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Assessing the practical differences between model selection methods in inferences about choice response time tasks | SpringerLink
An Intuitive Explanation of the Bayesian Information Criterion | by Mikhail Klassen | Towards Data Science
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Bayesian information criterion & Akaike's information criterion
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A graphical framework for model selection criteria and significance tests: refutation, confirmation and ecology - Aho - 2017 - Methods in Ecology and Evolution - Wiley Online Library
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Finite Mixture Models in Market Segmentation: A Review and Suggestions for Best Practices | Semantic Scholar
Bayesian Information Criterion - an overview | ScienceDirect Topics
Neural Mechanism for Coding Depth from Motion Parallax in Area MT: Gain Modulation or Tuning Shifts? | Journal of Neuroscience
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Bayesian (BIC) and Akaike (AIC) information criterion values for... | Download Table
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Schwarz info criteria.
Full article: A discussion of 'prior-based Bayesian information criterion'
Bayesian Information Criterion - an overview | ScienceDirect Topics
PDF] Exponential Smoothing Model Selection for Forecasting | Semantic Scholar
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Cluster Analysis for Gene Expression Data Ka Yee Yeung Center for Expression Arrays Department of Microbiology. - ppt download