We can arrive at our final answer through majority voting or averaging. It's also possible to assign different weights to each model in the ensemble. For averaging, we can also use the geometric mean or the harmonic mean instead of the arithmetic mean. Usually combining the results of models, which are highly correlated to each other doesn't lead to spectacular improvements. It's better to somehow diversify the models, by using different features or different algorithms. If we find that two models are strongly correlated, we may, for example, decide to remove one of them from the ensemble, and increase the weight of the other model proportionally.