Publications
Latent self-exciting point process model for spatial-temporal networks
Abstract
We propose a latent self-exciting point process model that describes geographically distributed interactions between pairs of entities. In contrast to most existing approaches that assume fully observable interactions, here we consider a scenario where certain interaction events lack information about participants. Instead, this information needs to be inferred from the available observations. We develop an efficient approximate algorithm based on variational expectation-maximization to infer unknown participants in an event given the location and the time of the event. We validate the model on synthetic as well as real-world data, and obtain very promising results on the identity-inference task. We also use our model to predict the timing and participants of future events, and demonstrate that it compares favorably with baseline approaches.
- Date
- February 12, 2013
- Authors
- Yoon-Sik Cho, Aram Galstyan, P Jeffrey Brantingham, George Tita
- Journal
- arXiv preprint arXiv:1302.2671