期刊文献+
共找到1篇文章
< 1 >
每页显示 20 50 100
The Second Edition of the Integrative Levels Classification: Evolution of a KOS
1
作者 Ziyoung Park Claudio Gnoli Daniele P.Morelli 《Journal of Data and Information Science》 CSCD 2020年第1期39-50,共12页
Purpose:This paper informs about the publication of the second edition of the Integrative Levels Classification(ILC2),a freely-faceted knowledge organization system(KOS),and reviews the main changes that have been int... Purpose:This paper informs about the publication of the second edition of the Integrative Levels Classification(ILC2),a freely-faceted knowledge organization system(KOS),and reviews the main changes that have been introduced as compared to its first edition(ILC1).Design/methodology/approach:The most relevant changes are illustrated,with special reference to those of interest to general classification theory,by means of examples of notation for individual classes and combinations of them.Findings:Changes introduced in ILC2 include:the names and order of some main classes;the development of subclasses for various phenomena,especially quantities and algebraic structures;the order of facet categories and the new category of Disorder;notation for special facets;distinction of the semantical function of facets(attributes)from their syntactic function.The system can be freely accessed online through a PHP browser as well as in SKOS format.Research limitations:Only a selection of changed classes is discussed for space reasons.Practical implications:ILC1 has been previously applied to the BARTOC directory of KOSs.Update of BARTOC data to ILC2 and application of ILC2 to further information systems are envisaged.Possible methods for reclassifying BARTOC with ILC2 are discussed.Originality:ILC is a newly developed classification system,based on phenomena instead of traditional disciplines and featuring various innovative devices.This paper is an original account of its most recent evolution. 展开更多
关键词 Freely faceted classification Fundamental categories Knowledge organization system Phenomenon-based classification
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部