题目
Machine Learning: Fundamentals and Applications Quiz 6 Kernel Method
单项选择题
When the number of features is large, kNN should use _______.
选项
A.multiple kernel functions
B.the Gram matrix
C.Manhattan distance
D.Euclidean distance
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标准答案
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思路分析
Question restatement: When the number of features is large, kNN should use _______.
Option 1: 'multiple kernel functions' — This option refers to kernel methods used in algorithms like SVM or kernelized learning. kNN is a instance-based method that relies on distance metrics between data points, not kernel functions. Using multiple kernels is not a standard or practical requirement for kNN, so this is not appropriate.
Option 2: 'the Gram matrix' — The Gram matrix captures pairwise inner products and is central to kernel methods or certain linear algorithms, not to the kNN app......Login to view full explanation登录即可查看完整答案
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