Predictive Models in Sequential Recommendations: Bridging Performance Laws with Data Quality Insights
Sequential Recommendation (SR) plays a critical role in predicting users' sequential preferences. Despite its growing prominence in various industries, the increasing scale of SR models incurs substantial computational costs and unpredictability, challenging developers to manage resources effic...
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Zusammenfassung: | Sequential Recommendation (SR) plays a critical role in predicting users'
sequential preferences. Despite its growing prominence in various industries,
the increasing scale of SR models incurs substantial computational costs and
unpredictability, challenging developers to manage resources efficiently. Under
this predicament, Scaling Laws have achieved significant success by examining
the loss as models scale up. However, there remains a disparity between loss
and model performance, which is of greater concern in practical applications.
Moreover, as data continues to expand, it incorporates repetitive and
inefficient data. In response, we introduce the Performance Law for SR models,
which aims to theoretically investigate and model the relationship between
model performance and data quality. Specifically, we first fit the HR and NDCG
metrics to transformer-based SR models. Subsequently, we propose Approximate
Entropy (ApEn) to assess data quality, presenting a more nuanced approach
compared to traditional data quantity metrics. Our method enables accurate
predictions across various dataset scales and model sizes, demonstrating a
strong correlation in large SR models and offering insights into achieving
optimal performance for any given model configuration. |
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DOI: | 10.48550/arxiv.2412.00430 |