2014
DOI: 10.7763/ijmlc.2014.v4.431
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Hidden Markov Flow Network Model: A Generative Model for Dynamic Flow on a Network

Abstract: Abstract-In this paper, we propose a generative model that describes the dynamics of flow on a network -the hidden Markov flow network (HMFN) model, which is inspired by the gravity model in traffic engineering. Each node in the network has a dynamic hidden state and the flow observed on links depends on the states of the nodes being connected. For model inference, a collapsed Gibbs sampling algorithm is also proposed. Lastly, the model is applied to synthetic data and real human mobility network generated by … Show more

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