Random Projection; Screening; Ensemble learning; software R
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Abstract:
Package spar for R builds ensembles of predictive generalized linear models with high-dimensional predictors. It employs an algorithm utilizing variable screening and random projection tools to efficiently handle the computational challenges associated with large sets of predictors. The package is designed with a strong focus on extensibility. Screening and random projection techniques are implemented as S3 classes with user-friendly constructor functions, enabling users to easily integrate and develop new procedures. This design enhances the package's adaptability and makes it a powerful tool for a variety of high-dimensional applications.
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Project title:
Hochdimensionales statistisches Lernen: Neue Methoden zur Förderung der Wirtschafts- und Nachhaltigkeitspolitik: ZK 35-G (FWF - Österr. Wissenschaftsfonds)
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Research Areas:
Mathematical and Algorithmic Foundations: 30% Modeling and Simulation: 50% Fundamental Mathematics Research: 20%