Unveiling User Satisfaction and Creator Productivity Trade-Offs in Recommendation Platforms
On User-Generated Content (UGC) platforms, recommendation algorithms significantly impact creators' motivation to produce content as they compete for algorithmically allocated user traffic. This phenomenon subtly shapes the volume and diversity of the content pool, which is crucial for the plat...
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Zusammenfassung: | On User-Generated Content (UGC) platforms, recommendation algorithms
significantly impact creators' motivation to produce content as they compete
for algorithmically allocated user traffic. This phenomenon subtly shapes the
volume and diversity of the content pool, which is crucial for the platform's
sustainability. In this work, we demonstrate, both theoretically and
empirically, that a purely relevance-driven policy with low exploration
strength boosts short-term user satisfaction but undermines the long-term
richness of the content pool. In contrast, a more aggressive exploration policy
may slightly compromise user satisfaction but promote higher content creation
volume. Our findings reveal a fundamental trade-off between immediate user
satisfaction and overall content production on UGC platforms. Building on this
finding, we propose an efficient optimization method to identify the optimal
exploration strength, balancing user and creator engagement. Our model can
serve as a pre-deployment audit tool for recommendation algorithms on UGC
platforms, helping to align their immediate objectives with sustainable,
long-term goals. |
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DOI: | 10.48550/arxiv.2410.23683 |