Download presentation
Presentation is loading. Please wait.
1
LING/C SC/PSYC 438/538 Computational Linguistics Sandiway Fong Lecture 1: 8/21
2
Part 1 Administrivia
3
Where –S SCI 224 When –TR 12:30–1:45PM (Computer Lab) No Class Scheduled For –Thursday October 18th –Thursday November 22nd (Thanksgiving) Office Hours –catch me after class, or –by appointment –Location: Douglass 311
4
Administrivia Map –Office (Douglass) –Classroom (S SCI)
5
Administrivia Email –sandiway@email.arizona.edusandiway@email.arizona.edu Homepage –http://dingo.sbs.arizona.edu/~sandiwayhttp://dingo.sbs.arizona.edu/~sandiway Lecture slides –available on homepage after each class –in both PowerPoint (.ppt) and Adobe PDF formats animation: in powerpoint
6
Administrivia Course Objectives –Theoretical Introduction to a broad selection of natural language processing techniques Survey course –Practical Acquire some expertise –Use of tools –Parsing algorithms –Write grammars and machines
7
Administrivia Reference Textbook Speech and Language Processing, Jurafsky & Martin, Prentice-Hall 2000 –21 chapters (900 pages) –Concepts, algorithms, heuristics –This course concentrates on the sentence level stuff Sound/speech side Prof. Y. Lin Speech Tech LING 578 (this semester) Prof. Y. Lin Statistical NLP LING 539 (Spring 2008) More advanced course –LING 581: Advanced Computational Linguistics –required for HLT Master’s Program students
8
Administrivia Laboratory Exercises –To run tools and write grammars –you need access to computational facilities use your PC or Mac run Windows, Linux or MacOSX –Homework exercises
9
Administrivia Grading –3 homeworks –Exams a mid-term a final mix of theoretical and practical exercises
10
Administrivia Homeworks –Homeworks will be presented/explained in class (good chance to ask questions) –Please attempt homeworks early (then you can ask questions before the deadline) –you have one week to do the homework (midnight deadline) (email submission to me) e.g. homework comes out on Thursday, it is due in my mailbox by next Thursday midnight
11
Administrivia Homework Policy –You may discuss your homework with others –You must write up your homework by yourself –You must cite sources and references Code of Academic Integrity http://dos.web.arizona.edu/uapolicies/cai1.html –Late homeworks are subject to points deduction –Really late homeworks, e.g. a week late, will not be accepted –Emergencies and scheduled absences: inform instructor to make alternative arrangements
12
Administrivia Requirements: 438 vs. 538 538 = 438 + 1 classroom presentation of a selected chapter from the textbook + 438 extra credit homework and exam questions are obligatory
13
Administrivia Requirements: 538
14
Class Questionnaire I’ll pass my laptop around... –Use PhotoBooth Fill in Excel spreadsheet –Name –PhotoBooth # –Email –Major –Any programming expertise? –Have a laptop? –Knowledge of Linguistics? click on red button to take a picture of yourself
15
Part 2 Introduction
16
Human Language Technology (HLT)... is everywhere information is organized and accessed using language
17
Human Language Technology (HLT) Beginnings c. 1950 (just after WWII) –Electronic computers invented for numerical analysis code breaking Grand Challenges for Computers... Killer Apps: –Language comprehension tasks and Machine Translation (MT) References –Readings in Machine Translation –Eds. Nirenburg, S. et al. MIT Press 2003. –(Part 1: Historical Perspective) Read Chapter 1 of the textbook www.cs.colorado.edu/~martin/SLP/slp-ch1.pdf
18
Human Language Technology (HLT) Cryptoanalysis Basis –early optimism [Translation. Weaver, W.] Citing Shannon’s work, he asks: “If we have useful methods for solving almost any cryptographic problem, may it not be that with proper interpretation we already have useful methods for translation?”
19
Human Language Technology (HLT) Popular in the early days and has undergone a modern revival The Present Status of Automatic Translation of Languages (Bar-Hillel, 1951) –“I believe this overestimation is a remnant of the time, seven or eight years ago, when many people thought that the statistical theory of communication would solve many, if not all, of the problems of communication” –Much valuable time spent on gathering statistics
20
Human Language Technology (HLT) uneasy relationship between linguistics and statistical analysis Statistical Methods and Linguistics (Abney, 1996) –Chomsky vs. Shannon Statistics and low (zero) frequency items –Smoothing No relation between order of approximation and grammaticality Parameter estimation problem is intractable (for humans) –IBM (17 million parameters)
21
Human Language Technology (HLT) recent exciting developments in HLT –precipitated by progress in computers: stochastic machine learning methods storage: large amounts of training data –general available of corpora (Linguistic Data Consortium) University of Arizona Library System is a subscriber you can borrow many CDROMs of data
22
Human Language Technology (HLT) Killer Application?
23
Natural Language Processing (NLP) Computational Linguistics Question: –How to process natural languages on a computer Intersects with: –Computer science (CS) –Mathematics/Statistics –Artificial intelligence (AI) –Linguistic Theory –Psychology: Psycholinguistics e.g. the human sentence processor
24
Natural Language Properties which properties are going to be difficult for computers to deal with? Grammar (Rules for putting words together into sentences) –How many rules are there? 100, 1000, 10000, more … –Portions learnt or innate –Do we have all the rules written down somewhere? Lexicon (Dictionary) –How many words do we need to know? 1000, 10000, 100000 …
25
Computers vs. Humans Knowledge of language –Computers are way faster than humans They kill us at arithmetic and chess –But human beings are so good at language, we often take our ability for granted Processed without conscious thought Exhibit complex behavior IBM’s Deep Blue
26
Examples Innate Knowledge? –Which report did you file without reading? –(Parasitic gap sentence) –file(x,y) –read(u,v) x = you y = report u = x = you v = y = report and there are no other possible interpretations *the report was filed without reading
27
Examples Changes in interpretation John is too stubborn to talk to John is too stubborn to talk to Bill talk_to(x,y) (1) x = arbitrary person, y = John (2) x = John, y = Bill
28
Examples Ambiguity –Where can I see the bus stop? –stop: verb or part of the noun-noun compound bus stop –Context (Discourse or situation) –Where can I see [the [ NN bus stop]]? –Where can I see [[the bus] [ V stop]]?
29
Examples Ungrammaticality –*Which book did you file the report without reading? –?*Which book did you file it without reading? –* = ungrammatical –ungrammatical vs. incomprehensible
30
Example The human parser has quirks Ian told the man that he hired a secretary Ian told the man that he hired a story Garden-pathing: a temporary ambiguity tell: multiple syntactic frames for the verb Ian told [the man that he hired] [a story] Ian told [the man] [that he hired a secretary] Ian told the agent that he unmasked a secret
31
Frequently Asked Questions from the Linguistic Society of America (LSA) http://www.lsadc.or g/info/ling-faqs.cfm
32
LSA (Linguistic Society of America) pamphlet by Ray Jackendoff A Linguist’s Perspective on What’s Hard for Computers to Do … –is he right?
33
If computers are so smart, why can't they use simple English? Consider, for instance, the four letters read ; they can be pronounced as either reed or red. How does the machine know in each case which is the correct pronunciation? Suppose it comes across the following sentences: (l) The girls will read the paper. (reed) (2) The girls have read the paper. (red) We might program the machine to pronounce read as reed if it comes right after will, and red if it comes right after have. But then sentences (3) through (5) would cause trouble. (3) Will the girls read the paper? (reed) (4) Have any men of good will read the paper? (red) (5) Have the executors of the will read the paper? (red) How can we program the machine to make this come out right?
34
If computers are so smart, why can't they use simple English? (6) Have the girls who will be on vacation next week read the paper yet? (red) (7) Please have the girls read the paper. (reed) (8) Have the girls read the paper?(red) Sentence (6) contains both have and will before read, and both of them are auxiliary verbs. But will modifies be, and have modifies read. In order to match up the verbs with their auxiliaries, the machine needs to know that the girls who will be on vacation next week is a separate phrase inside the sentence. In sentence (7), have is not an auxiliary verb at all, but a main verb that means something like 'cause' or 'bring about'. To get the pronunciation right, the machine would have to be able to recognize the difference between a command like (7) and the very similar question in (8), which requires the pronunciation red.
35
Berkeley Parser http://nlp.cs.berkeley.edu/Main.html#Parsing The Berkeley Parser is the most accurate and one of the fastest parsers for a variety of languages.
36
Berkeley Parser l) The girls will read the paper. (reed) Verb Tags (Part of Speech Labels) VB - Verb, base form VBD - Verb, past tense VBG - Verb, gerund or present participle VBN - Verb, past participle VBP - Verb, non-3rd person singular present VBZ - Verb, 3rd person singular present
37
Berkeley Parser (2) The girls have read the paper. (red) Verb Tags (Part of Speech Labels) VB - Verb, base form VBD - Verb, past tense VBG - Verb, gerund or present participle VBN - Verb, past participle VBP - Verb, non-3rd person singular present VBZ - Verb, 3rd person singular present
38
Berkeley Parser (3) Will the girls read the paper? (reed) Verb Tags (Part of Speech Labels) VB - Verb, base form VBD - Verb, past tense VBG - Verb, gerund or present participle VBN - Verb, past participle VBP - Verb, non-3rd person singular present VBZ - Verb, 3rd person singular present
39
Berkeley Parser (4) Have any men of good will read the paper? (red) Verb Tags (Part of Speech Labels) VB - Verb, base form VBD - Verb, past tense VBG - Verb, gerund or present participle VBN - Verb, past participle VBP - Verb, non-3rd person singular present VBZ - Verb, 3rd person singular present
40
Berkeley Parser (5) Have the executors of the will read the paper? (red) Verb Tags (Part of Speech Labels) VB - Verb, base form VBD - Verb, past tense VBG - Verb, gerund or present participle VBN - Verb, past participle VBP - Verb, non-3rd person singular present VBZ - Verb, 3rd person singular present
41
Part 3 software already installed here
42
Your Homework for Today Download and Install Perl –Active State Perl Install SWI-Prolog http://www.SWI-Prolog.org/
43
Perl Resources http://www.perl.com/ –tutorials etc. http://perldoc.perl.org/perlintro.html
44
Perl Resources Google is your friend: many resources out there!
45
Prolog Resources Useful Online Tutorials –An introduction to Prolog (Michel Loiseleur & Nicolas Vigier) http://invaders.mars- attacks.org/~boklm/prolog/http://invaders.mars- attacks.org/~boklm/prolog/ –Learn Prolog Now! (Patrick Blackburn, Johan Bos & Kristina Striegnitz) http://www.coli.uni-saarland.de/~kris/learn- prolog-now/lpnpage.php?pageid=onlinehttp://www.coli.uni-saarland.de/~kris/learn- prolog-now/lpnpage.php?pageid=online
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.