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Loss_MIT wrong? #32
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Hi there, |
The imputation values for X are from X_tilde_3, hence it is fine. |
Thank you for your reply , I know that the imputation values for X are from X_tilde_3, just as the code shows: combine X_tilde_1 and X_tilde_2
but the equation in paper is L_MIT=MAE(X_c,X,I) |
Yes, but as I said, the code logic here is right. The parts for loss calculation in |
Thank you for your sincerely reply! I will try it later
宁成林
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…---Original---
From: "Wenjie ***@***.***>
Date: Fri, Jan 19, 2024 18:00 PM
To: ***@***.***>;
Cc: ***@***.******@***.***>;
Subject: Re: [WenjieDu/SAITS] Loss_MIT wrong? (Issue #32)
Yes, but as I said, the code logic here is right. The parts for loss calculation in L_MIT=MAE(X_c,X,I) and
MIT_loss = self.customized_loss_func(X_tilde_3, inputs["X_ori"], inputs["indicating_mask"]) both determined by indicating_mask, i.e., the term I, and they are the same. You can try to replace X_tilde_3 with X_c, the MIT_loss result will not change.
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My pleasure. If you're working on time series imputation, our recent survey work https://github.com/WenjieDu/Awesome_Imputation may be helpful to you. The benchmark code has been open source, and the preprint paper will be released soon. |
好的!非常感谢!
宁成林
***@***.***
…---Original---
From: "Wenjie ***@***.***>
Date: Fri, Jan 19, 2024 19:01 PM
To: ***@***.***>;
Cc: ***@***.******@***.***>;
Subject: Re: [WenjieDu/SAITS] Loss_MIT wrong? (Issue #32)
My pleasure. If you're working on time series imputation, our recent survey work https://github.com/WenjieDu/Awesome_Imputation may be helpful to you. The benchmark code has been open source, and the preprint paper will be released soon.
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I am closing this issue because the proposed questions have been solved. If you have further concerns, reopening it will be welcome. BTW, you can also join our PyPOTS community to discuss research related to partially-observed time series data. |
I saw that the loss of MIT computaion in core.py was
'MIT_loss = self.customized_loss_func(
X_tilde_3, inputs["X_ori"], inputs["indicating_mask"]
)'
,which computed the MAE between M~3 and X_ori and differed to the paper.
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