Network-Constrained Covariate Coefficient and Connection Sign Estimation
Series
School of Finance Working Paper Series
Type
working paper
Date Issued
2020-01-21
Author(s)
Abstract (De)
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.
Language
English
Keywords
Network regression
network penalty
connection sign estimation
regularized regression.
HSG Classification
contribution to scientific community
HSG Profile Area
SOF - System-wide Risk in the Financial System
Publisher
SoF-HSG
Volume
2020
Number
2020/01
Pages
25
Contact Email Address
mattias.weber@unisg.ch
Eprints ID
259227
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