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The result data is not correct #38
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By the way, I only use low_freq to redd.h5. |
Did you find out what`s wrong? I got the same issue |
I think i know why.These four metrics is for classification.And frige's metadata didn't contain its on_power_threshold ,then it will be set to 10W by default. |
Hello, do you know how to solve this problem |
Hello, do you know how to solve this problem |
放弃了,代码有点久远了...你把Fridge的阈值设置为50W,应该会对。 |
hi, i have run RNN-example.ipynb,but the data is not correct.
my result is
============ Recall: 0.06080812748658777
============ Precision: 0.7873688147161255
============ Accuracy: 0.29049305213046556
============ F1 Score: 0.11289725264136873
============ Relative error in total energy: 0.7858544224150322
============ Mean absolute error(in Watts): 19.859596349905722
but your result is
============ Recall: 0.997835349341
============ Precision: 0.742378777703
============ Accuracy: 0.741308963402
============ F1 Score: 0.851357054837
============ Relative error in total energy: 0.871686427835
============ Mean absolute error(in Watts): 32.2338755931
I don't know what I did wrong.I ran it all according to your code.
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