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A model that was trained on a dense dataset makes incorrect predictions for sparse datasets #51

@SamWqc

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@SamWqc

Hi,
I found that the prediction results produce by python lightgbm model and pmml file is different.
It happens when training data did not contain missing value but predict the data which contains missing value.

Here is the example to show this case.

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