Taxonomy

Taxonomy is the practice and science of categorization or classification.

A taxonomy (or taxonomical classification) is a scheme of classification, especially a hierarchical classification, in which things are organized into groups or types. Among other things, a taxonomy can be used to organize and index knowledge (stored as documents, articles, videos, etc.), such as in the form of a library classification system, or a search engine taxonomy, so that users can more easily find the information they are searching for. Many taxonomies are hierarchies (and thus, have an intrinsic tree structure), but not all are.

Originally, taxonomy referred only to the categorisation of organisms or a particular categorisation of organisms. In a wider, more general sense, it may refer to a categorisation of things or concepts, as well as to the principles underlying such a categorisation. Taxonomy organizes taxonomic units known as "taxa" (singular "taxon")."

Taxonomy is different from meronomy, which deals with the categorisation of parts of a whole.

Etymology

The word was coined in 1813 by the Swiss botanist A. P. de Candolle and is irregularly compounded from the Greek τάξις, taxis 'order' and νόμος, nomos 'law', connected by the French form -o-; the regular form would be taxinomy, as used in the Greek reborrowing ταξινομία.[1][2]

Applications

Wikipedia categories form a taxonomy,[3] which can be extracted by automatic means.[4] As of 2009, it has been shown that a manually-constructed taxonomy, such as that of computational lexicons like WordNet, can be used to improve and restructure the Wikipedia category taxonomy.[5]

In a broader sense, taxonomy also applies to relationship schemes other than parent-child hierarchies, such as network structures. Taxonomies may then include a single child with multi-parents, for example, "Car" might appear with both parents "Vehicle" and "Steel Mechanisms"; to some however, this merely means that 'car' is a part of several different taxonomies.[6] A taxonomy might also simply be organization of kinds of things into groups, or an alphabetical list; here, however, the term vocabulary is more appropriate. In current usage within knowledge management, taxonomies are considered narrower than ontologies since ontologies apply a larger variety of relation types.[7]

Mathematically, a hierarchical taxonomy is a tree structure of classifications for a given set of objects. It is also named containment hierarchy. At the top of this structure is a single classification, the root node, that applies to all objects. Nodes below this root are more specific classifications that apply to subsets of the total set of classified objects. The progress of reasoning proceeds from the general to the more specific.

By contrast, in the context of legal terminology, an open-ended contextual taxonomy is employed—a taxonomy holding only with respect to a specific context. In scenarios taken from the legal domain, a formal account of the open-texture of legal terms is modeled, which suggests varying notions of the "core" and "penumbra" of the meanings of a concept. The progress of reasoning proceeds from the specific to the more general.[8]

History

Anthropologists have observed that taxonomies are generally embedded in local cultural and social systems, and serve various social functions. Perhaps the most well-known and influential study of folk taxonomies is Émile Durkheim's The Elementary Forms of Religious Life. A more recent treatment of folk taxonomies (including the results of several decades of empirical research) and the discussion of their relation to the scientific taxonomy can be found in Scott Atran's Cognitive Foundations of Natural History. Folk taxonomies of organisms have been found in large part to agree with scientific classification, at least for the larger and more obvious species, which means that it is not the case that folk taxonomies are based purely on utilitarian characteristics.[9]

In the seventeenth century the German mathematician and philosopher Gottfried Leibniz, following the work of the thirteenth-century Majorcan philosopher Ramon Llull on his Ars generalis ultima, a system for procedurally generating concepts by combining a fixed set of ideas, sought to develop an alphabet of human thought. Leibniz intended his characteristica universalis to be an "algebra" capable of expressing all conceptual thought. The concept of creating such a "universal language" was frequently examined in the 17th century, also notably by the English philosopher John Wilkins in his work An Essay towards a Real Character and a Philosophical Language (1668), from which the classification scheme in Roget's Thesaurus ultimately derives.

Taxonomy in various disciplines

Natural sciences

Taxonomy in biology encompasses the description, identification, nomenclature, and classification of organisms. Uses of taxonomy include:

Business and economics

Uses of taxonomy in business and economics include:

Software engineering

Vegas et al.[10] make a compelling case to advance the knowledge in the field of software engineering through the use of taxonomies. Similarly, Ore et al.[11] provide a systematic methodology to approach taxonomy building in software engineering related topics.

Several taxonomies have been proposed in software testing research to classify techniques, tools, concepts and artifacts. The following are some example taxonomies:

  1. A taxonomy of model-based testing techniques[12]
  2. A taxonomy of static-code analysis tools[13]

Engström et al.[14] suggest and evaluate the use of a taxonomy to bridge the communication between researchers and practitioners engaged in the area of software testing. They have also developed a web-based tool[15] to facilitate and encourage the use of the taxonomy. The tool and its source code are available for public use.[16]

Other uses of taxonomy in computing

Education and academia

Uses of taxonomy in education include:

Safety

Uses of taxonomy in safety include:

Other taxonomies

Research publishing

Citing inadequacies with current practices in listing authors of papers in medical research journals, Drummond Rennie and co-authors called in a 1997 article in JAMA, the Journal of the American Medical Association for

a radical conceptual and systematic change, to reflect the realities of multiple authorship and to buttress accountability. We propose dropping the outmoded notion of author in favor of the more useful and realistic one of contributor.[17]:152

Since 2012, several major academic and scientific publishing bodies have mounted Project CRediT to develop a controlled vocabulary of contributor roles.[18] Known as CRediT (Contributor Roles Taxonomy), this is an example of a flat, non-hierarchical taxonomy; however, it does include an optional, broad classification of the degree of contribution: lead, equal or supporting. Amy Brand and co-authors summarise their intended outcome as:

Identifying specific contributions to published research will lead to appropriate credit, fewer author disputes, and fewer disincentives to collaboration and the sharing of data and code.[17]:151

As of mid-2018, this taxonomy apparently restricts its scope to research outputs, specifically journal articles; however, it does rather unusually "hope to … support identification of peer reviewers".[18] (As such, it has not yet defined terms for such roles as editor or author of a chapter in a book of research results.) Version 1, established by the first Working Group in the (northern) autumn of 2014, identifies 14 specific contributor roles using the following defined terms:

  • Conceptualization
  • Methodology
  • Software
  • Validation
  • Formal Analysis
  • Investigation
  • Resources
  • Data curation
  • Writing – Original Draft
  • Writing – Review & Editing
  • Visualization
  • Supervision
  • Project Administration
  • Funding acquisition

Reception has been mixed, with several major publishers and journals planning to have implemented CRediT by the end of 2018, whilst almost as many are not persuaded of the need or value of using it. For example,

The National Academy of Sciences has created a TACS (Transparency in Author Contributions in Science) webpage to list the journals that commit to setting authorship standards, defining responsibilities for corresponding authors, requiring ORCID iDs, and adopting the CRediT taxonomy.[19]

The same webpage has a table listing 21 journals (or families of journals), of which:

  • 5 have, or by end 2018 will have, implemented CRediT,
  • 6 require an author contribution statement and suggest using CRediT,
  • 8 do not use CRediT, of which 3 give reasons for not doing so, and
  • 2 are uninformative.

The taxonomy is an open standard conforming to the OpenStand principles,[20] and is published under a Creative Commons licence.[18]

Taxonomy for the web

Websites with a well designed taxonomy or hierarchy are easily understood by users, due to the possibility of users developing a mental model of the site structure.[21]

Guidelines for writing taxonomy for the web include:

  • Mutually exclusive categories can be beneficial. If categories appear several places, it's called cross-listing or polyhierarchical. The hierarchy will lose its value if cross-listing appears too often. Cross-listing often appears when working with ambiguous categories that fits more than one place.[21]
  • Having a balance between breadth and depth in the taxonomy is beneficial. Too many options (breadth), will overload the users by giving them too many choices. At the same time having a too narrow structure, with more than two or three levels to click-through, will make users frustrated and might give up.[21]

Is-a and has-a relationships, and hyponymy

Two of the predominant types of relationships in knowledge-representation systems are predication and the universally quantified conditional. Predication relationships express the notion that an individual entity is an example of a certain type (for example, John is a bachelor), while universally quantified conditionals express the notion that a type is a subtype of another type (for example, "A dog is a mammal", which means the same as "All dogs are mammals").[22]

The "has-a" relationship is quite different: an elephant has a trunk; a trunk is a part, not a subtype of elephant. The study of part-whole relationships is mereology.

Taxonomies are often represented as is-a hierarchies where each level is more specific than the level above it (in mathematical language is "a subset of" the level above). For example, a basic biology taxonomy would have concepts such as mammal, which is a subset of animal, and dogs and cats, which are subsets of mammal. This kind of taxonomy is called an is-a model because the specific objects are considered as instances of a concept. For example, Fido is-an instance of the concept dog and Fluffy is-a cat.[23]

In linguistics, is-a relations are called hyponymy. When one word describes a category, but another describe some subset of that category, the larger term is called a hypernym with respect to the smaller, and the smaller is called a "hyponym" with respect to the larger. Such a hyponym, in turn, may have further subcategories for which it is a hypernym. In the simple biology example, dog is a hypernym with respect to its subcategory collie, which in turn is a hypernym with respect to Fido which is one of its hyponyms. Typically, however, hypernym is used to refer to subcategories rather than single individuals.

Research

Comparison of categories of small and large populations

Researchers reported that large populations consistently develop highly similar category systems. This may be relevant to lexical aspects of large communication networks and cultures such as folksonomies and language or human communication, and sense-making in general.[24][25]

See also

Notes

  1. Oxford English Dictionary. Oxford University Press. 1910. (partially updated December 2021), s.v.
  2. review of Aperçus de Taxinomie Générale in Nature 60:489–490 Archived 2023-01-26 at the Wayback Machine (1899)
  3. Zirn, Cäcilia, Vivi Nastase and Michael Strube. 2008. "Distinguishing Between Instances and Classes in the Wikipedia Taxonomy" (video lecture). Archived 2019-12-20 at the Wayback Machine 5th Annual European Semantic Web Conference (ESWC 2008).
  4. S. Ponzetto and M. Strube. 2007. "Deriving a large scale taxonomy from Wikipedia" Archived 2017-08-14 at the Wayback Machine. Proc. of the 22nd Conference on the Advancement of Artificial Intelligence, Vancouver, B.C., Canada, pp. 1440-1445.
  5. S. Ponzetto, R. Navigli. 2009. "Large-Scale Taxonomy Mapping for Restructuring and Integrating Wikipedia". Proc. of the 21st International Joint Conference on Artificial Intelligence (IJCAI 2009), Pasadena, California, pp. 2083-2088.
  6. Jackson, Joab. "Taxonomy's not just design, it's an art," Archived 2020-02-05 at the Wayback Machine Government Computer News (Washington, D.C.). September 2, 2004.
  7. Suryanto, Hendra and Paul Compton. "Learning classification taxonomies from a classification knowledge based system." Archived 2017-08-09 at the Wayback Machine University of Karlsruhe; "Defining 'Taxonomy'," Archived 2017-08-09 at the Wayback Machine Straights Knowledge website.
  8. Grossi, Davide, Frank Dignum and John-Jules Charles Meyer. (2005). "Contextual Taxonomies" in Computational Logic in Multi-Agent Systems, pp. 33-51.
  9. Kenneth Boulding; Elias Khalil (2002). Evolution, Order and Complexity. Routledge. ISBN 9780203013151. p. 9
  10. Vegas, S. (2009). "Maturing software engineering knowledge through classifications: A case study on unit testing techniques". IEEE Transactions on Software Engineering. 35 (4): 551–565. CiteSeerX 10.1.1.221.7589. doi:10.1109/TSE.2009.13. S2CID 574495.
  11. Ore, S. (2014). "Critical success factors taxonomy for software process deployment". Software Quality Journal. 22 (1): 21–48. doi:10.1007/s11219-012-9190-y. S2CID 18047921.
  12. Utting, Mark (2012). "A taxonomy of model-based testing approaches". Software Testing, Verification & Reliability. 22 (5): 297–312. doi:10.1002/stvr.456. S2CID 6782211. Archived from the original on 2019-12-20. Retrieved 2017-04-23.
  13. Novak, Jernej (May 2010). "Taxonomy of static code analysis tools". Proceedings of the 33rd International Convention MIPRO: 418–422. Archived from the original on 2022-06-27. Retrieved 2020-03-03.
  14. Engström, Emelie (2016). "SERP-test: a taxonomy for supporting industry–academia communication". Software Quality Journal. 25 (4): 1269–1305. doi:10.1007/s11219-016-9322-x. S2CID 34795073.
  15. "SERP-connect". Archived from the original on 2021-08-28. Retrieved 2021-08-28.
  16. Engstrom, Emelie (4 December 2019). "SERP-connect backend". GitHub. Archived from the original on 10 December 2019. Retrieved 25 October 2016.
  17. Brand, Amy; Allen, Liz; Altman, Micah; Hlava, Marjorie; Scott, Jo (1 April 2015). "Beyond authorship: attribution, contribution, collaboration, and credit". Learned Publishing. 28 (2): 151–155. doi:10.1087/20150211. S2CID 45167271.
  18. "CRediT". CASRAI. CASRAI. 2 May 2018. Archived from the original (online) on 12 June 2018. Retrieved 13 June 2018.
  19. "Transparency in Author Contributions in Science (TACS)" (online). National Academy of Sciences. 2018. Archived from the original on 19 May 2019. Retrieved 13 June 2018.
  20. "OpenStand". OpenStand. Archived from the original on 18 September 2019. Retrieved 13 June 2018.
  21. Peter., Morville (2007). Information architecture for the World Wide Web. Rosenfeld, Louis., Rosenfeld, Louis. (3rd ed.). Sebastopol, CA: O'Reilly. ISBN 9780596527341. OCLC 86110226.
  22. Ronald J. Brachman; What IS-A is and isn't. An Analysis of Taxonomic Links in Semantic Networks Archived 2020-06-30 at the Wayback Machine. IEEE Computer, 16 (10); October 1983.
  23. Brachman, Ronald (October 1983). "What IS-A is and isn't. An Analysis of Taxonomic Links in Semantic Networks". IEEE Computer. 16 (10): 30–36. doi:10.1109/MC.1983.1654194. S2CID 16650410.
  24. "Why independent cultures think alike when it comes to categories: It's not in the brain". phys.org. Archived from the original on 25 January 2021. Retrieved 13 February 2021.
  25. Guilbeault, Douglas; Baronchelli, Andrea; Centola, Damon (12 January 2021). "Experimental evidence for scale-induced category convergence across populations". Nature Communications. 12 (1): 327. Bibcode:2021NatCo..12..327G. doi:10.1038/s41467-020-20037-y. ISSN 2041-1723. PMC 7804416. PMID 33436581. Available under CC BY 4.0 Archived 2017-10-16 at the Wayback Machine.

References

This article is issued from Wikipedia. The text is licensed under Creative Commons - Attribution - Sharealike. Additional terms may apply for the media files.