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I learned about Overfitting and Underfitting of a Model.
1. Underfitting: If a model is too simple that it cannot even understand the pattern of the data, it is known as Underfitting. The model doesn't perform well on the training as well as new data.2: Overfitting: If a model is too complex that it learns the noise and extra details (outliers) of the data, it is known as Overfitting. The model performs well on the training data but performs poorly on the training/ new data.
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in simple words, we say that underfitting needs to be more fit itself and overfitting is an error that learns more about noise and details
once again done overfitting and underfitting
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Done
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learn overfitting and underfitting
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nice
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This lecture covers the important topics of overfitting and underfitting which will more discussed in the coming lectures.
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I learned (Overfitting and Underfitting).
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I learned Overfitting and underfitting these concepts are clear.
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Suppose the model learns the training dataset, like the Y student. They perform very well on the seen dataset but perform badly on unseen data or unknown instances. In such cases, the model is said to be Overfitting.
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AOA, I learned in this lecture about two concepts of ML: overfitting and underfitting. ALLAH KAREEM ap ko dono jahan ki bhalaian ata kry AAMEEN.
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