multicolinéarité
Multicolinéarité refers to a phenomenon in statistical modeling, particularly in regression analysis, where two or more predictor variables in a dataset are highly correlated. This means that one predictor variable can be linearly predicted from the others with a substantial degree of accuracy. When multicolinéarité is present, it can cause several issues for the model.
The primary consequence of multicolinéarité is that it inflates the variance of the regression coefficients. This
Detecting multicolinéarité typically involves examining correlation matrices between predictor variables or calculating variance inflation factors (VIFs).
Addressing multicolinéarité can involve several strategies. These include removing one of the highly correlated variables, combining