When multicollinearity is present in a dataset, it can make the coefficients of the variables ___________ and hard to interpret.
- insignificant
- reliable
- stable
- unstable
Multicollinearity can make the coefficients of the variables unstable and sensitive to small changes in the data. This makes the interpretation of individual coefficients unreliable and the model difficult to interpret.
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