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Hello, I got val_loss, f1 and train_loss by using my own data training volume networkIs it convenient to provide your training results?I want to make a reference.
The text was updated successfully, but these errors were encountered:
Hi! I am not sure what you mean by convenient to provide your training results. If I understand it correctly, training results are often reported, but validation and test losses are much more important. If you are writing a paper, you should definitely report validation losses. Let me know if this is what you meant!
Thank you for your reply. I would like to know the logs.csv in your results. I trained with my own data and would like to make a reference to see if my training results are correct.
------------------ 原始邮件 ------------------
发件人: "Tivadar Danka"<[email protected]>;
发送时间: 2019年11月19日(星期二) 晚上7:53
收件人: "cosmic-cortex/pytorch-UNet"<[email protected]>;
抄送: "时光里的流沙"<[email protected]>;"Author"<[email protected]>;
主题: Re: [cosmic-cortex/pytorch-UNet] training results (#3)
Hi! I am not sure what you mean by convenient to provide your training results. If I understand it correctly, training results are often reported, but validation and test losses are much more important. If you are writing a paper, you should definitely report validation losses. Let me know if this is what you meant!
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Hello, I got val_loss, f1 and train_loss by using my own data training volume networkIs it convenient to provide your training results?I want to make a reference.
The text was updated successfully, but these errors were encountered: