A Bayesian Nonparametric Approach to Modeling Mobility Patterns

Authors

  • Joshua Joseph Massachusetts Institute of Technology
  • Finale Doshi-Velez Massachusetts Institute of Technology
  • Nicholas Roy Massachusetts Institute of Technology

DOI:

https://doi.org/10.1609/aaai.v24i1.7721

Keywords:

Machine Learning for Control and Decision Making, Reinforcement Learning, Nonparametric Bayesian Statistics

Abstract

Constructing models of mobile agents can be difficult without domain-specific knowledge. Parametric models flexible enough to capture all mobility patterns that an expert believes are possible are often large, requiring a great deal of training data. In contrast, nonparametric models are extremely flexible and can generalize well with relatively little training data.

We propose modeling the mobility patterns of moving agents as a mixture of Gaussian processes (GP) with a Dirichlet process (DP) prior over mixture weights. The GP provides a flexible representation for each individual mobility pattern, while the DP assigns observed trajectories to particular mobility patterns. Both the GPs and the DP adjust the model's complexity based on available data, implicitly avoiding issues of over-fitting or under-fitting. We apply our model to a helicopter-based tracking task, where the mobility patterns of the tracked agents — cars — are learned from real data collected from taxis in the greater Boston area.

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Published

2010-07-05

How to Cite

Joseph, J., Doshi-Velez, F., & Roy, N. (2010). A Bayesian Nonparametric Approach to Modeling Mobility Patterns. Proceedings of the AAAI Conference on Artificial Intelligence, 24(1), 1587-1593. https://doi.org/10.1609/aaai.v24i1.7721