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How to test the statement view #11
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Excuse me again,what are the requirements for the tested data? I find that your data has been marked. Test data is also labeled. |
For your first issue, this project may not support the detection of the overall sentiment (or "view") of the input sentence. For your second issue, the labels for testing data is not used under the evaluation/inference mode. You can set some dummy labels (e.g., randomly sample the labels from the valid tag set) for the input data. |
Thank you for your reply, and ask another question: Does your model do not support downstream tasks? That is, I give a standard text, and the corresponding emotional output cannot be achieved through the model. If it is not supported now, how to adjust the support in the future? Looking forward to your reply, thank you! |
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Thank you for your reply, and ask another question: Does your model do not support downstream tasks? That is, I give a standard text, and the corresponding emotional output cannot be achieved through the model. If it is not supported now, how to adjust the support in the future? Looking forward to your reply, thank you! |
You mean give the input sentence and output the extracted aspect terms as well as the corresponding sentiments/emotions? |
Yes, give the system an unlabeled text, and get the aspects and emotions directly through the system. |
The current strategy in Besides, you also need to add some post-processing function to convert the model output into the desired format. |
Excuse me, has this problem been solved yet |
How to test the statement view, for example, I input "this movie is very good", and feedback positive
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