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Create holdout set #145
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Merged
Create holdout set #145
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I think this is ready to merge |
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This PR will select some paper to have an holdout set.
At the moment, as the data set is small, we will use all the documents for create the final models, however we will keep a fixed holdout set to have a more strict and precise evaluation. Except for Units where the evaluation set was borrowed by a different source.
The holdout set was created using an automatic script and re-balanced based on the distribution of entities between training and holdout set.
The python script to reproduce the holdout dataset are contained under
scripts
.The statistics about the training/holdout set can be found in: