo arXiv ID 2606.16641 Category cs.IR: Information Retrieval Citations 0 Venue ECML PKDD 2026
Abstract
Unlike short-video content, music tracks have long lifecycles and lasting value. Effective music search re-ranking must therefore align the user's current query with long-term preferences while jointly optimizing Click-Through Rate (CTR) and Conversion Rate (CVR). However, existing methods suffer from two limitations: (1) sequential methods rely on item-interaction history and therefore cannot use historical search queries to tell which past preferences match the user's current search intent; (2) most listwise models optimize a single objective (e.g., CTR only), and conventional multi-objective methods balance click and conversion at the item level, ignoring how these trade-offs play out across the whole ranked list. To address these limitations, we propose PIANO, a personalized listwise re-ranking framework with two key components: (i) the Query-Driven Interest Refiner (QDIR) uses cross-attention over historical queries to align past intents with the current one; (ii) the Information Aggregation Node (IAN), a learnable [CLS]-style token, aggregates the candidate list and predicts CTR/CVR at the list level. Extensive experiments on public and industrial datasets show consistent gains over strong baselines. In online A/B tests on NetEase Cloud Music, a leading music streaming platform, PIANO achieves statistically significant improvements in CTR (+0.62%) and CVR (+4.45%).
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