We discuss the approach to estimate aggregation and adaptive estimation based upon (nearly optimal) testing of convex hypotheses. We show that in the situation where the observations stem from {\em simple observation schemes} and where set of unknown signals is a finite union of convex and compact sets, the proposed approach leads to aggregation and adaptation routines with nearly optimal performance. As an illustration, we consider application of the proposed estimates to the problem of recovery of unknown signal known to belong to a union of ellitopes in Gaussian observation scheme. The proposed approach can be implemented efficiently when the number of sets in the union is "not very large." We conclude the paper with a small simulation study illustrating practical performance of the proposed procedures in the problem of signal estimation in the single-index model.
翻译:我们讨论了基于(近乎最佳的)测测曲线假设的汇总和适应性估计方法。我们表明,在观测来自“简单观察计划 ” 和一组未知信号是组合和紧凑组合的有限结合的情况下,拟议方法导致集成和适应性常规,其性能几乎是最佳的。举例来说,我们考虑将拟议估算用于恢复已知属于高斯观察计划内电子装置联盟的未知信号的问题。当联盟内各套装置的数量“不是很大”时,拟议方法可以有效付诸实施。我们以一个小型模拟研究来结束文件,其中说明了在单一指数模型内信号估计问题上拟议程序的实际表现。