LING 2000 - 2006 NLP 2
Semantics and Pragmatics
High-level Linguistics (the good stuff!)
Semantics: the study of meaning that can be determined from a sentence, phrase or word.
Pragmatics: the study of meaning, as it depends on context (speaker, situation, dialogue history)
LING 2000 - 2006 NLP 3
Language to (Simplistic) Logic
• John went to the book store.go(John, store1)
• John bought a book. buy(John,book1)
• John gave the book to Mary. give(John,book1,Mary)
• Mary put the book on the table. put(Mary,book1,on table1)
What’s missing?
• Word sense disambiguation• Quantification• Coreference• Interpreting within a phrase• Many, many more issues …
• But it’s still more than you get from parsing!
Some problems in shallow semantics
1. Identifying entities– noun-phrase chunking– named-entity recognition– coreference resolution
(involves discourse/pragmatics too)2. Identifying relationship names
– Verb-phrase chunking– Predicate identification (step 0 of semantic role labeling)– Synonym resolution (e.g., get = receive)
3. Identifying arguments to predicates– Information extraction– Argument identification (step 1 of semantic role labeling)
4. Assigning semantic roles (step 2 of semantic role labeling)5. Sentiment classification
– That is, does the relationship express an opinion?– If so, is the opinion positive or negative?
1. Identifying EntitiesNamed Entity Tagging: Identify all the proper names in a text
Sally went to see Up in the Air at the local theater. Person Film
Noun Phrase Chunking: Find all base noun phrases (that is, noun phrases that don’t have smaller noun phrases nested inside them)
Sally went to see Up in the Air at the local theater on Elm Street.
1. Identifying Entities (2)
Parsing: Identify all phrase constituents, which will of course include all noun phrases.
S
NP VP
N
Sally
V NP PP
P NP
the theateratUp in the Airsaw
NP
Elm St.on
PP
NPP
1. Identifying Entities (3)
Coreference Resolution: Identify all references (aka ‘mentions’) of people, places and things in text, and determine which mentions are ‘co-referential’.
John stuck his foot in his mouth.
2. Identifying relationship namesVerb phrase chunking: the commonest approach
Some issues: 1. Often, prepositions/particles “belong” with the relation name
You’re ticking me off.
2. Many relationships are expressed without a verb:Jack Welch, CEO of GE, …
3. Some verbs don’t really express a meaningful relationship by themselves:Jim is the father of 12 boys.
4. Verb sense disambiguation5. Synonymy
ticking off = bothering
2. Identifying relationship names (2)
Synonym Resolution:Discovery of Inference Rules from Text (DIRT) (Lin and Pantel, 2001)
1. They collect millions of examples of
Subject Verb Object
triples by parsing a Web corpus.
2. For a pair of verbs, v1 and v2, they compute mutual information scores between
- the vector space model (VSM) for subjects of v1 and the vector space model for the subjects of v2
- the VSM for objects of v1 and VSM for objects of v2
3. They cluster verbs with high MI scores between them
give donate
many gift souls gift
. yourself
partner monthly
How to animal please hair
you gift many dollars
please blood you car
help life you money
members energy you today
See (Yates and Etzioni, JAIR 2009) for a more recent approach using probabilistic models.
5. Sentiment ClassificationGiven a review (about a movie, hotel, Amazon product, etc.),
a sentiment classification system tries to determine what opinions are expressed in the review.
Coarse-level objective: is the review positive, negative, or neutral overall?
Fine-grained objective: what are the positive aspects (according to the reviewer), and what are the negative aspects?
Question: what technique(s) would you use to solve these two problems?
Semantic Role Labeling
Semantic role labeling is the computational task of assigning semantic roles to phrases
It’s usually divided into three subtasks:1. Predicate identification2. Argument Identification3. Argument Classification -- assigning semantic roles
John broke the window with a hammer.
Pred
B-Arg B-Arg I-Arg B-Arg I-Arg I-Arg
Agent Patient Means (or instrument)
NLP 14
Same event - different sentences
John broke the window with a hammer.
John broke the window with the crack.
The hammer broke the window.
The window broke.
NLP 15
Same event - different syntactic frames
John broke the window with a hammer. SUBJ VERB OBJ MODIFIER
John broke the window with the crack. SUBJ VERB OBJ MODIFIER
The hammer broke the window. SUBJ VERB OBJ
The window broke. SUBJ VERB
NLP 16
Semantic role example break(AGENT, INSTRUMENT, PATIENT)
AGENT PATIENT INSTRUMENT John broke the window with a hammer.
INSTRUMENT PATIENT The hammer broke the window.
PATIENT The window broke.
Fillmore 68 - The case for case
NLP 17
AGENT PATIENT INSTRUMENT John broke the window with a hammer. SUBJ OBJ MODIFIER
INSTRUMENT PATIENT The hammer broke the window. SUBJ OBJ
PATIENT The window broke. SUBJ
Semantic rolesSemantic roles (or just roles) are slots, belonging to a
predicate, which arguments can fill.- There are different naming conventions, but one common set of names for semantic roles are agent, patient, means/instrument, ….
Some constraints:1. Only certain kinds of phrases can fill certain kinds of semantic roles
“with a crack” will never be an agent But many are ambiguous:
“hammer” patient or instrument?2. Syntax provides a clue, but it is not the full answer
Subject Agent? Patient? Instrument?
Slot Filling
PredJohn
broke
the window
with a hammer
Agent
Patient
Means (or instrument)
Phrases Slots
Argument Classification
Slot Filling
PredThe hammer
broke
the window
Agent
Patient
Means (or instrument)
Phrases Slots
Argument Classification
Slot Filling
PredThe window
broke Agent
Patient
Means (or instrument)
Phrases Slots
Argument Classification
Slot Filling and Shallow Semantics
PredJohn
broke
the window
with a hammer
Agent
Patient
Means (or instrument)
Phrases SlotsShallow
Semantics
broke(John, the window, with a hammer)
Pred Agent PatientMeans
(or instrument)
Slot Filling and Shallow Semantics
Pred
broke
The window
Agent
Patient
Means (or instrument)
Phrases SlotsShallow
Semantics
broke( ?x , the window, ?y )
Pred Agent PatientMeans
(or instrument)
Semantic Role Labeling Techniques
We’ll cover 3 approaches to SRL1. Basic (Gildea and Jurafsky, Comp. Ling. 2003)
2. Joint inference for argument structure (Toutanova et al., Comp. Ling. 2008)
3. Open-domain (Huang and Yates, ACL 2010)
1. Gildea and Jurafsky
Main idea: start with parse tree, and try to identify constituents that are arguments.
G&J (1)Build a (probabilistic) classifier for predicting:
- for each constituent, which role is it?- Essentially, a maximum-entropy classifier, although it’s not described that way
Features for Argument Classification:1. Phrase type of constituent2. Governing category of NPs – S or VP (differentiates between
subjects and objects)3. Position w.r.t. predicate (before or after)4. Voice of predicate (active or passive verb)5. Head word of constituent6. Parse tree path between predicate and constituent
G&J (2) – Parse Tree Path Feature
Parse tree path (or just path) feature:
Determines the syntactic relationship between predicate and current constituent.
In this example, path feature:
VB ↑ VP ↑ S ↓ NP
G&J (4)
Build a (probabilistic) classifier for predicting:- for each constituent, which role is it?- Essentially, a maximum-entropy classifier, although it’s not described that way
Features for Argument Identification:1. Predicate word2. Head word of constituent3. Parse tree path between predicate and constituent
G&J (5): Results
Task Best Result
Argument Identification (only) 92% prec., 86% rec., .89 F1
Argument Classification (only) 78.5% assigned correct role
2. Toutanova, Haghighi, and Manning
A Global Joint Model for SRL (Comp. Ling., 2008)
Main idea(s): Include features that depend on multiple
argumentsUse multiple parsers as input, for robustness
THM (1): Motivation1. “The day that the ogre cooked the children is still remembered.”
2. “The meal that the ogre cooked the children is still remembered.”
Both sentences have identical syntax.They differ in only 1 word (day vs. meal).
If we classify arguments 1 at a time, “the children” will be labeled the same thing in both cases.
But in (1), “the children” is the Patient (thing being cooked).And in (2), “the children” is the Beneficiary (people for whom the cooking is
done).
Intuitively, we can’t classify these arguments independently.
THM(2): Features
Features:1.Whole label sequence
1. [voice:active, Arg1, pred, Arg4, ArgM-TMP]2. [voice:active, lemma:accelerated, Arg1, pred, Arg4, ArgM-TMP]3. [voice:active, lemma:accelerated, Arg1, pred, Arg4] (no adjuncts)4. [voice:active, lemma:accelerated, Arg, pred, Arg] (no adjuncts, no #s)
2.Syntax and semantics in the label sequence1. [voice:active, NP-Arg1, pred, PP-Arg4]2. [voice:active, lemma:accelerated, NP-Arg1, pred, PP-Arg4]
3.Repetition features: whether Arg1 (for example) appears multiple times
THM(3): Classifier
• First, for each sentence, obtain the top-10 most likely parse tree/semantic role label outputs from G&J
• Build a max-ent classifier to select from these 10, using the features above
• Also, include top-10 parses from the Charniak parser
THM(4): Results
These are on a different data set from G&J, so results not directly comparable. But the local model is similar to G&J, so think of that as the comparison.
Model WSJ (ID & CLS) Brown (ID & CLS)
Local 78.00 65.55
Joint (1 parse) 79.71 67.79
Joint (top 5 parses) 80.32 68.81
Results show F1 scores for IDentification and CLaSsification of arguments together.WSJ is the Wall Street Journal test set, a collection of approximately 4,000 news sentences.Brown is a smaller collection of fiction stories.The system is trained on a separate set of WSJ sentences.
3. Huang and Yates
Open-Domain SRL by Modeling Word Spans, ACL 2010
Main Idea: One of the biggest problems for SRL systems is that
they need lexical features to classify arguments, but lexical features are sparse.
We build a simple SRL system that outperforms the previous state-of-the-art on out-of-domain data, by learning new lexical representations.
Simple, open-domain SRL
Chris broke the window with a hammer
Proper Noun
Verb Det. Noun Prep. Det. Noun
B-NP B-VP B-NP I-NP B-PP B-NP I-NP
-1 0 +1 +2 +3 +4 +5
POS tag
Chunk tag
dist. from predicate
SRL Label Breaker Pred Thing Broken Means
Baseline Features
HMM label
Simple, open-domain SRL
Chris broke the window with a hammer
Proper Noun
Verb Det. Noun Prep. Det. Noun
B-NP B-VP B-NP I-NP B-PP B-NP I-NP
-1 0 +1 +2 +3 +4 +5
POS tag
Chunk tag
dist. from predicate
SRL Label Breaker Pred Thing Broken Means
Baseline +HMM
The importance of paths
Chris [predicate broke] [thing broken a hammer]
Chris [predicate broke] a window with [means a hammer]
Chris [predicate broke] the desk, so she fetched
[not an arg a hammer] and nails.
Simple, open-domain SRL
Chris broke the window with a hammer
None None None the the-window
the-window-
withthe-window-
with-aWord path
SRL Label Breaker Pred Thing Broken Means
Baseline +HMM + Paths
Simple, open-domain SRL
Chris broke the window with a hammer
None None None the the-window
the-window-
withthe-window-
with-aWord path
SRL Label Breaker Pred Thing Broken Means
Baseline +HMM + Paths
Det Det-Noun
Det-Noun-Prep
Det-Noun-
Prep-DetPOS path None None None
Simple, open-domain SRL
Chris broke the window with a hammer
None None None the the-window
the-window-
withthe-window-
with-aWord path
SRL Label Breaker Pred Thing Broken Means
Baseline +HMM + Paths
Det Det-Noun
Det-Noun-Prep
Det-Noun-
Prep-DetPOS path None None None
HMM path None None None
Experimental results – F1
All systems were trained on newswire text from the Wall Street Journal (WSJ), and tested on WSJ and fiction texts from the Brown corpus (Brown).
Experimental results – F1
All systems were trained on newswire text from the Wall Street Journal (WSJ), and tested on WSJ and fiction texts from the Brown corpus (Brown).
Span-HMM features
Chris broke the window with a hammer
Span-HMM for “hammer”
SRL Label Breaker Pred Thing Broken Means
Span-HMM Features
Span-HMM feature
Span-HMM features
Chris broke the window with a hammer
Span-HMM for “hammer”
SRL Label Breaker Pred Thing Broken Means
Span-HMM Features
Span-HMM feature
Span-HMM features
Chris broke the window with a hammer
Span-HMM for “a”
SRL Label Breaker Pred Thing Broken Means
Span-HMM Features
Span-HMM feature
Span-HMM features
Chris broke the window with a hammer
Span-HMM for “a”
SRL Label Breaker Pred Thing Broken Means
Span-HMM Features
Span-HMM feature
Span-HMM features
Chris broke the window with a hammer
SRL Label Breaker Pred Thing Broken Means
Span-HMM Features
Span-HMM feature None None None
Experimental results – SRL F1
All systems were trained on newswire text from the Wall Street Journal (WSJ), and tested on WSJ and fiction texts from the Brown corpus (Brown).