Generating Individual Trajectories Using GPT-2 Trained from Scratch on Encoded Spatiotemporal Data

Horikomi, Taizo, Fujimoto, Shouji, Ishikawa, Atushi, Mizuno, Takayuki

arXiv.org Artificial Intelligence 

We encapsulate an individual daily trajectory as a sequence of tokens by adding unique time interval tokens to the location tokens. Using the architecture of an autoregressive language model, GPT-2, this sequence of tokens is trained from scratch, allowing us to construct a deep learning model that sequentially generates an individual daily trajectory. Environmental factors such as meteorological conditions and individual attributes such as gender and age are symbolized by unique special tokens, and by training these tokens and trajectories on the GPT-2 architecture, we can generate trajectories that are influenced by both environmental factors and individual attributes.

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