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STULIG

The implementation for STULIG

Towards Interpreting, Discriminating and Synthesizing Motion Traces via Deep Probabilistic Generative Models

Environment

  • python 2.7
  • Tensorflow 1.7 or ++ (updated now 2019.06)

Dataset

Here we choose gowalla dataset for training.

Usage

  • Training process: We choose the 201 users' sub-trajectories, split these to training data(about 50%) and test data (about 50%). The new code with tensorflow>=1.7, you can run it easily. and also some records will stored by the code (including model, train data and sample results)
  • The format of total.dat : userid/locationid/time/longitude/latitude
  • python STUL.py
  • python STULIG.py

Reference

Hope such an implementation could help you on your projects. Any comments and feedback are appreciated.

stulig's People

Contributors

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Watchers

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