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cs501r_f2018:lab4 [2018/09/25 18:01]
rpottorff
cs501r_f2018:lab4 [2018/09/26 00:36]
shreeya
Line 193: Line 193:
 You are welcome (and encouraged) to use the built-in batch normalization and dropout layer. You are welcome (and encouraged) to use the built-in batch normalization and dropout layer.
  
-Guessing that the pixel is not cancerous every single time will give you an accuracy of ~ 85%. Your trained network should be able to do better than that (but you will not be graded on accuracy). ​ I will post my accuracy and loss graph for training dataset soon so you can have a baseline for what your accuracy should be  like.+Guessing that the pixel is not cancerous every single time will give you an accuracy of ~ 85%. Your trained network should be able to do better than that (but you will not be graded on accuracy). ​ 
 + 
 +{{:​cs501r_f2016:​training_accuracy.png?400|}}  
 +{{:​cs501r_f2016:​training_loss.png?​400|}}
cs501r_f2018/lab4.txt · Last modified: 2021/06/30 23:42 (external edit)