Abstract
Point process data are commonly observed in fields like healthcare and the social sciences. Designing predictive models for such event streams is an under-explored problem, due to often scarce training data. In this work we propose a multitask point process model, leveraging information from all tasks via a hierarchical Gaussian process (GP). Nonparametric learning functions implemented by a GP, which map from past events to future rates, allow analysis of flexible arrival patterns. To facilitate efficient inference, we propose a sparse construction for this hierarchical model, and derive a variational Bayes method for learning and inference. Experimental results are shown on both synthetic data and as well as real electronic health-records data.
Original language | English (US) |
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Title of host publication | 32nd International Conference on Machine Learning, ICML 2015 |
Publisher | International Machine Learning Society (IMLS)[email protected] |
Pages | 2030-2038 |
Number of pages | 9 |
ISBN (Print) | 9781510810587 |
State | Published - Jan 1 2015 |
Externally published | Yes |