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COMP 791A: Statistical Language Processing

COMP 791A: Statistical Language Processing. Introduction Chap. 1. Course information. Prof: Leila Kosseim Office: LB 903-7 Email: kosseim@cs.concordia.ca Office hours: TBA. Goal of NLP.

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COMP 791A: Statistical Language Processing

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  1. COMP 791A: Statistical Language Processing Introduction Chap. 1

  2. Course information • Prof: Leila Kosseim • Office: LB 903-7 • Email: kosseim@cs.concordia.ca • Office hours: TBA

  3. Goal of NLP • Develop techniques and tools to build practical and robust systems that can communicate with users in one or more natural language

  4. References • Foundations of Statistical Natural Language Processing, by Chris Manning and Hinrich Schutze, MIT Press, 1999. • Speech and Language Processing, Daniel Jurafsky & James H. Martin. Prentice Hall, 2000.  • Current literature available on the Web. • See course Web page: www.cs.concordia.ca/~kosseim/Teaching/COMP791-W04/

  5. Other References • Proceedings of major conferences • ACL: Association for Computational Linguistics • EACL: European chapter of ACL • ANLP: Applied NLP • COLING: Computational Linguistics • TREC: Text Retrieval Conference

  6. Who studies languages? • Linguist • What constraints the possible meanings of a sentence? • Uses mathematical models (ex. formal grammars) • Psycholinguist • How do people produce a discourse from an idea? • Uses: experimental observations with human subjects • Philosopher • What is meaning anyways? • How do words identify objects in the world? • Uses: argumentations, examples and counter-examples • Computational Linguist (NLP) • How can we identify the structure of sentences automatically? • Uses: data structures, algorithms, AI techniques (search, knowledge-representation, machine learning, …)

  7. Why study NLP? • necessary to many useful applications: • information retrieval, • information extraction, • filtering, • spelling and grammar checking, • automatic text summarization, • understanding and generation of natural language, • machine translation…

  8. Who needs NLP? • Too many texts to manipulate • On Internet • E-mails • Various corporate documentation • Too many languages • 39000 languages and dialects

  9. Languages on the Internet Source: Global Reach (www.glreach.com)

  10. Source: Global Reach (www.glreach.com)

  11. Applications of NLP • Text-based: processing of written texts (ex. Newspaper articles, e-mails, Web pages…) • Text understanding/analysis (NLU) • IR, IE, MT, … • Text generation (NLG) • Dialog-based systems (human-machine communication) • Ex: QA, tutoring systems, …

  12. Brief history of NLP • 1940s - 1950s Foundational Insights • Automata, finite-state machines & formal languages (Turing, Chomsky, Backus&Naur) • Probability and information theory (Shannon) • Noisy channel and decoding (Shannon) • 1960s - 1970s Two Camps • Symbolic: Linguists & Computer Scientists • Transformational grammars (Chomsky, Harris) • Artificial Intelligence (Minsky, McCarthy) • Theorem Proving, heuristics, general problem solver (Newell&Simon) • Stochastic: Statisticians & Electrical Engineers • Bayesian reasoning for character recognition • Authorship attribution • Corpus Work

  13. Brief history of NLP (con’t) • 1970s - 1980s 4 Paradigms • Stochastic approaches • Logic-based / Rule-based approaches • Scripts and plans for NL understanding of “toy worlds” • Discourse modeling (discourse structures & coreference resolution) • Late 1980s - 1990s Rise of probabilistic models • Data-driven probabilistic approaches (more robust) • Engineering practical solutions using automatic learning • Strict evaluation of work

  14. Why study NLP Statistically? • Up to about 10 years, NLP was mainly investigated using a rule-based approach. • But: • Rules are often too strict to characterize people’s use of language (people tend to stretch and bend rules in order to meet their communicative needs.) • Need (expert) people to develop rules (knowledge acquisition bottleneck) • Statistical methods are more flexible & more robust

  15. Tools and Resources Needed • Probability/Statistical Theory: • Statistical Distributions, Bayesian Decision Theory. • Linguistics Knowledge: • Morphology, Syntax, Semantics, Pragmatics… • Corpora: • Bodies of marked or unmarked text • to which statistical methods and current linguistic knowledge can be applied • in order to discover novel linguistic theories or interesting and useful knowledge to build applications.

  16. The Alphabet Soup • NLP  Natural Language Processing • CL  Computational Linguistics • NLE  Natural Language Engineering • HLT  Human Language Technology • IE  Information Extraction • IR  Information Retrieval • MT  Machine Translation • QA  Question-Answering • POS  Part-of-speech • NLG  Natural Language Generation • NLU  Natural Language Understanding

  17. Why is NLP difficult? • Because Natural Language is highly ambiguous. • Syntactic ambiguity • I made her duck. • has 2 parses (i.e., syntactic analysis) • The president spoke to the nation about the problem of drug use in the schools from one coast to the other. • has 720 parses. • Ex: • “to the other” can attach to any of the previous NPs (ex. “the problem”), or the head verb  6 places • “from one coast” has 5 places to attach • …

  18. Why is NLP difficult? (con’t) • Word category ambiguity • book -->verb? or noun? • Word sense ambiguity • bank --> financial institution? building? or river side? • Words can mean more than their sum of parts • make up a story • Fictitious worlds • People on mars can fly. • Defining scope • People like ice-cream. • Does this mean that all (or some?) people like ice cream? • Language is changing and evolving • I’ll email you my answer. • This new S.U.V. as a compartment for your mobile phone.

  19. Methods that do not work well • Hand-coded rules • produce a knowledge acquisition bottleneck • perform poorly on naturally occurring text • Ex: Hand-coded syntactic constraints and preference rules • Ex: selectional restrictions animate being --> swallow--> physical object I swallowed his story / line. The supernova swallowed the planet.

  20. What Statistical NLP can do • seeks to solve the acquisition bottelneck: • by automatically learning preferences from corpora (ex, lexical or syntactic preferences). • offers a solution to the problem of ambiguity and "real" data because statistical models • are robust • generalize well • behave gracefully in the presence of errors and new data.

  21. Some standard corpora • Brown corpus • ~1 million words • Tagged corpus (POS) • Balanced (representative sample of American English in the 1960-1970) (different genres) • Lancaster-Oslo-Bergen (LOB) corpus • British replication of the Brown corpus • Susanne corpus • Free subset of Brown corpus (130 000 words) • Syntactic structure • Penn Treebank • Syntactic structure • Articles from Wall Street Journal • Canadian Hansard • Bilingual corpus of parallel texts

  22. What to do with text corpora? Count words • Count words to find: • What are the most common words in the text? • How many words are in the text? • word tokens vs word types • What is the average frequency of each word in the text?

  23. What’s a word anyways? • I have a can opener; but I can’t open these cans. • how many words? • Word form • inflected form as it appears in the text • can and cans ... different word forms • Lemma • a set of lexical forms having the same stem, same POS and same meaning • can and cans … same lemma • Word token: • an occurrence of a word • I have a can opener; but I can’t open these cans. 11 word tokens(not counting punctuation) • Word type: • a different realization of a word • I have a can opener; but I can’t open these cans. 10 word types(not counting punctuation)

  24. An example • Mark Twain’s Tom Sawyer • 71,370 word tokens • 8,018 word types • tokens/type ratio = 8.9 (indication of text complexity) • Complete Shakespeare work • 884,647 word tokens • 29,066 word types • tokens/type ratio = 30.4

  25. Common words in Tom Sawyer but words in NL have an uneven distribution…

  26. Frequency of frequencies • most words are rare • 3993 (50%) word types appear only once • they are called happax legomena (read only once) • but common words are very common • 100 words account for 51% of all tokens (of all text)

  27. Word counts are interesting... • As an indication of a text’s style • As an indication of a text’s author • But, because most words appear very infrequently, • it is hard to predict much about the behavior of words (if they do not occur often in a corpus) • -->Zipf’s Law

  28. Zipf’s Law • Count the frequency of each word type in a large corpus • List the word types in order of their frequency • Let: • f = frequency of a word type • r = its rank in the list • Zipf’s Law says: f  1/r • In other words: • there exists a constant k such that: f × r = k • The 50th most common word should occur with 3 times the frequency of the 150th most common word.

  29. Zipf’s Law on Tom Saywer • k ≈ 8000-9000 • except for • The 3 most frequent words • Words of frequency ≈ 100

  30. Plot of Zipf’s Law On chap. 1-3 of Tom Sawyer (≠ numbers from p. 25&26) f×r = k

  31. Plot of Zipf’s Law (con’t) On chap. 1-3 of Tom Sawyer f×r = k ==> log(f×r) = log(k) ==> log(f)+log(r) = log(k)

  32. Zipf’s Law, so what? • There are: • A few very common words • A medium number of medium frequency words • A large number of infrequent words • Principle of Least effort: Tradeoff between speaker and hearer’s effort • Speaker communicates with a small vocabulary of common words (less effort) • Hearer disambiguates messages through a large vocabulary of rare words (less effort) • Significance of Zipf’s Law for us: • For most words, our data about their use will be very sparse • Only for a few words will we have a lot of examples

  33. Another Zipf law on language • Nb of meanings of a word is correlated to its frequency • the more frequent a word, the more senses it can have • Ex: • Words at rank 2,000 have 4.6 meanings • Words at rank 5,000 have 3 meanings • Words at rank 10,000 have 2.1 meanings • Ex: Verb senses in WordNet: • serve has 13 senses • but most verbs have only 1 sense f = frequency of word m = num of senses r = rank of word

  34. Yet another Zipf law on language • Content words tend to "clump" together • if we take a text and count the distance between identical words (tokens) • then the freq of intervals of size s between identical tokens is inversely proportional to the size s • i.e. we have a large number of small intervals • i.e. we have a small number of large intervals • --> most content words occur near each other f = frequency of intervals of size s s = size of interval p = varied between 1 and 1.3 xxx xxx xxx xxx

  35. What to do with text corpora? Find Collocations • Collocation: a phrase where the whole expression is perceived as having an existence beyond the sum of its parts • disk drive, make up, bacon and eggs… • important for machine translation • strong tea-->thé fort • strong argument-->?argument fort (convainquant) • can be extracted from a text • find the most common bigrams • however, since these bigrams are often insignificant (ex, “at the”, “of a”) • they can be filtered.

  36. Collocations Raw bigrams Filtered bigrams

  37. What to do with text corpora? Concordances • Find the different contexts in which a word occurs. • Key Word In Context (KWIC) concordancing program.

  38. Concordances • useful for: • Finding syntactic frames of verbs • Transitive? Intransitive? • Building dictionaries for learners of foreign languages • Guiding statistical parsers

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