I have a question about one of the papers I'm reviewing. The authors used a piecewise growth curve model to estimate trajectories of key variables before and after the middle to high school transition. Their sample is about 2,000 kids pulled from 11 middle schools in one city that were surveyed in both the fall and spring of 7th, 8th, 9th, and 10th grade. In other words, four time points before and after the high school transition. Additionally, the data are obviously nested (observation, individual, school)
They pointed out that the best way to account for the nested structure of the data would be to cluster by school feeder patterns (where kids went to for both middle and high school), but there was significant missing data (about 20%) in the feeder patterns. The authors opted to not cluster by school at all because of the resulting sample size concerns.
Is this the best choice they could have made, or should they have at least nested the students within middle schools? If this is the best choice, how will that affect the results? I worry that not clustering will drastically skew the data. Would love to know your thoughts.