SVM - confusion between vectors and points

Why in the theory of support vector machines, the points from the training set which lie on the margin of the maximum-margin hyperplane are called the support vectors? They are points, aren't they?

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In this situation, points and vectors are really the same thing.

Given some fixed origin, each point in space can be described by a vector, and conversely, every vector defines a point in space.

EDIT (based on comment):

The hyperplane is chosen so that it best separates the two classes. It only depends on the vectors nearest the hyperplane - these are called the "support" vectors. The picture on the wikipedia page clasifies this.

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I think I now get it, the separating hyperplane is defined by a vector which is really a linear combination of the points from the training set, which in turn can be treated as vectors. That's why they call them support vectors. –  Bonzoq Oct 31 '12 at 12:35
Exactly. Thanks! –  Bonzoq Oct 31 '12 at 13:01
Actually the support vectors (points) are those `x_i`'s from the dataset, that have the corresponding `alpha_i`'s set to non-zero values in the `Lagrange multipliers` problem statement. See the wikipedia article posted by @daoudc. –  Nejc Nov 2 '12 at 8:28
I think what really answers my question is what @daoudc said in his first response, that is that a point can be defined by a vector at a fixed origin. –  Bonzoq Dec 2 '12 at 21:38