Estimating Ratios of Means of Multicategory Data Observed with Sample and Category Perturbations
Abstract
Summay We consider the problem of estimating ratios of means of a multivariate outcome across covariates when the data are observed with unknown sample-specific and category-specific perturbations. Our model admits a partially identifiable estimand, and we establish full identifiability by imposing interpretable parameter constraints. To reduce bias and guarantee the existence of estimators in the presence of sparse observations, we apply an asymptotically negligible and constraint-invariant penalty to the loss function. We develop a fast coordinate-descent algorithm for estimation, and an augmented Lagrangian algorithm for estimation under null hypotheses. We construct a model-robust score test and…
Citation impact
- FWCI
- 9.41
- Percentile
- 98%
- References
- 0
Authors
3- DSDavid S. ClausenCorresponding
University of Washington
- SVS V Teichman
University of Washington
- ADA D Willis
University of Washington
Topics & keywords
- Metagenomics
- Fold (higher-order function)
- Computational biology
- Biology
- Computer science
- Genetics
- Gene