Questions
AS.440.617.80.SP25 Quiz 4. Time Series regression
True/False
Autocovariance in residuals of time series regression indicates that OLS should never be applied to estimate coefficients
Options
A.True
B.False
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Step-by-Step Analysis
We start by restating the prompt to focus on the core idea: whether autocovariance in the residuals from a time series regression implies that OLS should never be used to estimate coefficients.
Option 1: True. The claim here is that autocovariance in residuals means OLS should never be applied. This is inaccurate. While autocorrelation of residuals violates one of the Gauss-Markov assumptions that give OLS its optimality pr......Login to view full explanationLog in for full answers
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