Folksonomies. Indexing and Retrieval in Web 2.0 Folksonomies. Indexing and Retrieval in Web 2.0

Folksonomies. Indexing and Retrieval in Web 2.0

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Publisher Description

In Web 2.0 users not only make heavy use of Collaborative Information Services in order to create, publish and share digital information resources - what is more, they index and represent these re-sources via own keywords, so-called tags. The sum of this user-generated metadata of a Collaborative Information Service is also called Folksonomy. In contrast to professionally created and highly struc-tured metadata, e.g. subject headings, thesauri, clas-sification systems or ontologies, which are applied in libraries, corporate information architectures or commercial databases and which were developed according to defined standards, tags can be freely chosen by users and attached to any information resource. As one type of metadata Folksonomies provide access to information resources and serve users as retrieval tool in order to retrieve own re-sources as well as to find data of other users. The book delivers insights into typical applications of Folksonomies, especially within Collaborative Information Services, and discusses the strengths and weaknesses of Folksonomies as tools of knowl-edge representation and information retrieval. More-over, it aims at providing conceptual considerations for solving problems of Folksonomies and presents how established methods of knowledge representation and models of information retrieval can successfully be transferred to them.

GENRE
Computers & Internet
RELEASED
2009
December 23
LANGUAGE
EN
English
LENGTH
452
Pages
PUBLISHER
De Gruyter
SELLER
Walter de Gruyter GmbH & Co. KG
SIZE
20.3
MB
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