In its classical flavour the Support Vector Machine (SVM) is a binary classifier (i.e., it solves classification problems involving two classes). However, it can be also used to solve multi-class classification problems by applying techniques likes One versus One, One Versus All or Error Correcting Output Codes [Alwein et al.]. Also recently, a new modification of the classical SVM the multiclass-SVM allows to solve directly multi-class classification problems [Crammer et al.].
Now as far as it concerns document classification, your main problem is feature extraction (i.e., how to acquire certain classification features from your documents). This is not a trivial task and there's a batch of bibliography on the topic (e.g., [Rehman et al.], [Lewis]).
Once you've overcome the obstacle of feature extraction, and have labeled and placed your document samples in a feature space you can apply any classification algorithm like SVMs, AdaBoost e.t.c.
Introductory books on machine learning:
[Flach], [Mohri], [Alpaydin], [Bishop], [Hastie]
Books specific for SVMs:
Some specific bibliography on document classification and SVMs:
[Miner et al.], [Srivastava et al.], [Weiss et al.], [Pilászy], [Joachims], [Joachims01], [Joachims97], [Sassano]