X-Git-Url: https://git.njae.me.uk/?a=blobdiff_plain;f=language_models.py;h=a6a711f1562d8c70f091165fa15330a825a48559;hb=21c390a77d42729afa23844ef2f1295106bed3de;hp=1b90ac2ca425c1a246b410ac2f7a588931105f00;hpb=27abb216333fda20dc857a8a501fbee4a4a962f4;p=cipher-tools.git diff --git a/language_models.py b/language_models.py index 1b90ac2..a6a711f 100644 --- a/language_models.py +++ b/language_models.py @@ -5,55 +5,14 @@ import collections import unicodedata import itertools from math import log10 +import os -def letters(text): - """Remove all non-alphabetic characters from a text - >>> letters('The Quick') - 'TheQuick' - >>> letters('The Quick BROWN fox jumped! over... the (9lazy) DOG') - 'TheQuickBROWNfoxjumpedoverthelazyDOG' - """ - return ''.join([c for c in text if c in string.ascii_letters]) - -def unaccent(text): - """Remove all accents from letters. - It does this by converting the unicode string to decomposed compatability - form, dropping all the combining accents, then re-encoding the bytes. - - >>> unaccent('hello') - 'hello' - >>> unaccent('HELLO') - 'HELLO' - >>> unaccent('héllo') - 'hello' - >>> unaccent('héllö') - 'hello' - >>> unaccent('HÉLLÖ') - 'HELLO' - """ - return unicodedata.normalize('NFKD', text).\ - encode('ascii', 'ignore').\ - decode('utf-8') - -def sanitise(text): - """Remove all non-alphabetic characters and convert the text to lowercase - - >>> sanitise('The Quick') - 'thequick' - >>> sanitise('The Quick BROWN fox jumped! over... the (9lazy) DOG') - 'thequickbrownfoxjumpedoverthelazydog' - >>> sanitise('HÉLLÖ') - 'hello' - """ - # sanitised = [c.lower() for c in text if c in string.ascii_letters] - # return ''.join(sanitised) - return letters(unaccent(text)).lower() def datafile(name, sep='\t'): """Read key,value pairs from file. """ - with open(name, 'r') as f: + with open(os.path.join(os.path.dirname(os.path.realpath(__file__)), name), 'r') as f: for line in f: splits = line.split(sep) yield [splits[0], int(splits[1])] @@ -67,25 +26,25 @@ normalised_english_bigram_counts = norms.normalise(english_bigram_counts) english_trigram_counts = collections.Counter(dict(datafile('count_3l.txt'))) normalised_english_trigram_counts = norms.normalise(english_trigram_counts) -with open('words.txt', 'r') as f: +with open(os.path.join(os.path.dirname(os.path.realpath(__file__)), 'words.txt'), 'r') as f: keywords = [line.rstrip() for line in f] def weighted_choice(d): - """Generate random item from a dictionary of item counts - """ - target = random.uniform(0, sum(d.values())) - cuml = 0.0 - for (l, p) in d.items(): - cuml += p - if cuml > target: - return l - return None + """Generate random item from a dictionary of item counts + """ + target = random.uniform(0, sum(d.values())) + cuml = 0.0 + for (l, p) in d.items(): + cuml += p + if cuml > target: + return l + return None def random_english_letter(): - """Generate a random letter based on English letter counts - """ - return weighted_choice(normalised_english_counts) + """Generate a random letter based on English letter counts + """ + return weighted_choice(normalised_english_counts) def ngrams(text, n): @@ -121,7 +80,8 @@ def log_probability_of_unknown_word(key, N): Pw = Pdist(datafile('count_1w.txt'), log_probability_of_unknown_word) Pl = Pdist(datafile('count_1l.txt'), lambda _k, _N: 0) -Pl2 = Pdist(datafile('count_2l.txt'), lambda _k, _N: 0) +P2l = Pdist(datafile('count_2l.txt'), lambda _k, _N: 0) +P3l = Pdist(datafile('count_3l.txt'), lambda _k, _N: 0) def Pwords(words): """The Naive Bayes log probability of a sequence of words. @@ -139,15 +99,23 @@ def Pbigrams(letters): """ return sum(P2l[p] for p in ngrams(letters, 2)) +def Ptrigrams(letters): + """The Naive Bayes log probability of the trigrams formed from a sequence + of letters. + """ + return sum(P3l[p] for p in ngrams(letters, 3)) + def cosine_distance_score(text): """Finds the dissimilarity of a text to English, using the cosine distance of the frequency distribution. >>> cosine_distance_score('abcabc') # doctest: +ELLIPSIS - 0.370847405... + 0.73777... """ - return norms.cosine_distance(english_counts, + # return norms.cosine_distance(english_counts, + # collections.Counter(sanitise(text))) + return 1 - norms.cosine_similarity(english_counts, collections.Counter(sanitise(text)))