| Article ID | Journal | Published Year | Pages | File Type | 
|---|---|---|---|---|
| 1148758 | Journal of Statistical Planning and Inference | 2013 | 14 Pages | 
Abstract
												It is well known that if some observations in a sample from the probability density are not available, then in general the density cannot be estimated. A possible remedy is to use an auxiliary variable that explains the missing mechanism. For this setting a data-driven estimator is proposed that mimics performance of an oracle that knows all observations from the sample. It is also proved that the estimator adapts to unknown smoothness of the density and its mean integrated squared error converges with a minimax rate. A numerical study, together with the analysis of a real data, shows that the estimator is feasible for small samples.
Keywords
												
											Related Topics
												
													Physical Sciences and Engineering
													Mathematics
													Applied Mathematics
												
											Authors
												Sam Efromovich, 
											