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arxiv: 1506.04767 · v1 · pith:5NIQURG3new · submitted 2015-06-15 · 💻 cs.IT · math.IT

Bounded Degree Approximations of Stochastic Networks

classification 💻 cs.IT math.IT
keywords approximationsalgorithmsgraphsidentifyproposeclassclassesdirected
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We propose algorithms to approximate directed information graphs. Directed information graphs are probabilistic graphical models that depict causal dependencies between stochastic processes in a network. The proposed algorithms identify optimal and near-optimal approximations in terms of Kullback-Leibler divergence. The user-chosen sparsity trades off the quality of the approximation against visual conciseness and computational tractability. One class of approximations contains graphs with specified in-degrees. Another class additionally requires that the graph is connected. For both classes, we propose algorithms to identify the optimal approximations and also near-optimal approximations, using a novel relaxation of submodularity. We also propose algorithms to identify the r-best approximations among these classes, enabling robust decision making.

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