A training set, in the context of face recognition, is a way to discover relationships between different data sets/the same data set in different contexts. For face recognition, if I give an algorithm seven different pictures of my face and eight different pictures of my friend's face, the idea for the algorithm is to find similarities between the seven pictures of my face/eight different pictures of my friend's face, such that a new picture of either my friend or me could be identified.
See facial recognition on Wikipedia for more.
The input to an algorithm is a list of tagged pictures, tagged meaning a tuple with a picture and the identity of the individual.
train = [(img1, 'Louis'), (img2, 'Louis'), (img3, 'John'), (img4, 'John')]
img_rec = algorithm(train)
Then, you apply your trained algorithm to identify untagged images.
test = [img5, img6, img7]
for i in test:
Which will (ideally) identify the person in the images, assuming you have adequate training data/a good algorithm.
EDIT: Regarding your above comment, yes! Sometimes. Different algorithms use different ID methods. A good site detailing the four main algorithms in use now.