Inference for Parameters Defined by Moment Inequalities Using Generalized Moment Selection
Citations Over TimeTop 1% of 2010 papers
Abstract
The topic of this paper is inference in models in which parameters are defined by moment inequalities and/or equalities. The parameters may or may not be identified. This paper introduces a new class of confidence sets and tests based on generalized moment selection (GMS). GMS procedures are shown to have correct asymptotic size in a uniform sense and are shown not to be asymptotically conservative. The power of GMS tests is compared to that of subsampling, m out of n bootstrap, and “plug-in asymptotic” (PA) tests. The latter three procedures are the only general procedures in the literature that have been shown to have correct asymptotic size (in a uniform sense) for the moment inequality/equality model. GMS tests are shown to have asymptotic power that dominates that of subsampling, m out of n bootstrap, and PA tests. Subsampling and m out of n bootstrap tests are shown to have asymptotic power that dominates that of PA tests.
Related Papers
- → DeepSpeed- Inference: Enabling Efficient Inference of Transformer Models at Unprecedented Scale(2022)208 cited
- → On the effectiveness of multilevel selection(2016)4 cited
- → POSITIVE-NEGATIVE ASYMMETRY IN MENTAL STATE INFERENCE: REPLICATION AND EXTENSION(2006)1 cited
- → Methods of Artificial Selection(2022)1 cited
- → Selection and correlated responses to selection.(2011)