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547 lines
17 KiB
Plaintext
.. Copyright (C) 2001-2020 NLTK Project
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.. For license information, see LICENSE.TXT
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==================
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Discourse Checking
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==================
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>>> from nltk import *
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>>> from nltk.sem import logic
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>>> logic._counter._value = 0
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Introduction
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============
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The NLTK discourse module makes it possible to test consistency and
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redundancy of simple discourses, using theorem-proving and
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model-building from `nltk.inference`.
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The ``DiscourseTester`` constructor takes a list of sentences as a
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parameter.
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>>> dt = DiscourseTester(['a boxer walks', 'every boxer chases a girl'])
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The ``DiscourseTester`` parses each sentence into a list of logical
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forms. Once we have created ``DiscourseTester`` object, we can
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inspect various properties of the discourse. First off, we might want
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to double-check what sentences are currently stored as the discourse.
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>>> dt.sentences()
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s0: a boxer walks
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s1: every boxer chases a girl
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As you will see, each sentence receives an identifier `s`\ :subscript:`i`.
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We might also want to check what grammar the ``DiscourseTester`` is
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using (by default, ``book_grammars/discourse.fcfg``):
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>>> dt.grammar() # doctest: +ELLIPSIS
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% start S
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# Grammar Rules
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S[SEM = <app(?subj,?vp)>] -> NP[NUM=?n,SEM=?subj] VP[NUM=?n,SEM=?vp]
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NP[NUM=?n,SEM=<app(?det,?nom)> ] -> Det[NUM=?n,SEM=?det] Nom[NUM=?n,SEM=?nom]
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NP[LOC=?l,NUM=?n,SEM=?np] -> PropN[LOC=?l,NUM=?n,SEM=?np]
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...
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A different grammar can be invoked by using the optional ``gramfile``
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parameter when a ``DiscourseTester`` object is created.
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Readings and Threads
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====================
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Depending on
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the grammar used, we may find some sentences have more than one
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logical form. To check this, use the ``readings()`` method. Given a
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sentence identifier of the form `s`\ :subscript:`i`, each reading of
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that sentence is given an identifier `s`\ :sub:`i`-`r`\ :sub:`j`.
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>>> dt.readings()
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<BLANKLINE>
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s0 readings:
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<BLANKLINE>
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s0-r0: exists z1.(boxer(z1) & walk(z1))
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s0-r1: exists z1.(boxerdog(z1) & walk(z1))
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<BLANKLINE>
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s1 readings:
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<BLANKLINE>
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s1-r0: all z2.(boxer(z2) -> exists z3.(girl(z3) & chase(z2,z3)))
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s1-r1: all z1.(boxerdog(z1) -> exists z2.(girl(z2) & chase(z1,z2)))
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In this case, the only source of ambiguity lies in the word *boxer*,
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which receives two translations: ``boxer`` and ``boxerdog``. The
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intention is that one of these corresponds to the ``person`` sense and
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one to the ``dog`` sense. In principle, we would also expect to see a
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quantifier scope ambiguity in ``s1``. However, the simple grammar we
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are using, namely `sem4.fcfg <sem4.fcfg>`_, doesn't support quantifier
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scope ambiguity.
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We can also investigate the readings of a specific sentence:
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>>> dt.readings('a boxer walks')
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The sentence 'a boxer walks' has these readings:
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exists x.(boxer(x) & walk(x))
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exists x.(boxerdog(x) & walk(x))
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Given that each sentence is two-ways ambiguous, we potentially have
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four different discourse 'threads', taking all combinations of
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readings. To see these, specify the ``threaded=True`` parameter on
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the ``readings()`` method. Again, each thread is assigned an
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identifier of the form `d`\ :sub:`i`. Following the identifier is a
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list of the readings that constitute that thread.
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>>> dt.readings(threaded=True) # doctest: +NORMALIZE_WHITESPACE
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d0: ['s0-r0', 's1-r0']
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d1: ['s0-r0', 's1-r1']
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d2: ['s0-r1', 's1-r0']
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d3: ['s0-r1', 's1-r1']
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Of course, this simple-minded approach doesn't scale: a discourse with, say, three
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sentences, each of which has 3 readings, will generate 27 different
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threads. It is an interesting exercise to consider how to manage
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discourse ambiguity more efficiently.
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Checking Consistency
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====================
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Now, we can check whether some or all of the discourse threads are
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consistent, using the ``models()`` method. With no parameter, this
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method will try to find a model for every discourse thread in the
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current discourse. However, we can also specify just one thread, say ``d1``.
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>>> dt.models('d1')
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--------------------------------------------------------------------------------
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Model for Discourse Thread d1
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--------------------------------------------------------------------------------
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% number = 1
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% seconds = 0
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<BLANKLINE>
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% Interpretation of size 2
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<BLANKLINE>
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c1 = 0.
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<BLANKLINE>
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f1(0) = 0.
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f1(1) = 0.
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<BLANKLINE>
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boxer(0).
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- boxer(1).
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<BLANKLINE>
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- boxerdog(0).
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- boxerdog(1).
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<BLANKLINE>
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- girl(0).
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- girl(1).
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<BLANKLINE>
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walk(0).
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- walk(1).
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<BLANKLINE>
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- chase(0,0).
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- chase(0,1).
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- chase(1,0).
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- chase(1,1).
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<BLANKLINE>
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Consistent discourse: d1 ['s0-r0', 's1-r1']:
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s0-r0: exists z1.(boxer(z1) & walk(z1))
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s1-r1: all z1.(boxerdog(z1) -> exists z2.(girl(z2) & chase(z1,z2)))
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<BLANKLINE>
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There are various formats for rendering **Mace4** models --- here,
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we have used the 'cooked' format (which is intended to be
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human-readable). There are a number of points to note.
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#. The entities in the domain are all treated as non-negative
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integers. In this case, there are only two entities, ``0`` and
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``1``.
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#. The ``-`` symbol indicates negation. So ``0`` is the only
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``boxerdog`` and the only thing that ``walk``\ s. Nothing is a
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``boxer``, or a ``girl`` or in the ``chase`` relation. Thus the
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universal sentence is vacuously true.
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#. ``c1`` is an introduced constant that denotes ``0``.
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#. ``f1`` is a Skolem function, but it plays no significant role in
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this model.
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We might want to now add another sentence to the discourse, and there
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is method ``add_sentence()`` for doing just this.
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>>> dt.add_sentence('John is a boxer')
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>>> dt.sentences()
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s0: a boxer walks
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s1: every boxer chases a girl
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s2: John is a boxer
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We can now test all the properties as before; here, we just show a
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couple of them.
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>>> dt.readings()
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<BLANKLINE>
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s0 readings:
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<BLANKLINE>
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s0-r0: exists z1.(boxer(z1) & walk(z1))
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s0-r1: exists z1.(boxerdog(z1) & walk(z1))
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<BLANKLINE>
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s1 readings:
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<BLANKLINE>
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s1-r0: all z1.(boxer(z1) -> exists z2.(girl(z2) & chase(z1,z2)))
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s1-r1: all z1.(boxerdog(z1) -> exists z2.(girl(z2) & chase(z1,z2)))
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<BLANKLINE>
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s2 readings:
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<BLANKLINE>
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s2-r0: boxer(John)
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s2-r1: boxerdog(John)
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>>> dt.readings(threaded=True) # doctest: +NORMALIZE_WHITESPACE
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d0: ['s0-r0', 's1-r0', 's2-r0']
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d1: ['s0-r0', 's1-r0', 's2-r1']
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d2: ['s0-r0', 's1-r1', 's2-r0']
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d3: ['s0-r0', 's1-r1', 's2-r1']
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d4: ['s0-r1', 's1-r0', 's2-r0']
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d5: ['s0-r1', 's1-r0', 's2-r1']
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d6: ['s0-r1', 's1-r1', 's2-r0']
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d7: ['s0-r1', 's1-r1', 's2-r1']
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If you are interested in a particular thread, the ``expand_threads()``
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method will remind you of what readings it consists of:
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>>> thread = dt.expand_threads('d1')
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>>> for rid, reading in thread:
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... print(rid, str(reading.normalize()))
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s0-r0 exists z1.(boxer(z1) & walk(z1))
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s1-r0 all z1.(boxer(z1) -> exists z2.(girl(z2) & chase(z1,z2)))
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s2-r1 boxerdog(John)
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Suppose we have already defined a discourse, as follows:
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>>> dt = DiscourseTester(['A student dances', 'Every student is a person'])
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Now, when we add a new sentence, is it consistent with what we already
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have? The `` consistchk=True`` parameter of ``add_sentence()`` allows
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us to check:
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>>> dt.add_sentence('No person dances', consistchk=True)
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Inconsistent discourse: d0 ['s0-r0', 's1-r0', 's2-r0']:
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s0-r0: exists z1.(student(z1) & dance(z1))
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s1-r0: all z1.(student(z1) -> person(z1))
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s2-r0: -exists z1.(person(z1) & dance(z1))
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<BLANKLINE>
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>>> dt.readings()
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<BLANKLINE>
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s0 readings:
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<BLANKLINE>
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s0-r0: exists z1.(student(z1) & dance(z1))
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<BLANKLINE>
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s1 readings:
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<BLANKLINE>
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s1-r0: all z1.(student(z1) -> person(z1))
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<BLANKLINE>
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s2 readings:
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<BLANKLINE>
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s2-r0: -exists z1.(person(z1) & dance(z1))
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So let's retract the inconsistent sentence:
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>>> dt.retract_sentence('No person dances', verbose=True) # doctest: +NORMALIZE_WHITESPACE
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Current sentences are
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s0: A student dances
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s1: Every student is a person
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We can now verify that result is consistent.
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>>> dt.models()
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--------------------------------------------------------------------------------
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Model for Discourse Thread d0
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--------------------------------------------------------------------------------
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% number = 1
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% seconds = 0
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<BLANKLINE>
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% Interpretation of size 2
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<BLANKLINE>
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c1 = 0.
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<BLANKLINE>
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dance(0).
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- dance(1).
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<BLANKLINE>
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person(0).
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- person(1).
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<BLANKLINE>
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student(0).
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- student(1).
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<BLANKLINE>
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Consistent discourse: d0 ['s0-r0', 's1-r0']:
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s0-r0: exists z1.(student(z1) & dance(z1))
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s1-r0: all z1.(student(z1) -> person(z1))
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<BLANKLINE>
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Checking Informativity
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======================
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Let's assume that we are still trying to extend the discourse *A
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student dances.* *Every student is a person.* We add a new sentence,
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but this time, we check whether it is informative with respect to what
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has gone before.
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>>> dt.add_sentence('A person dances', informchk=True)
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Sentence 'A person dances' under reading 'exists x.(person(x) & dance(x))':
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Not informative relative to thread 'd0'
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In fact, we are just checking whether the new sentence is entailed by
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the preceding discourse.
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>>> dt.models()
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--------------------------------------------------------------------------------
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Model for Discourse Thread d0
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--------------------------------------------------------------------------------
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% number = 1
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% seconds = 0
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<BLANKLINE>
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% Interpretation of size 2
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<BLANKLINE>
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c1 = 0.
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<BLANKLINE>
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c2 = 0.
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<BLANKLINE>
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dance(0).
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- dance(1).
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<BLANKLINE>
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person(0).
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- person(1).
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<BLANKLINE>
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student(0).
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- student(1).
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<BLANKLINE>
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Consistent discourse: d0 ['s0-r0', 's1-r0', 's2-r0']:
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s0-r0: exists z1.(student(z1) & dance(z1))
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s1-r0: all z1.(student(z1) -> person(z1))
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s2-r0: exists z1.(person(z1) & dance(z1))
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<BLANKLINE>
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Adding Background Knowledge
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===========================
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Let's build a new discourse, and look at the readings of the component sentences:
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>>> dt = DiscourseTester(['Vincent is a boxer', 'Fido is a boxer', 'Vincent is married', 'Fido barks'])
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>>> dt.readings()
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<BLANKLINE>
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s0 readings:
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<BLANKLINE>
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s0-r0: boxer(Vincent)
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s0-r1: boxerdog(Vincent)
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<BLANKLINE>
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s1 readings:
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<BLANKLINE>
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s1-r0: boxer(Fido)
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s1-r1: boxerdog(Fido)
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<BLANKLINE>
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s2 readings:
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<BLANKLINE>
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s2-r0: married(Vincent)
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<BLANKLINE>
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s3 readings:
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<BLANKLINE>
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s3-r0: bark(Fido)
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This gives us a lot of threads:
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>>> dt.readings(threaded=True) # doctest: +NORMALIZE_WHITESPACE
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d0: ['s0-r0', 's1-r0', 's2-r0', 's3-r0']
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d1: ['s0-r0', 's1-r1', 's2-r0', 's3-r0']
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d2: ['s0-r1', 's1-r0', 's2-r0', 's3-r0']
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d3: ['s0-r1', 's1-r1', 's2-r0', 's3-r0']
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We can eliminate some of the readings, and hence some of the threads,
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by adding background information.
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>>> import nltk.data
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>>> bg = nltk.data.load('grammars/book_grammars/background.fol')
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>>> dt.add_background(bg)
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>>> dt.background()
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all x.(boxerdog(x) -> dog(x))
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all x.(boxer(x) -> person(x))
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all x.-(dog(x) & person(x))
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all x.(married(x) <-> exists y.marry(x,y))
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all x.(bark(x) -> dog(x))
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all x y.(marry(x,y) -> (person(x) & person(y)))
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-(Vincent = Mia)
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-(Vincent = Fido)
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-(Mia = Fido)
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The background information allows us to reject three of the threads as
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inconsistent. To see what remains, use the ``filter=True`` parameter
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on ``readings()``.
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>>> dt.readings(filter=True) # doctest: +NORMALIZE_WHITESPACE
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d1: ['s0-r0', 's1-r1', 's2-r0', 's3-r0']
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The ``models()`` method gives us more information about the surviving thread.
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>>> dt.models()
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--------------------------------------------------------------------------------
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Model for Discourse Thread d0
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--------------------------------------------------------------------------------
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No model found!
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<BLANKLINE>
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--------------------------------------------------------------------------------
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Model for Discourse Thread d1
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--------------------------------------------------------------------------------
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% number = 1
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% seconds = 0
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<BLANKLINE>
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% Interpretation of size 3
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<BLANKLINE>
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Fido = 0.
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<BLANKLINE>
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Mia = 1.
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<BLANKLINE>
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Vincent = 2.
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<BLANKLINE>
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f1(0) = 0.
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f1(1) = 0.
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f1(2) = 2.
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<BLANKLINE>
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bark(0).
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- bark(1).
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- bark(2).
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<BLANKLINE>
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- boxer(0).
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- boxer(1).
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boxer(2).
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<BLANKLINE>
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boxerdog(0).
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- boxerdog(1).
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- boxerdog(2).
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<BLANKLINE>
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dog(0).
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- dog(1).
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- dog(2).
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<BLANKLINE>
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- married(0).
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- married(1).
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married(2).
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<BLANKLINE>
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- person(0).
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- person(1).
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person(2).
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<BLANKLINE>
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- marry(0,0).
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- marry(0,1).
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- marry(0,2).
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- marry(1,0).
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- marry(1,1).
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- marry(1,2).
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- marry(2,0).
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- marry(2,1).
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marry(2,2).
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<BLANKLINE>
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--------------------------------------------------------------------------------
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Model for Discourse Thread d2
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--------------------------------------------------------------------------------
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No model found!
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<BLANKLINE>
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--------------------------------------------------------------------------------
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Model for Discourse Thread d3
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--------------------------------------------------------------------------------
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No model found!
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<BLANKLINE>
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Inconsistent discourse: d0 ['s0-r0', 's1-r0', 's2-r0', 's3-r0']:
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s0-r0: boxer(Vincent)
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s1-r0: boxer(Fido)
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s2-r0: married(Vincent)
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s3-r0: bark(Fido)
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<BLANKLINE>
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Consistent discourse: d1 ['s0-r0', 's1-r1', 's2-r0', 's3-r0']:
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s0-r0: boxer(Vincent)
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s1-r1: boxerdog(Fido)
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s2-r0: married(Vincent)
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s3-r0: bark(Fido)
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<BLANKLINE>
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Inconsistent discourse: d2 ['s0-r1', 's1-r0', 's2-r0', 's3-r0']:
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s0-r1: boxerdog(Vincent)
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s1-r0: boxer(Fido)
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s2-r0: married(Vincent)
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s3-r0: bark(Fido)
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<BLANKLINE>
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Inconsistent discourse: d3 ['s0-r1', 's1-r1', 's2-r0', 's3-r0']:
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s0-r1: boxerdog(Vincent)
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s1-r1: boxerdog(Fido)
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s2-r0: married(Vincent)
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s3-r0: bark(Fido)
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<BLANKLINE>
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.. This will not be visible in the html output: create a tempdir to
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play in.
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>>> import tempfile, os
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>>> tempdir = tempfile.mkdtemp()
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>>> old_dir = os.path.abspath('.')
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>>> os.chdir(tempdir)
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In order to play around with your own version of background knowledge,
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you might want to start off with a local copy of ``background.fol``:
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>>> nltk.data.retrieve('grammars/book_grammars/background.fol')
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Retrieving 'nltk:grammars/book_grammars/background.fol', saving to 'background.fol'
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After you have modified the file, the ``load_fol()`` function will parse
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the strings in the file into expressions of ``nltk.sem.logic``.
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>>> from nltk.inference.discourse import load_fol
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>>> mybg = load_fol(open('background.fol').read())
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The result can be loaded as an argument of ``add_background()`` in the
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manner shown earlier.
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|
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.. This will not be visible in the html output: clean up the tempdir.
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>>> os.chdir(old_dir)
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>>> for f in os.listdir(tempdir):
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... os.remove(os.path.join(tempdir, f))
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>>> os.rmdir(tempdir)
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>>> nltk.data.clear_cache()
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|
|
|
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|
Regression Testing from book
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============================
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|
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>>> logic._counter._value = 0
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>>> from nltk.tag import RegexpTagger
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>>> tagger = RegexpTagger(
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... [('^(chases|runs)$', 'VB'),
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... ('^(a)$', 'ex_quant'),
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... ('^(every)$', 'univ_quant'),
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... ('^(dog|boy)$', 'NN'),
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... ('^(He)$', 'PRP')
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... ])
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>>> rc = DrtGlueReadingCommand(depparser=MaltParser(tagger=tagger))
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>>> dt = DiscourseTester(map(str.split, ['Every dog chases a boy', 'He runs']), rc)
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>>> dt.readings()
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<BLANKLINE>
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s0 readings:
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<BLANKLINE>
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s0-r0: ([z2],[boy(z2), (([z5],[dog(z5)]) -> ([],[chases(z5,z2)]))])
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s0-r1: ([],[(([z1],[dog(z1)]) -> ([z2],[boy(z2), chases(z1,z2)]))])
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<BLANKLINE>
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s1 readings:
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<BLANKLINE>
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s1-r0: ([z1],[PRO(z1), runs(z1)])
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>>> dt.readings(show_thread_readings=True)
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d0: ['s0-r0', 's1-r0'] : ([z1,z2],[boy(z1), (([z3],[dog(z3)]) -> ([],[chases(z3,z1)])), (z2 = z1), runs(z2)])
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d1: ['s0-r1', 's1-r0'] : INVALID: AnaphoraResolutionException
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>>> dt.readings(filter=True, show_thread_readings=True)
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d0: ['s0-r0', 's1-r0'] : ([z1,z3],[boy(z1), (([z2],[dog(z2)]) -> ([],[chases(z2,z1)])), (z3 = z1), runs(z3)])
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|
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|
>>> logic._counter._value = 0
|
|
|
|
>>> from nltk.parse import FeatureEarleyChartParser
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|
>>> from nltk.sem.drt import DrtParser
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>>> grammar = nltk.data.load('grammars/book_grammars/drt.fcfg', logic_parser=DrtParser())
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>>> parser = FeatureEarleyChartParser(grammar, trace=0)
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>>> trees = parser.parse('Angus owns a dog'.split())
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|
>>> print(list(trees)[0].label()['SEM'].simplify().normalize())
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([z1,z2],[Angus(z1), dog(z2), own(z1,z2)])
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