Tagging: Difference between revisions
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See also the way MediaWikis use categories which is a sort of bookmarking. Each author can assign a category to a page. If it doesn't exist, the wiki engine creates a "wanted Category" page that needs to be edited in order to display the automatically generated list of pages. Categories can also be inserted into Categories (which turns it into a subcategory of the give category). Note: [http://edutechwiki.unige.ch/en/Special:Categories in this wiki] | See also the way MediaWikis use categories which is a sort of bookmarking. Each author can assign a category to a page. If it doesn't exist, the wiki engine creates a "wanted Category" page that needs to be edited in order to display the automatically generated list of pages. Categories can also be inserted into Categories (which turns it into a subcategory of the give category). Note: [http://edutechwiki.unige.ch/en/Special:Categories Categories in this wiki] were made by a single user [[User:DSchneider|DSchneider]]. It's something in between a little folksonomy and reflection about our field. | ||
== Links == | == Links == |
Revision as of 18:32, 14 September 2006
Definition
Tags are labels for something.
In the context of Web 2.0, Tagging means sticking keywords to something (a resource link, a web page, a picture, ...)
Other usages of tag: A label in syntax used in markup languages like XML to delimit an element.
Folksonomies
So called folksonomies are "naturally grown" collections of tags, i.e. implicit taxonomies that are constituted by people creating and using tags.
“In contrast to professionally developed taxonomies with controlled vocabularies, folksonomies are unsystematic and, from an information scientist's point of view, unsophisticated; however, for Internet users, they dramatically lower content categorization costs because there is no complicated, hierarchically organized nomenclature to learn. One simply creates and applies tags on the fly.” ([ http://en.wikipedia.org/wiki/Folksonomy Wikipedia:Folksonomy], 18:45, 14 September 2006 (MEST))
Since Folsonomies are open-ended by definition, they do have some advantages.
- They can quickly respond to innovations, new interests, new ways of looking at things etc.
- “Perhaps the greatest benefit of folksonomy is its relevance in the information retrieval sense of the term -- that is, the capacity of its tags to describe the "aboutness" of an Internet resource. After all, folksonomies are generated by people who have spent a great deal of time interacting with the content they tag.” ([ http://en.wikipedia.org/wiki/Folksonomy Wikipedia:Folksonomy], 18:45, 14 September 2006 (MEST))
- A more intriguing argument is that they convey information at multiple layers, i.e. they are simultaneously systematic (will cover all sorts of interest of a given population), and personal and social (they also provide information about this population.
Of course there are also disadvantages to folksonomies:
- They are polysemic (one word has several meanings, this is why we use sometimes disambiguation pages in this wiki
- For a same concept synonyms and various spellings may be used etc.
- They can include all sorts of meta noise (e.g. wrong tags or badly spelled tags)
There are solutions to avoid some "noise", i.e. propose a large, but fixed set of keywords to the users.
Collaborative tagging
“Collaborative tagging describes the process by which many users add metadata in the form of keywords to shared content.” (Golder & Huberman, 2006).
(Collaborative) Tagging is used in many social software applications. Most of these are folksonomies.
E.g.
- to manage one's own digital artifacts and links
- to allow people to share links (social bookmarking) and artifacts.
- to link people with same interests
- to calulate recommendations for a product (e.g. like Amazon does with keywords describing books)
Why does it work ?
Firstly, it's easy for users and requires only two steps of cognitive processing (Sinha, 2005). In contrast, filling in metadata forms is time-consuming, boring and difficult.
Second, metadata are ridid and don't work in the real world. An object is not always either of type 1 or type 2, but can be both or in between.
Metrics and visualization techniques can put some "order" into a big "tag soup", e.g. show which tags are close (e.g. see tag clouds) and therefore create "natural taxonomies".
Discussion
Metadata taxonomies vs. folksonomies
- Some people hate metadata (DSchneider does because it's too much work)
- Some people hate tagging (DSchneider does because within large crowds some people may unintentionnally or intentionnally use wrong tags, and because it'is also means extra work.
:)
See also the way MediaWikis use categories which is a sort of bookmarking. Each author can assign a category to a page. If it doesn't exist, the wiki engine creates a "wanted Category" page that needs to be edited in order to display the automatically generated list of pages. Categories can also be inserted into Categories (which turns it into a subcategory of the give category). Note: Categories in this wiki were made by a single user DSchneider. It's something in between a little folksonomy and reflection about our field.
Links
- Rashmi Sinha's blog entries on tagging
Examples
- Mike Malloch's del.icio.us tags on social bookmarking (very useful)
References
- Farrell, Stephen and Tessa Lau, Fringe Contacts: People-Tagging for the Enterprise, WWW '2006 paper, PDF
- Golder, Scott and Bernardo A. Huberman (2006). "Usage Patterns of Collaborative Tagging Systems." Journal of Information Science, 32(2). 198-208. Abstract/PDF.
- Sinha, Rashmi, (2005). A cognitive analysis of tagging, (or how the lower cognitive cost of tagging makes it popular), HTML
- Vuorikari, Riina (2005), Social networking software and e-portfolios foster digitallearning networks, Special Insight Reports, European Schoolnet. HTML
- Vuorikari, Riina (2005), Innovation Brief: Can personal digital knowledge artefact's managment and social networks enhance learning ? PDF