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Extending GroupStruct2: a Bayesian and machine-learning framework for testing taxonomic hypotheses using morphometric data. [PDF]
Chan KO, Grismer LL.
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Contrasting holistic-compensatory with probabilistic heuristic strategies in multi-attribute decisions. [PDF]
Atun G, de Gardelle V, Usher M.
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Assessment of the educational sensory-based approach for dental treatment of children with autism in Central Italy. [PDF]
Corridore D +8 more
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Consistency of BIC Model Averaging
Statistica Sinica, 2023Summary: BIC weighting is frequently applied to high-dimensional linear regressions when model averaging is used to address model selection uncertainty. It also plays a central role in model selection diagnostics. However, little research has been done on its consistency or weak consistency, which are crucial properties of model averaging methods.
Chen, Ze +3 more
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Conference on Lasers and Electro-Optics, 2021
We demonstrate lasing with ultralow threshold from small-scale dielectric metasurfaces with only ~10×10 periods operating at a super-BIC regime. Engineered high-Q resonance originates from topological merging of accidental and symmetry-protected bound states in the continuum.
Min-Soo Hwang +7 more
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We demonstrate lasing with ultralow threshold from small-scale dielectric metasurfaces with only ~10×10 periods operating at a super-BIC regime. Engineered high-Q resonance originates from topological merging of accidental and symmetry-protected bound states in the continuum.
Min-Soo Hwang +7 more
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Sociological Methods & Research, 2004
The two most commonly used penalized model selection criteria, the Bayesian information criterion (BIC) and Akaike’s information criterion (AIC), are examined and compared. Their motivations as approximations of two different target quantities are discussed, and their performance in estimating those quantities is assessed.
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The two most commonly used penalized model selection criteria, the Bayesian information criterion (BIC) and Akaike’s information criterion (AIC), are examined and compared. Their motivations as approximations of two different target quantities are discussed, and their performance in estimating those quantities is assessed.
openaire +1 more source

