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| | from abc import ABCMeta, abstractmethod
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| | class Feature(metaclass=ABCMeta):
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| | """
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| | An abstract base class for Features. A Feature is a combination of
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| | a specific property-computing method and a list of relative positions
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| | to apply that method to.
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| |
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| | The property-computing method, M{extract_property(tokens, index)},
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| | must be implemented by every subclass. It extracts or computes a specific
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| | property for the token at the current index. Typical extract_property()
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| | methods return features such as the token text or tag; but more involved
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| | methods may consider the entire sequence M{tokens} and
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| | for instance compute the length of the sentence the token belongs to.
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| |
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| | In addition, the subclass may have a PROPERTY_NAME, which is how
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| | it will be printed (in Rules and Templates, etc). If not given, defaults
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| | to the classname.
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| |
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| | """
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| |
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| | json_tag = "nltk.tbl.Feature"
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| | PROPERTY_NAME = None
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| |
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| | def __init__(self, positions, end=None):
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| | """
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| | Construct a Feature which may apply at C{positions}.
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| |
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| | >>> # For instance, importing some concrete subclasses (Feature is abstract)
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| | >>> from nltk.tag.brill import Word, Pos
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| |
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| | >>> # Feature Word, applying at one of [-2, -1]
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| | >>> Word([-2,-1])
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| | Word([-2, -1])
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| |
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| | >>> # Positions need not be contiguous
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| | >>> Word([-2,-1, 1])
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| | Word([-2, -1, 1])
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| |
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| | >>> # Contiguous ranges can alternatively be specified giving the
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| | >>> # two endpoints (inclusive)
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| | >>> Pos(-3, -1)
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| | Pos([-3, -2, -1])
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| |
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| | >>> # In two-arg form, start <= end is enforced
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| | >>> Pos(2, 1)
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| | Traceback (most recent call last):
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| | File "<stdin>", line 1, in <module>
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| | File "nltk/tbl/template.py", line 306, in __init__
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| | raise TypeError
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| | ValueError: illegal interval specification: (start=2, end=1)
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| |
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| | :type positions: list of int
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| | :param positions: the positions at which this features should apply
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| | :raises ValueError: illegal position specifications
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| |
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| | An alternative calling convention, for contiguous positions only,
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| | is Feature(start, end):
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| |
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| | :type start: int
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| | :param start: start of range where this feature should apply
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| | :type end: int
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| | :param end: end of range (NOTE: inclusive!) where this feature should apply
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| | """
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| | self.positions = None
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| | if end is None:
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| | self.positions = tuple(sorted({int(i) for i in positions}))
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| | else:
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| | try:
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| | if positions > end:
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| | raise TypeError
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| | self.positions = tuple(range(positions, end + 1))
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| | except TypeError as e:
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| |
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| | raise ValueError(
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| | "illegal interval specification: (start={}, end={})".format(
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| | positions, end
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| | )
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| | ) from e
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| | self.PROPERTY_NAME = self.__class__.PROPERTY_NAME or self.__class__.__name__
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| |
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| | def encode_json_obj(self):
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| | return self.positions
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| |
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| | @classmethod
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| | def decode_json_obj(cls, obj):
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| | positions = obj
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| | return cls(positions)
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| |
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| | def __repr__(self):
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| | return f"{self.__class__.__name__}({list(self.positions)!r})"
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| |
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| | @classmethod
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| | def expand(cls, starts, winlens, excludezero=False):
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| | """
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| | Return a list of features, one for each start point in starts
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| | and for each window length in winlen. If excludezero is True,
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| | no Features containing 0 in its positions will be generated
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| | (many tbl trainers have a special representation for the
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| | target feature at [0])
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| |
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| | For instance, importing a concrete subclass (Feature is abstract)
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| |
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| | >>> from nltk.tag.brill import Word
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| |
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| | First argument gives the possible start positions, second the
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| | possible window lengths
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| |
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| | >>> Word.expand([-3,-2,-1], [1])
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| | [Word([-3]), Word([-2]), Word([-1])]
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| |
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| | >>> Word.expand([-2,-1], [1])
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| | [Word([-2]), Word([-1])]
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| |
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| | >>> Word.expand([-3,-2,-1], [1,2])
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| | [Word([-3]), Word([-2]), Word([-1]), Word([-3, -2]), Word([-2, -1])]
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| |
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| | >>> Word.expand([-2,-1], [1])
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| | [Word([-2]), Word([-1])]
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| |
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| | A third optional argument excludes all Features whose positions contain zero
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| |
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| | >>> Word.expand([-2,-1,0], [1,2], excludezero=False)
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| | [Word([-2]), Word([-1]), Word([0]), Word([-2, -1]), Word([-1, 0])]
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| |
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| | >>> Word.expand([-2,-1,0], [1,2], excludezero=True)
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| | [Word([-2]), Word([-1]), Word([-2, -1])]
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| |
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| | All window lengths must be positive
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| |
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| | >>> Word.expand([-2,-1], [0])
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| | Traceback (most recent call last):
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| | File "<stdin>", line 1, in <module>
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| | File "nltk/tag/tbl/template.py", line 371, in expand
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| | :param starts: where to start looking for Feature
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| | ValueError: non-positive window length in [0]
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| |
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| | :param starts: where to start looking for Feature
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| | :type starts: list of ints
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| | :param winlens: window lengths where to look for Feature
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| | :type starts: list of ints
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| | :param excludezero: do not output any Feature with 0 in any of its positions.
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| | :type excludezero: bool
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| | :returns: list of Features
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| | :raises ValueError: for non-positive window lengths
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| | """
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| | if not all(x > 0 for x in winlens):
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| | raise ValueError(f"non-positive window length in {winlens}")
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| | xs = (starts[i : i + w] for w in winlens for i in range(len(starts) - w + 1))
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| | return [cls(x) for x in xs if not (excludezero and 0 in x)]
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| |
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| | def issuperset(self, other):
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| | """
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| | Return True if this Feature always returns True when other does
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| |
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| | More precisely, return True if this feature refers to the same property as other;
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| | and this Feature looks at all positions that other does (and possibly
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| | other positions in addition).
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| |
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| | #For instance, importing a concrete subclass (Feature is abstract)
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| | >>> from nltk.tag.brill import Word, Pos
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| |
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| | >>> Word([-3,-2,-1]).issuperset(Word([-3,-2]))
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| | True
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| | >>> Word([-3,-2,-1]).issuperset(Word([-3,-2, 0]))
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| | False
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| |
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| | #Feature subclasses must agree
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| | >>> Word([-3,-2,-1]).issuperset(Pos([-3,-2]))
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| | False
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| |
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| | :param other: feature with which to compare
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| | :type other: (subclass of) Feature
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| | :return: True if this feature is superset, otherwise False
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| | :rtype: bool
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| |
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| |
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| | """
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| | return self.__class__ is other.__class__ and set(self.positions) >= set(
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| | other.positions
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| | )
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| |
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| | def intersects(self, other):
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| | """
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| | Return True if the positions of this Feature intersects with those of other
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| |
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| | More precisely, return True if this feature refers to the same property as other;
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| | and there is some overlap in the positions they look at.
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| |
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| | #For instance, importing a concrete subclass (Feature is abstract)
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| | >>> from nltk.tag.brill import Word, Pos
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| |
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| | >>> Word([-3,-2,-1]).intersects(Word([-3,-2]))
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| | True
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| | >>> Word([-3,-2,-1]).intersects(Word([-3,-2, 0]))
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| | True
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| |
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| | >>> Word([-3,-2,-1]).intersects(Word([0]))
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| | False
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| |
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| | #Feature subclasses must agree
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| | >>> Word([-3,-2,-1]).intersects(Pos([-3,-2]))
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| | False
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| |
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| | :param other: feature with which to compare
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| | :type other: (subclass of) Feature
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| | :return: True if feature classes agree and there is some overlap in the positions they look at
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| | :rtype: bool
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| | """
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| |
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| | return bool(
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| | self.__class__ is other.__class__
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| | and set(self.positions) & set(other.positions)
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| | )
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| |
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| |
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| |
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| | def __eq__(self, other):
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| | return self.__class__ is other.__class__ and self.positions == other.positions
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| |
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| | def __lt__(self, other):
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| | return (
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| | self.__class__.__name__ < other.__class__.__name__
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| | or
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| |
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| | self.positions < other.positions
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| | )
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| |
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| | def __ne__(self, other):
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| | return not (self == other)
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| |
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| | def __gt__(self, other):
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| | return other < self
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| |
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| | def __ge__(self, other):
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| | return not self < other
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| |
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| | def __le__(self, other):
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| | return self < other or self == other
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| |
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| | @staticmethod
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| | @abstractmethod
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| | def extract_property(tokens, index):
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| | """
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| | Any subclass of Feature must define static method extract_property(tokens, index)
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| |
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| | :param tokens: the sequence of tokens
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| | :type tokens: list of tokens
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| | :param index: the current index
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| | :type index: int
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| | :return: feature value
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| | :rtype: any (but usually scalar)
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| | """
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| |
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