Scalable Gaussian Processes for Characterizing Multidimensional Change Surfaces
Herlands, William, Wilson, Andrew, Nickisch, Hannes, Flaxman, Seth, Neill, Daniel, van Panhuis, Wilbert, Xing, Eric
We present a scalable Gaussian process model for identifying and characterizing smooth multidimensional changepoints, and automatically learning changes in expressive covariance structure. We use Random Kitchen Sink features to flexibly define a change surface in combination with expressive spectral mixture kernels to capture the complex statistical structure. Finally, through the use of novel methods for additive non-separable kernels, we can scale the model to large datasets. We demonstrate the model on numerical and real world data, including a large spatio-temporal disease dataset where we identify previously unknown heterogeneous changes in space and time.
Nov-13-2015
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- Europe > United Kingdom
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- Europe > United Kingdom
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- Research Report (1.00)
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- Government (0.46)
- Health & Medicine > Therapeutic Area (0.52)
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