Why is Multicollinearity a potential issue in data analysis and predictive modeling?
- It can cause instability in the coefficient estimates of regression models.
- It can cause the data to be skewed.
- It can cause the mean and median of the data to be significantly different.
- It can lead to overfitting in machine learning models.
Multicollinearity can cause instability in the coefficient estimates of regression models. This means that small changes in the data can lead to large changes in the model, making the interpretation of the output problematic and unreliable.
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