题目
BU.330.780.T1.SP25 Quiz 2- Requires Respondus LockDown Browser
单项选择题
What is the main difference between a classification tree and a linear classifier regarding decision boundaries?
选项
A.Trees use random boundaries; linear classifiers don’t use boundaries.
B.Trees use circular boundaries; linear classifiers use triangular boundaries.
C.Trees use perpendicular decision boundaries; linear classifiers use boundaries in any orientation.
D.They are both linear, but the tree boundaries are created in a stepwise manner.
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标准答案
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思路分析
Question restatement: What is the main difference between a classification tree and a linear classifier regarding decision boundaries?
Option 1: 'Trees use random boundaries; linear classifiers don’t use boundaries.' This is misleading because decision trees do not create boundaries at random; they partition the feature space using axis-aligned splits based on the data and impurity measures. Linear classifiers do use a boundary (a hyperplane) that separates classes, so the claim that trees use random boundaries ......Login to view full explanation登录即可查看完整答案
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