IRAISep 12, 2025

Diversified recommendations of cultural activities with personalized determinantal point processes

arXiv:2509.10392v11 citationsh-index: 83RecSoGood@RecSys
Originality Incremental advance
AI Analysis

This addresses the industry problem of broadening audience engagement in cultural activities, though it appears incremental as it builds on existing DPP methods with personalization.

The study tackled the challenge of diversifying recommendations without harming core metrics by using personalized Determinantal Point Processes, achieving a balance between relevance and diversity as evaluated through offline and online metrics.

While optimizing recommendation systems for user engagement is a well-established practice, effectively diversifying recommendations without negatively impacting core business metrics remains a significant industry challenge. In line with our initiative to broaden our audience's cultural practices, this study investigates using personalized Determinantal Point Processes (DPPs) to sample diverse and relevant recommendations. We rely on a well-known quality-diversity decomposition of the similarity kernel to give more weight to user preferences. In this paper, we present our implementations of the personalized DPP sampling, evaluate the trade-offs between relevance and diversity through both offline and online metrics, and give insights for practitioners on their use in a production environment. For the sake of reproducibility, we release the full code for our platform and experiments on GitHub.

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