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arxiv: 1802.07434 · v1 · submitted 2018-02-21 · 📊 stat.ML · stat.ME

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Nonparametric Bayesian Sparse Graph Linear Dynamical Systems

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classification 📊 stat.ML stat.ME
keywords graphsgldsdynamicalsparsestatestatesbayesiancategorized
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A nonparametric Bayesian sparse graph linear dynamical system (SGLDS) is proposed to model sequentially observed multivariate data. SGLDS uses the Bernoulli-Poisson link together with a gamma process to generate an infinite dimensional sparse random graph to model state transitions. Depending on the sparsity pattern of the corresponding row and column of the graph affinity matrix, a latent state of SGLDS can be categorized as either a non-dynamic state or a dynamic one. A normal-gamma construction is used to shrink the energy captured by the non-dynamic states, while the dynamic states can be further categorized into live, absorbing, or noise-injection states, which capture different types of dynamical components of the underlying time series. The state-of-the-art performance of SGLDS is demonstrated with experiments on both synthetic and real data.

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