# Step 2: Build the dictionary and replace rare words with UNK token.
vocabulary_size = 50000
def build_dataset(words, n_words):
"""Process raw inputs into a dataset."""
count = [['UNK', -1]]
count.extend(collections.Counter(words).most_common(n_words - 1))
dictionary = dict()
for word, _ in count:
dictionary[word] = len(dictionary)
data = list()
unk_count = 0
for word in words:
if word in dictionary:
index = dictionary[word]
else:
index = 0 # dictionary['UNK']
unk_count += 1
data.append(index)
count[0][1] = unk_count
reversed_dictionary = dict(zip(dictionary.values(), dictionary.keys()))
return data, count, dictionary, reversed_dictionary
data, count, dictionary, reverse_dictionary = build_dataset(vocabulary,
vocabulary_size)
I am learning the elementary example of Vector Representation of Words using Tensorflow.
This Step 2 is titled as "Build the dictionary and replace rare words with UNK token", however, there's no prior defining process of what "UNK" refers to.
To specify the question:
0) What does UNK generally refer to in NLP?
1) What does count = [['UNK', -1]] mean? I know the bracket [] refer to list in python, however, why do we collocating it with -1?
UNK
means unknown word, a word that doesn't exist the the vocabulary set.count
is supposed to be a list of pairs of form['word', number_of_occurences]
.-1
is apparently a placeholder value which later is filled withcount[0][1] = unk_count
. It's a bad, slow, non-"pythonic way" code. Guido would throw up if he would see this. You will find a lot of bad code in TF tutorials and in TF itself. People from Google and related community often just "make things work" and move on. They don't care whether someone will need to read the resulting mess. Don't look for wisdom there. Use external sources of information when in doubt.