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text.py
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"""Statistical Language Processing tools. (Chapter 22)
We define Unigram and Ngram text models, use them to generate random text,
and show the Viterbi algorithm for segmentatioon of letters into words.
Then we show a very simple Information Retrieval system, and an example
working on a tiny sample of Unix manual pages."""
from utils import *
from learning import CountingProbDist
from math import log, exp
import re, search
class UnigramTextModel(CountingProbDist):
"""This is a discrete probability distribution over words, so you
can add, sample, or get P[word], just like with CountingProbDist. You can
also generate a random text n words long with P.samples(n)"""
def samples(self, n):
"Return a string of n words, random according to the model."
return ' '.join([self.sample() for i in range(n)])
class NgramTextModel(CountingProbDist):
"""This is a discrete probability distribution over n-tuples of words.
You can add, sample or get P[(word1, ..., wordn)]. The method P.samples(n)
builds up an n-word sequence; P.add and P.add_sequence add data."""
def __init__(self, n, observation_sequence=[]):
## In addition to the dictionary of n-tuples, cond_prob is a
## mapping from (w1, ..., wn-1) to P(wn | w1, ... wn-1)
CountingProbDist.__init__(self)
self.n = n
self.cond_prob = DefaultDict(CountingProbDist())
self.add_sequence(observation_sequence)
## __getitem__, top, sample inherited from CountingProbDist
## Note they deal with tuples, not strings, as inputs
def add(self, ngram):
"""Count 1 for P[(w1, ..., wn)] and for P(wn | (w1, ..., wn-1)"""
CountingProbDist.add(self, ngram)
self.cond_prob[ngram[:-1]].add(ngram[-1])
def add_sequence(self, words):
"""Add each of the tuple words[i:i+n], using a sliding window.
Prefix some copies of the empty word, '', to make the start work."""
n = self.n
words = ['',] * (n-1) + words
for i in range(len(words)-n):
self.add(tuple(words[i:i+n]))
def samples(self, nwords):
"""Build up a random sample of text nwords words long, using
the conditional probability given the n-1 preceding words."""
n = self.n
nminus1gram = ('',) * (n-1)
output = []
for i in range(nwords):
if nminus1gram not in self.cond_prob:
nminus1gram = ('',) * (n-1) # Cannot continue, so restart.
wn = self.cond_prob[nminus1gram].sample()
output.append(wn)
nminus1gram = nminus1gram[1:] + (wn,)
return ' '.join(output)
#______________________________________________________________________________
def viterbi_segment(text, P):
"""Find the best segmentation of the string of characters, given the
UnigramTextModel P."""
# best[i] = best probability for text[0:i]
# words[i] = best word ending at position i
n = len(text)
words = [''] + list(text)
best = [1.0] + [0.0] * n
## Fill in the vectors best, words via dynamic programming
for i in range(n+1):
for j in range(0, i):
w = text[j:i]
if P[w] * best[i - len(w)] >= best[i]:
best[i] = P[w] * best[i - len(w)]
words[i] = w
## Now recover the sequence of best words
sequence = []; i = len(words)-1
while i > 0:
sequence[0:0] = [words[i]]
i = i - len(words[i])
## Return sequence of best words and overall probability
return sequence, best[-1]
#______________________________________________________________________________
class IRSystem:
"""A very simple Information Retrieval System, as discussed in Sect. 23.2.
The constructor s = IRSystem('the a') builds an empty system with two
stopwords. Next, index several documents with s.index_document(text, url).
Then ask queries with s.query('query words', n) to retrieve the top n
matching documents. Queries are literal words from the document,
except that stopwords are ignored, and there is one special syntax:
The query "learn: man cat", for example, runs "man cat" and indexes it."""
def __init__(self, stopwords='the a of'):
"""Create an IR System. Optionally specify stopwords."""
## index is a map of {word: {docid: count}}, where docid is an int,
## indicating the index into the documents list.
update(self, index=DefaultDict(DefaultDict(0)),
stopwords=set(words(stopwords)), documents=[])
def index_collection(self, filenames):
"Index a whole collection of files."
for filename in filenames:
self.index_document(open(filename).read(), filename)
def index_document(self, text, url):
"Index the text of a document."
## For now, use first line for title
title = text[:text.index('\n')].strip()
docwords = words(text)
docid = len(self.documents)
self.documents.append(Document(title, url, len(docwords)))
for word in docwords:
if word not in self.stopwords:
self.index[word][docid] += 1
def query(self, query_text, n=10):
"""Return a list of n (score, docid) pairs for the best matches.
Also handle the special syntax for 'learn: command'."""
if query_text.startswith("learn:"):
doctext = os.popen(query_text[len("learn:"):], 'r').read()
self.index_document(doctext, query_text)
return []
qwords = [w for w in words(query_text) if w not in self.stopwords]
shortest = argmin(qwords, lambda w: len(self.index[w]))
docs = self.index[shortest]
results = [(sum([self.score(w, d) for w in qwords]), d) for d in docs]
results.sort(); results.reverse()
return results[:n]
def score(self, word, docid):
"Compute a score for this word on this docid."
## There are many options; here we take a very simple approach
return (math.log(1 + self.index[word][docid])
/ math.log(1 + self.documents[docid].nwords))
def present(self, results):
"Present the results as a list."
for (score, d) in results:
doc = self.documents[d]
print ("%5.2f|%25s | %s"
% (100 * score, doc.url, doc.title[:45].expandtabs()))
def present_results(self, query_text, n=10):
"Get results for the query and present them."
self.present(self.query(query_text, n))
class UnixConsultant(IRSystem):
"""A trivial IR system over a small collection of Unix man pages."""
def __init__(self):
IRSystem.__init__(self, stopwords="how do i the a of")
import os
mandir = '../data/MAN/'
man_files = [mandir + f for f in os.listdir(mandir)
if f.endswith('.txt')]
self.index_collection(man_files)
class Document:
"""Metadata for a document: title and url; maybe add others later."""
def __init__(self, title, url, nwords):
update(self, title=title, url=url, nwords=nwords)
def words(text, reg=re.compile('[a-z0-9]+')):
"""Return a list of the words in text, ignoring punctuation and
converting everything to lowercase (to canonicalize).
>>> words("``EGAD!'' Edgar cried.")
['egad', 'edgar', 'cried']
"""
return reg.findall(text.lower())
def canonicalize(text):
"""Return a canonical text: only lowercase letters and blanks.
>>> canonicalize("``EGAD!'' Edgar cried.")
'egad edgar cried'
"""
return ' '.join(words(text))
#______________________________________________________________________________
## Example application (not in book): decode a cipher.
## A cipher is a code that substitutes one character for another.
## A shift cipher is a rotation of the letters in the alphabet,
## such as the famous rot13, which maps A to N, B to M, etc.
#### Encoding
def shift_encode(plaintext, n):
"""Encode text with a shift cipher that moves each letter up by n letters.
>>> shift_encode('abc z', 1)
'bcd a'
"""
return encode(plaintext, alphabet[n:] + alphabet[:n])
def rot13(plaintext):
"""Encode text by rotating letters by 13 spaces in the alphabet.
>>> rot13('hello')
'uryyb'
>>> rot13(rot13('hello'))
'hello'
"""
return shift_encode(plaintext, 13)
def encode(plaintext, code):
"Encodes text, using a code which is a permutation of the alphabet."
from string import maketrans
trans = maketrans(alphabet + alphabet.upper(), code + code.upper())
return plaintext.translate(trans)
alphabet = 'abcdefghijklmnopqrstuvwxyz'
def bigrams(text):
"""Return a list of pairs in text (a sequence of letters or words).
>>> bigrams('this')
['th', 'hi', 'is']
>>> bigrams(['this', 'is', 'a', 'test'])
[['this', 'is'], ['is', 'a'], ['a', 'test']]
"""
return [text[i:i+2] for i in range(len(text) - 1)]
#### Decoding a Shift (or Caesar) Cipher
class ShiftDecoder:
"""There are only 26 possible encodings, so we can try all of them,
and return the one with the highest probability, according to a
bigram probability distribution."""
def __init__(self, training_text):
training_text = canonicalize(training_text)
self.P2 = CountingProbDist(bigrams(training_text), default=1)
def score(self, plaintext):
"Return a score for text based on how common letters pairs are."
s = 1.0
for bi in bigrams(plaintext):
s = s * self.P2[bi]
return s
def decode(self, ciphertext):
"Return the shift decoding of text with the best score."
return argmax(all_shifts(ciphertext), self.score)
def all_shifts(text):
"Return a list of all 26 possible encodings of text by a shift cipher."
return [shift_encode(text, n) for n in range(len(alphabet))]
#### Decoding a General Permutation Cipher
class PermutationDecoder:
"""This is a much harder problem than the shift decoder. There are 26!
permutations, so we can't try them all. Instead we have to search.
We want to search well, but there are many things to consider:
Unigram probabilities (E is the most common letter); Bigram probabilities
(TH is the most common bigram); word probabilities (I and A are the most
common one-letter words, etc.); etc.
We could represent a search state as a permutation of the 26 letters,
and alter the solution through hill climbing. With an initial guess
based on unigram probabilities, this would probably fare well. However,
I chose instead to have an incremental representation. A state is
represented as a letter-to-letter map; for example {'z': 'e'} to
represent that 'z' will be translated to 'e'.
"""
def __init__(self, training_text, ciphertext=None):
self.Pwords = UnigramTextModel(words(training_text))
self.P1 = UnigramTextModel(training_text) # By letter
self.P2 = NgramTextModel(2, training_text) # By letter pair
def decode(self, ciphertext):
"Search for a decoding of the ciphertext."
self.ciphertext = ciphertext
problem = PermutationDecoderProblem(decoder=self)
return search.best_first_tree_search(
problem, lambda node: self.score(node.state))
def score(self, code):
"""Score is product of word scores, unigram scores, and bigram scores.
This can get very small, so we use logs and exp."""
text = permutation_decode(self.ciphertext, code)
logP = (sum([log(self.Pwords[word]) for word in words(text)]) +
sum([log(self.P1[c]) for c in text]) +
sum([log(self.P2[b]) for b in bigrams(text)]))
return exp(logP)
class PermutationDecoderProblem(search.Problem):
def __init__(self, initial=None, goal=None, decoder=None):
self.initial = initial or {}
self.decoder = decoder
def actions(self, state):
## Find the best
p, plainchar = max([(self.decoder.P1[c], c)
for c in alphabet if c not in state])
succs = [extend(state, plainchar, cipherchar)] #????
def goal_test(self, state):
"We're done when we get all 26 letters assigned."
return len(state) >= 26
#______________________________________________________________________________
__doc__ += """
## Create a Unigram text model from the words in the book "Flatland".
>>> flatland = DataFile("EN-text/flatland.txt").read()
>>> wordseq = words(flatland)
>>> P = UnigramTextModel(wordseq)
## Now do segmentation, using the text model as a prior.
>>> s, p = viterbi_segment('itiseasytoreadwordswithoutspaces', P)
>>> s
['it', 'is', 'easy', 'to', 'read', 'words', 'without', 'spaces']
>>> 1e-30 < p < 1e-20
True
>>> s, p = viterbi_segment('wheninthecourseofhumaneventsitbecomesnecessary', P)
>>> s
['when', 'in', 'the', 'course', 'of', 'human', 'events', 'it', 'becomes', 'necessary']
## Test the decoding system
>>> shift_encode("This is a secret message.", 17)
'Kyzj zj r jvtivk dvjjrxv.'
>>> ring = ShiftDecoder(flatland)
>>> ring.decode('Kyzj zj r jvtivk dvjjrxv.')
'This is a secret message.'
>>> ring.decode(rot13('Hello, world!'))
'Hello, world!'
## CountingProbDist
## Add a thousand samples of a roll of a die to D.
>>> D = CountingProbDist()
>>> for i in range(10000):
... D.add(random.choice('123456'))
>>> ps = [D[n] for n in '123456']
>>> 1./7. <= min(ps) <= max(ps) <= 1./5.
True
"""
__doc__ += ("""
## Compare 1-, 2-, and 3-gram word models of the same text.
>>> flatland = DataFile("EN-text/flatland.txt").read()
>>> wordseq = words(flatland)
>>> P1 = UnigramTextModel(wordseq)
>>> P2 = NgramTextModel(2, wordseq)
>>> P3 = NgramTextModel(3, wordseq)
## The most frequent entries in each model
>>> P1.top(10)
[(2081, 'the'), (1479, 'of'), (1021, 'and'), (1008, 'to'), (850, 'a'), (722, 'i'), (640, 'in'), (478, 'that'), (399, 'is'), (348, 'you')]
>>> P2.top(10)
[(368, ('of', 'the')), (152, ('to', 'the')), (152, ('in', 'the')), (86, ('of', 'a')), (80, ('it', 'is')), (71, ('by', 'the')), (68, ('for', 'the')), (68, ('and', 'the')), (62, ('on', 'the')), (60, ('to', 'be'))]
>>> P3.top(10)
[(30, ('a', 'straight', 'line')), (19, ('of', 'three', 'dimensions')), (16, ('the', 'sense', 'of')), (13, ('by', 'the', 'sense')), (13, ('as', 'well', 'as')), (12, ('of', 'the', 'circles')), (12, ('of', 'sight', 'recognition')), (11, ('the', 'number', 'of')), (11, ('that', 'i', 'had')), (11, ('so', 'as', 'to'))]
""")
__doc__ += random_tests("""
## Generate random text from the N-gram models
>>> P1.samples(20)
'you thought known but were insides of see in depend by us dodecahedrons just but i words are instead degrees'
>>> P2.samples(20)
'flatland well then can anything else more into the total destruction and circles teach others confine women must be added'
>>> P3.samples(20)
'flatland by edwin a abbott 1884 to the wake of a certificate from nature herself proving the equal sided triangle'
""")
__doc__ += """
## Probabilities of some common n-grams
>>> P1['the'] #doctest:+ELLIPSIS
0.0611...
>>> P2[('of', 'the')] #doctest:+ELLIPSIS
0.0108...
>>> P3[('', '', 'but')]
0.0
>>> P3[('so', 'as', 'to')] #doctest:+ELLIPSIS
0.000323...
## Distributions given the previous n-1 words
>>> P2.cond_prob['went',].dictionary
{}
>>> P3.cond_prob['in', 'order'].dictionary
{'to': 6}
## Build and test an IR System
>>> uc = UnixConsultant()
>>> uc.present_results("how do I remove a file")
76.83| ../data/MAN/rm.txt | RM(1) FSF RM(1)
67.83| ../data/MAN/tar.txt | TAR(1) TAR(1)
67.79| ../data/MAN/cp.txt | CP(1) FSF CP(1)
66.58| ../data/MAN/zip.txt | ZIP(1L) ZIP(1L)
64.58| ../data/MAN/gzip.txt | GZIP(1) GZIP(1)
63.74| ../data/MAN/pine.txt | pine(1) pine(1)
62.95| ../data/MAN/shred.txt | SHRED(1) FSF SHRED(1)
57.46| ../data/MAN/pico.txt | pico(1) pico(1)
43.38| ../data/MAN/login.txt | LOGIN(1) Linux Programmer's Manual
41.93| ../data/MAN/ln.txt | LN(1) FSF LN(1)
>>> uc.present_results("how do I delete a file")
75.47| ../data/MAN/diff.txt | DIFF(1) GNU Tools DIFF(1)
69.12| ../data/MAN/pine.txt | pine(1) pine(1)
63.56| ../data/MAN/tar.txt | TAR(1) TAR(1)
60.63| ../data/MAN/zip.txt | ZIP(1L) ZIP(1L)
57.46| ../data/MAN/pico.txt | pico(1) pico(1)
51.28| ../data/MAN/shred.txt | SHRED(1) FSF SHRED(1)
26.72| ../data/MAN/tr.txt | TR(1) User Commands TR(1)
>>> uc.present_results("email")
18.39| ../data/MAN/pine.txt | pine(1) pine(1)
12.01| ../data/MAN/info.txt | INFO(1) FSF INFO(1)
9.89| ../data/MAN/pico.txt | pico(1) pico(1)
8.73| ../data/MAN/grep.txt | GREP(1) GREP(1)
8.07| ../data/MAN/zip.txt | ZIP(1L) ZIP(1L)
>>> uc.present_results("word counts for files")
112.38| ../data/MAN/grep.txt | GREP(1) GREP(1)
101.84| ../data/MAN/wc.txt | WC(1) User Commands WC(1)
82.46| ../data/MAN/find.txt | FIND(1L) FIND(1L)
74.64| ../data/MAN/du.txt | DU(1) FSF DU(1)
>>> uc.present_results("learn: date")
>>> uc.present_results("2003")
14.58| ../data/MAN/pine.txt | pine(1) pine(1)
11.62| ../data/MAN/jar.txt | FASTJAR(1) GNU FASTJAR(1)
"""