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Measurement Error in Linear Multiple Regression Models Ulf H Olsson Professor Dep. Of Economics
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Ulf H. Olsson The stadard linear multiple regression Model
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Ulf H. Olsson Measurement Error/Errors-in-variables
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Ulf H. Olsson The consequences of neglecting the measurent error
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Ulf H. Olsson The consequences of neglecting the measurent error The probability limits of the two estimators when there is measurement error present: The disturbance term shares a stochastic term (V) with the regressor matrix => u is correlated with X and hence E(u|X) 0
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Ulf H. Olsson The consequences of neglecting the measurent error Lack of orthogonality – crucial assumption underlying the use of OLS is violated !
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Ulf H. Olsson The consequences of neglecting the measurent error The inconsistency of b
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Ulf H. Olsson The consequences of neglecting the measurent error The inconsistency of b
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Ulf H. Olsson The consequences of neglecting the measurent error The inconsistency of b Bias towards zero (attenuation) for g=1 In multiple regression context things are less clear cut. Not all estimates are necessarilly biased towards zero, but there is an overall attenuation effect.
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Ulf H. Olsson The consequences of neglecting the measurent error In the limit we find:
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Ulf H. Olsson The consequences of neglecting the measurent error The estimator is biased upward
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Ulf H. Olsson The consequences of neglecting the measurent error
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Ulf H. Olsson The consequences of neglecting the measurent error
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