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WordNet: Connecting words and concepts Peng.Huang What is WordNet? • A large lexical database, or “electronic dictionary”, for English Language • Started in 1985, by Miller • Covers most English nouns, verbs, adjectives, adverbs • Electronic format makes it amenable to automatic manipulation What’s so special about WordNet? • Traditional paper dictionaries are organized alphabetically, so words that are grouped together (on the same page) are unrelated • WordNet is organized by meaning, so words in close proximity are related Basic Design of WordNet WordNet entries are word-concept mappings Natural Languages map many-to many: One concept can be expressed by many words (synonymy): {car, auto, automobile} {close, shut} Basic Design of WordNet One word can express many concepts (polysemy): {club, stick} {club, nightclub} {club, playing card} Basic Design of WordNet WordNet’s building blocks: sets of synonyms (synsets) --{hit, beat}, {big, large}, {queue, line} Each synset expresses a distinct concept. A gloss is a textual definition of the synset -- “band -- (a range of frequencies between two limits)” Currently, WordNet 3.0 contains appr. 117,000 synsets Basic Design of WordNet • Groups the meanings of English words into five categories – – – – – Nouns Verbs Adjectives Adverbs Function words(prepositions, pronouns, determiners) Basic Design of WordNet WordNet stores, and allows one to retrieve, --all concepts that a given word can express --all words that express a given concept But there’s more! • Words and synsets are connected via meaning-based relations – – – – – Synonymy (Pipe, Tube) Antonymy (Wet, Dry) Hyponymy (Tree, Plant) Meronymy (Ship, Fleet) Morphological relations • Result: a large semantic network (as opposed to a flat list in a paper dictionary) Relations among WN noun synsets • Hyperonymy/hyponymy relates super/subordinate synsets (denting more/less general concepts): {vehicle} / \ {car, automobile} {bicycle, bike} / \ \ {convertible} {SUV} {mountain bike} Transitivity: A car is a kind of vehicle An SUV is a kind of car => An SUV is a kind of vehicle Relations among noun synsets • Meronymy/holonymy (part/whole) {car, automobile} | {engine} / \ {spark plug} {cylinder} Inheritance: A car has an engine An engine has spark plugs => A car has spark plugs Relations among verb synsets Verbs denote event Related by a “manner” relation {communicate} | {talk} / \ {stammer} {whisper} Relations among verb Synset Semantics of events (verbs) are very different from semantics of entities (nouns) WordNet captures this fact with different relations Relation refer to temporal properties of events --partial and complete overlap of two events --prior or posterior events WordNet Relations among synsets create interconnected network Different senses of polysemous words are members of distinct synsets that are related to different synsets (i.e., occupy different locations in the network) e.g., {stock, broth} has superordinate synset {dish} {stock, breed} has superordinate {variety} These different synsets are also linked to different part/whole synsets WordNet A word’s meaning can be defined in terms of its position in the network club1 is a kind of association/has members club2 is a kind of stick Relatedness between words or synsets can be quantified in terms of path length (number of connections among synsets) WordNet • How closely related are {zebra} and {horse}? Very: Both share the direct superordinate equine • What about {horse, sawhorse} and {horse, gymnastic horse}? Related, but less so: joint superordinate {artifact} is 4-5 levels up • What about {zebra} and {horse, gymnastic horse}? Unrelated: the trees containing them never intersect! WordNet for Word Sense Disambiguation • WSD is a major problem in Natural Language Processing • Assumption: words in a context (phrase, sentence, discourse) are semantically related • So, horse in the neighborhood of zebra is likely to mean “equine”; in the neighborhood of gym it likely means “gymnastic horse.” WordNet for WSD If you want to disambiguate “horse” in the context of “zebra,” look for all WordNet paths from “zebra” to “horse.” The shortest one is likely to give you the correct sense of “horse.” WordNet for WSD • Can take advantage of WordNet classes (trees of hierarchically related synsets) • e.g., run1 co-occurs with nouns that are all hyponyms (subordinate, more specific concepts) of office (mayor, congresswoman, President,...) • run2 co-occurs with nouns that are hyponyms of machine (computer, washer, printing press, engine,...) Topics/Domain in WordNet • Hierachical organization leaves many related concepts unconnected • Solution: link synsets across “trees” in terms of their membership in a “domain” or topic • E.g., synsets {contraindication},{surgery}, {physician},....are all linked to {medicine}, the concept that defines a domain or topic Topics/Domain in WordNet • Customizable: user can define new topics • Topics can be as coarse- or fine-grained as desired • By using synsets as topic labels, the concepts subsumed under the new topic(s) will continue to be part of the network Current and Future Work • Increase density of WordNet • More links, new relations • E.g. “role” relation among nouns: distinguish {poodle}-{dog} (a “type” relation) from {poodle}-{pet} (a “role” relation) poodle is a type of dog, but not a type of pet poodle can (but must not) play the “role” of pet Work just completed... (sponsored by ARDA/AQUAINT) Manually link nouns, verbs, adjectives, adverbs in the definitions (“glosses”) to the appropriate synset: {bank (a financial institution that accepts deposits...)} {bank (sloping land..)} Gloss Disambiguation {bank (a financial institution that accepts deposits...)} {financial, fiscal} {institution, establishment} {institution, custom} {bank (sloping land..)} {slope, incline} {land, ground, earth} {land, country} Gloss Disambiguation: Results • A closed system linking glosses and synsets (and a more densely connected network) • Each gloss is more informative as it adds synset information for the words in the gloss • Glosses are examples of contexts for many wordsense pairs, telling us how words with specific senses are being used in context • Glosses can be used as training data for machine learning systems that want to “learn” to disambiguate words automatically Summary • From Google about 1,190,000 item with respect to WordNet • There is more than what you see…But less than what you imagine!!! Where to find WordNet Freely downloadable: http://wordnet.princeton.edu/ Database, browser, documentation Global WordNet Currently, wordnets exist for some 40 languages, including Arabic, Basque, Bulgarian, Estonian, Hebrew, Icelandic, Italian, Kannada, Latvian, Persian, Romanian, Sanskrit, Tamil, Thai, Turkish,... http://www.globalwordnet.org Thank you! Q&A