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nlp4e.py
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"""Natural Language Processing (Chapter 22)"""
from collections import defaultdict
from utils4e import weighted_choice
import copy
import operator
import heapq
from search import Problem
# ______________________________________________________________________________
# 22.2 Grammars
def Rules(**rules):
"""Create a dictionary mapping symbols to alternative sequences.
>>> Rules(A = "B C | D E")
{'A': [['B', 'C'], ['D', 'E']]}
"""
for (lhs, rhs) in rules.items():
rules[lhs] = [alt.strip().split() for alt in rhs.split('|')]
return rules
def Lexicon(**rules):
"""Create a dictionary mapping symbols to alternative words.
>>> Lexicon(Article = "the | a | an")
{'Article': ['the', 'a', 'an']}
"""
for (lhs, rhs) in rules.items():
rules[lhs] = [word.strip() for word in rhs.split('|')]
return rules
class Grammar:
def __init__(self, name, rules, lexicon):
"""A grammar has a set of rules and a lexicon."""
self.name = name
self.rules = rules
self.lexicon = lexicon
self.categories = defaultdict(list)
for lhs in lexicon:
for word in lexicon[lhs]:
self.categories[word].append(lhs)
def rewrites_for(self, cat):
"""Return a sequence of possible rhs's that cat can be rewritten as."""
return self.rules.get(cat, ())
def isa(self, word, cat):
"""Return True iff word is of category cat"""
return cat in self.categories[word]
def cnf_rules(self):
"""Returns the tuple (X, Y, Z) for rules in the form:
X -> Y Z"""
cnf = []
for X, rules in self.rules.items():
for (Y, Z) in rules:
cnf.append((X, Y, Z))
return cnf
def generate_random(self, S='S'):
"""Replace each token in S by a random entry in grammar (recursively)."""
import random
def rewrite(tokens, into):
for token in tokens:
if token in self.rules:
rewrite(random.choice(self.rules[token]), into)
elif token in self.lexicon:
into.append(random.choice(self.lexicon[token]))
else:
into.append(token)
return into
return ' '.join(rewrite(S.split(), []))
def __repr__(self):
return '<Grammar {}>'.format(self.name)
def ProbRules(**rules):
"""Create a dictionary mapping symbols to alternative sequences,
with probabilities.
>>> ProbRules(A = "B C [0.3] | D E [0.7]")
{'A': [(['B', 'C'], 0.3), (['D', 'E'], 0.7)]}
"""
for (lhs, rhs) in rules.items():
rules[lhs] = []
rhs_separate = [alt.strip().split() for alt in rhs.split('|')]
for r in rhs_separate:
prob = float(r[-1][1:-1]) # remove brackets, convert to float
rhs_rule = (r[:-1], prob)
rules[lhs].append(rhs_rule)
return rules
def ProbLexicon(**rules):
"""Create a dictionary mapping symbols to alternative words,
with probabilities.
>>> ProbLexicon(Article = "the [0.5] | a [0.25] | an [0.25]")
{'Article': [('the', 0.5), ('a', 0.25), ('an', 0.25)]}
"""
for (lhs, rhs) in rules.items():
rules[lhs] = []
rhs_separate = [word.strip().split() for word in rhs.split('|')]
for r in rhs_separate:
prob = float(r[-1][1:-1]) # remove brackets, convert to float
word = r[:-1][0]
rhs_rule = (word, prob)
rules[lhs].append(rhs_rule)
return rules
class ProbGrammar:
def __init__(self, name, rules, lexicon):
"""A grammar has a set of rules and a lexicon.
Each rule has a probability."""
self.name = name
self.rules = rules
self.lexicon = lexicon
self.categories = defaultdict(list)
for lhs in lexicon:
for word, prob in lexicon[lhs]:
self.categories[word].append((lhs, prob))
def rewrites_for(self, cat):
"""Return a sequence of possible rhs's that cat can be rewritten as."""
return self.rules.get(cat, ())
def isa(self, word, cat):
"""Return True iff word is of category cat"""
return cat in [c for c, _ in self.categories[word]]
def cnf_rules(self):
"""Returns the tuple (X, Y, Z, p) for rules in the form:
X -> Y Z [p]"""
cnf = []
for X, rules in self.rules.items():
for (Y, Z), p in rules:
cnf.append((X, Y, Z, p))
return cnf
def generate_random(self, S='S'):
"""Replace each token in S by a random entry in grammar (recursively).
Returns a tuple of (sentence, probability)."""
def rewrite(tokens, into):
for token in tokens:
if token in self.rules:
non_terminal, prob = weighted_choice(self.rules[token])
into[1] *= prob
rewrite(non_terminal, into)
elif token in self.lexicon:
terminal, prob = weighted_choice(self.lexicon[token])
into[0].append(terminal)
into[1] *= prob
else:
into[0].append(token)
return into
rewritten_as, prob = rewrite(S.split(), [[], 1])
return (' '.join(rewritten_as), prob)
def __repr__(self):
return '<Grammar {}>'.format(self.name)
E0 = Grammar('E0',
Rules( # Grammar for E_0 [Figure 22.2]
S='NP VP | S Conjunction S',
NP='Pronoun | Name | Noun | Article Noun | Digit Digit | NP PP | NP RelClause',
VP='Verb | VP NP | VP Adjective | VP PP | VP Adverb',
PP='Preposition NP',
RelClause='That VP'),
Lexicon( # Lexicon for E_0 [Figure 22.3]
Noun="stench | breeze | glitter | nothing | wumpus | pit | pits | gold | east",
Verb="is | see | smell | shoot | fell | stinks | go | grab | carry | kill | turn | feel", # noqa
Adjective="right | left | east | south | back | smelly | dead",
Adverb="here | there | nearby | ahead | right | left | east | south | back",
Pronoun="me | you | I | it",
Name="John | Mary | Boston | Aristotle",
Article="the | a | an",
Preposition="to | in | on | near",
Conjunction="and | or | but",
Digit="0 | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9",
That="that"
))
E_ = Grammar('E_', # Trivial Grammar and lexicon for testing
Rules(
S='NP VP',
NP='Art N | Pronoun',
VP='V NP'),
Lexicon(
Art='the | a',
N='man | woman | table | shoelace | saw',
Pronoun='I | you | it',
V='saw | liked | feel'
))
E_NP_ = Grammar('E_NP_', # Another Trivial Grammar for testing
Rules(NP='Adj NP | N'),
Lexicon(Adj='happy | handsome | hairy',
N='man'))
E_Prob = ProbGrammar('E_Prob', # The Probabilistic Grammar from the notebook
ProbRules(
S="NP VP [0.6] | S Conjunction S [0.4]",
NP="Pronoun [0.2] | Name [0.05] | Noun [0.2] | Article Noun [0.15] \
| Article Adjs Noun [0.1] | Digit [0.05] | NP PP [0.15] | NP RelClause [0.1]",
VP="Verb [0.3] | VP NP [0.2] | VP Adjective [0.25] | VP PP [0.15] | VP Adverb [0.1]",
Adjs="Adjective [0.5] | Adjective Adjs [0.5]",
PP="Preposition NP [1]",
RelClause="RelPro VP [1]"
),
ProbLexicon(
Verb="is [0.5] | say [0.3] | are [0.2]",
Noun="robot [0.4] | sheep [0.4] | fence [0.2]",
Adjective="good [0.5] | new [0.2] | sad [0.3]",
Adverb="here [0.6] | lightly [0.1] | now [0.3]",
Pronoun="me [0.3] | you [0.4] | he [0.3]",
RelPro="that [0.5] | who [0.3] | which [0.2]",
Name="john [0.4] | mary [0.4] | peter [0.2]",
Article="the [0.5] | a [0.25] | an [0.25]",
Preposition="to [0.4] | in [0.3] | at [0.3]",
Conjunction="and [0.5] | or [0.2] | but [0.3]",
Digit="0 [0.35] | 1 [0.35] | 2 [0.3]"
))
E_Chomsky = Grammar('E_Prob_Chomsky', # A Grammar in Chomsky Normal Form
Rules(
S='NP VP',
NP='Article Noun | Adjective Noun',
VP='Verb NP | Verb Adjective',
),
Lexicon(
Article='the | a | an',
Noun='robot | sheep | fence',
Adjective='good | new | sad',
Verb='is | say | are'
))
E_Prob_Chomsky = ProbGrammar('E_Prob_Chomsky', # A Probabilistic Grammar in CNF
ProbRules(
S='NP VP [1]',
NP='Article Noun [0.6] | Adjective Noun [0.4]',
VP='Verb NP [0.5] | Verb Adjective [0.5]',
),
ProbLexicon(
Article='the [0.5] | a [0.25] | an [0.25]',
Noun='robot [0.4] | sheep [0.4] | fence [0.2]',
Adjective='good [0.5] | new [0.2] | sad [0.3]',
Verb='is [0.5] | say [0.3] | are [0.2]'
))
E_Prob_Chomsky_ = ProbGrammar('E_Prob_Chomsky_',
ProbRules(
S='NP VP [1]',
NP='NP PP [0.4] | Noun Verb [0.6]',
PP='Preposition NP [1]',
VP='Verb NP [0.7] | VP PP [0.3]',
),
ProbLexicon(
Noun='astronomers [0.18] | eyes [0.32] | stars [0.32] | telescopes [0.18]',
Verb='saw [0.5] | \'\' [0.5]',
Preposition='with [1]'
))
# ______________________________________________________________________________
# 22.3 Parsing
class Chart:
"""Class for parsing sentences using a chart data structure.
>>> chart = Chart(E0)
>>> len(chart.parses('the stench is in 2 2'))
1
"""
def __init__(self, grammar, trace=False):
"""A datastructure for parsing a string; and methods to do the parse.
self.chart[i] holds the edges that end just before the i'th word.
Edges are 5-element lists of [start, end, lhs, [found], [expects]]."""
self.grammar = grammar
self.trace = trace
def parses(self, words, S='S'):
"""Return a list of parses; words can be a list or string."""
if isinstance(words, str):
words = words.split()
self.parse(words, S)
# Return all the parses that span the whole input
# 'span the whole input' => begin at 0, end at len(words)
return [[i, j, S, found, []]
for (i, j, lhs, found, expects) in self.chart[len(words)]
# assert j == len(words)
if i == 0 and lhs == S and expects == []]
def parse(self, words, S='S'):
"""Parse a list of words; according to the grammar.
Leave results in the chart."""
self.chart = [[] for i in range(len(words) + 1)]
self.add_edge([0, 0, 'S_', [], [S]])
for i in range(len(words)):
self.scanner(i, words[i])
return self.chart
def add_edge(self, edge):
"""Add edge to chart, and see if it extends or predicts another edge."""
start, end, lhs, found, expects = edge
if edge not in self.chart[end]:
self.chart[end].append(edge)
if self.trace:
print('Chart: added {}'.format(edge))
if not expects:
self.extender(edge)
else:
self.predictor(edge)
def scanner(self, j, word):
"""For each edge expecting a word of this category here, extend the edge."""
for (i, j, A, alpha, Bb) in self.chart[j]:
if Bb and self.grammar.isa(word, Bb[0]):
self.add_edge([i, j + 1, A, alpha + [(Bb[0], word)], Bb[1:]])
def predictor(self, edge):
"""Add to chart any rules for B that could help extend this edge."""
(i, j, A, alpha, Bb) = edge
B = Bb[0]
if B in self.grammar.rules:
for rhs in self.grammar.rewrites_for(B):
self.add_edge([j, j, B, [], rhs])
def extender(self, edge):
"""See what edges can be extended by this edge."""
(j, k, B, _, _) = edge
for (i, j, A, alpha, B1b) in self.chart[j]:
if B1b and B == B1b[0]:
self.add_edge([i, k, A, alpha + [edge], B1b[1:]])
# ______________________________________________________________________________
# CYK Parsing
class Tree:
def __init__(self, root, *args):
self.root = root
self.leaves = [leaf for leaf in args]
def CYK_parse(words, grammar):
""" [Figure 22.6] """
# We use 0-based indexing instead of the book's 1-based.
P = defaultdict(float)
T = defaultdict(Tree)
# Insert lexical categories for each word.
for (i, word) in enumerate(words):
for (X, p) in grammar.categories[word]:
P[X, i, i] = p
T[X, i, i] = Tree(X, word)
# Construct X(i:k) from Y(i:j) and Z(j+1:k), shortest span first
for i, j, k in subspan(len(words)):
for (X, Y, Z, p) in grammar.cnf_rules():
PYZ = P[Y, i, j] * P[Z, j + 1, k] * p
if PYZ > P[X, i, k]:
P[X, i, k] = PYZ
T[X, i, k] = Tree(X, T[Y, i, j], T[Z, j + 1, k])
return T
def subspan(N):
"""returns all tuple(i, j, k) covering a span (i, k) with i <= j < k"""
for length in range(2, N + 1):
for i in range(1, N + 2 - length):
k = i + length - 1
for j in range(i, k):
yield (i, j, k)
# using search algorithms in the searching part
class TextParsingProblem(Problem):
def __init__(self, initial, grammar, goal='S'):
"""
:param initial: the initial state of words in a list.
:param grammar: a grammar object
:param goal: the goal state, usually S
"""
super(TextParsingProblem, self).__init__(initial, goal)
self.grammar = grammar
self.combinations = defaultdict(list) # article combinations
# backward lookup of rules
for rule in grammar.rules:
for comb in grammar.rules[rule]:
self.combinations[' '.join(comb)].append(rule)
def actions(self, state):
actions = []
categories = self.grammar.categories
# first change each word to the article of its category
for i in range(len(state)):
word = state[i]
if word in categories:
for X in categories[word]:
state[i] = X
actions.append(copy.copy(state))
state[i] = word
# if all words are replaced by articles, replace combinations of articles by inferring rules.
if not actions:
for start in range(len(state)):
for end in range(start, len(state) + 1):
# try combinations between (start, end)
articles = ' '.join(state[start:end])
for c in self.combinations[articles]:
actions.append(state[:start] + [c] + state[end:])
return actions
def result(self, state, action):
return action
def h(self, state):
# heuristic function
return len(state)
def astar_search_parsing(words, gramma):
"""bottom-up parsing using A* search to find whether a list of words is a sentence"""
# init the problem
problem = TextParsingProblem(words, gramma, 'S')
state = problem.initial
# init the searching frontier
frontier = [(len(state) + problem.h(state), state)]
heapq.heapify(frontier)
while frontier:
# search the frontier node with lowest cost first
cost, state = heapq.heappop(frontier)
actions = problem.actions(state)
for action in actions:
new_state = problem.result(state, action)
# update the new frontier node to the frontier
if new_state == [problem.goal]:
return problem.goal
if new_state != state:
heapq.heappush(frontier, (len(new_state) + problem.h(new_state), new_state))
return False
def beam_search_parsing(words, gramma, b=3):
"""bottom-up text parsing using beam search"""
# init problem
problem = TextParsingProblem(words, gramma, 'S')
# init frontier
frontier = [(len(problem.initial), problem.initial)]
heapq.heapify(frontier)
# explore the current frontier and keep b new states with lowest cost
def explore(frontier):
new_frontier = []
for cost, state in frontier:
# expand the possible children states of current state
if not problem.goal_test(' '.join(state)):
actions = problem.actions(state)
for action in actions:
new_state = problem.result(state, action)
if [len(new_state), new_state] not in new_frontier and new_state != state:
new_frontier.append([len(new_state), new_state])
else:
return problem.goal
heapq.heapify(new_frontier)
# only keep b states
return heapq.nsmallest(b, new_frontier)
while frontier:
frontier = explore(frontier)
if frontier == problem.goal:
return frontier
return False
# ______________________________________________________________________________
# 22.4 Augmented Grammar
g = Grammar("arithmetic_expression", # A Grammar of Arithmetic Expression
rules={
'Number_0': 'Digit_0', 'Number_1': 'Digit_1', 'Number_2': 'Digit_2',
'Number_10': 'Number_1 Digit_0', 'Number_11': 'Number_1 Digit_1',
'Number_100': 'Number_10 Digit_0',
'Exp_5': ['Number_5', '( Exp_5 )', 'Exp_1, Operator_+ Exp_4', 'Exp_2, Operator_+ Exp_3',
'Exp_0, Operator_+ Exp_5', 'Exp_3, Operator_+ Exp_2', 'Exp_4, Operator_+ Exp_1',
'Exp_5, Operator_+ Exp_0', 'Exp_1, Operator_* Exp_5'], # more possible combinations
'Operator_+': operator.add, 'Operator_-': operator.sub, 'Operator_*': operator.mul,
'Operator_/': operator.truediv,
'Digit_0': 0, 'Digit_1': 1, 'Digit_2': 2, 'Digit_3': 3, 'Digit_4': 4
},
lexicon={})
g = Grammar("Ali loves Bob", # A example grammer of Ali loves Bob example
rules={
"S_loves_ali_bob": "NP_ali, VP_x_loves_x_bob", "S_loves_bob_ali": "NP_bob, VP_x_loves_x_ali",
"VP_x_loves_x_bob": "Verb_xy_loves_xy NP_bob", "VP_x_loves_x_ali": "Verb_xy_loves_xy NP_ali",
"NP_bob": "Name_bob", "NP_ali": "Name_ali"
},
lexicon={
"Name_ali": "Ali", "Name_bob": "Bob", "Verb_xy_loves_xy": "loves"
})