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Building Multilingual and Crosslingual Semantic Resources with Volunteer Contributions over the Web Rada Mihalcea University of North Texas

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Building Multilingual and Crosslingual Semantic Resources with Volunteer Contributions over the Web. Rada Mihalcea University of North Texas. Facts. Globalization “Breaking down of political, cultural, and trade barriers” (Thomas Friedman) Universal communication Dying languages - PowerPoint PPT Presentation

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Page 1: Rada Mihalcea University of North Texas

Building Multilingual and Crosslingual Semantic

Resources with Volunteer Contributions over the WebRada Mihalcea

University of North Texas

Page 2: Rada Mihalcea University of North Texas

Facts

• Globalization– “Breaking down of political, cultural,

and trade barriers” (Thomas Friedman)

– Universal communication

• Dying languages – One language dying every other week

Page 3: Rada Mihalcea University of North Texas

Some Figures (set 1)

• 7,000 languages spoken worldwide– + even more dialects– [http://ethnologue.com]

• Resources currently available for 15-20 languages (or less)

Page 4: Rada Mihalcea University of North Texas

Some Figures (set 2)

Country Web users / TotalUnited States 150 mil. / 290 mil.China 100 mil. / 1.2 bil.Japan 50 mil. / 125 mil.India 40 mil. / 1 bil.Germany 35 mil. / 80 mil.United Kingdom 25 mil. / 60 mil.… …

• On average, an Internet user spends 11 h. 24’ / month

• United States users: 25 h. 25’ [home] + 74 h. 26’ [work] / month – [Lyman & Varian 2003]

10,773,000,000 hours spent online every month

[some 5 million man-years!]

• 945,000,000 total Web users

• [“The Main Thing”, June 2004]– http://www.rebron.org/

mozilla/archives/000085.html

• Internet population

Page 5: Rada Mihalcea University of North Texas

Availability vs. Needs

• The Web as collective mind• A Different View of the Web:

WWW ≠ large set of pagesWWW = a way to ask millions of people

Users spending online 10,773,000,000 hours / mo. [~ 5,000,000 man-years]

Resources required for 7,000 languages

Page 6: Rada Mihalcea University of North Texas

Outline

[building resources]• I: Building multilingual WordNets

• II: Building a (crosslingual) pictorial WordNet [using resources]• III: Applications

Page 7: Rada Mihalcea University of North Texas

Outline

[building resources]• I: Building multilingual

WordNets• II: Building a (crosslingual)

pictorial WordNet [using resources]• III: Applications

Page 8: Rada Mihalcea University of North Texas

Building WordNets

• Other WordNets:– Princeton WordNet– Euro WordNet– BalkaNet– …

• Methodology:– Manual– Lexicographers– Time-consuming and expensive

Page 9: Rada Mihalcea University of North Texas

Romanian Semantic Dictionary

• Distributed / Web based• Non-expert users / expert

validators

WordNet RSDNET

Bilingual

Monolingual

Corpus

automatic

manual

non-expert expert

Page 10: Rada Mihalcea University of North Texas

Resources Used

• WordNet semantic network

• English-Romanian dictionary

• Romanian dictionary

• Romanian corpus

Page 11: Rada Mihalcea University of North Texas

Main Phases

words

meaningconfirm

choose

score!

• non-expert contributions– choose a WordNet

synset– pick the correct

translations (add other words to the synset)

– choose a sentence from the corpus that displays the appropriate meaning

– confirm the new synset– get points and rewards!

• expert validation– correct errors / remove

entries

Page 12: Rada Mihalcea University of North Texas

Result

roSynset

synsetIDdefinitionexamplevalidated

roWords

IDwordsynsetIDengMatch

engSynset

synsetIDdefinitionexample

engWords

IDwordsynsetIDroMatch

Page 13: Rada Mihalcea University of North Texas

Quantity

• Large number of contributions in short amount of time– 6 months: more than 2,000 synsets

from 150 contributors

Page 14: Rada Mihalcea University of North Texas

QualityManual RoWN

RSDnet GenSynsets

• manual• depends on experts• takes longer to build

• semi-automatic• depends on Web users• errors corrected by experts

• automatic• depends on lexical resources• errors introduced

RSDnet GenSynsetsnoun adjectiv

enoun adjective

correct 96.6% 92.3%19% / 63%

21% / 71%

part.correct

3.3% 3.8% 2% / 2% 0% / 0%

erroneous

0% 0% 2% / 2% 4% / 4%

missing 0% 0%77% / 33%

75% / 25%

total 59 26 54 24

Page 15: Rada Mihalcea University of North Texas

Pros / Cons• Pros

– faster than manual experts – more accurate than automatic– derived from WordNet => inherits

WordNet relations

• Limitations– bilingual users (English/Romanian)– capturing difficult concepts

Page 16: Rada Mihalcea University of North Texas

Outline

[building resources]• I: Building multilingual WordNets

• II: Building a (crosslingual) pictorial WordNet [using resources]• III: Applications

Page 17: Rada Mihalcea University of North Texas

A Picture is Worth 7,000 Words

Page 18: Rada Mihalcea University of North Texas

An Image Dictionary

• Add image representations to concepts defined in WordNet– Encode word/image associations– Combine visual and linguistic

representations of world concepts

Page 19: Rada Mihalcea University of North Texas

Typical entry in a dictionary

• pipe, tobacco pipe– a tube with a small

bowl at one end; used for smoking tobacco

• pipe, pipage, piping – a long tube made of

metal or plastic that is used to carry water or oil or gas etc.)

• pipe, tabor pipe – a tubular wind

instrument

+ pictorial representations

Page 20: Rada Mihalcea University of North Texas

What for?• Language learning

– Children– Second (foreign) language– People with language disorders

• International language-independent knowledge base– Pictures are transparent to languages

• Applications– Pictorial translations (“Letters to my cousin”)

• Bridge the gap between research in image and text processing– Image retrieval/classification, natural language

Page 21: Rada Mihalcea University of North Texas

Word/Image Associations

• Difficult• First iteration:

– Concrete nouns (flower, dog)– Concrete verbs (write, drink )

• Next:– Abstractions (friendship, love)– Object properties (red, large)

Page 22: Rada Mihalcea University of North Texas

Building PicNet

• An illustrated semantic dictionary• Web-users perform the mapping• Resources

– WordNet• 150,000+ words, grouped in synsets• 250,000+ semantic relations

– Image Search Engines• PicSearch http://www.picsearch.com• AltaVista http://www.altavista.com/image• To date 72,000 images automatically

collected

Page 23: Rada Mihalcea University of North Texas

Activities in PicNet

• Administrator functions • Word/image associations (Web-

users) – Free association– Competitive free association

(tournament)– Image validation / Scoring– Image donation– Word lookup (search)

Page 24: Rada Mihalcea University of North Texas

Administrator functions

• Validate uploaded images– Determine whether to

allow the images into the system

– Does not verify the mapping

– Delete corporate, offensive, or unclear images

• Options– Ban User

• can delete all activity by a particular user from the database

Page 25: Rada Mihalcea University of North Texas

• Word lookup• User

contribution– Contributing /

validating images

– Free association– Tournaments

(competitive free association)

Page 26: Rada Mihalcea University of North Texas

Word Lookup (Search)

• Synsets with words matching the search phrase are displayed with their best image match.

• Finding the desired synset, a user may:– rate the validity of

the current synset – image mapping

– upload a new image to be attached to this synset.

Activity 1

Page 27: Rada Mihalcea University of North Texas

Image Validation (Scoring)

• User is shown a synset-image pair – rank its appropriateness.

• Factors to consider:– fitness for the given synset.– quality of the image (size, clarity)

Activity 2

Page 28: Rada Mihalcea University of North Texas

Scoring

• Score based on the user response– Not related ( -5 )– Loosely related ( 1 )– Some similarity ( 2 )– Well suited ( 3 )

• Result:– Determine a score for each synset-

image pair– Concept/image pairs that are not

related are quickly discovered• Typically after a response from one or two

users

Page 29: Rada Mihalcea University of North Texas

Free Word Association

• Task: given an image, provide a word to match.

Activity 3

Page 30: Rada Mihalcea University of North Texas

Free Word Association – problems

• Difficult to identify images with optimal specificity– E.g. violet vs. flower

• Sometimes tedious to find the intended word from the synset list

• However, the user can often determine a hypernym (more general concept) – useful information

• [Scoring] A free word association is considered to be “well suited” and scores 3

Page 31: Rada Mihalcea University of North Texas

Image Upload

• Given a concept, upload a matching image– Search facilitated with shortcuts to three

search engines (PicSearch, AltaVista, Google)

• Scoring for uploaded images– An image uploaded for a particular synset

is considered “well suited” and scored at 5

– Account for the extra effort required from the user • Possible indicator of a stronger correlation.

Activity 4

Page 32: Rada Mihalcea University of North Texas

User Motivation

• Points for each activity– Leaderboard

• Competitive activity – The PicNet Game

• Combine ideas into a competitive game

Page 33: Rada Mihalcea University of North Texas

The PicNet Game

• Phase 1: Each player is shown an image and asked to provide a matching synset (as in free word association)

Activity 5

Page 34: Rada Mihalcea University of North Texas

The PicNet Game

• Phase 2: Each player votes for the best match (cannot vote on her own entry).

Page 35: Rada Mihalcea University of North Texas

Scoring and Winning• Each synset-image pair scores one point for

being entered, and one point for each vote received.

• If multiple players enter the same synset-image pair, the score is 2 * number of players entering that synset

• Players also receive a “game score”, which counts towards winning the game– A player receives 100 points for winning the round

• If multiple players entered the synset-image pair winning the best match, the score is split evenly

• A player reaching 300 points wins the tournament

Page 36: Rada Mihalcea University of North Texas

Quality and Quantity

• [1 year] 6,200 concepts from 320 contributors

• Competitive free association– Number of users voting for the same

synset suggestion in each round– User concurrence: 43% (consistent

agreement)

• Random sampling 100 images– 85% correct associations

Page 37: Rada Mihalcea University of North Texas

Sample Word/Image Associations

exodus, hegira, hejira – a journey by a large group to escape from a hostile environment

Page 38: Rada Mihalcea University of North Texas

Sample Word/Image Associations

humerus – bone extending from the shoulder to the elbow

Page 39: Rada Mihalcea University of North Texas

Sample Word/Image Associations

Castro, Fidel Castro – Cuban socialist leader who overthrew a dictator in 1959 and established a socialist state in Cuba (born in 1927)

Page 40: Rada Mihalcea University of North Texas

Outline

[building resources]• I: Building multilingual WordNets

• II: Building a (crosslingual) pictorial WordNet [using resources]

• III: Applications

Page 41: Rada Mihalcea University of North Texas

Translation with Pictures

• What do you understand by the following ?

The house has four bedrooms and one kitchen.

Page 42: Rada Mihalcea University of North Texas

Understanding with Pictures: Pros

• Universal• Requires minimal learning• Intuitive• Cheap (free contribution by users

of PicNet)• Proven success (iconic languages

for augmentative communication)

Page 43: Rada Mihalcea University of North Texas

Understanding with Pictures: Cons

• Complex information cannot be conveyed through pictures – e.g. “An inhaled form of insulin won

federal approval yesterday”• A large number of concepts with a

level of abstraction that prohibits a visual representation– e.g. politics, paradigm, regenerate

• Culture differences– e.g. some Latin American tribes do

not understand the concept of coffee

Page 44: Rada Mihalcea University of North Texas

A First Cut

• Simple sentences– no complex states or evens (e.g. emotional

states, temporal markers, change) or their attributes (adjectives, adverbs)

– no linguistic structure (e.g. complex noun phrases, prepositional attachments, lexical order, certainty)

– basic concrete nouns and verbs translated “as is”

• Evaluate the amount of understanding achieved through pictures as opposed to words

Page 45: Rada Mihalcea University of North Texas

Does It Work?

• Experiments carried out within a translation framework with simple sentences

• A communication process – a speaker of an “unknown” language– a listener of a “known” language– Chinese (unknown) to English (known)

• Three translation scenarios– fully pictorial representations (PicNet)– mixed pictorial/linguistic

representations– fully linguistic representations

Page 46: Rada Mihalcea University of North Texas

Sample Pictorial and Linguistic Translations

this

this

Page 47: Rada Mihalcea University of North Texas

Evaluation Study • Interpretations

– Users asked to provide an interpretation based on their first intuition

– Users’ background: Hispanics, Caucasians, Latin Americans

• Data set: 50 short sentences (10-15 words)– 30 sentences from language learning courses– 20 sentences from various domains (sports, politics,…)– Various levels of difficulty– 15 (average) interpretations for each sentence– One interpretation for each translation scenario– Total of 15*3*50=2,250 interpretations

Page 48: Rada Mihalcea University of North Texas

Sample Interpretations

Page 49: Rada Mihalcea University of North Texas

Evaluation Results

• Manual and automatic evaluations:– Adequacy– NIST [Bleu] – GTM

Page 50: Rada Mihalcea University of North Texas

Evaluation Results

• Significant amount of information can be conveyed through pictures – 76%, compared to the baseline of 0%– Due to the intuitive visual

descriptions that can be assigned to some of the concepts in the text

– Due to humans’ ability to contextualize • Read a book is a more common

interpretation than read about a book• “He sees the riverbank illuminated by a

torch”

Page 51: Rada Mihalcea University of North Texas

Evaluation Results• S1 (pictures) vs. S2 (pictures with words)

– 3.81 vs. 4.32– role played by context that cannot be

described with visual representations– adjectives, adverbs, prepositions, abstract

nouns, verbs cannot be translated into pictures but are important in the communication process

• S2 (pictures with words) vs S3 (words)– 4.32 vs. 4.40– advantage of words over pictures in

producing accurate interpretations

Page 52: Rada Mihalcea University of North Texas

Outline

[building resources]• I: Building multilingual WordNets

• II: Building a (crosslingual) pictorial WordNet [using resources]• III: Applications

• IV: Conclusions

Page 53: Rada Mihalcea University of North Texas

Conclusions• Multilingual and cross-lingual

semantic networks can be constructed with the help of volunteer contributions over the Web

• Advantages– faster than manual experts – more accurate than automatic approaches– taps on the “collective mind”

• Potentially infinite

– construct resources from scratch or validate automatically acquired knowledge

Page 54: Rada Mihalcea University of North Texas

Conclusions

• Challenges– (multilingual networks) require

bilingual users– definition of difficult concepts– Quantity:

• User motivation• Disguise scientific tasks as games• Rewards

– Quality:• Multiple annotations• Human expert supervision

Page 55: Rada Mihalcea University of North Texas

Conclusions

• Multilingual and cross-lingual semantic networks can be used as knowledge bases for building communication tools– machine translation– pictorial translation

Page 56: Rada Mihalcea University of North Texas

• Rada Mihalcea, Ben Leong, Toward Communicating Simple Sentences Using Pictorial Representations, in Proceedings of the 7th Biennial Conference of the Association for Machine Translation in the Americas (AMTA), Boston, MA, August 2006.

• Andy Borman, Rada Mihalcea, Paul Tarau, PicNet: Pictorial Representations for Illustrated Semantic Networks, in Proceedings of the AAAI Spring Symposium on Knowledge Collection from Volunteer Contributors, Stanford, CA, March 2005.

• Nathaniel Ayewah, Rada Mihalcea, and Vivi Nastase, Building Multilingual Semantic Networks with Non-Expert Contributions over the Web, in Proceedings of the KCAP 2003 Workshop on Distributed and Collaborative Knowledge Capture, Sanibel Island, Florida, November 2003.

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