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Semantic Roles and Disambiguation

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Title: Semantic Roles and Disambiguation


1
  • Semantic Roles and Disambiguation

2
Today
  • Semantic Networks Wordnet
  • Thematic Roles
  • Selectional Restrictions
  • Selectional Association
  • Conceptual Dependency

3
Semantic Networks
  • Used to represent lexical relationships
  • e.g. WordNet (George Miller et al)
  • Most widely used hierarchically organized lexical
    database for English
  • Synset set of synonyms, a dictionary-style
    definition (or gloss), and some examples of uses
    --gt a concept
  • Databases for nouns, verbs, and modifiers
  • Applications can traverse network to find
    synonyms, antonyms, hierarchies,...
  • Available for download or online use
  • http//www.cogsci.princeton.edu/wn

4
Using WN, e.g. in Question-Answering
  • Pasca Harabagiu 01 results on TREC corpus
  • Parses questions to determine question type, key
    words (Who invented the light bulb?)
  • Person question invent, light, bulb
  • The modern world is an electrified world. It
    might be argued that any of a number of
    electrical appliances deserves a place on a list
    of the millennium's most significant inventions.
    The light bulb, in particular, profoundly changed
    human existence by illuminating the night and
    making it hospitable to a wide range of human
    activity. The electric light, one of the everyday
    conveniences that most affects our lives, was
    invented in 1879 simultaneously by Thomas Alva
    Edison in the United States and Sir Joseph Wilson
    Swan in England.
  • Finding key words is not enough

5
  • Compare expected answer type to potential
    answers
  • For questions of type person, expect answer is
    person
  • Identify potential person names (NEs) in passages
    retrieved by IR
  • Check in WN to find which of these are hyponyms
    of instance? Person?
  • Or, Consider reformulations of question Who
    invented the light bulb
  • For key words in query, look for WN synonyms
  • E.g. Who fabricated the light bulb?
  • Use this query for initial IR
  • Results improve system accuracy by 147 (on some
    question types)

6
Thematic Roles
  • E w,x,y,z Giving(x) Giver(w,x) Givee(z, x)
    Given(y,x)
  • A set of roles for each event
  • Agent volitional causer -- John hit Bill.
  • Experiencer experiencer of event Bill got a
    headache.
  • Force non-volitional causer The concrete block
    struck Bill on the head.
  • Theme/patient most affected participant John
    hit Bill.
  • Result end product Bill got a headache.
  • Content proposition of propositional event
    Bill thought he should take up martial arts.

7
  • Instrument instrument used -- John hit Bill
    with a bat
  • Beneficiary qui bono John hit Bill to avenge
    his friend
  • Source origin of object of transfer event Bill
    fled from New York to Timbuktu
  • Goal destination of object -- Bill led from New
    York to Timbuktu
  • But there are a lot of verbs, with a lot of
    frames
  • Framenet encodes frames for many verb categories

8
Thematic Roles and Selectional Restrictions
  • Selectional restrictions semantic constraint
    that a word (lexeme) imposes on the concepts that
    go with it
  • George hit Bill with
  • .John/a gun/gusto.
  • Jim killed his philodendron/a fly/Bill.
  • ?His philodenron killed Jim.
  • The flu/Misery killed Jim.

9
  • In practical use
  • Given e.g. a verb and a corpus (plus FrameNet)
  • What conceptual roles are likely to accompany it?
  • What lexemes are likely to fill those roles?
  • Assassinate
  • Give
  • Imagine
  • Fall
  • Serve

10
Disambiguation via Selectional Restrictions
  • Verbs are known by the company they keep
  • Different verbs select for different thematic
    roles
  • wash the dishes (takes washable-thing as patient)
  • serve delicious dishes (takes food-type as
    patient)
  • Method another semantic attachment in grammar
  • Semantic attachment rules are applied as
    sentences are syntactically parsed
  • VP --gt V NP
  • V? serve ltthemegt themefood-type
  • Selectional restriction violation no parse

11
  • But this means we must
  • Write selectional restrictions for each sense of
    each predicate or use FrameNet
  • Serve alone has 15 verb senses
  • Hierarchical type information about each argument
    (using WordNet)
  • How many hypernyms does dish have?
  • How many lexemes are hyponyms of dish?
  • But also
  • Sometimes selectional restrictions dont restrict
    enough (Which dishes do you like?)
  • Sometimes they restrict too much (Eat dirt, worm!
    Ill eat my hat!)
  • Can we take a statistical approach?

12
Selectional Association (Resnik 97)
  • Selectional Preference Strength how much does a
    predicate tell us about the word class of its
    argument?
  • George is a monster, George cooked a steak
  • SR(v) How different is p(c), the probability
    that any direct object will be a member of some
    class c, from p(cv), the probability that a
    direct object of a specific verb will fall into
    that class?
  • Estimate conditional probabilities of word senses
    from a parsed corpus, counting how often each
    predicate occurs with an object argument
  • e.g. How likely is dish to be an object of
    served?
  • Jane served/V the dish/Obj
  • Then estimate the strength of association between
    each predicate and the super-class (hypernym) of
    the argument in Wordnet

13
  • E.g. For each object of serve (e.g. ragout, Mary,
    dish)
  • Look up all its hypernym classes in WordNet (e.g
    dish isa piece of crockery, dish isa food item,)
  • Distribute credit for dish (with serve) among
    all hypernym classes (sense) to which dish
    belongs (1/n for n classes)
  • Pr(cv) is estimated at count(c,v)/count(v)
  • Why does this work?
  • Ambiguous words have many superordinate classes
  • John served food/the dish/tuna/curry
  • There is a common sense among these which gets
    credit in each instance, eventually dominating
    the likelihood score

14
  • How can we use this in wsd?
  • Choose the class (sense) of the direct object
    with the highest probability, given the verb
  • Mary served the dish proudly.
  • Results
  • Baselines
  • random choice of word sense is 26.8
  • choose most frequent sense (NB requires
    sense-labeled training corpus) is 58.2
  • Resniks 44 correct with only pred/arg
    relations labeled

15
Schank's Conceptual Dependency
  • Eleven predicate primitives represent all
    predicates
  • Atrans abstract transfer of possession or ctrl
    from x to y
  • Ptrans physical transfer of object from one
    place to another
  • Mtrans transfer of mental concepts
  • Mbuild creation of new information w/in entity
  • Propel, Move, Ingest, Expel, Speak, Attend

16
  • Objects decomposed into primitive categories and
    modifiers
  • But few predicates result in very complex
    representations of simple things
  • Ex,y Atrans(x) Actor(x,John) Object(x,Book)
    To(x,Mary) Ptrans(y) Actor(y,John)
    Object(y,Book) To(y,Mary)
  • John gave Mary a Book

17
Next time
  • Chapter 155-6
  • Homework III (the last, now) assigned
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