| Literature DB >> 36062079 |
J Kenneth Tay1, Robert Tibshirani1,2.
Abstract
Sparse generalised additive models (GAMs) are an extension of sparse generalised linear models that allow a model's prediction to vary non-linearly with an input variable. This enables the data analyst build more accurate models, especially when the linearity assumption is known to be a poor approximation of reality. Motivated by reluctant interaction modelling, we propose a multi-stage algorithm, called reluctant generalised additive modelling (RGAM), that can fit sparse GAMs at scale. It is guided by the principle that, if all else is equal, one should prefer a linear feature over a non-linear feature. Unlike existing methods for sparse GAMs, RGAM can be extended easily to binary, count and survival data. We demonstrate the method's effectiveness on real and simulated examples.Entities:
Keywords: Feature selection; generalised additive models; high-dimensional; non-linear; regression; sparsity
Year: 2020 PMID: 36062079 PMCID: PMC9435322 DOI: 10.1111/insr.12429
Source DB: PubMed Journal: Int Stat Rev ISSN: 0306-7734 Impact factor: 1.946