LLM-driven feature synthesis from data-rich verticals improves MTL ranking models in data-sparse verticals via taxonomic features from user histories.
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Mind the Gap: Bridging Behavioral Silos with LLMs in Multi-Vertical Recommendations
LLM-driven feature synthesis from data-rich verticals improves MTL ranking models in data-sparse verticals via taxonomic features from user histories.