It might be a very basic question.$\\$ I am considering the SVM optimization problem here.$\\$ In a training set where the data is linearly separable, and we are using a hard margin (no slack allowed), the support vectors lie along the supporting hyperplanes but is the inverse true that all points lying along the supporting hyperplanes are support vectors?
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