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목록objective functions for machine learning (1)
Let's Run Jinyeah

To improve the performance of a Deep Learning model the goal is to the minimize or maximize the objective function. For regression, classification, and regression problems, the objective function is minimzing the difference between predictions and ground truths. Therefore, the objective function is also called loss functions. Regression Loss Functions Squared Error Loss Absolute Error Loss Huber..
Deep Learning/Theory
2022. 5. 10. 13:14