DMPP models spatio-temporal event intensity as a deep NN-weighted mixture of kernels to incorporate high-dimensional context while keeping likelihood integration tractable.
In Proceedings of the 18th Ubicomp
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Deep Mixture Point Processes: Spatio-temporal Event Prediction with Rich Contextual Information
DMPP models spatio-temporal event intensity as a deep NN-weighted mixture of kernels to incorporate high-dimensional context while keeping likelihood integration tractable.