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Old 10-10-2017, 09:57 AM
ghbcode ghbcode is offline
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Default Summary overfit table on page 124

The summary table on the middle of page 124 refers to Figure 4.3.

1. If you increase the number of data points, keeping your H fixed, then you will decrease your overfitting. Got it.

2. If your noise increases, and you keep your H fixed, regardless of the number of data points then overfitting would decrease, no? Why would overfit increase? Isn't overfit usually a function of and overly complex hypothesis?

3. If your target function complexity increases, keeping all else constant, wouldn't that lead to less overfit?

In my opinion this table is not very helpful and neither is figure 4.3. Is there a better way to think about this? In my opinion there should be a third column to better illustrate what is fixed, what is changing and what the end result is
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