Final answer:
The OLS estimator of the slope (beta 1), which represents the estimated relationship between people's weight and the number of times they eat out in a month, is 1.22 when rounded to two decimal places.
Step-by-step explanation:
To estimate the slope (beta 1) of the population regression line using the Ordinary Least Squares (OLS) method, we use the covariance of weight (W) and the number of times eating out (EO) divided by the variance of eating out (EO). Given the covariance is 4.94 and the variance is 4.04, the calculation for the slope would be:
slope (beta 1) = covariance / variance = 4.94 / 4.04
Therefore, the OLS estimator of the slope beta 1 is:
beta 1 = 1.22 (rounded to two decimal places)