590 likes | 713 Views
CSA3180: Natural Language Processing. Information Extraction 1 – Introduction Information Extraction Named Entities IE Systems MUC Finite State Machines Pattern Recognition. Introduction. Slides based on Lectures by Marti Hearst (2004) GATE Information Extraction
E N D
CSA3180: Natural Language Processing Information Extraction 1 – Introduction Information Extraction Named Entities IE Systems MUC Finite State Machines Pattern Recognition CSA3180: Information Extraction I
Introduction • Slides based on Lectures by Marti Hearst (2004) • GATE Information Extraction • http://www.gate.ac.uk/ie/ • Sheffield Web Intelligence Technologies • http://nlp.shef.ac.uk/wig/ CSA3180: Information Extraction I
Classification at different granularities • Text Categorization: • Classify an entire document • Information Extraction (IE): • Identify and classify small units within documents • Named Entity Extraction (NE): • A subset of IE • Identify and classify proper names • People, locations, organizations CSA3180: Information Extraction I
Martin Baker, a person Genomics job Employers job posting form CSA3180: Information Extraction I
Aggregator Websites CSA3180: Information Extraction I
foodscience.com-Job2 JobTitle: Ice Cream Guru Employer: foodscience.com JobCategory: Travel/Hospitality JobFunction: Food Services JobLocation: Upper Midwest Contact Phone: 800-488-2611 DateExtracted: January 8, 2001 Source: www.foodscience.com/jobs_midwest.html OtherCompanyJobs: foodscience.com-Job1 CSA3180: Information Extraction I
Aggregator Websites • Read in many web pages from different sites • Extract information into a database • Screen Scraping • Can then return data matching particular queries • Data mining can extract meaningful insight that might not have been obvious CSA3180: Information Extraction I
Data Mining CSA3180: Information Extraction I
IE from Research Papers CSA3180: Information Extraction I
IE from Commercial Websites CSA3180: Information Extraction I
NAME TITLE ORGANIZATION What is Information Extraction? As a task: Filling slots in a database from sub-segments of text. October 14, 2002, 4:00 a.m. PT For years, Microsoft Corporation CEO Bill Gates railed against the economic philosophy of open-source software with Orwellian fervor, denouncing its communal licensing as a "cancer" that stifled technological innovation. Today, Microsoft claims to "love" the open-source concept, by which software code is made public to encourage improvement and development by outside programmers. Gates himself says Microsoft will gladly disclose its crown jewels--the coveted code behind the Windows operating system--to select customers. "We can be open source. We love the concept of shared source," said Bill Veghte, a Microsoft VP. "That's a super-important shift for us in terms of code access.“ Richard Stallman, founder of the Free Software Foundation, countered saying… CSA3180: Information Extraction I
What is Information Extraction? As a task: Filling slots in a database from sub-segments of text. October 14, 2002, 4:00 a.m. PT For years, Microsoft CorporationCEOBill Gates railed against the economic philosophy of open-source software with Orwellian fervor, denouncing its communal licensing as a "cancer" that stifled technological innovation. Today, Microsoft claims to "love" the open-source concept, by which software code is made public to encourage improvement and development by outside programmers. Gates himself says Microsoft will gladly disclose its crown jewels--the coveted code behind the Windows operating system--to select customers. "We can be open source. We love the concept of shared source," said Bill Veghte, a MicrosoftVP. "That's a super-important shift for us in terms of code access.“ Richard Stallman, founder of the Free Software Foundation, countered saying… IE NAME TITLE ORGANIZATION Bill GatesCEOMicrosoft Bill VeghteVPMicrosoft Richard StallmanfounderFree Soft.. CSA3180: Information Extraction I
What is Information Extraction? As a familyof techniques: Information Extraction = segmentation + classification + association October 14, 2002, 4:00 a.m. PT For years, Microsoft CorporationCEOBill Gates railed against the economic philosophy of open-source software with Orwellian fervor, denouncing its communal licensing as a "cancer" that stifled technological innovation. Today, Microsoft claims to "love" the open-source concept, by which software code is made public to encourage improvement and development by outside programmers. Gates himself says Microsoft will gladly disclose its crown jewels--the coveted code behind the Windows operating system--to select customers. "We can be open source. We love the concept of shared source," said Bill Veghte, a MicrosoftVP. "That's a super-important shift for us in terms of code access.“ Richard Stallman, founder of the Free Software Foundation, countered saying… Microsoft Corporation CEO Bill Gates Microsoft Gates Microsoft Bill Veghte Microsoft VP Richard Stallman founder Free Software Foundation aka “named entity extraction” CSA3180: Information Extraction I
What is Information Extraction? A familyof techniques: Information Extraction = segmentation + classification + association October 14, 2002, 4:00 a.m. PT For years, Microsoft CorporationCEOBill Gates railed against the economic philosophy of open-source software with Orwellian fervor, denouncing its communal licensing as a "cancer" that stifled technological innovation. Today, Microsoft claims to "love" the open-source concept, by which software code is made public to encourage improvement and development by outside programmers. Gates himself says Microsoft will gladly disclose its crown jewels--the coveted code behind the Windows operating system--to select customers. "We can be open source. We love the concept of shared source," said Bill Veghte, a MicrosoftVP. "That's a super-important shift for us in terms of code access.“ Richard Stallman, founder of the Free Software Foundation, countered saying… Microsoft Corporation CEO Bill Gates Microsoft Gates Microsoft Bill Veghte Microsoft VP Richard Stallman founder Free Software Foundation CSA3180: Information Extraction I
What is Information Extraction? A familyof techniques: Information Extraction = segmentation + classification+ association October 14, 2002, 4:00 a.m. PT For years, Microsoft CorporationCEOBill Gates railed against the economic philosophy of open-source software with Orwellian fervor, denouncing its communal licensing as a "cancer" that stifled technological innovation. Today, Microsoft claims to "love" the open-source concept, by which software code is made public to encourage improvement and development by outside programmers. Gates himself says Microsoft will gladly disclose its crown jewels--the coveted code behind the Windows operating system--to select customers. "We can be open source. We love the concept of shared source," said Bill Veghte, a MicrosoftVP. "That's a super-important shift for us in terms of code access.“ Richard Stallman, founder of the Free Software Foundation, countered saying… Microsoft Corporation CEO Bill Gates Microsoft Gates Microsoft Bill Veghte Microsoft VP Richard Stallman founder Free Software Foundation CSA3180: Information Extraction I
IE in Context Create ontology Spider Filter by relevance IE Segment Classify Associate Cluster Database Load DB Documentcollection Train extraction models Query, Search Data mine Label training data CSA3180: Information Extraction I
Text paragraphs without formatting Grammatical sentencesand some formatting & links Astro Teller is the CEO and co-founder of BodyMedia. Astro holds a Ph.D. in Artificial Intelligence from Carnegie Mellon University, where he was inducted as a national Hertz fellow. His M.S. in symbolic and heuristic computation and B.S. in computer science are from Stanford University. His work in science, literature and business has appeared in international media from the New York Times to CNN to NPR. IE in Context: Formatting CSA3180: Information Extraction I
Non-grammatical snippets,rich formatting & links Tables IE in Context: Formatting CSA3180: Information Extraction I
IE in Context: Coverage Web site specific Genre specific Formatting Layout Amazon.com Book Pages Resumes CSA3180: Information Extraction I
IE in Context: Coverage Wide, non-specific Language University Names CSA3180: Information Extraction I
Regular set Closed set U.S. phone numbers U.S. states Phone: (413) 545-1323 He was born in Alabama… The CALD main office can be reached at 412-268-1299 The big Wyoming sky… Ambiguous patterns,needing context andmany sources of evidence Complex pattern U.S. postal addresses Person names University of Arkansas P.O. Box 140 Hope, AR 71802 …was among the six houses sold by Hope Feldman that year. Pawel Opalinski, SoftwareEngineer at WhizBang Labs. Headquarters: 1128 Main Street, 4th Floor Cincinnati, Ohio 45210 IE in Context: Complexity CSA3180: Information Extraction I
IE in Context: Single Field/Record Jack Welch will retire as CEO of General Electric tomorrow. The top role at the Connecticut company will be filled by Jeffrey Immelt. Single entity Binary relationship N-ary record Person: Jack Welch Relation: Person-Title Person: Jack Welch Title: CEO Relation: Succession Company: General Electric Title: CEO Out: Jack Welsh In: Jeffrey Immelt Person: Jeffrey Immelt Relation: Company-Location Company: General Electric Location: Connecticut Location: Connecticut “Named entity” extraction CSA3180: Information Extraction I
State of the Art • Named entity recognition from newswire text • Person, Location, Organization, … • F1 in high 80’s or low- to mid-90’s • Binary relation extraction • Contained-in (Location1, Location2)Member-of (Person1, Organization1) • F1 in 60’s or 70’s or 80’s • Web site structure recognition • Extremely accurate performance obtainable • Human effort (~10min?) required on each site CSA3180: Information Extraction I
IE Generations • Hand-Built Systems – Knowledge Engineering [1980s– ] • Rules written by hand • Require experts who understand both the systems and the domain • Iterative guess-test-tweak-repeat cycle • Automatic, Trainable Rule-Extraction Systems [1990s– ] • Rules discovered automatically using predefined templates, using automated rule learners • Require huge, labeled corpora (effort is just moved!) • Statistical Models [1997 – ] • Use machine learning to learn which features indicate boundaries and types of entities. • Learning usually supervised; may be partially unsupervised CSA3180: Information Extraction I
Classify Pre-segmentedCandidates Sliding Window Abraham Lincoln was born in Kentucky. Abraham Lincoln was born in Kentucky. Classifier Classifier which class? which class? Try alternatewindow sizes: Context Free Grammars Boundary Models Finite State Machines Abraham Lincoln was born in Kentucky. Abraham Lincoln was born in Kentucky. Abraham Lincoln was born in Kentucky. BEGIN Most likely state sequence? NNP NNP V V P NP Most likely parse? Classifier PP which class? VP NP VP BEGIN END BEGIN END S IE Techniques Lexicons Abraham Lincoln was born in Kentucky. member? Alabama Alaska … Wisconsin Wyoming CSA3180: Information Extraction I
Pros Annotating text is simpler & faster than writing rules. Domain independent Domain experts don’t need to be linguists or programers. Learning algorithms ensure full coverage of examples. Trainable IE Systems Cons • Hand-crafted systems perform better, especially at hard tasks. (but this is changing) • Training data might be expensive to acquire • May need huge amount of training data • Hand-writing rules isn’t that hard!! CSA3180: Information Extraction I
MUC: Genesis of IE • DARPA funded significant efforts in IE in the early to mid 1990’s. • Message Understanding Conference (MUC) was an annual event/competition where results were presented. • Focused on extracting information from news articles: • Terrorist events • Industrial joint ventures • Company management changes • Information extraction of particular interest to the intelligence community (CIA, NSA). (Note: early ’90’s) CSA3180: Information Extraction I
MUC • Named entity • Person, Organization, Location • Co-reference • Clinton President Bill Clinton • Template element • Perpetrator, Target • Template relation • Incident • Multilingual CSA3180: Information Extraction I
MUC Typical Text Bridgestone Sports Co. said Friday it has set up a joint venture in Taiwan with a local concern and a Japanese trading house to produce golf clubs to be shipped to Japan. The joint venture, Bridgestone Sports Taiwan Co., capitalized at 20 million new Taiwan dollars, will start production of 20,000 iron and “metal wood” clubs a month CSA3180: Information Extraction I
MUC Typical Text Bridgestone Sports Co. said Friday it has set up a joint venture in Taiwan with alocal concern and a Japanese trading house to produce golf clubs to be shipped to Japan. The joint venture, Bridgestone Sports Taiwan Co., capitalized at 20 million new Taiwan dollars, will start production of 20,000 iron and “metal wood” clubs a month CSA3180: Information Extraction I
MUC Templates • Relationship • tie-up • Entities: • Bridgestone Sports Co, a local concern, a Japanese trading house • Joint venture company • Bridgestone Sports Taiwan Co • Activity • ACTIVITY 1 • Amount • NT$2,000,000 CSA3180: Information Extraction I
MUC Templates • ATIVITY 1 • Activity • Production • Company • Bridgestone Sports Taiwan Co • Product • Iron and “metal wood” clubs • Start Date • January 1990 CSA3180: Information Extraction I
Bridgestone Sports Co. said Friday it had set up a joint venture in Taiwan with a local concern and a Japanese trading house to produce golf clubs to be supplied to Japan. The joint venture, Bridgestone Sports Taiwan Co., capitalized at 20 million new Taiwan dollars, will start production in January 1990 with production of 20,000 iron and “metal wood” clubs a month. TIE-UP-1 Relationship: TIE-UP Entities: “Bridgestone Sport Co.” “a local concern” “a Japanese trading house” Joint Venture Company: “Bridgestone Sports Taiwan Co.” Activity: ACTIVITY-1 Amount: NT$200000000 Example from Fastus (1993) CSA3180: Information Extraction I
Bridgestone Sports Co. said Friday it had set up a joint venture in Taiwan with a local concern and a Japanese trading house to produce golf clubs to be supplied to Japan. The joint venture, Bridgestone Sports Taiwan Co., capitalized at 20 million new Taiwan dollars, will start production in January 1990 with production of 20,000 iron and “metal wood” clubs a month. ACTIVITY-1 Activity: PRODUCTION Company: “Bridgestone Sports Taiwan Co.” Product: “iron and ‘metal wood’ clubs” Start Date: DURING: January 1990 TIE-UP-1 Relationship: TIE-UP Entities: “Bridgestone Sport Co.” “a local concern” “a Japanese trading house” Joint Venture Company: “Bridgestone Sports Taiwan Co.” Activity: ACTIVITY-1 Amount: NT$200000000 CSA3180: Information Extraction I
Bridgestone Sports Co. said Friday it had set up a joint venture in Taiwan with a local concern and a Japanese trading house to produce golf clubs to be supplied to Japan. The joint venture, Bridgestone Sports Taiwan Co., capitalized at 20 million new Taiwan dollars, will start production in January 1990 with production of 20,000 iron and “metal wood” clubs a month. ACTIVITY-1 Activity: PRODUCTION Company: “Bridgestone Sports Taiwan Co.” Product: “iron and ‘metal wood’ clubs” Start Date: DURING: January 1990 TIE-UP-1 Relationship: TIE-UP Entities: “Bridgestone Sport Co.” “a local concern” “a Japanese trading house” Joint Venture Company: “Bridgestone Sports Taiwan Co.” Activity: ACTIVITY-1 Amount: NT$200000000 CSA3180: Information Extraction I
Evaluating IE Accuracy • Always evaluate performance on independent, manually-annotated test data not used during system development. • Measure for each test document: • Total number of correct extractions in the solution template: N • Total number of slot/value pairs extracted by the system: E • Number of extracted slot/value pairs that are correct (i.e. in the solution template): C • Compute average value of metrics adapted from IR: • Recall = C/N • Precision = C/E • F-Measure = Harmonic mean of recall and precision CSA3180: Information Extraction I
Results for 1997 NE – named entity recognition CO – coreference resolution TE – template element construction TR – template relation construction ST – scenario template production CSA3180: Information Extraction I
Finite State Transducers for IE • Basic method for extracting relevant information • IE systems generally use a collection of specialized FSTs • Company Name detection • Person Name detection • Relationship detection CSA3180: Information Extraction I
Equivalent Representations Regular expressions Each can describe the others Regular languages Finite automata • Theorem: • For every regular expression, there is a deterministic finite-state automaton that defines the same language, and vice versa. CSA3180: Information Extraction I
a Finite State Automata Graphs • A state • The start state • An accepting state • A transition CSA3180: Information Extraction I
Finite Automata • A FA is similar to a compiler in that: • A compiler recognizes legal programsin some (source) language. • A finite-state machine recognizes legal stringsin some language. • Example: Programming Language Identifiers • sequences of one or more letters or digits, starting with a letter: letter | digit letter S A CSA3180: Information Extraction I
Finite Automata • Transition s1as2 • Is read In state s1 on input “a” go to state s2 • If end of input • If in accepting state => accept • Otherwise => reject • If no transition possible (got stuck) => reject • FSA = Finite State Automata CSA3180: Information Extraction I
Finite State Automata Language • The language defined by a FSA is the set of strings accepted by the FSA. • in the language of the FSM shown below: • x, tmp2, XyZzy, position27. • not in the language of the FSM shown below: • 123, a?, 13apples. letter | digit letter S A CSA3180: Information Extraction I
Example: Integer Literals • FSA that accepts integer literals with an optional + or - sign: • Note the two different edges from S to A • (+|-)?[0-9]+ digit B digit digit + S A - CSA3180: Information Extraction I
Finite State Automata Example • FSA that accepts three letter English words that begin with p and end with d or t. • Here I use the convenient notation of making the state name match the input that has to be on the edge leading to that state. a t p i o d u CSA3180: Information Extraction I
Formal Definition • A finite automaton is a 5-tuple (, Q, , q, F) where: • An input alphabet • A set of states Q • A start state q • A set of accepting states F Q • is the state transition function: Q x Q (i.e., encodes transitions state input state) CSA3180: Information Extraction I
FSA Implementation A table-driven approach: • table: • one row for each state in the machine, and • one column for each possible character. • Table[j][k] • which state to go to from state j on character k, • an empty entry corresponds to the machine getting stuck. • Note: when you use the re package in python, it converts your regex’s into efficient FSMs CSA3180: Information Extraction I
Terminology • FSA: Finite State Automaton • FSM: Finite State Machine • FSA, FSM used interchangibly • FST: Finite State Transducer • The same as FSA, except each transition produces output CSA3180: Information Extraction I
FSTs for IE • FSTs are often compiled from regular expressions • Probabilistic (weighted) FSTs • FSTs mean different things to different IE approaches: • Based on lexical items (words) • Based on statistical language models • Based on deep syntactic/semantic analysis • Several FSTs or a more complex FST can be used to find one type of information (e.g. company names) CSA3180: Information Extraction I