Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Large Language Models are Zero-Shot Next Location Predictors

About

Predicting the locations an individual will visit in the future is crucial for solving many societal issues like disease diffusion and reduction of pollution. However, next-location predictors require a significant amount of individual-level information that may be scarce or unavailable in some scenarios (e.g., cold-start). Large Language Models (LLMs) have shown good generalization and reasoning capabilities and are rich in geographical knowledge, allowing us to believe that these models can act as zero-shot next-location predictors. We tested more than 15 LLMs on three real-world mobility datasets and we found that LLMs can obtain accuracies up to 36.2%, a significant relative improvement of almost 640% when compared to other models specifically designed for human mobility. We also test for data contamination and explored the possibility of using LLMs as text-based explainers for next-location prediction, showing that, regardless of the model size, LLMs can explain their decision.

Ciro Beneduce, Bruno Lepri, Massimiliano Luca• 2024

Related benchmarks

TaskDatasetResultRank
Human mobility generationHuman Mobility Tokyo Typhoon Hagibis
SI0.1574
15
Human mobility generationHuman Mobility Tokyo 2021 Olympics
SI0.0938
15
Human mobility generationHuman Mobility Tokyo COVID-19 Pandemic
SI0.1146
15
Human mobility generationHuman Mobility Normal period
SI0.0746
14
Human mobility predictionShanghai ISP (test)
Accuracy@115.5
11
Human mobility predictionTokyo (test)
Acc@117.5
11
Human mobility predictionMoscow (test)
Accuracy@112.5
11
Human mobility predictionSaopaulo (test)
Top-1 Accuracy15
11
Showing 8 of 8 rows

Other info

Follow for update