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F1 79.96 on ontonotes 5 with your pretrained spanbert_large #99

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houliangxue opened this issue Feb 23, 2022 · 1 comment
Open

F1 79.96 on ontonotes 5 with your pretrained spanbert_large #99

houliangxue opened this issue Feb 23, 2022 · 1 comment

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@houliangxue
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Is F1 79.6 the highest score you've ever got on Ontonotes? Why I got F1 79.95 without anything changes for your experiments.conf. Did you set a seed in your experiment?

@preethiseshadri518
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@houliangxue I have a question for you. I am interested in evaluating performance on OntoNotes using the trained BERT-base coreference model. Did you use evaluate.py? If so, what should data_dir vs. <ontonotes/path/ontonotes-release-5.0> path be, and how are they related? My assumption is data_dir can be anything (I have set it to data_dir='.') and ontonotes path is the full path to where I have ontonotes-release-5.0.

Currently, I am getting that evaluate is evaluating on 0 examples, which is not what we want, and I assume it's because I haven't specified the paths correctly. Any help you can provide would be greatly appreciated. Thank you!
Screen Shot 2022-05-11 at 8 40 27 AM

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