We consider the task of sequencing tracks on music streaming platforms where the goal is to maximise not only user satisfaction, but also artist- and platform-centric objectives, needed to ensure long-term health and sustainability of the platform. Grounding the work across four objectives: Sat, Discovery, Exposure and Boost, we highlight the need and the potential to trade-off performance across these objectives, and propose Mostra, a Set Transformer-based encoder-decoder architecture equipped with submodular multi-objective beam search decoding. The proposed model affords system designers the power to balance multiple goals, and dynamically control the impact on one objective to satisfy other objectives. Through extensive experiments on data from a large-scale music streaming platform, we present insights on the trade-offs that exist across different objectives, and demonstrate that the proposed framework leads to a superior, just-in-time balancing across the various metrics of interest.
翻译:我们考虑在音乐流平台上排序轨道的任务,其目的是不仅最大限度地实现用户满意度,而且还要实现确保平台长期健康和可持续性所需的以艺术家和平台为中心的目标。 将工作建立在四个目标之上:卫星、发现、曝光和推动,我们强调在这些目标之间权衡业绩的必要性和潜力,并提议Mostra,一个基于Set变异器的编码解码器-解码器结构,配有子模子模块多目标搜索波束解码。 拟议的模型赋予系统设计者平衡多重目标并动态控制对一个目标的影响以达到其他目标的权力。 通过对大型音乐流平台的数据的广泛实验,我们提出了关于不同目标之间的权衡的深刻见解,并表明拟议的框架可以使各种利益指标实现高度、即时平衡。