Some Remarks on Rao and Lovric’s ‘Testing Point Null Hypothesis of a Normal Mean and the Truth: 21st Century Perspective’

@article{Zumbo2016SomeRO,
  title={Some Remarks on Rao and Lovric’s ‘Testing Point Null Hypothesis of a Normal Mean and the Truth: 21st Century Perspective’},
  author={Bruno D. Zumbo and Edward Kroc},
  journal={Journal of Modern Applied Statistical Methods},
  year={2016},
  volume={15},
  pages={5}
}
Towards Generalized Noise-Level Dependent Crystallographic Symmetry Classifications of More or Less Periodic Crystal Patterns
  • P. Moeck
  • Physics, Computer Science
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  • 2018
TLDR
G-AICs for generalized noise-level dependent crystallographic symmetry classifications of two-dimensional images that are more or less periodic in either two or one dimensions as well as Akaike weights for multi-model inferences and predictions are reviewed. Expand
On Models and Modeling in Measurement and Validation Studies
This chapter focuses on a description of models and modeling practices in test validation and measurement in a broad sense. The varieties of models and modeling activities are described from aExpand

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