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Grouping similar classes to improve accuracy, whilst maximising number of classes

Suppose I have a large number of distinct classes, some of which are related.

My model has high classification accuracy for some classes, whilst other classes are hard to predict.

How could I group together similar classes such that accuracy improves, whilst maintaining as many distinct classes as possible?

An exhaustive search over the space of combinations is intractable.