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Reorder abstract to pose the problem first

icml
Markus Kaiser 3 years ago
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      dynamic_dirichlet_deep_gp.tex

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dynamic_dirichlet_deep_gp.tex

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\begin{abstract}
We present a fully Bayesian approach to the data association problem.
Data association means to separate data coming from different generating processes, for example when data come from different data sources, contain significant noise, or exhibit multimodality.
The data association problem is concearned with separating data coming from different generating processes, for example when data come from different data sources, contain significant noise, or exhibit multimodality.
We present a fully Bayesian approach to this problem.
Our model is capable of simultaneously solving the data association problem and the induced supervised learning problems.
Underpinning our approach is the use of Gaussian process priors to encode the structure of both the data and the data associations.
We present an efficient learning scheme based on doubly stochastic variational inference and discuss how it can be applied to deep Gaussian process priors.

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