GETNext: Trajectory Flow Map Enhanced Transformer for Next POI
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- URL: http://arxiv.org/abs/2303.04741v1
- Date: Fri, 3 Mar 2023 01:58:41 GMT
- Title: GETNext: Trajectory Flow Map Enhanced Transformer for Next POI
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- Authors: Song Yang, Jiamou Liu, Kaiqi Zhao
- Abstract summary: POI intends to forecast users immediate future movements given their current status and historical information, yielding great values for both users and service providers.
This problem is perceptibly complex because various data trends need to be considered together.
We propose a user-agnostic global trajectory flow map and a novel Graph Enhanced Transformer model (GETNext) to better exploit the extensive collaborative signals for a more accurate next POI prediction.
- Score: 11.236531335154401
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Next POI recommendation intends to forecast users' immediate future movements
given their current status and historical information, yielding great values
for both users and service providers. However, this problem is perceptibly
complex because various data trends need to be considered together. This
includes the spatial locations, temporal contexts, user's preferences, etc.
Most existing studies view the next POI recommendation as a sequence prediction
problem while omitting the collaborative signals from other users. Instead, we
propose a user-agnostic global trajectory flow map and a novel Graph Enhanced
Transformer model (GETNext) to better exploit the extensive collaborative
signals for a more accurate next POI prediction, and alleviate the cold start
problem in the meantime. GETNext incorporates the global transition patterns,
user's general preference, spatio-temporal context, and time-aware category
embeddings together into a transformer model to make the prediction of user's
future moves. With this design, our model outperforms the state-of-the-art
methods with a large margin and also sheds light on the cold start challenges
within the spatio-temporal involved recommendation problems.
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