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Questions about predicting specific DDI types on Dataset2 #7

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bbjy opened this issue Jul 10, 2019 · 1 comment
Open

Questions about predicting specific DDI types on Dataset2 #7

bbjy opened this issue Jul 10, 2019 · 1 comment

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@bbjy
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bbjy commented Jul 10, 2019

Hi, thank you for your work.

I don't understand what it means to predict specific DDI type. How do you conduct this experiments and what's the meaning of the results? The multi-type prediction is a multi-label classification problem, why the ROC-AUC metric could be used? Do the results represent the average of the prediction result of each type?

I am looking forward to your reply! Thank you!

@matenure
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It has been quite long since we finished this work, so I do not quite remember all the details. As to this question, I think we did not predict the specific DDI types, but just predicted whether there is a DDI between two drugs. The label vector for a node is actually a binary vector which indicates the connection with other nodes (each dimension is a drug).

Of course the codes may be possibly adapted to a multi-type DDI prediction, but it needs some extra effort.

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