The advantage of viewing more than the best model is that there might be an alternative not different from the best that is better explained by science. Since AIC and BIC are likelihood based, you can think of the units as standard deviations and anything within 2 or 2.5 units as not statistically different. How many alternatives you need to look at depends on the data and the model. If you're expecting certain variables to be in the model, I'd start with a small number, rerunning the platform with an increased number of models, until either those variables show up or the last model is different from the best. If not, I'd only look at the best model from each group.