Here is a sketch of what the prototype vector is about:
The first thing to note is that a word in wikipedia can be hyperlink to a wikipedia page (which we will call an entity). This entity is related in some way to the word yet the same word could link to different entities.
"for each word or phrase that is linked at least 10 times to a particular entity"
Across wikipedia, we count the number of times that
word_A links to
entity_B, if it's over 10, we continue (writing down where the entities they link from):
[(wordA, entityA1), (wordA, entityA2),...]
wordA occurs in
entityA1 where it links to
"list of all terms which occur in one of the neighbourhoods of the respective links"
wordA has ten words to it's left and right (we show only 4 either side):
are developed and the entity relationships between these data
link # (to entityB)
['are', 'developed, 'and', 'the', 'relationships', 'between', 'these', 'data']
(wordA, entityAi) gives us such a list, concatenate them.
"tf.idf-weighted, normalized list"
Basically, tf.idf means you should give common words less "weight" than less-common words. For example,
'the' are very common words so we give them less meaning (to their being next to
Normalise, means we should (essentially) count the number of times a word occurs (the more it occurs the more associated we think it is to
wordA. Then multiply this count by the weight to get some score with which to sort the list... Putting the most-frequent least-common words at the top.
"Note that one and the same word or phrase can have several such prototype vectors"
This has been not only dependant on
wordA but also
entityB, you could think of it as a mapping.
(wordA, entityB) -> tf.idf-weighted, normalized list (as described above)
(wordA, entityB2) -> a different tf.idf-weighted, normalized list
This is making the point that links to cats from the word
'cat' are less likely to have the neighbour
'batman', than links to cat woman.