Natural Language Processing
winter / fall 2010/201141.4268
Prof. Dr. Bettina Harriehausen-MühlbauerUniv. of Applied Science, Darmstadt, Germanywww.fbi.h-da.de/~harriehausen
What does Star Trek have to do with NLP ?
the past - the present - the future
What is NLP / Computational Linguistics ?
What is NLP / Computational Linguistics ?
definition:
A system is called a natural language processing system when
• a subset of the input or output of the system is coded / written in a natural language and
• the processing of the data is performed by algorithms for the morpho-syntactic, semantic, and pragmatic analysis or generation of natural language
Natural Language Processing is ...
an interdisciplinary field / art / science
• computer science (A.I.)
• linguistics (language independent)
• mathematics (logics, predicate logic, knowledge based systems, statistics, ...)
• psychology (cognitive science)
• physics (speech recognition, spoken language)
• ...
Natural Language Processing is ...
a broad field / art / science
• phonetics / phonology (speech processing / speech recognition)phonemes = the smallest meaning-distinguishing items
• morphology (segmentation , compounding,...) - tokenization morphemes = the smallest items carrying meaning
• lexicology / electronic dictionaries – tagginglexemes , lemmas vs. full-forms (each entry needs a tag)idiomatic expressions , neologisms / „trendy words“ , homonyms , …
• syntax (analysis and generation of phonemes, morphemes, lexemes, phrases, sentences, paragraphs) …grammar / - formalisms
(from transformation to unification)
• semantics (meaning, disambiguation, anaphora resolution,...)
• pragmatics (discourse representation)
We will focus on... (1)
• intro
• morphology • parsing / tokenization
• compounds
• lexicon / electronic dictionaries• lemmas / inflected forms
• coding features / tagging
• idiomatic expressions
• neologisms / „trendy words“
• homonyms
We will focus on... (2)
• syntax -> semantics : from transformation to unification (RTN / ATN), case grammar (Fillmore) , CD-structures
• machine translation
• data mining / text mining
• speech recognition
We will focus on... (3)
dictionary grammar
parser
We will focus on... (4)
• get an overview of and understand the scope of NLP
• get an overview of the state-of-the-art technologies (subset)
• understand the parallels between CL and NLP and A.I.
• reach the ability to use principles of linguistic theories in NLP programming
together, we want to:
reading material
Latest edition: Prentice Hall, 2008
ISBN-10: 0131873210, ISBN-13: 978-0131873216
First chapter: http://www.cs.colorado.edu/~martin/SLP/Updates/1.pdf
reading material
MIT Press, 1999, ISBN 0262133601
Reader link: http://www.amazon.de/gp/reader/0262133601/ref=sib_dp_pt/028-2523061-0018166#reader-page
http://cognet.mit.edu/library/books/view?isbn=0262133601
more...reading material (A.I.)
• Bobrow, D.G., Winograd, T. „An Overview of KRL, a Knowledge Representation Language“ in: Cognitive Science, Vol.1, No.1, 3-46, 1977
• Charniak, E. „A common representation for problem solving and natural language comprehension information“. Artificial Intelligence, 1981, 225-255.
• Friedman, J.A. Computer Model of Transformational Grammar. New York: Elsevier. 1971.
• Christopher D. Manning (Author), Prabhakar Raghavan (Author), Hinrich Schütze (Author). Introduction to Information Retrieval. Cambridge University Press. 2008. ISBN-10: 0521865719 ISBN-13: 978-0521865715
• Norvig, Peter. Unified Theory of Inference for Text Understanding. Univ. of California, Berkeley, Computer Science Division. Report. No. UCB/CSD 87/339. 1987.
• Quillian, M.R. „Sematic Memory“. In: M.Minsky, ed. Semantic Information Processing. MIT Press. Cambridge. 1968.
more
more...reading material (A.I.)
• Stuart Russell (Author), Peter Norvig (Author) Artificial Intelligence: A Modern Approach (2nd Edition) (Prentice Hall Series in Artificial Intelligence). Prentice Hall, 2002. ISBN-10: 0137903952
• Schank, R.C. Conceptual Information Processing. Amsterdam: North Holland. 1975.
• Schank, R.C., Abelson, R.P. Scripts, Goals and Understanding: An Inquiry into Human Knowledge Structures. Hillsdale: Lawrence Erlbaum Associates. 1977.
• Wilensky, R., Arens, Y. PHRAN: A knowledge-based approach to natural language analysis. Electronics Research Laboratory, College of Engineering. University of California, Berkeley. Memorandum No. UCB/ERL M80/34. 1980.
• Wilensky, Robert. „Some Problems for proposals for Knowledge Representation“. University of Berkeley, CS Dept. 1986.
• Woods, W.A. „What‘s a link: Foundations for Semantic Networks“. In: Representation and Understanding: Studies in Cognitive Science. D.G. Bobrow, A. Collins, eds. New York: Academic Press, 1975.
more
more...reading material (NLP)• Bresnan, Joan, ed. The mental Representations of Language. London: MIT Press.
1982.• Bresnan, Joan. Lexical Functional Grammar. Stanford Linguistic Institute. 1987• Chomsky, Noam. Aspects of the Theory of Syntax. Cambridge: MIT Press. 1965.• Ronen Feldman (Author), James Sanger (Author) The Text Mining Handbook:
Advanced Approaches in Analyzing Unstructured Data (Hardcover). Cambridge University Press. 2006.
• Fillmore, Charles. The Case for Case. Ohio State University, 1968.• Fillmore, Charles. „The case for Case reopened“. In: P. Cole, J.M. Saddock, eds.
Syntax and Semantics 8: Grammatical Relations. Academic Press, N.Y. 1977.• Harriehausen, B. „Why grammars need to expand their scope of parsable input“,
Proceedings Second Conference on Arabic Computational Linguistics, Kuwait, 11/89.• Harriehausen, B. „The PLNLP Grammar checkers - CRITIQUE“, Proceedings ALLC-
ACH 90 Conference „The New Medium“. Siegen. 6/1990.• Harriehausen-Mühlbauer, B. „PLNLP - a comprehensive natural language processing
system for analysis and generation across languages“, Proceedings: The First International Seminar on Arabic Computational Linguistics, Egyptian Computer Society, Cairo, 6/92.
more
more...reading material (NLP)• Harriehausen-Mühlbauer, B,. Koop, A. „SCRIPT - a prototype for the recognition of
continuous, cursive, handwritten input by means of a neural network simulator“, Proceedings 1993 IEEE International Conference on Neural Networks, San Francisco, 3/1993.
• Jurafsky, Daniel, and James H. Martin. 2008. Speech and Language Processing: An Introduction to Natural Language Processing, Speech Recognition, and Computational Linguistics. 2nd edition. Prentice-Hall.
• Manning, Christopher / Schütze, Hinrich. Foundations of Statistical Natural Language Processing. MIT Press. 1999.
• Levin, L., Rappaport, M., Zaenen, A., eds. Papers in Lexical Functional Grammar. Bloomington: Indiana University Linguistics Club. 1983.
• Ruslan Mitkov (Editor) The Oxford Handbook of Computational Linguistics (Oxford Handbooks in Linguistics). Oxford University Press. 2005 .
• Radford, A. Transformational Syntax. Cambridge: Cambridge University Press. 1981.• Rieger, C.J. „Conceptual Memory and Inference“. In: R.C. Schank. Conceptual Information
Processing. North Holland. 1975.• Shieber, S.M. An Introduction to Unification-based Approaches to Grammar. Stanford: CSLI.
1986.• Winograd, T. Phenomenological Foundations of AI in Language.Stanford University, Linguistic
Institute, 1987.
history of NLP / CL
How did it all start ?
1949-1960 beginning of electronic language
processing: machine translation, linguistics data processing
The spirit is strong but the flesh is weak.
->The vodka is strong but the
meat is rotten.
history of NLP / CL
How did it all start ?
1960-1970 first formal (transformation) grammars
(Chomsky 1957), beginning of language oriented
research in A.I.: first simple question-answering- systems; keyword (pattern-matching)- systems
1963 Sad-Sam (Lindsay), BASEBALL (Green) 1966 DEACON (Craig), ELIZA (Weizenbaum), SYNTHEX (Simmons et.al.) 1968 TLC (Quillian), SIR (Raphael), STUDENT (Bobrow), CONVERSE (Kellog)
ELIZA – pattern-matching (1)
• ELIZA is a computer program devised by Joseph Weizenbaum (1966) that simulates the role of a Rogerian psychologist.
• ELIZA was one of the first programs developed that explored the issues involved in using natural language as the mode of communication between humans and the machine.
ELIZA – pattern-matching (2)
Why Simulate a Rogerian Psychologist?
Client-Centered Therapy (CCT), was developed by Carl Rogers in the 40's and 50's and is described as being a "non-directive" approach to counselling. That is, unlike most other forms of counselling, the therapist does not offer treatment, disagree, point out contradictions, or make interpretations or diagnoses. Instead, CCT is founded on the belief that people have the capacity to figure out their own solutions which can be facilitated by a psychologist who provides an accepting and understanding environment. As pointed out by Weizenbaum, "[this form of] psychiatric interview is one of the few examples of categorized dyadic natural language communication in which one of the participating pair is free to assume the pose of knowing almost nothing of the real world." For example, an appropriate response to a client's comment of "I went for a long walk„ could possibly be "Tell me about long walks." In this reply, the client would not assume that the therapist knew nothing about long walks, but instead, had some motive for steering the conversation in this direction. Such assumptions make this an appealing domain to simulate, as a degree of realism can be obtained without the need for storing explicit information about the real world.
ELIZA – pattern-matching (3)
How successful is ELIZA ?
ELIZA – pattern-matching (4)
How does ELIZA work?
• identifying keywords or phrases that the user inputs
• using patterns associated with these phrases to generate responses
• the most basic of these output patterns respond identically to all sentences containing the keyword
ELIZA – pattern-matching (5)
How does ELIZA work?
key: xnone 0
answer: I‘m not sure I understand you fully-
answer: That is interesting. Please continue.
key: sorry
answer: Please don‘t apologise.
answer: Apologies are not necessary.
xnone = ELIZA responds to an input sentence that is not understood
(xnone is the default used when no other keyword is found in the sentence)
sorry = ELIZA responds to an input sentence that contains the word „sorry“
single keywords triggering a response:
ELIZA – pattern-matching (6)
How does ELIZA work?
key: I like xxx. (where xxx is an arbitrary string)
answer: Why do you like xxx ?
answer: Why do you say you like xxx ?
keyphrases triggering a response with a conversion:
Example:
user: I like xxx.
ELIZA: Why do you like xxx?
ELIZA – pattern-matching (7)
How does ELIZA work?
key: I am xxx. (where xxx is an arbitrary string)
answer: Tell me why you think you are xxx .
keyphrases triggering a response with a conversion:
Example:
user: I am very unhappy at the moment.
ELIZA: Tell me why you think you are very unhappy at the moment.
ELIZA – pattern-matching (8)
How does ELIZA work?
key: remember
decomp: * I remember *
answer: Do you often think of (2) ?
answer: What else do you recollect ?
keyphrases triggering a response with a conversion plus postprocessing of reference words:
Example:
user: I remember my first boyfriend.
Decomposition: the first * = empty string, the second * = my first boyfriend (= (2))
ELIZA: Do you often think of (* my ) your first boyfriend.
ELIZA – pattern-matching (9)
Now it‘s your turn !
Try out ELIZA, make up your own mind as to ELIZA‘s realism. Get a first idea of man-machine communication.
ELIZA – pattern-matching (10)
to „play“ with ELIZA (see: the following links)
ELIZA program:
http://www.manifestation.com/neurotoys/eliza.php3
http://www-ai.ijs.si/eliza-cgi-bin/eliza_script
http://www-ai.ijs.si/eliza/eliza.html
Reading:
http://i5.nyu.edu/~mm64/x52.9265/january1966.html
but now back to the history of NLP / CL
history of NLP / CL
How did it all start ?
1970-1980 knowledge-based expert systems and natural language database interfaces, development of formal grammars (esp. syntax analysis)dialogue systems1972 SHRDLU (Winograd)1977 GUS (Bobrow et.al.), PAL (Sidner et.al.)natural language interfaces1972 LUNAR (Woods et.al.)1972-1976 RENDEVOUZ (Codd), REL (Thompson), REQUEST (Plath)1977 LIFER (Henrix), INTELLECT (Harris), PLANES (Waltz et.al.), CO-OP
(Kaplan)
Natural language DB interface
LanguageAccess (natural language interface to a relational database)
Sentence xy: WHICH COUNTRY EXPORTS FISH
SQL-query: SELECT DISTINCT X1 COUNTRY, X1.PRODUCT
FROM EXPORTBASE X1
WHERE X1.PCLASS=„FMF“
history of NLP / CL
How did it all start ?text “understanding“ and text generating systems1975 MARGIE (Schank et.al.), SAM (Schank et.al.)1976-1979 TALE-SPIN (Meehan), PAM (Wilensky), FRUMP (DeJong)
1980 PHRAN (Wilensky)
• 1980-1990 focus on semantic-pragmatic analysis, natural language applications, models of complex communication pattern
- robust dialogue systems
- integration of natural language components in expert systems
- knowledge acquisition via natural language (both man and machine learn)
history of NLP / CL
How did it all start ?
• 1990-2000+ machine translation (revival), data mining / text mining, intelligent text processing systems (text critiquing), integration of computerlinguistic components in multimedia (CALL, CBT, TELL,...)...
boom (integration of NLP everywhere)
that‘s where we are today:
- growing demand
- growing size of applications
- growing user expectations
NLP / CL today
we have come very far,
but... ...there are still a lot of open questions:
• what is knowledge ?
• when do we have to consider knowledge in natural language processing ?
• how can knowledge be formalized ?
• how are the analysis of language and the understanding of language interrelated ?
• what is communication ?
• easy (?) natural language
• technical language as a „dialect“ of natural language (e.g. medical language)
• artificial language as „meta language“ (e.g. Esperanto)
• logics (a special form of representation on an abstract level)
Question : Natural language ... easy ?
…after all… we all use / speak / write it
Does this mean natural language is easy and easy to formalize ?
Natural language ... easy ?
Little Red Ridinghood
Rotkäppchen
Do you remember the story of the little girl that wore a red cape and which met a wolf while going to her grandmother‘s house ?
What‘s the problem ?
a little girl -> in German, -chen is the diminutive
Don -> Donny ; Kate -> Katie , Bill -> Billy
Natural language ... easy ?
other application: natural language database query
LanguageAccess (natural language interface to a relational database)
Sentence xy: WHICH COUNTRY EXPORTS FISH
natural language paraphrase / disambiguation of the input:
Which interpretation did you mean ?
Which country exports the product fish (fish = object)
Which country is exported by fish (fish=subject)
in German: with zero-article, it‘s ambiguous (disambiguation by case marking of the article)
SQL-query: SELECT DISTINCT X1 COUNTRY, X1.PRODUCT
FROM EXPORTBASE X1
WHERE X1.PCLASS=„FMF“
Natural language ... easy ?
SENTENCE XY: Who placed as many software orders as Garzillo?
SQL-query:
SELECT DISTINCT X.1 NAME, X1.PURCHASENUMBER
FROM PURCHASES X1, ORDERS X2
WHERE X1.PURCHASERNUMBER=X2.PURCHASERNUMBER
GROUP BY X1.PURCHASERNUMBER, X1.NAME
HAVING COUNT (*) =>
(SELECT COUNT (*)
FROM ORDERS X3, PURCHASERS X4
WHERE X3.PURCHASERNUMBER = X4.PURCHASERNUMBER
AND X4.NAME=‘Garzillo‘
GROUP BY X3.PURCHASERNUMBER)
Natural language ... easy ?
language is extremely ambiguous
easy for humans ??? easy for machines ???
• lexical The pipe was brandnew.
• structural I saw the man with the telescope.
• deep structural She got ready for the picture.
• semantic Mary wants to get married to an Italian.
• pragmatic While walking from the gate to the house it collapsed.
Natural language ... easy ?
language is complex...you can say a lot with a few words
Mary sold John a book.
surface structure (obvious): transfer of book
deep structure (implication of „to sell“): transfer of money
Natural language ... easy ?
language can do a lot....e.g. with conjunctionsNP–NP I am eating a hamburger and a pizza.
VP-VP I will eat the hamburger and throw away the pizza.
S-S I eat a hamburger and Bill eats a pizza.
PP-PP I eat a pizza with ham and with salami.
ADJP-ADJP I eat a cold but delicious hamburger.
ADVP-ADVP I eat the hamburger slowly and patiently.
V-V I bake and eat a hamburger.
AUX-AUX I can and will eat a hamburger.
and even more....
???-??? Mary is sitting on and Bill under the table.
Natural language ... easy ?
language is analyzed on different levels
The 7 levels of language understandingThe 7 levels of language understanding
Needed knowledge:
features of the voice phonetic analysis
sound combinations of language phonological analysis
dictionary morphological / lexical analysis
grammar rules (parser) syntactic analysis
knowledge representation semantic analysis
world knowledge pragmatic analysis
acoustic signals
Bill ... letters
Billy is eating his lunch. sentences
small (Billy) knowledge
Billy... words
[Billy] is [mother] consequences child of
æ ç Þ ð ţ ş sounds
Natural language ... easy ?
Why then natural language ?
Computers speak their own language. This language is efficient, economical, and exact. Why then would we want to „teach“ the computer a natural language with all its ambiguities and difficulties ?
Back to the boom!
when busy with your hands and you still want to type (voice type)when you are a slow typer (voice type)
when travelling (machine translation)
when you don‘t want to learn a programming language to program your computer (machine translation)
when you want to evaluate millions of lines of text (text/data mining)
when you don‘t want to learn a database query language to get data (Startrek) (textanalysis, textgeneration, machine translation)
when you need to make a phonecall with someone in Japan, but you don‘t speak Japanese (voice recognition, machine translation)
applications of natural language systems
spoken text written text
Speech input Speech output
Dialogue Systems
dialogueunderstanding
text
analysis generation
translation
• speaker &
voice recognition
• spoken commands /command &control
• automatic dictation
• text-to-speech
• telephony
• IVR (interactive voice response)
• information systems
• DB query
• expert systems
• CALL
• robot stearing
• programming languages
• spell aid
• text critiquing
• text summaries
• knowledge acquisition
(e.g. for expert systems)
• help functions for translations
• automatic translation
•simultaneous translation
• explanations for users
• knowledge representation
• text generation
• writing support
Applications
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