Title: Unambiguous Unlimited = Unsupervised
1Unambiguous Unlimited Unsupervised
- Marti Hearst
- School of Information, UC Berkeley
- Invited Talk, University of Toronto
- January 31, 2006
This research supported in part by NSF DBI-0317510
2Natural Language Processing
- The ultimate goal write programs that read and
understand stories and conversations. - This is too hard! Instead we tackle
sub-problems. - There have been notable successes lately
- Machine translation is vastly improved
- Decent speech recognition in limited
circumstances - Text categorization works with some accuracy
3Why is text analysis difficult?
- One reason enormous vocabulary size.
- The average English speakers vocabulary is
around 50,000 words, - Many of these can be combined with many others,
- And they mean different things when they do!
4Whats a Robot to Do?
- Decorate the cake with the frosting.
- Decorate the cake with the kids.
- Throw out the cake with the frosting.
- Get the sock from the cat with the gloves.
- Get the glove from the cat with the socks.
- Its in the plastic water bottle.
- Its in the plastic bag dispenser.
5How to tackle this problem?
- The field was stuck for quite some time.
- CYC hand-enter all semantic concepts and
relations - A new approach started around 1990
- How to do it
- Get large text collections
- Compute statistics over the words in those
collections - Many different algorithms for doing this.
6Size Matters
- Recent realization bigger better than smarter!
- Banko and Brill 01 Scaling to Very, Very Large
Corpora for Natural Language Disambiguation, ACL
7Example Problem
- Grammar checker example
- Which word to use?
- ltprincipalgt ltprinciplegt
- Look at which words surround each use
- I am in my third year as the principal of Anamosa
High School. - School-principal transfers caused some upset.
- This is a simple formulation of the quantum
mechanical uncertainty principle. - Power without principle is barren, but principle
without power is futile. (Tony Blair)
8Using Very, Very Large Corpora
- Keep track of which words are the neighbors of
each spelling in well-edited text, e.g. - Principal high school
- Principle rule
- At grammar-check time, choose the spelling best
predicted by the surrounding words. - Surprising results
- Log-linear improvement even to a billion words!
- Getting more data is better than fine-tuning
algorithms!
9The Effects of LARGE Datasets
10How to Extend this Idea?
- This is an exciting result
- BUT relies on having huge amounts of text that
has been appropriately annotated!
11How to Avoid Labeling?
- Web as a baseline (Lapata Keller 04,05)
- Main idea apply web-determined counts to every
problem imaginable. - Example for t in ltprincipalgt ltprinciplegt
- Compute f(w1, t, w2)
- The largest count wins
12Web as a Baseline
- Works very well in some cases
- machine translation candidate selection
- article generation
- noun compound interpretation
- noun compound bracketing
- adjective ordering
- But lacking in others
- spelling correction
- countability detection
- prepositional phrase attachment
- How to push this idea further?
Significantly better than the best supervised
algorithm.
Not significantly different from the best
supervised.
13Using Unambiguous Cases
- The trick look for unambiguous cases to start
- Use these to improve the results beyond what
co-occurrence statistics indicate. - An Early Example
- Hindle and Rooth, Structural Ambiguity and
Lexical Relations, ACL 90, Comp Ling93 - Problem Prepositional Phrase attachment
- I eat/v spaghetti/n1 with/p a fork/n2.
- I eat/v spaghetti/n1 with/p sauce/n2.
- quadruple (v, n1, p, n2)
- Question does n2 attach to v or to n1?
14Using Unambiguous Cases
- How to do this with unlabeled data?
- First try
- Parse some text into phrase structure
- Then compute certain co-occurrences
- f(v, n1, p) f(n1, p) f(v, n1)
- Problem results not accurate enough
- The trick look for unambiguous cases
- Spaghetti with sauce is delicious. (pre-verbal)
- I eat it with a fork. (object of preposition
cant attach to a pronoun) - Use these to improve the results beyond what
co-occurrence statistics indicate.
15Using Unambiguous Cases
- Hindle Rooth, final algorithm
- Parse text into phrase structure.
- Create bigram counts (v, p) and (n1, p) as
follows - First, use unambiguous cases to populate bigram
table - Then, for the ambiguous cases
- Compute a Lexical Association score comparing
(v1, n1, p) to (n1, p, n2). - If this is greater than a threshold, update the
bigram table with the assumed attachment - Else split the score and assign to both
attachments - The bigram table is used for further computations
of the Lexical Association score.
16Unambiguous Unlimited Unsupervised
- Apply the Unambiguous Case Idea to the Very, Very
Large Corpora idea - The potential of these approaches are not fully
realized - Our work
- Semantic Relation Acquisition
- Hypernym (ISA) relations
- Structural Ambiguity Decisions (work with Preslav
Nakov) - PP-attachment
- Noun compound bracketing
- Coordination grouping
17Semantic Relation Detection
- Goal automatically augment a lexical database
- Many potential relation types
- ISA (hypernymy/hyponymy)
- Part-Of (meronymy)
- Idea find unambiguous contexts which (nearly)
always indicate the relation of interest
18Lexico-Syntactic Patterns
19Lexico-Syntactic Patterns
20Adding a New Relation
21Semantic Relation Detection
- Lexico-syntactic Patterns
- Should occur frequently in text
- Should (nearly) always suggest the relation of
interest - Should be recognizable with little pre-encoded
knowledge. - These patterns have been used extensively by
other researchers.
22Structural Ambiguity Problems
- Apply the U U U idea to structural ambiguity
- Noun compound bracketing
- Prepositional Phrase attachment
- Noun Phrase coordination
- Motivation BioText project
- In eukaryotes, the key to transcriptional
regulation of the Heat Shock Response is the Heat
Shock Transcription Factor (HSF). - Open-labeled long-term study of the subcutaneous
sumatriptan efficacy and tolerability in acute
migraine treatment. - BimL protein interact with Bcl-2 or Bcl-XL, or
Bcl-w proteins (Immuno-precipitation (anti-Bcl-2
OR Bcl-XL or Bcl-w)) followed by Western blot
(anti-EEtag) using extracts human 293T cells
co-transfected with EE-tagged BimL and (bcl-2 or
bcl-XL or bcl-w) plasmids)
23Applying U U U to Structural Ambiguity
- We introduce the use of (nearly) unambiguous
features - surface features
- Paraphrases
- Combined with very, very large corpora
- Achieve state-of-the-art results without labeled
examples. - Joint work with Preslav Nakov
24Noun Compound Bracketing
- (a) liver cell antibody (left
bracketing) - (b) liver cell line (right
bracketing) - In (a), the antibody targets the liver cell.
- In (b), the cell line is derived from the liver.
25Dependency Model
- right bracketing w1w2w3
- w2w3 is a compound (modified by w1)
- home health care
- w1 and w2 independently modify w3
- adult male rat
- left bracketing w1w2 w3
- only 1 modificational choice possible
- law enforcement officer
w1 w2 w3
w1 w2 w3
26Related Work
- Marcus(1980), Pustejoskyal.(1993), Resnik(1993)
- adjacency model Pr(w1w2) vs. Pr(w2w3)
- Lauer (1995)
- dependency model Pr(w1w2) vs. Pr(w1w3)
- Keller Lapata (2004)
- use the Web
- unigrams and bigrams
- Girju al. (2005)
- supervised model
- bracketing in context
- requires WordNet senses
- to be given
- Our approach
- Web as data
- ?2 , n-grams
- paraphrases
- surface features
27Computing Bigram Statistics
- Dependency Model, Frequencies
- Compare (w1,w2) to (w1,w3)
- Dependency model, Probabilities
- Pr(left) Pr(w1?w2w2)Pr(w2?w3w3)
- Pr(right) Pr(w1?w3w3)Pr(w2?w3w3)
- So we compare Pr(w1?w2w2) to Pr(w1?w3w3)
right
w1 w2 w3
left
28Probabilities Estimation
- Using page hits as a proxy for n-gram counts
- Pr(w1?w2w2) (w1,w2) / (w2)
- (w2) word frequency query for w2
- (w1,w2) bigram frequency query for w1 w2
- smoothed by 0.5
29Association Models ?2 (Chi Squared)
- A (wi,wj)
- B (wi) (wi,wj)
- C (wj) (wi,wj)
- D N (ABC)
- N 8 trillion ( ABCD)
8 billion Web pages x 1,000 words
30Web-derived Surface Features
- Authors often disambiguate noun compounds using
surface markers, e.g. - amino-acid sequence ? left
- brain stems cell ? left
- brains stem cell ? right
- The enormous size of the Web makes these frequent
enough to be useful.
31Web-derived Surface FeaturesDash (hyphen)
- Left dash
- cell-cycle analysis ? left
- Right dash
- donor T-cell ? right
- fiber optics-system ? should be left..
- Double dash
- T-cell-depletion ? unusable
32Web-derived Surface FeaturesPossessive Marker
- Attached to the first word
- brains stem cell ? right
- Attached to the second word
- brain stems cell ? left
- Combined features
- brains stem-cell ? right
33Web-derived Surface FeaturesCapitalization
- dont-care lowercase uppercase
- Plasmodium vivax Malaria ? left
- plasmodium vivax Malaria ? left
- lowercase uppercase dont-care
- brain Stem cell ? right
- brain Stem Cell ? right
- Disable this on
- Roman digits
- Single-letter words e.g. vitamin D deficiency
34Web-derived Surface FeaturesEmbedded Slash
- Left embedded slash
- leukemia/lymphoma cell ? right
35Web-derived Surface FeaturesParentheses
- Single-word
- growth factor (beta) ? left
- (brain) stem cell ? right
- Two-word
- (growth factor) beta ? left
- brain (stem cell) ? right
36Web-derived Surface FeaturesComma, dot,
semi-colon
- Following the first word
- home. health care ? right
- adult, male rat ? right
- Following the second word
- health care, provider ? left
- lung cancer patients ? left
37Web-derived Surface FeaturesDash to External
Word
- External word to the left
- mouse-brain stem cell ? right
- External word to the right
- tumor necrosis factor-alpha ? left
38Web-derived Surface FeaturesProblems Solutions
- Problem search engines ignore punctuation in
queries - brain-stem cell does not work
- Solution
- query for brain stem cell
- obtain 1,000 document summaries
- scan for the features in these summaries
39Other Web-derived FeaturesPossessive Marker
- We can also query directly for possessives
- Yes, brain stems cell sort of works.
- Search engines
- drop the possessive marker
- but s is kept
- Still, we cannot query for brain stems cell
40Other Web-derived FeaturesAbbreviation
- After the second word
- tumor necrosis factor (NF) ? right
- After the third word
- tumor necrosis (TN) factor ? right
- We query for, e.g., tumor necrosis tn factor
- Problems
- Roman digits IV, VI
- States CA
- Short words me
41Other Web-derived FeaturesConcatenation
- Consider health care reform
- healthcare 79,500,000
- carereform 269
- healthreform 812
- Adjacency model
- healthcare vs. carereform
- Dependency model
- healthcare vs. healthreform
- Triples
- healthcare reform vs. health carereform
42Other Web-derived FeaturesUsing Googles
- Each allows a one-word wildcard
- Single star
- health care reform ? left
- health care reform ? right
- More stars and/or reverse order
- care reform health ? right
43Other Web-derived FeaturesReorder
- Reorders for health care reform
- care reform health ? right
- reform health care ? left
44Other Web-derived FeaturesInternal Inflection
Variability
- Vary inflection of second word
- tyrosine kinase activation
- tyrosine kinases activation
45Other Web-derived FeaturesSwitch The First Two
Words
- Predict right, if we can reorder
- adult male rat as
- male adult rat
46Paraphrases
- The semantics of a noun compound is often made
overt by a paraphrase (Warren,1978) - Prepositional
- stem cells in the brain ? right
- cells from the brain stem ? right
- Verbal
- virus causing human immunodeficiency ? left
- pain associated with arthritis migraine ? right
- Copula
- office building that is a skyscraper ? right
47Paraphrases
- Lauer(1995), KellerLapata(2003), Girjual.
(2005) predict NC semantics by choosing the most
likely preposition - of, for, in, at, on, from, with, about, (like)
- This could be problematic, when more than one
preposition is possible - In contrast
- we try to predict syntax, not semantics
- we do not disambiguate, just add up all counts
- cells in (the) bone marrow ? left
- cells from (the) bone marrow ? left
48Paraphrases
- prepositional paraphrases
- We use 150 prepositions
- verbal paraphrases
- We use associated with, caused by, contained in,
derived from, focusing on, found in, involved in,
located at/in, made of, performed by, preventing,
related to and used by/in/for. - copula paraphrases
- We use is/was and that/which/who
- optional elements
- articles a, an, the
- quantifiers some, every, etc.
- pronouns this, these, etc.
49Evaluation Datasets
- Lauer Set
- 244 noun compounds (NCs)
- from Groliers encyclopedia
- inter-annotator agreement 81.5
- Biomedical Set
- 430 NCs
- from MEDLINE
- inter-annotator agreement 88 (? .606)
50Evaluation Experiments
- Exact phrase queries
- Limited to English
- Inflections
- Lauer Set Carrolls morphological tools
- Biomedical Set UMLS Specialist Lexicon
51Co-occurrence Statistics
52Paraphrase and Surface Features Performance
53Individual Surface Features Performance Bio
54Individual Surface Features Performance Bio
55Results Lauer
56Results Comparing with Others
57Results Bio
58Results for Noun Compound Bracketing
- Introduced search engine statistics that go
beyond the n-gram (applicable to other tasks) - surface features
- paraphrases
- Obtained new state-of-the-art results on NC
bracketing - more robust than Lauer (1995)
- more accurate than KellerLapata (2004)
59Prepositional Phrase Attachment
- (a) Peter spent millions of dollars. (noun
attach) - (b) Peter spent time with his family. (verb
attach) - quadruple (v, n1, p, n2)
- (a) (spent, millions, of, dollars)
- (b) (spent, time, with, family)
60Related Work
- Supervised
- (Brill Resnik, 94) transformation-based
learning, WordNet classes, P82 - (Ratnaparkhi al., 94)
- ME, word classes (MI), P81.6
- (Collins Brooks, 95)
- back-off, P84.5
- (Stetina Makoto, 97) decision trees, WordNet,
P88.1 - (Toutanova al., 04) morphology, syntax,
WordNet, P87.5
- Unsupervised
- (Hindle Rooth, 93) partially parsed corpus,
lexical associations over subsets of (v,n1,p),
P80,R80 - (Ratnaparkhi, 98) POS tagged corpus, unambiguous
cases for (v,n1,p), (n1,p,n2), classifier
P81.9 - (Pantel Lin,00) collocation database,
dependency parser, large corpus (125M words),
P84.3
Unsup. state-of-the-art
61PP-attachment Our Approach
- Unsupervised
- (v,n1,p,n2) quadruples, Ratnaparkhi test set
- Google and MSN Search
- Exact phrase queries
- Inflections WordNet 2.0
- Adding determiners where appropriate
- Models
- n-gram association models
- Web-derived surface features
- paraphrases
62N-gram models
- (i) Pr(pn1) vs. Pr(pv)
- (ii) Pr(p,n2n1) vs. Pr(p,n2v)
- I eat/v spaghetti/n1 with/p a fork/n2.
- I eat/v spaghetti/n1 with/p sauce/n2.
- Pr or (frequency)
- smoothing as in (Hindle Rooth, 93)
- back-off from (ii) to (i)
- N-grams unreliable, if n1 or n2 is a pronoun.
- MSN Search no rounding of n-gram estimates
63Web-derived Surface Features
P R
- Example features
- open the door / with a key ? verb (100.00,
0.13) - open the door (with a key) ? verb (73.58,
2.44) - open the door with a key? verb (68.18,
2.03) - open the door , with a key ? verb (58.44,
7.09) - eat Spaghetti with sauce ? noun (100.00,
0.14) - eat ? spaghetti with sauce? noun (83.33,
0.55) - eat , spaghetti with sauce ? noun (65.77,
5.11) - eat spaghetti with sauce ? noun (64.71,
1.57) - Summing achieves high precision, low recall.
sum
compare
sum
64Paraphrases
- v n1 p n2
- v n2 n1 (noun)
- v p n2 n1 (verb)
- p n2 v n1 (verb)
- n1 p n2 v (noun)
- v PRONOUN p n2 (verb)
- BE n1 p n2 (noun)
65Evaluation
- Ratnaparkhi dataset
- 3097 test examples, e.g.
- prepare dinner for family V
- shipped crabs from province V
- n1 or n2 is a bare determiner 149 examples
- problem for unsupervised methods
- left chairmanship of the N
- is the of kind N
- acquire securities for an N
- special symbols , /, etc. 230 examples
- problem for Web queries
- buy for 10 V
- beat SP-down from V
- is 43-owned by firm N
66Results
For prepositions other then OF. (of ? noun
attachment)
Models in bold are combined in a majority vote.
Simpler but not significantly different from
84.3 (PantelLin,00).
67Noun Phrase Coordination
- (Modified) real sentence
- The Department of Chronic Diseases and Health
Promotion leads and strengthens global efforts to
prevent and control chronic diseases or
disabilities and to promote health and quality of
life.
68NC coordination ellipsis
- Ellipsis
- car and truck production
- means car production and truck production
- No ellipsis
- president and chief executive
- All-way coordination
- Securities and Exchange Commission
69NC Coordination ellipsis
- Quadruple (n1,c,n2,h)
- Penn Treebank annotations
- ellipsis
- (NP car/NN and/CC truck/NN production/NN).
- no ellipsis
- (NP (NP president/NN) and/CC (NP chief/NN
executive/NN)) - all-way can be annotated either way
- This is a problem a parser must deal with.
Collins parser always predicts ellipsis, but
other parsers (e.g. Charniaks) try to solve it.
70Related Work
- (Resnik, 99) similarity of form and meaning,
conceptual association, decision tree, P80,
R100 - (Rus al., 02) deterministic, rule-based
bracketing in context, P87.42, R71.05 - (Chantree al., 05) distributional similarities
from BNC, Sketch Engine (freqs., object/modifier
etc.), P80.3, R53.8
71N-gram models
- (n1,c,n2,h)
- (i) (n1,h) vs. (n2,h)
- (ii) (n1,h) vs. (n1,c,n2)
72Surface Features
sum
compare
sum
73Paraphrases
- n1 c n2 h
- n2 c n1 h (ellipsis)
- n2 h c n1 (NO ellipsis)
- n1 h c n2 h (ellipsis)
- n2 h c n1 h (ellipsis)
74Results428 examples from Penn TB
75Conclusions
- Tapping the potential of very large corpora for
unsupervised algorithms - Go beyond n-grams
- Surface features
- Paraphrases
- Results competitive with best unsupervised
- Results can rival supervised algorithms
- Future Work
- Unambiguous Unlimited Unsupervised
- How to extend to other problems?
76Thank you!
- http//biotext.berkeley.edu
- Supported in part by NSF DBI-0317510
77What about Search?
- Web search currently does not use very much
language analysis. - Queries are very short (2.1 words/avg) so most
queries match many pages - Improvements in ranking make use of the massive
size of the web - Anchor text (words on links pointed to pages)
- Which hits users clicked on (starting to use
this) - As well as the structure of language
- Where query terms occur (title, etc)
- How close together query words occur
78Using n-grams to make predictions
- Say trying to distinguish
- home health care
- home health care
- Main idea compare these co-occurrence
probabilities - home health vs
- health care
79Using n-grams to make predictions
- Use search engines page hits as a proxy for
n-gram counts - compare Pr(w1?w2w2) to Pr(w1?w3w3)
- Pr(w1 ?w2w2 ) (w1,w2) / (w2)
- (w2) word frequency query for w2
- (w1,w2) bigram frequency query for w1 w2
80Probabilities Why? (1)
- Why should we use
- (a) Pr(w1?w2w2), rather than
- (b) Pr(w2?w1w1)?
- KellerLapata (2004) calculate
- AltaVista queries
- (a) 70.49
- (b) 68.85
- British National Corpus
- (a) 63.11
- (b) 65.57
81Probabilities Why? (2)
- Why should we use
- (a) Pr(w1?w2w2), rather than
- (b) Pr(w2?w1w1)?
- Maybe to introduce a bracketing prior.
- Just like Lauer (1995) did.
- But otherwise, no reason to prefer either one.
- Do we need probabilities? (association is OK)
- Do we need a directed model? (symmetry is OK)
82Adjacency Dependency (2)
- right bracketing w1w2w3
- w2w3 is a compound (modified by w1)
- w1 and w2 independently modify w3
- adjacency model
- Is w2w3 a compound?
- (vs. w1w2 being a compound)
- dependency model
- Does w1 modify w3?
- (vs. w1 modifying w2)
w1 w2 w3
w1 w2 w3
w1 w2 w3
83Paraphrases pattern (1)
- v n1 p n2 ? v n2 n1 (noun)
- Can we turn n1 p n2 into a noun compound n2
n1? - meet/v demands/n1 from/p customers/n2 ?
- meet/v the customer/n2 demands/n1
- Problem ditransitive verbs like give
- gave/v an apple/n1 to/p him/n2 ?
- gave/v him/n2 an apple/n1
- Solution
- no determiner before n1
- determiner before n2 is required
- the preposition cannot be to
84Paraphrases pattern (2)
- v n1 p n2 ? v p n2 n1 (verb)
- If p n2 is an indirect object of v, then it
could be switched with the direct object n1. - had/v a program/n1 in/p place/n2 ?
- had/v in/p place/n2 a program/n1
Determiner before n1 is required to prevent n2
n1 from forming a noun compound.
85Paraphrases pattern (3)
- v n1 p n2 ? p n2 v n1 (verb)
- indicates a wildcard position (up to three
intervening words are allowed) - Looks for appositions, where the PP has moved in
front of the verb, e.g. - I gave/v an apple/n1 to/p him/n2 ?
- to/p him/n2 I gave/v an apple/n1
86Paraphrases pattern (4)
- v n1 p n2 ? n1 p n2 v (noun)
- Looks for appositions, where n1 p n2 has moved
in front of v - shaken/v confidence/n1 in/p markets/n2 ?
- confidence/n1 in/p markets/n2 shaken/v
87Paraphrases pattern (5)
- v n1 p n2 ? v PRONOUN p n2 (verb)
- n1 is a pronoun ? verb (HindleRooth, 93)
- Pattern (5) substitutes n1 with a dative pronoun
(him or her), e.g. - put/v a client/n1 at/p odds/n2 ?
- put/v him at/p odds/n2
pronoun
88Paraphrases pattern (6)
- v n1 p n2 ? BE n1 p n2 (noun)
- BE is typically used with a noun attachment
- Pattern (6) substitutes v with a form of to be
(is or are), e.g. - eat/v spaghetti/n1 with/p sauce/n2 ?
- is spaghetti/n1 with/p sauce/n2
to be