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I256 Applied Natural Language Processing Fall 2009 Lecture 1 Introduction Barbara Rosario
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Introductions Barbara Rosario –iSchool alumni (class 2005) –Intel Labs Gopal Vaswani –iSchool master student (class 2010) You?
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Today Introductions Administrivia What is NLP NLP Applications Why is NLP difficult Corpus-based statistical approaches Course goals What we’ll do in this course
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Administrivia http://courses.ischool.berkeley.edu/i256/f09/index.html Books: –Foundations of Statistical NLP, Manning and Schuetze, MIT pressFoundations of Statistical NLP –Natural Language Processing with Python, Bird, Klein & Loper, O'Reilly. (also on line)Natural Language Processing with Python –See Web site for additional resources Work: –Individual coding assignments (Python & NLTK-Natural Language Toolkit) (4 or 5) –Final group project –Participation Office hours: –Barbara: Thursday 2:00-3:00 in Room 6 –Gopal: Tuesday 2:00-3:00 in Room 6 (to be confirmed)
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Administrivia Communication: –My email: barbara.rosario@intel.combarbara.rosario@intel.com –Gopal : gopal.vaswani@gmail.comgopal.vaswani@gmail.com –Mailing list: i256@ischool.berkeley.edui256@ischool.berkeley.edu Send an email to majordomo@ischool.berkeley.edu with subscribe i256 in the bodymajordomo@ischool.berkeley.edu Through intranet –Announcements: webpage and/or mailing list and/or Bspace (TBA) –Public discussion: Bspace(?) Related course: Statistical Natural Language Processing, Spring 2009, CS 288 –http://www.cs.berkeley.edu/~klein/cs288/sp09/http://www.cs.berkeley.edu/~klein/cs288/sp09/ –Instructor: Dan Klein –Much more emphasis on statistical algorithms Questions?
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Natural Language Processing Fundamental goal: deep understand of broad language –Not just string processing or keyword matching! End systems that we want to build: –Ambitious: speech recognition, machine translation, question answering… –Modest: spelling correction, text categorization… Slide taken from Klein’s course: UCB CS 288 spring 09
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Example: Machine Translation
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NLP applications Text Categorization –Classify documents by topics, language, author, spam filtering, information retrieval (relevant, not relevant), sentiment classification (positive, negative) Spelling & Grammar Corrections Information Extraction Speech Recognition Information Retrieval –Synonym Generation Summarization Machine Translation Question Answering Dialog Systems –Language generation
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Why NLP is difficult A NLP system needs to answer the question “who did what to whom” Language is ambiguous –At all levels: lexical, phrase, semantic –Iraqi Head Seeks Arms Word sense is ambiguous (head, arms) –Stolen Painting Found by Tree Thematic role is ambiguous: tree is agent or location? –Ban on Nude Dancing on Governor’s Desk Syntactic structure (attachment) is ambiguous: is the ban or the dancing on the desk? –Hospitals Are Sued by 7 Foot Doctors Semantics is ambiguous : what is 7 foot?
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Why NLP is difficult Language is flexible –New words, new meanings –Different meanings in different contexts Language is subtle –He arrived at the lecture –He chuckled at the lecture –He chuckled his way through the lecture –**He arrived his way through the lecture Language is complex!
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Why NLP is difficult MANY hidden variables –Knowledge about the world –Knowledge about the context –Knowledge about human communication techniques Can you tell me the time? Problem of scale –Many (infinite?) possible words, meanings, context Problem of sparsity –Very difficult to do statistical analysis, most things (words, concepts) are never seen before Long range correlations
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Why NLP is difficult Key problems: –Representation of meaning –Language presupposes knowledge about the world –Language only reflects the surface of meaning –Language presupposes communication between people
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Meaning What is meaning? –Physical referent in the real world –Semantic concepts, characterized also by relations. How do we represent and use meaning –I am Italian From lexical database (WordNet) Italian =a native or inhabitant of Italy Italy = republic in southern Europe [..] –I am Italian Who is “I”? –I know she is Italian/I think she is Italian How do we represent “I know” and “I think” Does this mean that I is Italian? What does it say about the “I” and about the person speaking? –I thought she was Italian How do we represent tenses?
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Today Introductions Administrivia What is NLP NLP Applications Why is NLP difficult Corpus-based statistical approaches Course goals What we’ll do in this course
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Corpus-based statistical approaches to tackle NLP problem –How can a can a machine understand these differences? Decorate the cake with the frosting Decorate the cake with the kids –Rules based approaches, i.e. hand coded syntactic constraints and preference rules: The verb decorate require an animate being as agent The object cake is formed by any of the following, inanimate entities (cream, dough, frosting…..) –Such approaches have been showed to be time consuming to build, do not scale up well and are very brittle to new, unusual, metaphorical use of language To swallow requires an animate being as agent/subject and a physical object as object –I swallowed his story –The supernova swallowed the planet
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Corpus-based statistical approaches to tackle NLP problem A Statistical NLP approach seeks to solve these problems by automatically learning lexical and structural preferences from text collections (corpora) Statistical models are robust, generalize well and behave gracefully in the presence of errors and new data. So: –Get large text collections –Compute statistics over those collections –(The bigger the collections, the better the statistics)
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Corpus-based statistical approaches to tackle NLP problem Decorate the cake with the frosting Decorate the cake with the kids From (labeled) corpora we can learn that: #(kids are subject/agent of decorate) > #(frosting is subject/agent of decorate) From (UN-labeled) corpora we can learn that: #(“the kids decorate the cake”) >> #(“the frosting decorates the cake”) #(“cake with frosting”) >> #(“cake with kids”) etc.. Given these “facts” we then need a statistical model for the attachment decision
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Corpus-based statistical approaches to tackle NLP problem Topic categorization: classify the document into semantics topics Document 1 The U.S. swept into the Davis Cup final on Saturday when twins Bob and Mike Bryan defeated Belarus's Max Mirnyi and Vladimir Voltchkov to give the Americans an unsurmountable 3-0 lead in the best-of-five semi-final tie. Topic = sport Document 2 One of the strangest, most relentless hurricane seasons on record reached new bizarre heights yesterday as the plodding approach of Hurricane Jeanne prompted evacuation orders for hundreds of thousands of Floridians and high wind warnings that stretched 350 miles from the swamp towns south of Miami to the historic city of St. Augustine. Topic = disaster
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Corpus-based statistical approaches to tackle NLP problem Topic categorization: classify the document into semantics topics Document 1 (sport) The U.S. swept into the Davis Cup final on Saturday when twins Bob and Mike Bryan … Document 2 (disasters) One of the strangest, most relentless hurricane seasons on record reached new bizarre heights yesterday as…. From (labeled) corpora we can learn that: #(sport documents containing word Cup) > #(disaster documents containing word Cup) -- feature We then need a statistical model for the topic assignment
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Corpus-based statistical approaches to tackle NLP problem Feature extractions (usually linguistics motivated) Statistical models Data (corpora, labels, linguistic resources)
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Goals of this Course Learn about the problems and possibilities of natural language analysis: –What are the major issues? –What are the major solutions? At the end you should: –Agree that language is difficult, interesting and important –Be able to assess language problems Know which solutions to apply when, and how Feel some ownership over the algorithms –Be able to use software to tackle some NLP language tasks –Know language resources –Be able to read papers in the field
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What We’ll Do in this Course Linguistic Issues –What are the range of language phenomena? –What are the knowledge sources that let us disambiguate? –What representations are appropriate? Applications Software (Python and NLTK) Statistical Modeling Methods
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What We’ll Do in this Course Read books, research papers and tutorials Final project –Your own ideas or chose from some suggestions I will provide –We’ll talk later during the couse about ideas/methods etc. but come talk to me if you have already some ideas Learn Python Learn/use NLTK (Natural Language ToolKit) to try out various algorithms
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Python - Simple yet powerful The zen of python : http://www.python.org/dev/peps/pep-0020/ The zen of python Very clear, readable syntax Strong introspection capabilities –http://www.ibm.com/developerworks/linux/library/l-pyint.html (recommended) http://www.ibm.com/developerworks/linux/library/l-pyint.html Intuitive object orientation Natural expression of procedural code Full modularity, supporting hierarchical packages Exception-based error handling Very high level dynamic data types Extensive standard libraries and third party modules for virtually every task –Excellent functionality for processing linguistic data. –NLTK is one such extensive third party module. Source : python.org Python
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Source : nltk.org Language processing taskNLTK modulesFunctionality Accessing corporanltk.corpusstandardized interfaces to corpora and lexicons String processingnltk.tokenize, nltk.stemtokenizers, sentence tokenizers, stemmers Collocation discoverynltk.collocationst-test, chi-squared, point-wise mutual information Part-of-speech taggingnltk.tagn-gram, backoff, Brill, HMM, TnT Classificationnltk.classify, nltk.clusterdecision tree, maximum entropy, naive Bayes, EM, k-means Chunkingnltk.chunkregular expression, n-gram, named-entity Parsingnltk.parsechart, feature-based, unification, probabilistic, dependency This is not the complete list NLTK NLTK defines an infrastructure that can be used to build NLP programs in Python. It provides basic classes for representing data relevant to natural language processing. Standard interfaces for performing tasks such as part-of-speech tagging, syntactic parsing, and text classification. Standard implementations for each task which can be combined to solve complex problems. Resources: Download at http://www.nltk.org/downloadhttp://www.nltk.org/download Getting started with NLTK Chapter 1 NLP and NLTK talk at google http://www.youtube.com/watch?v=keXW_5-llD0
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Topics Text corpora & other resources Words (Morphology, tokenization, stemming, part-of- speech, WSD, collocations, lexical acquisition, language models) Syntax: chunking, PCFG & parsing Statistical models (esp. for classification) Applications –Text classification –Information extraction –Machine translation –Semantic Interpretation –Sentiment Analysis –QA / Summarization –Information retrieval
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Next Assignment Due before next class Tue Sep 1 –No turn-in Download and install Python and NLTK Download the NLTK Book Collection, as described at the beginning of chapter 1 of the book Natural Language Processing with Pythonchapter 1Natural Language Processing with Python Readings: –Chapter 1 of the book Natural Language Processing with PythonChapter 1Natural Language Processing with Python –Chapter 3 of Foundations of Statistical NLP Next class: –Linguistic Essentials –Python Introduction
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