Large Language Model Simulator for Cold-Start Recommendation
Jinan University · Zhejiang University · +5 more institutions
Abstract
Recommending cold items remains a significant challenge in billion-scale online recommendation systems. While warm items benefit from historical user behaviors, cold items rely solely on content features, limiting their recommendation performance and impacting user experience and revenue. Current models generate synthetic behavioral embeddings from content features but fail to address the core issue: the absence of historical behavior data. To tackle this, we introduce the LLM Simulator framework, which leverages large language models to simulate user interactions for cold items, fundamentally addressing the cold-start problem. However, simply using LLM to traverse all users can introduce significant…
Citation impact
- FWCI
- 105.20
- Percentile
- 100%
- References
- 29
Authors
9Topics & keywords
- Computer science
- Cold start (automotive)
- Simulation
- Start up
- Engineering
- Automotive engineering