Multi-collinearity is a type of disturbance in data, where the independent variables are related to each other making the statistical inference redundant.
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2. Heteroscedasticity
Heteroscedasticity or Heteroskedasticity occurs when the size of the error term varies across the values of the independent variable.
3. Auto correlation
It measures the relationship between a variables’ current value and past value.
4. Model Specification Errors
This error occurs due to misspecification of assumption or variable while setting the model.
5. Non-stationarity of Time Series
It has dynamic variable and mean over time in contrast to stationary time series.