题目
题目
单项选择题

Overfitting (1 mark)What is overfitting?[Fill in the blank]

选项
A.A. The situation where a complex model fits the data too well and performs poorly in testing.
B.B. The situation where a complex model fits the data poorly yet performs well in testing.
C.C. Where a complex model is overfit purposely to determine an upper bound on error.
D.D. The situation where without enough data, one cannot start fitting models correctly.
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思路分析
Let’s break down what each option says about overfitting and check it against the standard understanding in machine learning. Option A: 'The situation where a complex model fits the data too well and performs poorly in testing.' This captures the core idea of overfitting: the model captures noise and idiosyncrasies in the training data rather than the underlying signal, leading to high training accuracy but degraded generalization to new......Login to view full explanation

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