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Dataset preparation about neuralcoref HOT 3 CLOSED

negacy avatar negacy commented on July 3, 2024
Dataset preparation

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Comments (3)

thomwolf avatar thomwolf commented on July 3, 2024

Hi @negacy,
I show an example of file in the blog post detailing the training process here.
The main function parsing the file is load_file in `collparser.py which is here
You should check it to see the file format and adapt it if you don't use the OntoNote dataset.

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negacy avatar negacy commented on July 3, 2024

Hi @thomwolf,
I prepared my dataset similar to the CoNLL format, but since some of the information are missing, for example column number 6, I was wondering if all the columns are required in order to continue training. Thanks. Negacy.

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stale avatar stale commented on July 3, 2024

This issue has been automatically marked as stale because it has not had recent activity. It will be closed if no further activity occurs. Thank you for your contributions.

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