X-Git-Url: https://git.njae.me.uk/?a=blobdiff_plain;f=language_models.py;h=0fa6e85dc7f3732e2c36a1c1bc4ead827005023e;hb=defd4de8e665aa31bbf17487bcd5517c5c84b092;hp=8824bca4597327623798382288c2bcffb9d8005b;hpb=162d24790a67f99182b5252978146f33e96e4747;p=cipher-tools.git diff --git a/language_models.py b/language_models.py index 8824bca..0fa6e85 100644 --- a/language_models.py +++ b/language_models.py @@ -126,6 +126,7 @@ 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) 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. @@ -143,15 +144,29 @@ def Pbigrams(letters): """ return sum(P2l[p] for p in ngrams(letters, 2)) +def Pbigrams(letters): + """The Naive Bayes log probability of the bigrams formed from a sequence + of 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)))