Word -sense disambiguation is the process of identifying which sense of a word is meant in a sentence or other segment of context . In human language processing and cognition , it is usually subconscious.
60-560: [REDACTED] Look up DAB or dab in Wiktionary, the free dictionary. DAB , dab , dabs , or dabbing may refer to: Dictionaries [ edit ] Dictionary of American Biography , published under the auspices of the American Council of Learned Societies Dictionary of Australian Biography , published since 1949 Places [ edit ] Dąb, Katowice ,
120-639: A corpus of manually sense-annotated examples, and completely unsupervised methods that cluster occurrences of words, thereby inducing word senses. Among these, supervised learning approaches have been the most successful algorithms to date. Accuracy of current algorithms is difficult to state without a host of caveats. In English, accuracy at the coarse-grained ( homograph ) level is routinely above 90% (as of 2009), with some methods on particular homographs achieving over 96%. On finer-grained sense distinctions, top accuracies from 59.1% to 69.0% have been reported in evaluation exercises (SemEval-2007, Senseval-2), where
180-578: A Danish non-profit housing association Defense Acquisition Board , a United States Department of Defense purchasing oversight board Democratic Alliance for the Betterment and Progress of Hong Kong , a political party in Hong Kong Dortmunder Actien Brauerei , a German brewery, manufacturer of DAB beer Defunct organisations [ edit ] Dabs.com , a defunct British e-commerce retailer Danish Automobile Building ,
240-446: A Danish non-profit housing association Defense Acquisition Board , a United States Department of Defense purchasing oversight board Democratic Alliance for the Betterment and Progress of Hong Kong , a political party in Hong Kong Dortmunder Actien Brauerei , a German brewery, manufacturer of DAB beer Defunct organisations [ edit ] Dabs.com , a defunct British e-commerce retailer Danish Automobile Building ,
300-422: A bewildering variety of ways. The art of lexicography is to generalize from the corpus to definitions that evoke and explain the full range of meaning of a word, making it seem like words are well-behaved semantically. However, it is not at all clear if these same meaning distinctions are applicable in computational applications , as the decisions of lexicographers are usually driven by other considerations. In 2009,
360-444: A block of instances for the same target word. WSD was first formulated as a distinct computational task during the early days of machine translation in the 1940s, making it one of the oldest problems in computational linguistics. Warren Weaver first introduced the problem in a computational context in his 1949 memorandum on translation. Later, Bar-Hillel (1960) argued that WSD could not be solved by "electronic computer" because of
420-493: A comprehensive body of world knowledge . These approaches are generally not considered to be very successful in practice, mainly because such a body of knowledge does not exist in a computer-readable format, outside very limited domains. Additionally due to the long tradition in computational linguistics , of trying such approaches in terms of coded knowledge and in some cases, it can be hard to distinguish between knowledge involved in linguistic or world knowledge. The first attempt
480-456: A district in southern Poland Dąb, Greater Poland Voivodeship , a village in west-central Poland Dąb, Lubusz Voivodeship , a village in west Poland Dąb, Warmian-Masurian Voivodeship , a village in northern Poland Dab, Chakwal , a village in Punjab, Pakistan Organizations [ edit ] Da Afghanistan Bank , central bank of Afghanistan Dansk Almennyttigt Boligselskab ,
540-407: A district in southern Poland Dąb, Greater Poland Voivodeship , a village in west-central Poland Dąb, Lubusz Voivodeship , a village in west Poland Dąb, Warmian-Masurian Voivodeship , a village in northern Poland Dab, Chakwal , a village in Punjab, Pakistan Organizations [ edit ] Da Afghanistan Bank , central bank of Afghanistan Dansk Almennyttigt Boligselskab ,
600-431: A foot to the ground in motorcycle trials See also [ edit ] Deb (disambiguation) D&B (disambiguation) Dąb (disambiguation) Dąb coat of arms , a Polish coat of arms Disambiguation All pages with titles beginning with Dab All pages with titles containing Dab Topics referred to by the same term [REDACTED] This disambiguation page lists articles associated with
660-431: A foot to the ground in motorcycle trials See also [ edit ] Deb (disambiguation) D&B (disambiguation) Dąb (disambiguation) Dąb coat of arms , a Polish coat of arms Disambiguation All pages with titles beginning with Dab All pages with titles containing Dab Topics referred to by the same term [REDACTED] This disambiguation page lists articles associated with
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#1732927600546720-500: A former Danish bus manufacturer Deutsch-Asiatische Bank , a former foreign bank in China Science and technology [ edit ] Common dab , a fish 3,3'-Diaminobenzidine or diaminobenzidine, commonly used in immunohistochemical staining 1,4-Diaminobutane 10-Deacetylbaccatin , or 10-DAB Digital Audio Broadcasting , or DAB, a digital radio transmission standard 4-Dimethylaminoazobenzene (methyl yellow),
780-444: A former Danish bus manufacturer Deutsch-Asiatische Bank , a former foreign bank in China Science and technology [ edit ] Common dab , a fish 3,3'-Diaminobenzidine or diaminobenzidine, commonly used in immunohistochemical staining 1,4-Diaminobutane 10-Deacetylbaccatin , or 10-DAB Digital Audio Broadcasting , or DAB, a digital radio transmission standard 4-Dimethylaminoazobenzene (methyl yellow),
840-463: A given lexical knowledge base such as WordNet . Graph-based methods reminiscent of spreading activation research of the early days of AI research have been applied with some success. More complex graph-based approaches have been shown to perform almost as well as supervised methods or even outperforming them on specific domains. Recently, it has been reported that simple graph connectivity measures , such as degree , perform state-of-the-art WSD in
900-520: A method that decouples an object input representation into its properties, such as words and their word senses. AutoExtend uses a graph structure to map words (e.g. text) and non-word (e.g. synsets in WordNet ) objects as nodes and the relationship between nodes as edges. The relations (edges) in AutoExtend can either express the addition or similarity between its nodes. The former captures the intuition behind
960-496: A pH indicator Dabbing, a method of making metal casts from a wooden block, related to stereotyping Other uses [ edit ] Dab (dance) , a dance move Del Arno Band , Serbian and Yugoslav reggae band Daytona Beach International Airport 's IATA airport code Common dab , a flatfish found in European coastal waters Directional asking bid, a contract bridge term Smoking or vaporizing hash oil Touching
1020-445: A pH indicator Dabbing, a method of making metal casts from a wooden block, related to stereotyping Other uses [ edit ] Dab (dance) , a dance move Del Arno Band , Serbian and Yugoslav reggae band Daytona Beach International Airport 's IATA airport code Common dab , a flatfish found in European coastal waters Directional asking bid, a contract bridge term Smoking or vaporizing hash oil Touching
1080-455: A particular dictionary, and using its set of senses to deal with this issue. Generally, however, research results using broad distinctions in senses have been much better than those using narrow ones. Most researchers continue to work on fine-grained WSD. Most research in the field of WSD is performed by using WordNet as a reference sense inventory for English. WordNet is a computational lexicon that encodes concepts as synonym sets (e.g.
1140-528: A plateau in accuracy, and so attention has shifted to coarser-grained senses, domain adaptation , semi-supervised and unsupervised corpus-based systems, combinations of different methods, and the return of knowledge-based systems via graph-based methods. Still, supervised systems continue to perform best. One problem with word sense disambiguation is deciding what the senses are, as different dictionaries and thesauruses will provide different divisions of words into senses. Some researchers have suggested choosing
1200-559: A pre-trained word-embedding model. These centroids are later used to select the word sense with the highest similarity of a target word to its immediately adjacent neighbors (i.e., predecessor and successor words). After all words are annotated and disambiguated, they can be used as a training corpus in any standard word-embedding technique. In its improved version, MSSA can make use of word sense embeddings to repeat its disambiguation process iteratively. Other approaches may vary differently in their methods: The knowledge acquisition bottleneck
1260-564: A single vector representation, they still can be used to improve WSD. A simple approach to employ pre-computed word embeddings to represent word senses is to compute the centroids of sense clusters. In addition to word-embedding techniques, lexical databases (e.g., WordNet , ConceptNet , BabelNet ) can also assist unsupervised systems in mapping words and their senses as dictionaries. Some techniques that combine lexical databases and word embeddings are presented in AutoExtend and Most Suitable Sense Annotation (MSSA). In AutoExtend, they present
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#17329276005461320-433: A small number of surefire decision rules (e.g., 'play' in the context of 'bass' almost always indicates the musical instrument). The seeds are used to train an initial classifier , using any supervised method. This classifier is then used on the untagged portion of the corpus to extract a larger training set, in which only the most confident classifications are included. The process repeats, each new classifier being trained on
1380-431: A successively larger training corpus, until the whole corpus is consumed, or until a given maximum number of iterations is reached. Other semi-supervised techniques use large quantities of untagged corpora to provide co-occurrence information that supplements the tagged corpora. These techniques have the potential to help in the adaptation of supervised models to different domains. Also, an ambiguous word in one language
1440-684: A task referred to as word sense induction or discrimination. Then, new occurrences of the word can be classified into the closest induced clusters/senses. Performance has been lower than for the other methods described above, but comparisons are difficult since senses induced must be mapped to a known dictionary of word senses. If a mapping to a set of dictionary senses is not desired, cluster-based evaluations (including measures of entropy and purity) can be performed. Alternatively, word sense induction methods can be tested and compared within an application. For instance, it has been shown that word sense induction improves Web search result clustering by increasing
1500-459: A task – named lexical substitution – was proposed as a possible solution to the sense discreteness problem. The task consists of providing a substitute for a word in context that preserves the meaning of the original word (potentially, substitutes can be chosen from the full lexicon of the target language, thus overcoming discreteness). There are two main approaches to WSD – deep approaches and shallow approaches. Deep approaches presume access to
1560-504: A thesaurus method in the 1990s. Shallow approaches do not try to understand the text, but instead consider the surrounding words. These rules can be automatically derived by the computer, using a training corpus of words tagged with their word senses. This approach, while theoretically not as powerful as deep approaches, gives superior results in practice, due to the computer's limited world knowledge. There are four conventional approaches to WSD: Almost all these approaches work by defining
1620-444: A window of n content words around each word to be disambiguated in the corpus, and statistically analyzing those n surrounding words. Two shallow approaches used to train and then disambiguate are Naïve Bayes classifiers and decision trees . In recent research, kernel-based methods such as support vector machines have shown superior performance in supervised learning . Graph-based approaches have also gained much attention from
1680-410: Is inter-judge variance . WSD systems are normally tested by having their results on a task compared against those of a human. However, while it is relatively easy to assign parts of speech to text, training people to tag senses has been proven to be far more difficult. While users can memorize all of the possible parts of speech a word can take, it is often impossible for individuals to memorize all of
1740-407: Is different sense inventories. In order to define common evaluation datasets and procedures, public evaluation campaigns have been organized. Senseval (now renamed SemEval ) is an international word sense disambiguation competition, held every three years since 1998: Senseval-1 (1998), Senseval-2 (2001), Senseval-3 (2004), and its successor, SemEval (2007). The objective of the competition
1800-414: Is extremely difficult, because of the different test sets, sense inventories, and knowledge resources adopted. Before the organization of specific evaluation campaigns most systems were assessed on in-house, often small-scale, data sets . In order to test one's algorithm, developers should spend their time to annotate all word occurrences. And comparing methods even on the same corpus is not eligible if there
1860-437: Is not a coherent concept: each task requires its own division of word meaning into senses relevant to the task. Additionally, completely different algorithms might be required by different applications. In machine translation, the problem takes the form of target word selection. The "senses" are words in the target language, which often correspond to significant meaning distinctions in the source language ("bank" could translate to
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1920-493: Is often translated into different words in a second language depending on the sense of the word. Word-aligned bilingual corpora have been used to infer cross-lingual sense distinctions, a kind of semi-supervised system. Unsupervised learning is the greatest challenge for WSD researchers. The underlying assumption is that similar senses occur in similar contexts, and thus senses can be induced from text by clustering word occurrences using some measure of similarity of context,
1980-449: Is perhaps the major impediment to solving the WSD problem. Unsupervised methods rely on knowledge about word senses, which is only sparsely formulated in dictionaries and lexical databases. Supervised methods depend crucially on the existence of manually annotated examples for every word sense, a requisite that can so far be met only for a handful of words for testing purposes, as it is done in
2040-587: Is to organize different lectures, preparing and hand-annotating corpus for testing systems, perform a comparative evaluation of WSD systems in several kinds of tasks, including all-words and lexical sample WSD for different languages, and, more recently, new tasks such as semantic role labeling , gloss WSD, lexical substitution , etc. The systems submitted for evaluation to these competitions usually integrate different techniques and often combine supervised and knowledge-based methods (especially for avoiding bad performance in lack of training examples). In recent years ,
2100-519: The Oxford Advanced Learner's Dictionary of Current English (OALD), became available: hand-coding was replaced with knowledge automatically extracted from these resources, but disambiguation was still knowledge-based or dictionary-based. In the 1990s, the statistical revolution advanced computational linguistics, and WSD became a paradigm problem on which to apply supervised machine learning techniques. The 2000s saw supervised techniques reach
2160-597: The Senseval exercises. One of the most promising trends in WSD research is using the largest corpus ever accessible, the World Wide Web , to acquire lexical information automatically. WSD has been traditionally understood as an intermediate language engineering technology which could improve applications such as information retrieval (IR). In this case, however, the reverse is also true: web search engines implement simple and robust IR techniques that can successfully mine
2220-649: The coarse-grained homograph level (e.g., pen as writing instrument or enclosure), but go down one level to fine-grained polysemy , and disagreements arise. For example, in Senseval-2, which used fine-grained sense distinctions, human annotators agreed in only 85% of word occurrences. Word meaning is in principle infinitely variable and context-sensitive. It does not divide up easily into distinct or discrete sub-meanings. Lexicographers frequently discover in corpora loose and overlapping word meanings, and standard or conventional meanings extended, modulated, and exploited in
2280-473: The French banque – that is, 'financial bank' or rive – that is, 'edge of river'). In information retrieval, a sense inventory is not necessarily required, because it is enough to know that a word is used in the same sense in the query and a retrieved document; what sense that is, is unimportant. Finally, the very notion of " word sense " is slippery and controversial. Most people can agree in distinctions at
2340-706: The Web for information to use in WSD. The historic lack of training data has provoked the appearance of some new algorithms and techniques, as described in Automatic acquisition of sense-tagged corpora . Knowledge is a fundamental component of WSD. Knowledge sources provide data which are essential to associate senses with words. They can vary from corpora of texts, either unlabeled or annotated with word senses, to machine-readable dictionaries, thesauri, glossaries, ontologies, etc. They can be classified as follows: Structured: Unstructured: Comparing and evaluating different WSD systems
2400-429: The abilities provided by the brain's neural networks , computer science has had a long-term challenge in developing the ability in computers to do natural language processing and machine learning . Many techniques have been researched, including dictionary-based methods that use the knowledge encoded in lexical resources, supervised machine learning methods in which a classifier is trained for each distinct word on
2460-434: The baseline accuracy of the simplest possible algorithm of always choosing the most frequent sense was 51.4% and 57%, respectively. Disambiguation requires two strict inputs: a dictionary to specify the senses which are to be disambiguated and a corpus of language data to be disambiguated (in some methods, a training corpus of language examples is also required). WSD task has two variants: "lexical sample" (disambiguating
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2520-430: The concept of car is encoded as { car, auto, automobile, machine, motorcar }). Other resources used for disambiguation purposes include Roget's Thesaurus and Misplaced Pages . More recently, BabelNet , a multilingual encyclopedic dictionary, has been used for multilingual WSD. In any real test, part-of-speech tagging and sense tagging have proven to be very closely related, with each potentially imposing constraints upon
2580-405: The definitions of every semantic variant of each word in the previous definitions and so on. Finally, the first word is disambiguated by selecting the semantic variant which minimizes the distance from the first to the second word. An alternative to the use of the definitions is to consider general word-sense relatedness and to compute the semantic similarity of each pair of word senses based on
2640-459: The 💕 (Redirected from DAB ) [REDACTED] Look up DAB or dab in Wiktionary, the free dictionary. DAB , dab , dabs , or dabbing may refer to: Dictionaries [ edit ] Dictionary of American Biography , published under the auspices of the American Council of Learned Societies Dictionary of Australian Biography , published since 1949 Places [ edit ] Dąb, Katowice ,
2700-419: The greatest word overlap in their dictionary definitions. For example, when disambiguating the words in "pine cone", the definitions of the appropriate senses both include the words evergreen and tree (at least in one dictionary). A similar approach searches for the shortest path between two words: the second word is iteratively searched among the definitions of every semantic variant of the first word, then among
2760-525: The most successful approaches, to date, probably because they can cope with the high-dimensionality of the feature space. However, these supervised methods are subject to a new knowledge acquisition bottleneck since they rely on substantial amounts of manually sense-tagged corpora for training, which are laborious and expensive to create. Because of the lack of training data, many word sense disambiguation algorithms use semi-supervised learning , which allows both labeled and unlabeled data. The Yarowsky algorithm
2820-405: The need in general to model all world knowledge. In the 1970s, WSD was a subtask of semantic interpretation systems developed within the field of artificial intelligence, starting with Wilks ' preference semantics. However, since WSD systems were at the time largely rule-based and hand-coded they were prone to a knowledge acquisition bottleneck. By the 1980s large-scale lexical resources, such as
2880-432: The occurrences of a small sample of target words which were previously selected) and "all words" task (disambiguation of all the words in a running text). "All words" task is generally considered a more realistic form of evaluation, but the corpus is more expensive to produce because human annotators have to read the definitions for each word in the sequence every time they need to make a tagging judgement, rather than once for
2940-554: The offset calculus, while the latter defines the similarity between two nodes. In MSSA, an unsupervised disambiguation system uses the similarity between word senses in a fixed context window to select the most suitable word sense using a pre-trained word-embedding model and WordNet . For each context window, MSSA calculates the centroid of each word sense definition by averaging the word vectors of its words in WordNet's glosses (i.e., short defining gloss and one or more usage example) using
3000-561: The other, mainly because the part of speech of a word is primarily determined by the immediately adjacent one to three words, whereas the sense of a word may be determined by words further away. The success rate for part-of-speech tagging algorithms is at present much higher than that for WSD, state-of-the art being around 96% accuracy or better, as compared to less than 75% accuracy in word sense disambiguation with supervised learning . These figures are typical for English, and may be very different from those for other languages. Another problem
3060-499: The other. The question whether these tasks should be kept together or decoupled is still not unanimously resolved, but recently scientists incline to test these things separately (e.g. in the Senseval/ SemEval competitions parts of speech are provided as input for the text to disambiguate). Both WSD and part-of-speech tagging involve disambiguating or tagging with words. However, algorithms used for one do not tend to work well for
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#17329276005463120-486: The presence of a sufficiently rich lexical knowledge base. Also, automatically transferring knowledge in the form of semantic relations from Misplaced Pages to WordNet has been shown to boost simple knowledge-based methods, enabling them to rival the best supervised systems and even outperform them in a domain-specific setting. The use of selectional preferences (or selectional restrictions) is also useful, for example, knowing that one typically cooks food, one can disambiguate
3180-495: The quality of result clusters and the degree diversification of result lists. It is hoped that unsupervised learning will overcome the knowledge acquisition bottleneck because they are not dependent on manual effort. Representing words considering their context through fixed-size dense vectors ( word embeddings ) has become one of the most fundamental blocks in several NLP systems. Even though most of traditional word-embedding techniques conflate words with multiple meanings into
3240-413: The research community, and currently achieve performance close to the state of the art. The Lesk algorithm is the seminal dictionary-based method. It is based on the hypothesis that words used together in text are related to each other and that the relation can be observed in the definitions of the words and their senses. Two (or more) words are disambiguated by finding the pair of dictionary senses with
3300-540: The senses a word can take. Moreover, humans do not agree on the task at hand – give a list of senses and sentences, and humans will not always agree on which word belongs in which sense. As human performance serves as the standard, it is an upper bound for computer performance. Human performance, however, is much better on coarse-grained than fine-grained distinctions, so this again is why research on coarse-grained distinctions has been put to test in recent WSD evaluation exercises. A task-independent sense inventory
3360-528: The title Dab . If an internal link led you here, you may wish to change the link to point directly to the intended article. Retrieved from " https://en.wikipedia.org/w/index.php?title=Dab&oldid=1258455226 " Categories : Disambiguation pages Place name disambiguation pages Hidden categories: Articles containing Danish-language text Short description is different from Wikidata All article disambiguation pages All disambiguation pages DAB From Misplaced Pages,
3420-608: The title Dab . If an internal link led you here, you may wish to change the link to point directly to the intended article. Retrieved from " https://en.wikipedia.org/w/index.php?title=Dab&oldid=1258455226 " Categories : Disambiguation pages Place name disambiguation pages Hidden categories: Articles containing Danish-language text Short description is different from Wikidata All article disambiguation pages All disambiguation pages Disambiguation Given that natural language requires reflection of neurological reality, as shaped by
3480-529: The word bass in "I am cooking basses" (i.e., it's not a musical instrument). Supervised methods are based on the assumption that the context can provide enough evidence on its own to disambiguate words (hence, common sense and reasoning are deemed unnecessary). Probably every machine learning algorithm going has been applied to WSD, including associated techniques such as feature selection , parameter optimization, and ensemble learning . Support Vector Machines and memory-based learning have been shown to be
3540-416: Was an early example of such an algorithm. It uses the ‘One sense per collocation’ and the ‘One sense per discourse’ properties of human languages for word sense disambiguation. From observation, words tend to exhibit only one sense in most given discourse and in a given collocation. The bootstrapping approach starts from a small amount of seed data for each word: either manually tagged training examples or
3600-565: Was that by Margaret Masterman and her colleagues, at the Cambridge Language Research Unit in England, in the 1950s. This attempt used as data a punched-card version of Roget's Thesaurus and its numbered "heads", as an indicator of topics and looked for repetitions in text, using a set intersection algorithm. It was not very successful, but had strong relationships to later work, especially Yarowsky's machine learning optimisation of
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