Download presentation
Presentation is loading. Please wait.
Published byAnastasia McKenzie Modified over 9 years ago
1
CMSC 723 / LING 645: Intro to Computational Linguistics September 22, 2004: Dorr Porter Stemmer, Intro to Probabilistic NLP and N-grams (chap 6.1-6.3) Prof. Bonnie J. Dorr Dr. Christof Monz TA: Adam Lee
2
Computational Morphology (continued) The Rules and the Lexicon –General versus Specific –Regular versus Irregular –Accuracy, speed, space –The Morphology of a language Approaches –Lexicon only –Lexicon and Rules Finite-state Automata Finite-state Transducers –Rules only
3
Lexicon-Free Morphology: Porter Stemmer Lexicon-Free FST Approach By Martin Porter (1980) http://www.tartarus.org/%7Emartin/PorterStemmer/ http://www.tartarus.org/%7Emartin/PorterStemmer/ Cascade of substitutions given specific conditions GENERALIZATIONS GENERALIZATION GENERALIZE GENERAL GENER
4
Porter Stemmer Definitions –C = string of one or more consonants, where a consonant is anything other than A E I O U or (Y preceded by C) –V = string of one or more vowels –M = Measure, roughly with number of syllables –Words = (C)*(V*C*) M (V)* M=0 TR, EE, TREE, Y, BY M=1 TROUBLE, OATS, TREES, IVY M=2 TROUBLES, PRIVATE, OATEN, ORRERY Conditions –*S - stem ends with S –*v* - stem contains a V –*d - stem ends with double C, e.g., -TT, -SS –*o - stem ends CVC, where second C is not W, X or Y, e.g., -WIL, HOP
5
Porter Stemmer Step 1 : Plural Nouns and Third Person Singular Verbs SSES SS caresses caress IES I ponies poni ties ti SS SS caress caress S cats cat * = ends with *v* = contains a V *d = ends with double C *o = ends with CVC second C is not W, X or Y Step 2a : Verbal Past Tense and Progressive Forms (M>0) EED EE feed feed, agreed agree i(*v*) ED plastered plaster, bled bled ii (*v*) ING motoring motor, sing sing Step 2b : If 2a.i or 2a.ii is successful, Cleanup AT ATE conflat(ed) conflate BL BLE troubl(ed) trouble IZ IZE siz(ed) size (*d and not (*L or *S or *Z))hopp(ing) hop, tann(ed) tan single letterhiss(ing) hiss, fizz(ed) fizz (M=1 and *o) E fail(ing) fail, fil(ing) file
6
Porter Stemmer Step 3 : Y I (*v*) Y I happy happi sky sky * = ends with *v* = contains a V *d = ends with double C *o = ends with CVC second C is not W, X or Y
7
Porter Stemmer Step 4 : Derivational Morphology I: Multiple Suffixes (m>0) ATIONAL -> ATE relational -> relate (m>0) TIONAL -> TION conditional -> condition rational -> rational (m>0) ENCI -> ENCE valenci -> valence (m>0) ANCI -> ANCE hesitanci -> hesitance (m>0) IZER -> IZE digitizer -> digitize (m>0) ABLI -> ABLE conformabli -> conformable (m>0) ALLI -> AL radicalli -> radical (m>0) ENTLI -> ENT differentli -> different (m>0) ELI -> E vileli - > vile (m>0) OUSLI -> OUS analogousli -> analogous (m>0) IZATION -> IZE vietnamization -> vietnamize (m>0) ATION -> ATE predication -> predicate (m>0) ATOR -> ATE operator -> operate (m>0) ALISM -> AL feudalism -> feudal (m>0) IVENESS -> IVE decisiveness -> decisive (m>0) FULNESS -> FUL hopefulness -> hopeful (m>0) OUSNESS -> OUS callousness -> callous (m>0) ALITI -> AL formaliti -> formal (m>0) IVITI -> IVE sensitiviti -> sensitive (m>0) BILITI -> BLE sensibiliti -> sensible
8
Porter Stemmer Step 5 : Derivational Morphology II: More Multiple Suffixes (m>0) ICATE -> IC triplicate -> triplic (m>0) ATIVE -> formative -> form (m>0) ALIZE -> AL formalize -> formal (m>0) ICITI -> IC electriciti -> electric (m>0) ICAL -> IC electrical -> electric (m>0) FUL -> hopeful -> hope (m>0) NESS -> goodness -> good
9
Porter Stemmer Step 6 : Derivational Morphology III: Single Suffixes (m>1) AL -> revival -> reviv (m>1) ANCE -> allowance -> allow (m>1) ENCE -> inference -> infer (m>1) ER -> airliner -> airlin (m>1) IC -> gyroscopic -> gyroscop (m>1) ABLE -> adjustable -> adjust (m>1) IBLE -> defensible -> defens (m>1) ANT -> irritant -> irrit (m>1) EMENT -> replacement -> replac (m>1) MENT -> adjustment -> adjust (m>1) ENT -> dependent -> depend (m>1 and (*S or *T)) ION -> adoption -> adopt (m>1) OU -> homologou -> homolog (m>1) ISM -> communism -> commun (m>1) ATE -> activate -> activ (m>1) ITI -> angulariti -> angular (m>1) OUS -> homologous -> homolog (m>1) IVE -> effective -> effect (m>1) IZE -> bowdlerize -> bowdler * = ends with *v* = contains a V *d = ends with double C *o = ends with CVC second C is not W, X or Y
10
Porter Stemmer Step 7a : Cleanup (m>1) E probate probat rate rate (m=1 and not *o) E cease ceas Step 7b: More Cleanup (m > 1 and *d and *L) controll control single letter roll roll * = ends with *v* = contains a V *d = ends with double C *o = ends with CVC second C is not W, X or Y
11
Porter Stemmer Errors of Omission –EuropeanEurope –analysisanalyzes –matricesmatrix –noisenoisy –explainexplanation Errors of Commission –organizationorgan –doingdoe –generalization generic –numerical numerous –universityuniverse From Krovetz ‘93
12
Why (not) Statistics for NLP? Pro –Disambiguation –Error Tolerant –Learnable Con –Not always appropriate –Difficult to debug
13
Weighted Automata/Transducers Speech recognition: storing a pronunciation lexicon Augmentation of FSA: Each arc is associated with a probability
14
Pronunciation network for “about”
15
Noisy Channel
16
Probability Definitions Experiment (trial) –Repeatable procedure with well-defined possible outcomes Sample space –Complete set of outcomes Event –Any subset of outcomes from sample space Random Variable –Uncertain outcome in a trial
17
More Definitions Probability –How likely is it to get a particular outcome? –Rate of getting that outcome in all trials Probability of drawing a spade from 52 well-shuffled playing cards: Distribution: Probabilities associated with each outcome a random variable can take –Each outcome has probability between 0 and 1 –The sum of all outcome probabilities is 1.
18
Conditional Probability What is P(A|B)? First, what is P(A)? –P(“It is raining”) =.06 Now what about P(A|B)? –P(“It is raining” | “It was clear 10 minutes ago”) =.004 ABA,B Note: P(A,B)=P(A|B) · P(B) Also: P(A,B) = P(B,A)
19
Independence What is P(A,B) if A and B are independent? P(A,B)=P(A) · P(B) iff A,B independent. –P(heads,tails) = P(heads) · P(tails) =.5 ·.5 =.25 –P(doctor,blue-eyes) = P(doctor) · P(blue-eyes) =.01 ·.2 =.002 What if A,B independent? –P(A|B)=P(A) iff A,B independent –Also: P(B|A)=P(B) iff A,B independent
20
Bayes Theorem Swap the order of dependence Sometimes easier to estimate one kind of dependence than the other
21
What does this have to do with the Noisy Channel Model? P(H) (H) (O) P(O|H)Best H argmax H = Best H = argmax P(H|O) H likelihoodprior
22
Noisy Channel Applied to Word Recognition argmax w P(w|O) = argmax w P(O|w) P(w) Simplifying assumptions –pronunciation string correct –word boundaries known Problem: –Given [n iy], what is correct dictionary word? What do we need? [ni]: knee, neat, need, new
23
What is the most likely word given [ni]? Now compute likelihood P([ni]|w), then multiply WordP(O|w)P(w)P(O|w)P(w) new.36.001.00036 neat.52.00013.000068 need.11.00056.000062 knee1.00.000024 Wordfreq(w)P(w) new2625.001 neat 338.00013 need1417.00056 knee 61.000024 Compute prior P(w)
24
Why N-grams? WordP(O|w)P(w)P(O|w)P(w) new.36.001.00036 neat.52.00013.000068 need.11.00056.000062 knee1.00.000024 P([ni]|new)P(new) P([ni]|neat)P(neat) P([ni]|need)P(need) P([ni]|knee)P(knee) Unigram approach: ignores context Need to factor in context (n-gram) -Use P(need|I) instead of just P(need) -Note: P(new|I) < P(need|I) Compute likelihood P([ni]|w), then multiply
25
Next Word Prediction [borrowed from J. Hirschberg] From a NY Times story... –Stocks plunged this …. –Stocks plunged this morning, despite a cut in interest rates –Stocks plunged this morning, despite a cut in interest rates by the Federal Reserve, as Wall... –Stocks plunged this morning, despite a cut in interest rates by the Federal Reserve, as Wall Street began
26
–Stocks plunged this morning, despite a cut in interest rates by the Federal Reserve, as Wall Street began trading for the first time since last … –Stocks plunged this morning, despite a cut in interest rates by the Federal Reserve, as Wall Street began trading for the first time since last Tuesday's terrorist attacks. Next Word Prediction (cont)
27
Human Word Prediction Domain knowledge Syntactic knowledge Lexical knowledge
28
Claim A useful part of the knowledge needed to allow Word Prediction can be captured using simple statistical techniques. Compute: –probability of a sequence –likelihood of words co-occurring
29
Why would we want to do this? Rank the likelihood of sequences containing various alternative alternative hypotheses Assess the likelihood of a hypothesis
30
Why is this useful? Speech recognition Handwriting recognition Spelling correction Machine translation systems Optical character recognizers
31
Handwriting Recognition Assume a note is given to a bank teller, which the teller reads as I have a gub. (cf. Woody Allen) NLP to the rescue …. –gub is not a word –gun, gum, Gus, and gull are words, but gun has a higher probability in the context of a bank
32
Real Word Spelling Errors They are leaving in about fifteen minuets to go to her house. The study was conducted mainly be John Black. The design an construction of the system will take more than a year. Hopefully, all with continue smoothly in my absence. Can they lave him my messages? I need to notified the bank of…. He is trying to fine out.
33
For Spell Checkers Collect list of commonly substituted words –piece/peace, whether/weather, their/there... Example: “On Tuesday, the whether …’’ “On Tuesday, the weather …”
34
Language Model Definition: Language model is a model that enables one to compute the probability, or likelihood, of a sentence S, P(S). Let’s look at different ways of computing P(S) in the context of Word Prediction
35
Word Prediction: Simple vs. Smart Simple: Every word follows every other word w/ equal probability (0-gram) –Assume |V| is the size of the vocabulary –Likelihood of sentence S of length n is = 1/|V| × 1/|V| … × 1/|V| –If English has 100,000 words, probability of each next word is 1/100000 =.00001 Smarter: Probability of each next word is related to word frequency (unigram) – Likelihood of sentence S = P(w 1 ) × P(w 2 ) × … × P(w n ) – Assumes probability of each word is independent of probabilities of other words. Even smarter: Look at probability given previous words (N-gram) – Likelihood of sentence S = P(w 1 ) × P(w 2 |w 1 ) × … × P(w n |w n-1 ) – Assumes probability of each word is dependent on probabilities of other words. n times
36
Chain Rule Conditional Probability –P(A 1,A 2 ) = P(A 1 ) · P(A 2 |A 1 ) The Chain Rule generalizes to multiple events –P(A 1, …,A n ) = P(A 1 ) P(A 2 |A 1 ) P(A 3 |A 1,A 2 )…P(A n |A 1 …A n-1 ) Examples: –P(the dog) = P(the) P(dog | the) –P(the dog bites) = P(the) P(dog | the) P(bites| the dog)
37
Relative Frequencies and Conditional Probabilities Relative word frequencies are better than equal probabilities for all words –In a corpus with 10K word types, each word would have P(w) = 1/10K –Does not match our intuitions that different words are more likely to occur (e.g. the) Conditional probability more useful than individual relative word frequencies –Dog may be relatively rare in a corpus –But if we see barking, P(dog|barking) may be very large
38
For a Word String In general, the probability of a complete string of words w 1 …w n is: P(w ) = P(w 1 )P(w 2 |w 1 )P(w 3 |w 1..w 2 )…P(w n |w 1 …w n-1 ) = 1 n But this approach to determining the probability of a word sequence is not very helpful in general….
39
Markov Assumption How do we compute P(w n |w 1 n-1 )? Trick: Instead of P(rabbit|I saw a), we use P(rabbit|a). –This lets us collect statistics in practice –A bigram model: P(the barking dog) = P(the| )P(barking|the)P(dog|barking) Markov models are the class of probabilistic models that assume that we can predict the probability of some future unit without looking too far into the past –Specifically, for N=2 (bigram): P(w 1 ) ≈ Π P(w k |w k-1 ) n n k=1 Order of a Markov model: length of prior context –bigram is first order, trigram is second order, …
40
Counting Words in Corpora What is a word? –e.g., are cat and cats the same word? –September and Sept? –zero and oh? –Is seventy-two one word or two? AT&T? –Punctuation? How many words are there in English? Where do we find the things to count?
41
Corpora Corpora are (generally online) collections of text and speech Examples: –Brown Corpus (1M words) –Wall Street Journal and AP News corpora –ATIS, Broadcast News (speech) –TDT (text and speech) –Switchboard, Call Home (speech) –TRAINS, FM Radio (speech)
42
Training and Testing Probabilities come from a training corpus, which is used to design the model. –overly narrow corpus: probabilities don't generalize –overly general corpus: probabilities don't reflect task or domain A separate test corpus is used to evaluate the model, typically using standard metrics –held out test set –cross validation –evaluation differences should be statistically significant
43
Terminology Sentence: unit of written language Utterance: unit of spoken language Word Form: the inflected form that appears in the corpus Lemma: lexical forms having the same stem, part of speech, and word sense Types (V): number of distinct words that might appear in a corpus (vocabulary size) Tokens (N): total number of words in a corpus Types seen so far (T): number of distinct words seen so far in corpus (smaller than V and N)
44
Simple N-Grams An N-gram model uses the previous N-1 words to predict the next one: P(w n | w n-N+1 w n-N+2… w n-1 ) –unigrams: P(dog) –bigrams: P(dog | big) –trigrams: P(dog | the big) –quadrigrams: P(dog | chasing the big)
45
Using N-Grams Recall that –N-gram: P(w n |w 1 ) ≈ P(w n |w n-N+1 ) –Bigram: P(w 1 ) ≈ Π P(w k |w k-1 ) n n k=1 n-1 For a bigram grammar –P(sentence) can be approximated by multiplying all the bigram probabilities in the sequence Example: P(I want to eat Chinese food) = P(I | ) P(want | I) P(to | want) P(eat | to) P(Chinese | eat) P(food | Chinese)
46
A Bigram Grammar Fragment from BERP Eat on.16Eat Thai.03 Eat some.06Eat breakfast.03 Eat lunch.06Eat in.02 Eat dinner.05Eat Chinese.02 Eat at.04Eat Mexican.02 Eat a.04Eat tomorrow.01 Eat Indian.04Eat dessert.007 Eat today.03Eat British.001
47
Additional BERP Grammar I.25Want some.04 I’d.06Want Thai.01 Tell.04To eat.26 I’m.02To have.14 I want.32To spend.09 I would.29To be.02 I don’t.08British food.60 I have.04British restaurant.15 Want to.65British cuisine.01 Want a.05British lunch.01
48
Computing Sentence Probability P(I want to eat British food) = P(I| ) P(want|I) P(to|want) P(eat|to) P(British|eat) P(food|British) =.25×.32×.65×.26×.001×.60 =.000080 vs. I want to eat Chinese food =.00015 Probabilities seem to capture “syntactic” facts, “world knowledge” –eat is often followed by a NP –British food is not too popular N-gram models can be trained by counting and normalization
49
BERP Bigram Counts IWantToEatChineseFoodlunch I81087013000 Want307860686 To30108603012 Eat002019252 Chinese200001201 Food190170000 Lunch4000010
50
BERP Bigram Probabilities: Use Unigram Count Normalization: divide bigram count by unigram count of first word. IWantToEatChineseFoodLunch 3437121532569382131506459 Computing the probability of I I –P(I|I) = C(I,I)/C(I) = 8 / 3437 =.0023 A bigram grammar is an NxN matrix of probabilities, where N is the vocabulary size
51
Learning a Bigram Grammar The formula P(w n |w n-1 ) = C(w n,w n-1 )/C(w n-1 ) is used for bigram “parameter estimation” Relative Frequency Maximum Likelihood Estimation (MLE): Parameter set maximizes likelihood of training set T given model M — P(T|M).
52
What do we learn about the language? What about... –P(I | I) =.0023 –P(I | want) =.0025 –P(I | food) =.013 What's being captured with... –P(want | I) =.32 –P(to | want) =.65 –P(eat | to) =.26 –P(food | Chinese) =.56 –P(lunch | eat) =.055
53
Readings for next time J&M Chapter 5, 7.1-7.3
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.