Final answer:
Yes, the regression suffers from omitted variable bias. The researcher should include additional variables in the regression model. Omitted variable bias will likely underestimate the effect of a strong legal system on the number of scandals in a country.
Step-by-step explanation:
Yes, the regression suffers from omitted variable bias. Omitted variable bias occurs when there are important variables that are not included in the regression model and are correlated with both the dependent and independent variable. In this case, there are likely other variables that may influence the number of scandals in a country, such as government transparency, economic stability, and cultural norms. To address this bias, the researcher should include these additional variables in the regression model.
Using the expression for omitted variable bias, it is likely that the regression will underestimate the effect of a strong legal system on the number of scandals in a country (ŝi < Bi). Omitted variable bias tends to bias the coefficient of the included variable towards zero. Since a strong legal system can potentially reduce the number of scandals, not accounting for other influential variables may lead to an underestimation of this effect.