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아래 내용은 Udemy에서 Pytorch: Deep Learning and Artificial Intelligence를 보고 정리한 내용이다.
Mean Squared Error
MSE :probabilistic perspective
helps prepare us for the cross-entropy loss
Error = Cost = Loss = Objective
Why is it Squared?
positive 값과 negative값이 있을 수 있기 때문에
MAE
MLE: Maximum Likelihood Estimation(MLE)
eg.: we model the heights of the students in our class as a Gaussian distribution (bell curve)
the "best" estimate for μ
minimizing is the sam as maximizing negative
Binary Cross Entropy
binary classification
Regression: MES, Gaussian distrivution
Binary Classification: Binary Cross-Entropy , Bernoulli distribution
Categorical Cross Entropy
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