I'm trying to write a text normalizer, and one of the basic cases that needs to be handled is turning something like
three point one four or
three point fourteen.
I'm currently using the pattern
nltk.regexp_tokenize, which I believe should handle numbers as well as currency and percentages. However, at the moment, something like
$23.50 is handled perfectly (it parses to
3.14 is parsing to
['3', '14'] - the decimal point is being dropped.
I've tried adding a pattern separate
\d+.\d+ to my regexp, but that didn't help (and shouldn't my current pattern match that already?)
Edit 2: I also just discovered that the
% part doesn't seem to be working correctly either -
20% returns just
['20']. I feel like there must be something wrong with my regexp, but I've tested it in Pythex and it seems fine?
Edit: Here is my code.
import nltk import re pattern = r'''(?x) # set flag to allow verbose regexps ([A-Z]\.)+ # abbreviations, e.g. U.S.A. | \w+([-']\w+)* # words w/ optional internal hyphens/apostrophe | \$?\d+(\.\d+)?%? # numbers, incl. currency and percentages | [+/\-@&*] # special characters with meanings ''' words = nltk.regexp_tokenize(line, pattern) words = [string.lower(w) for w in words] print words
Here are some of my test strings:
32188 2598473 26 letters from A to Z 3.14 is pi. <-- ['3', '14', 'is', 'pi'] My weight is about 68 kg, +/- 10 grams. Good muffins cost $3.88 in New York <-- ['good', 'muffins', 'cost', '$3.88', 'in', 'new', 'york']