QUESTION SIX Clearly explain the four unbiased OLS assumptions of the simple linear regression (25 marks)
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The Deep Dive
Let's add a sprinkle of fun to the unbiased OLS assumptions! Firstly, the first assumption revolves around linearity and additivity. This means that the relationship between the dependent and independent variable must be linear—think of a straight line on a graph. If it curves and swoops, it’s not really obeying the rules of linear regression! Next, assumption two is about constant variance, also known as homoscedasticity. This fancy term simply means that the spread of the errors should be roughly the same across all levels of the independent variable. Imagine a firm’s performance across the board—it should neither balloon out of control at the top end nor shrink at the bottom. For the third assumption, we emphasize randomness. Your errors should be randomly distributed, like sprinkles on a cupcake—neither too concentrated nor too sparse in certain areas! Finally, we have no perfect multicollinearity when it comes to the independent variables. Remember, just like in a great buddy movie, you don’t want two variables trying to take the spotlight when they’re basically the same thing. Keep your vars unique!