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Parameter Significance & Parsimonious Models
April 13, 2024, midnight | R - datawookie
R-bloggers www.r-bloggers.com
In general a parsimonious model is a good model. A model with too many parameters is likely to overfit the data. So how do we determine when a model is “complex enough” but not “too complex”?
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