Network-Constrained Covariate Coefficient and Connection Sign Estimation
Often, variables are linked to each other via a network. When such a network structure is known, this knowledge can be incorporated into regularized regression settings via a network penalty term. However, when the type of interaction via the network is unknown (that is, whether connections are of an activating or a repressing type), the connection signs have to be estimated simultaneously with the covariate coefficients. This can be done with an algorithm iterating a connection sign estimation step and a covariate coefficient estimation step. We develop such an algorithm and show detailed simulation results and an application forecasting event times. The algorithm performs well in a variety of settings. We also briefly describe the R-package that we developed for this purpose, which is publicly available
Year of publication: |
2019
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Authors: | Weber, Matthias |
Other Persons: | Striaukas, Jonas (contributor) ; Schumacher, Martin (contributor) ; Binder, Harald (contributor) |
Publisher: |
[2019]: [S.l.] : SSRN |
Saved in:
freely available
Saved in favorites
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