| Literature DB >> 27635120 |
Ashley Petersen1, Noah Simon1, Daniela Witten2.
Abstract
We consider the problem of predicting an outcome variable on the basis of a small number of covariates, using an interpretable yet non-additive model. We propose convex regression with interpretable sharp partitions (CRISP) for this task. CRISP partitions the covariate space into blocks in a data-adaptive way, and fits a mean model within each block. Unlike other partitioning methods, CRISP is fit using a non-greedy approach by solving a convex optimization problem, resulting in low-variance fits. We explore the properties of CRISP, and evaluate its performance in a simulation study and on a housing price data set.Entities:
Keywords: convex optimization; interpretability; non-additivity; non-parametric regression; prediction
Year: 2016 PMID: 27635120 PMCID: PMC5021451
Source DB: PubMed Journal: J Mach Learn Res ISSN: 1532-4435 Impact factor: 3.654