2020
DOI: 10.48550/arxiv.2004.03569
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Latent Network Structure Learning from High Dimensional Multivariate Point Processes

Abstract: Learning the latent network structure from large scale multivariate point process data is an important task in a wide range of scientific and business applications. For instance, we might wish to estimate the neuronal functional connectivity network based on spiking times recorded from a collection of neurons. To characterize the complex processes underlying the observed data, we propose a new and flexible class of nonstationary Hawkes processes that allow both excitatory and inhibitory effects. We estimate th… Show more

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References 32 publications
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