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Deep Generative Modeling in Network Science with Applications to Public Policy Research
[book]
2020
Network data is increasingly being used in quantitative, data-driven public policy research. These are typically very rich datasets that contain complex correlations and inter-dependencies. This richness both promises to be quite useful for policy research, while at the same time posing a challenge for the useful extraction of information from these datasets - a challenge which calls for new data analysis methods. In this report, we formulate a research agenda of key methodological problems
doi:10.7249/wra843-1
fatcat:cfkrtvdgmjffne7jafmcj5h6ua