Trip+ benchmark evaluates language model agents on generating and revising personalized minute-level travel itineraries under dynamic interactions, finding consistent gaps where models produce feasible but exhausting plans that ignore traveler profiles.
RETAIL : Towards Real-world Travel Planning for Large Language Models
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Trip+: Benchmarking Agents in Personalized Interactive Travel Planning
Trip+ benchmark evaluates language model agents on generating and revising personalized minute-level travel itineraries under dynamic interactions, finding consistent gaps where models produce feasible but exhausting plans that ignore traveler profiles.