peacock-data-public-datasets-idc-cronscript
/
venv
/lib
/python3.10
/site-packages
/nltk
/tbl
/template.py
| # Natural Language Toolkit: Transformation-based learning | |
| # | |
| # Copyright (C) 2001-2023 NLTK Project | |
| # Author: Marcus Uneson <marcus.uneson@gmail.com> | |
| # based on previous (nltk2) version by | |
| # Christopher Maloof, Edward Loper, Steven Bird | |
| # URL: <https://www.nltk.org/> | |
| # For license information, see LICENSE.TXT | |
| import itertools as it | |
| from abc import ABCMeta, abstractmethod | |
| from nltk.tbl.feature import Feature | |
| from nltk.tbl.rule import Rule | |
| class BrillTemplateI(metaclass=ABCMeta): | |
| """ | |
| An interface for generating lists of transformational rules that | |
| apply at given sentence positions. ``BrillTemplateI`` is used by | |
| ``Brill`` training algorithms to generate candidate rules. | |
| """ | |
| def applicable_rules(self, tokens, i, correctTag): | |
| """ | |
| Return a list of the transformational rules that would correct | |
| the ``i``-th subtoken's tag in the given token. In particular, | |
| return a list of zero or more rules that would change | |
| ``tokens[i][1]`` to ``correctTag``, if applied to ``token[i]``. | |
| If the ``i``-th token already has the correct tag (i.e., if | |
| ``tagged_tokens[i][1] == correctTag``), then | |
| ``applicable_rules()`` should return the empty list. | |
| :param tokens: The tagged tokens being tagged. | |
| :type tokens: list(tuple) | |
| :param i: The index of the token whose tag should be corrected. | |
| :type i: int | |
| :param correctTag: The correct tag for the ``i``-th token. | |
| :type correctTag: any | |
| :rtype: list(BrillRule) | |
| """ | |
| def get_neighborhood(self, token, index): | |
| """ | |
| Returns the set of indices *i* such that | |
| ``applicable_rules(token, i, ...)`` depends on the value of | |
| the *index*th token of *token*. | |
| This method is used by the "fast" Brill tagger trainer. | |
| :param token: The tokens being tagged. | |
| :type token: list(tuple) | |
| :param index: The index whose neighborhood should be returned. | |
| :type index: int | |
| :rtype: set | |
| """ | |
| class Template(BrillTemplateI): | |
| """ | |
| A tbl Template that generates a list of L{Rule}s that apply at a given sentence | |
| position. In particular, each C{Template} is parameterized by a list of | |
| independent features (a combination of a specific | |
| property to extract and a list C{L} of relative positions at which to extract | |
| it) and generates all Rules that: | |
| - use the given features, each at its own independent position; and | |
| - are applicable to the given token. | |
| """ | |
| ALLTEMPLATES = [] | |
| # record a unique id of form "001", for each template created | |
| # _ids = it.count(0) | |
| def __init__(self, *features): | |
| """ | |
| Construct a Template for generating Rules. | |
| Takes a list of Features. A C{Feature} is a combination | |
| of a specific property and its relative positions and should be | |
| a subclass of L{nltk.tbl.feature.Feature}. | |
| An alternative calling convention (kept for backwards compatibility, | |
| but less expressive as it only permits one feature type) is | |
| Template(Feature, (start1, end1), (start2, end2), ...) | |
| In new code, that would be better written | |
| Template(Feature(start1, end1), Feature(start2, end2), ...) | |
| For instance, importing some features | |
| >>> from nltk.tbl.template import Template | |
| >>> from nltk.tag.brill import Word, Pos | |
| Create some features | |
| >>> wfeat1, wfeat2, pfeat = (Word([-1]), Word([1,2]), Pos([-2,-1])) | |
| Create a single-feature template | |
| >>> Template(wfeat1) | |
| Template(Word([-1])) | |
| Or a two-feature one | |
| >>> Template(wfeat1, wfeat2) | |
| Template(Word([-1]),Word([1, 2])) | |
| Or a three-feature one with two different feature types | |
| >>> Template(wfeat1, wfeat2, pfeat) | |
| Template(Word([-1]),Word([1, 2]),Pos([-2, -1])) | |
| deprecated api: Feature subclass, followed by list of (start,end) pairs | |
| (permits only a single Feature) | |
| >>> Template(Word, (-2,-1), (0,0)) | |
| Template(Word([-2, -1]),Word([0])) | |
| Incorrect specification raises TypeError | |
| >>> Template(Word, (-2,-1), Pos, (0,0)) | |
| Traceback (most recent call last): | |
| File "<stdin>", line 1, in <module> | |
| File "nltk/tag/tbl/template.py", line 143, in __init__ | |
| raise TypeError( | |
| TypeError: expected either Feature1(args), Feature2(args), ... or Feature, (start1, end1), (start2, end2), ... | |
| :type features: list of Features | |
| :param features: the features to build this Template on | |
| """ | |
| # determine the calling form: either | |
| # Template(Feature, args1, [args2, ...)] | |
| # Template(Feature1(args), Feature2(args), ...) | |
| if all(isinstance(f, Feature) for f in features): | |
| self._features = features | |
| elif issubclass(features[0], Feature) and all( | |
| isinstance(a, tuple) for a in features[1:] | |
| ): | |
| self._features = [features[0](*tp) for tp in features[1:]] | |
| else: | |
| raise TypeError( | |
| "expected either Feature1(args), Feature2(args), ... or Feature, (start1, end1), (start2, end2), ..." | |
| ) | |
| self.id = f"{len(self.ALLTEMPLATES):03d}" | |
| self.ALLTEMPLATES.append(self) | |
| def __repr__(self): | |
| return "{}({})".format( | |
| self.__class__.__name__, | |
| ",".join([str(f) for f in self._features]), | |
| ) | |
| def applicable_rules(self, tokens, index, correct_tag): | |
| if tokens[index][1] == correct_tag: | |
| return [] | |
| # For each of this Template's features, find the conditions | |
| # that are applicable for the given token. | |
| # Then, generate one Rule for each combination of features | |
| # (the crossproduct of the conditions). | |
| applicable_conditions = self._applicable_conditions(tokens, index) | |
| xs = list(it.product(*applicable_conditions)) | |
| return [Rule(self.id, tokens[index][1], correct_tag, tuple(x)) for x in xs] | |
| def _applicable_conditions(self, tokens, index): | |
| """ | |
| :returns: A set of all conditions for rules | |
| that are applicable to C{tokens[index]}. | |
| """ | |
| conditions = [] | |
| for feature in self._features: | |
| conditions.append([]) | |
| for pos in feature.positions: | |
| if not (0 <= index + pos < len(tokens)): | |
| continue | |
| value = feature.extract_property(tokens, index + pos) | |
| conditions[-1].append((feature, value)) | |
| return conditions | |
| def get_neighborhood(self, tokens, index): | |
| # inherit docs from BrillTemplateI | |
| # applicable_rules(tokens, index, ...) depends on index. | |
| neighborhood = {index} # set literal for python 2.7+ | |
| # applicable_rules(tokens, i, ...) depends on index if | |
| # i+start < index <= i+end. | |
| allpositions = [0] + [p for feat in self._features for p in feat.positions] | |
| start, end = min(allpositions), max(allpositions) | |
| s = max(0, index + (-end)) | |
| e = min(index + (-start) + 1, len(tokens)) | |
| for i in range(s, e): | |
| neighborhood.add(i) | |
| return neighborhood | |
| def expand(cls, featurelists, combinations=None, skipintersecting=True): | |
| """ | |
| Factory method to mass generate Templates from a list L of lists of Features. | |
| #With combinations=(k1, k2), the function will in all possible ways choose k1 ... k2 | |
| #of the sublists in L; it will output all Templates formed by the Cartesian product | |
| #of this selection, with duplicates and other semantically equivalent | |
| #forms removed. Default for combinations is (1, len(L)). | |
| The feature lists may have been specified | |
| manually, or generated from Feature.expand(). For instance, | |
| >>> from nltk.tbl.template import Template | |
| >>> from nltk.tag.brill import Word, Pos | |
| #creating some features | |
| >>> (wd_0, wd_01) = (Word([0]), Word([0,1])) | |
| >>> (pos_m2, pos_m33) = (Pos([-2]), Pos([3-2,-1,0,1,2,3])) | |
| >>> list(Template.expand([[wd_0], [pos_m2]])) | |
| [Template(Word([0])), Template(Pos([-2])), Template(Pos([-2]),Word([0]))] | |
| >>> list(Template.expand([[wd_0, wd_01], [pos_m2]])) | |
| [Template(Word([0])), Template(Word([0, 1])), Template(Pos([-2])), Template(Pos([-2]),Word([0])), Template(Pos([-2]),Word([0, 1]))] | |
| #note: with Feature.expand(), it is very easy to generate more templates | |
| #than your system can handle -- for instance, | |
| >>> wordtpls = Word.expand([-2,-1,0,1], [1,2], excludezero=False) | |
| >>> len(wordtpls) | |
| 7 | |
| >>> postpls = Pos.expand([-3,-2,-1,0,1,2], [1,2,3], excludezero=True) | |
| >>> len(postpls) | |
| 9 | |
| #and now the Cartesian product of all non-empty combinations of two wordtpls and | |
| #two postpls, with semantic equivalents removed | |
| >>> templates = list(Template.expand([wordtpls, wordtpls, postpls, postpls])) | |
| >>> len(templates) | |
| 713 | |
| will return a list of eight templates | |
| Template(Word([0])), | |
| Template(Word([0, 1])), | |
| Template(Pos([-2])), | |
| Template(Pos([-1])), | |
| Template(Pos([-2]),Word([0])), | |
| Template(Pos([-1]),Word([0])), | |
| Template(Pos([-2]),Word([0, 1])), | |
| Template(Pos([-1]),Word([0, 1]))] | |
| #Templates where one feature is a subset of another, such as | |
| #Template(Word([0,1]), Word([1]), will not appear in the output. | |
| #By default, this non-subset constraint is tightened to disjointness: | |
| #Templates of type Template(Word([0,1]), Word([1,2]) will also be filtered out. | |
| #With skipintersecting=False, then such Templates are allowed | |
| WARNING: this method makes it very easy to fill all your memory when training | |
| generated templates on any real-world corpus | |
| :param featurelists: lists of Features, whose Cartesian product will return a set of Templates | |
| :type featurelists: list of (list of Features) | |
| :param combinations: given n featurelists: if combinations=k, all generated Templates will have | |
| k features; if combinations=(k1,k2) they will have k1..k2 features; if None, defaults to 1..n | |
| :type combinations: None, int, or (int, int) | |
| :param skipintersecting: if True, do not output intersecting Templates (non-disjoint positions for some feature) | |
| :type skipintersecting: bool | |
| :returns: generator of Templates | |
| """ | |
| def nonempty_powerset(xs): # xs is a list | |
| # itertools docnonempty_powerset([1,2,3]) --> (1,) (2,) (3,) (1,2) (1,3) (2,3) (1,2,3) | |
| # find the correct tuple given combinations, one of {None, k, (k1,k2)} | |
| k = combinations # for brevity | |
| combrange = ( | |
| (1, len(xs) + 1) | |
| if k is None | |
| else (k, k + 1) # n over 1 .. n over n (all non-empty combinations) | |
| if isinstance(k, int) | |
| else (k[0], k[1] + 1) # n over k (only | |
| ) # n over k1, n over k1+1... n over k2 | |
| return it.chain.from_iterable( | |
| it.combinations(xs, r) for r in range(*combrange) | |
| ) | |
| seentemplates = set() | |
| for picks in nonempty_powerset(featurelists): | |
| for pick in it.product(*picks): | |
| if any( | |
| i != j and x.issuperset(y) | |
| for (i, x) in enumerate(pick) | |
| for (j, y) in enumerate(pick) | |
| ): | |
| continue | |
| if skipintersecting and any( | |
| i != j and x.intersects(y) | |
| for (i, x) in enumerate(pick) | |
| for (j, y) in enumerate(pick) | |
| ): | |
| continue | |
| thistemplate = cls(*sorted(pick)) | |
| strpick = str(thistemplate) | |
| #!!FIXME --this is hackish | |
| if strpick in seentemplates: # already added | |
| cls._poptemplate() | |
| continue | |
| seentemplates.add(strpick) | |
| yield thistemplate | |
| def _cleartemplates(cls): | |
| cls.ALLTEMPLATES = [] | |
| def _poptemplate(cls): | |
| return cls.ALLTEMPLATES.pop() if cls.ALLTEMPLATES else None | |