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Should I model a problem with quantised output as classification or regression?
Would you treat that as regression or classification? In this case the numbers do have a relation to each other e.g. 0.3 is close to 0.4 in meaning. … I could treat it as classification with a softmax final layer with N outputs, or could treat it as regression with a linear layer with single output and then somehow quantise the result post-prediction …