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Situation when there is strong linear relationship among predictor variables, so that their correlation matrix becomes (almost) singular. This "ill condition" makes it hard to determine the unique role each of the predictors is playing: estimation problems arise and standard errors are increased. Bivariately very high correlated predictors are one example of multicollinearity.
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R - checking colinearity of 3 categorial and 1 continuous variables
I have the following variables which are expected to influence the dependent variable kg waste:
turnover (continuous),
restaurant type (either D or I),
operation (either P or N),
owner (either M or F …