2019
DOI: 10.1111/obes.12322
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Bias of OLS Estimators due to Exclusion of Relevant Variables and Inclusion of Irrelevant Variables

Abstract: In this paper, I discuss three issues related to bias of OLS estimators in a general multivariate setting. First, I discuss the bias that arises from omitting relevant variables. I offer a geometric interpretation of such bias and derive sufficient conditions in terms of sign restrictions that allows us to determine the direction of bias. Second, I show that inclusion of some omitted variables will not necessarily reduce the magnitude of bias as long as some others remain omitted. Third, I show that inclusion … Show more

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Cited by 20 publications
(9 citation statements)
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“…31 For exercise, an observation's adequately exercise dummy variable is set to be 1, or "yes", if the individual is active in any set of sports combination summed in the survey. 32 Overall, rummaging through the survey's dataset, we can see that occupations are extensively reported, which may largely influence income. Due to the fact that we may need to use OLS regression in our model, I decide to include the occupation variables and report them in dummy variables.…”
Section: Datamentioning
confidence: 97%
See 2 more Smart Citations
“…31 For exercise, an observation's adequately exercise dummy variable is set to be 1, or "yes", if the individual is active in any set of sports combination summed in the survey. 32 Overall, rummaging through the survey's dataset, we can see that occupations are extensively reported, which may largely influence income. Due to the fact that we may need to use OLS regression in our model, I decide to include the occupation variables and report them in dummy variables.…”
Section: Datamentioning
confidence: 97%
“…https : //www.cdc.gov/alcohol/f aqs.htm#moderateDrinking32 In the CHNS dataset, multiple variables are created to reflect whether the individual is active in any sports. The researchers…”
mentioning
confidence: 99%
See 1 more Smart Citation
“…In the short regression, the J × 1 vector of observable controls, ω o , and the scalar unobserved index, W 2 , have been omitted. Hence, using the wellknown formula for omitted variable bias (OVB) (Basu, 2020), we have…”
Section: A Proof Of Propositionmentioning
confidence: 99%
“…However, the bias crucially depends on the sign of both the correlation between the unobserved shocks with the variables of interest and the impact of those unobserved shocks on productivity. See Basu (2020) for a detailed discussion on this topic and the difficulties in determining the direction of a bias. variable D that is equal to one when a firm belongs to the group defined at the top of each column, and zero otherwise (columns 2-7).…”
Section: Heterogeneitymentioning
confidence: 99%