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SpiderLearner: An ensemble approach to Gaussian graphical model estimation

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SpiderLearner: An ensemble approach to Gaussian graphical model estimation

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### Kate Shutta (Harvard University) and Katharine Correia (Amherst College)

Seeley Mudd 207 (4:15pm refreshments, 4:30pm talk)

Gaussian graphical models (GGMs) are a popular form of network model in which nodes represent features in multivariate normal data and edges reflect conditional dependencies between these features. Currently available tools for GGM estimation require investigators to make several choices regarding algorithms, scoring criteria, and tuning parameters. An estimated GGM may be highly sensitive to these choices, and the accuracy of each method can vary based on structural characteristics of the network such as topology, degree distribution, and density. Because these characteristics are a priori unknown, it is not straightforward to establish universal guidelines for choosing a GGM estimation method. We address this problem by introducing SpiderLearner, an ensemble method that constructs a consensus network from multiple estimated GGMs.

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Seeley Mudd
31 Quadrangle Dr · Amherst, MA
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