Article ID Journal Published Year Pages File Type
416781 Computational Statistics & Data Analysis 2013 21 Pages PDF
Abstract

Random Forests in combination with Stability Selection allow to estimate stable conditional independence graphs with an error control mechanism for false positive selection. This approach is applicable to graphs containing both continuous and discrete variables at the same time. Its performance is evaluated in various simulation settings and compared with alternative approaches. Finally, the approach is applied to two heath-related data sets, first to study the interconnection of functional health components, personal, and environmental factors and second to identify risk factors which may be associated with adverse neurodevelopment after open-heart surgery.

Related Topics
Physical Sciences and Engineering Computer Science Computational Theory and Mathematics
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