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1.The independent variables do not form a linearly dependent set--i.e. the explanatory variables are not perfectly correlated. 2.Homoscedasticity --the probability distributions of the error term have a constant variance for all values of the independent variables ( X i 's). Assumptions of Regression Analysis
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Perfect multicollinearity is a violation of assumption (1).Heteroscedasticity is a violation of assumption (2)
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Suppose we wanted to estimate the following specification using quarterly time series data: Auto Sales t = 0 + 1 Income t + 2 Prices t where Income t is (nominal) income in quarter t and Prices t is an index of auto prices in quarter t. Multicollinearity is a problem with time series regression The data reveal there is a strong (positive) correlation between nominal income and car prices
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0 (Nominal) income Car prices Approximate linear relationship between explanatory variables
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Why is multicollinearity a problem? In the case of perfectly collinear explanatory variables, OLS does not work. In the case where there is an approximate linear relationship among the explanatory variables ( X i’s), the estimates of the coefficients are still unbiased, but you run into the following problems: –High standard errors of the estimates of the coefficients—thus low t-ratios –Co-mingling of the effects of explanatory variables. –Estimates of the coefficients tends to be “unstable.”
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What do about multicollinearity Increase sample size Delete one or more explanatory variables
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Understanding heteroscedasticity This problem pops up when using cross sectional data
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Consider the following model: Y i is the “determined” part of the equation and ε i is the error term. Remember we assume in regression that : E(ε i ) =0
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2 -2 0 4 -4 200 0 -400 -200 400 JAR #1JAR #2 = 0 Two distributions with the same mean and different variances
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X1X1 X2X2 X2X2 X Y 0 f(x) The disturbance distributions of heteroscedasticity
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Household Income Spending for electronics Scatter diagram of ascending heteroscedasticity
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Why is heteroscedasticity a problem? Heteroscedasticity does not give us biased estimates of the coefficients--however, it does make the standard errors of the estimates unreliable. That is, we will understate the standard errors. Due to the aforementioned problem, t-tests cannot be trusted. We run the risk of rejecting a null hypothesis that should not be rejected.
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