multikolinearno
Multikolinearno, commonly referred to in English as multicollinearity, describes a situation in regression analysis where two or more predictor variables are highly linearly related. When predictors are nearly a linear combination of others, the regression model struggles to identify unique contributions from each variable, and coefficient estimates become unstable.
Causes of multikolinearno include strong correlations among predictors, redundancy from including both a variable and its
The main consequences are inflated standard errors of the estimated coefficients, reduced statistical power to detect
Detection methods commonly rely on the variance inflation factor (VIF) and tolerance. A VIF substantially greater
Remedies include removing or combining correlated predictors, applying dimensionality reduction such as principal component analysis, and