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Why loss is close to 0.1, but the effect is very poor? #34

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wsqat opened this issue Jan 23, 2019 · 2 comments
Open

Why loss is close to 0.1, but the effect is very poor? #34

wsqat opened this issue Jan 23, 2019 · 2 comments

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@wsqat
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wsqat commented Jan 23, 2019

Why loss is close to 0.1, but the effect is very poor? Could you please give me some advices?

@wsqat
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wsqat commented Jan 23, 2019

@liulei01 please

@Viktor-Paul
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Why loss is close to 0.1, but the effect is very poor? Could you please give me some advices?

Do you use your own data set to train the model to test poorly?Have you solved it at last?

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