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74.406 Natural Language Processing Christel Kemke Department of Computer Science University of Manitoba 74.406 Natural Language Processing, 1st term 2004/5.

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Presentation on theme: "74.406 Natural Language Processing Christel Kemke Department of Computer Science University of Manitoba 74.406 Natural Language Processing, 1st term 2004/5."— Presentation transcript:

1 74.406 Natural Language Processing Christel Kemke Department of Computer Science University of Manitoba 74.406 Natural Language Processing, 1st term 2004/5

2 Evolution of Human Language communication for "work" social interaction basis of cognition and thinking (Whorff & Saphir)

3 Communication "Communication is the intentional exchange of information brought about by the production and perception of signs drawn from a shared system of conventional signs." [Russell & Norvig, p.651]

4 Natural Language - General Natural Language is characterized by  a common or shared set of signs alphabeth; lexicon  a systematic procedure to produce combinations of signs syntax  a shared meaning of signs and combinations of signs (constructive) semantics

5 Natural Language Processing Overview Speech Recognition Natural Language Processing Syntax Semantics Pragmatics Spoken Language

6 Natural Language and Speech  Speech Recognition  acoustic signal as input  conversion into phonemes and written words  Natural Language Processing  written text as input; sentences (or 'utterances')  syntactic analysis: parsing; grammar  semantic analysis: "meaning", semantic representation  pragmatics: dialogue; discourse; metaphors  Spoken Language Processing  transcribed utterances  Phenomena of spontaneous speech

7 Words

8 Morphology A morphological analyzer determines (at least)  the stem + ending of a word, and usually delivers related information, like  the word class,  the number and  the person of the word. The morphology can be part of the lexicon or implemented as a single component, for example as a rule-basedsystem. eats  eat + s verb, singular, 3rd pers dog  dog noun, singular

9 Lexicon The Lexicon contains information on words, as  inflected forms (e.g. goes, eats) or  word-stems (e.g. go, eat). The Lexicon usually assigns a syntactic category,  the word class or Part-of-Speech category Sometimes also  further syntactic information (see Morphology);  semantic information (e.g. semantic classifications like ‘agent’);  syntactic-semantic information, e.g. on verb complements like ‘give’ requires a direct object.

10 Lexicon Example contents: eats  verb; singular, 3 rd person; can have direct object dog  dog, noun, singular; animal semantic annotation

11 POS (Part-of-Speech) Tagging POS Tagging determines word class or ‘part-of- speech’ category (basic syntactic categories) of single words or word-stems. Thedet (determiner) dog noun eat, eatsverb (3rd singular) the det bone noun

12 Morphological Analyzer Lexicon Part-of-Speech (POS) Tagging Grammar Rules Parser NLP - Syntactic Analysis eat + s eat – verb Verb VP → Verb Noun VP recognized 3rd sing VP Verb Noun parse tree

13 Syntax

14 Language and Grammar Natural Language described as Formal Language L using a Formal Grammar G: start-symbol S ≡ sentence non-terminals NT ≡ syntactic constituents terminals T ≡ lexical entries/ words production rules P ≡ grammar rules Generate sentences or recognize sentences (Parsing) of the language L through the application of grammar rules from G. Overgeneration / undergeneration: accept/generate sentences not in L / not all sentences from L.

15 Grammar Terminals can be words, part-of-speech categories, or more complex lexical items (including additional syntactic/semantic information related to the word). –dog –noun –dog: noun, singular; animal Non-Terminals represent (higher level) ‘syntactic categories’. –noun –NP (noun phrase) –S (sentence)

16 Grammar Most often we deal with Context-free Grammars, with a distinguished Start-symbol S (sentence). det  the noun  dog | bone verb  eat | eats NP  det noun(NP  noun phrase) VP  verb(VP  verb phrase) VP  verb NP S  NP VP(S  sentence) Here, POS Tagging is included in the grammar.

17 Parsing (here: LR, bottom-up) Determine the syntactic structure of the sentence: “the dog eats the bone” the  detPOS Tagging dog  noun det noun  NPRule application eats  verb the  det bone  noun det noun  NP verb NP  VP NP VP  S

18 Syntax Analysis / Parsing Syntactic Structure often represented as Parse Tree. Connect symbols according to applied grammar rules (like Rewrite Systems).

19 Parse Tree det noun NP verb NP VP NP VP S

20 Lexical Ambiguity Several word senses or word categories e.g. chase – noun or verb e.g. plant - ????

21 Syntactic Ambiguity Several parse trees: 1)“The dog eats the bone in the park.” 2)“The dog eats the bone in the package.” Who/what is in the park and who/what is in the package? Syntactically speaking: How do I bind the Prepositional Phrase "in the..." ?

22 Semantics

23 Semantic Representation Represent the meaning of a sentence. Generate, e.g. a logic-based representation or a frame-based representation Fillmore’s case frames based on the syntactic structure, lexical entries, and particularly the head-verb, which determines how to arrange parts of the sentence and relate them to each other in the semantic representation.

24 Semantic Representation Verb-centered representation: Verb (action, head) is regarded as center of verbal expression and determines the case frame with possible case roles; other parts of the sentence are described in relation to the action as fillers of case slots. (cf. also Schank’s CD Theory) Typing of case roles is possible (e.g. 'agent' refers to a specific sort or concept, like “humans”)

25 General Frame for eat Agent: animate Action: eat Patiens: food Manner: {e.g. fast} Location: {e.g. in the yard} Time: {e.g. at noon}

26 Frame with fillers for sample sentence Agent: the dog Action: eat Patiens: the bone / the bone in the package Location: in the park

27 General Frame for driveFrame with fillers Agent: animateAgent: she Action: driveAction: drives Patiens: vehiclePatiens: the convertible Manner:{the way it is done}Manner: fast Location: Location-specLocation: [in the] Rocky Mountains Source:Location-specSource:[from] home Destination: Location-specDestination: [to the] ASIC conference Time: Time-specTime: [in the] summer holiday

28 Pragmatics

29 Pragmatics includes context-related aspects of NL expressions (utterances). These are in particular anaphoric references, elliptic expressions, deictic expressions, … anaphoric references – refer to items mentioned before deictic expressions – simulate pointing gestures elliptic expressions – incomplete expression; relate to item mentioned before

30 Pragmatics “I put the box on the top shelve.” “I know that. But I can’t find it there.” deictic expression anaphoric reference

31 Pragmatics “I put the box on the top shelve.” “I know that. But I can’t find it there.” anaphoric reference

32 Pragmatics “I put the box on the top shelve.” “I know that. But I can’t find it there.” deictic expression

33 Pragmatics “I put the box on the top shelve.” “I know that. But I can’t find it there.” “The candy-box?” elliptic expression deictic expression anaphoric reference

34 Pragmatics “I know that. But I can’t find it there.” “The candy-box?” elliptic expression

35 Intentions One philosophical assumption is that natural language is used to achieve something: “Do things with words.” The meaning of an utterance is essentially determined by the intention of the speaker.

36 Intentionality - Examples What was said:What was meant: “There is a terrible "Can you please draft here.”close the window." “How does it look "I am really mad; here?”clean up your room." "Will this ever end?""I would prefer to be with my friends than to sit in class now."

37 Metaphors The meaning of a sentence or expression is not directly inferable from the sentence structure and the word meanings. Metaphors transfer concepts and relations from one area of discourse into another area, for example, seeing time as a line (in space) or seeing friendship / life as a journey.

38 Metaphors - Examples “This car eats a lot of gas.” “She devoured the book.” “He was tied up with his clients.” “Marriage is like a journey.” “Their marriage was a one-way road into hell.” (see also George Lakoff, e.g. Women, Fire and Dangerous Things)

39 Dialogue and Discourse

40 Discourse / Dialogue Structure Grammar for various sentence types (speech acts): dialogue, discourse, story grammar Distinguish questions, commands, and statements:  Where is the remote-control?  Bring the remote-control!  The remote-control is on the brown table. Dialogue Grammars describe possible sequences of Speech Acts in communication, e.g. that a question is followed by an answer/statement. Similar for Discourse (like continuous texts).

41 Speech

42 Speech Processing Systems Types and Characteristics  Speech Recognition vs. Speaker Recognition (Voice Recognition; Speaker Identification )  speaker-dependent vs. speaker-independent  training?  unlimited vs. large vs. small vocabulary  single word vs. continuous speech

43 Speech Recognition Phases acoustic signal as input signal analysis - spectrogram feature extraction phoneme recognition word recognition conversion into written words

44 Speech Recognizer Architecture

45 Video of glottis and speech signal in lingWAVES (from http://www.lingcom.de)

46 Spoken Language

47  Output of Speech Recognition System as input "text".  Can be associated with probabilities for different word sequences.  Contains ungrammatical structures, so- called "disfluencies", e.g. repetitions and corrections.

48 Spoken Language - Examples 1. no [s-] straight southwest 2. right to [my] my left 3. [that is] that is correct Robin J. Lickley. HCRC Disfluency Coding Manual. http://www.ling.ed.ac.uk/~robin/maptask/HCRCdsm-01.html

49 Spoken Language - Disfluency Reparandum and Repair Reparandum Repair [come to]... walk right to [the]... the right-hand side of the page

50 Spoken Language - Example 1.we're going to [g-- ]... turn straight back around for testing. 2.[come to]... walk right to the... right-hand side of the page. 3.right [up... past]... up on the left of the... white mountain walk... right up past. 4.[i'm still]... i've still gone halfway back round the lake again.

51 Spoken Language - Example 1.[I’d] [d if] I need to go 2.[it’s basi--] see if you go over the old mill 3.[you are going] make a gradual slope … to your right 4.[I’ve got one] I don’t realize why it is there

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