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Enhancing Navigability:An Algorithm for Constructing Tag Trees 被引量:1

Enhancing Navigability: An Algorithm for Constructing Tag Trees
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摘要 Purpose: This study introduces an algorithm to construct tag trees that can be used as a userfriendly navigation tool for knowledge sharing and retrieval by solving two issues of previous studies, i.e. semantic drift and structural skew.Design/methodology/approach: Inspired by the generality based methods, this study builds tag trees from a co-occurrence tag network and uses the h-degree as a node generality metric. The proposed algorithm is characterized by the following four features:(1) the ancestors should be more representative than the descendants,(2) the semantic meaning along the ancestor-descendant paths needs to be coherent,(3) the children of one parent are collectively exhaustive and mutually exclusive in describing their parent, and(4) tags are roughly evenly distributed to their upper-level parents to avoid structural skew. Findings: The proposed algorithm has been compared with a well-established solution Heymann Tag Tree(HTT). The experimental results using a social tag dataset showed that the proposed algorithm with its default condition outperformed HTT in precision based on Open Directory Project(ODP) classification. It has been verified that h-degree can be applied as a better node generality metric compared with degree centrality.Research limitations: A thorough investigation into the evaluation methodology is needed, including user studies and a set of metrics for evaluating semantic coherence and navigation performance.Practical implications: The algorithm will benefit the use of digital resources by generating a flexible domain knowledge structure that is easy to navigate. It could be used to manage multiple resource collections even without social annotations since tags can be keywords created by authors or experts, as well as automatically extracted from text.Originality/value: Few previous studies paid attention to the issue of whether the tagging systems are easy to navigate for users. The contributions of this study are twofold:(1) an algorithm was developed to construct tag trees with consideration given to both semanticcoherence and structural balance and(2) the effectiveness of a node generality metric, h-degree, was investigated in a tag co-occurrence network. Purpose: This study introduces an algorithm to construct tag trees that can be used as a userfriendly navigation tool for knowledge sharing and retrieval by solving two issues of previous studies, i.e. semantic drift and structural skew.Design/methodology/approach: Inspired by the generality based methods, this study builds tag trees from a co-occurrence tag network and uses the h-degree as a node generality metric. The proposed algorithm is characterized by the following four features:(1) the ancestors should be more representative than the descendants,(2) the semantic meaning along the ancestor-descendant paths needs to be coherent,(3) the children of one parent are collectively exhaustive and mutually exclusive in describing their parent, and(4) tags are roughly evenly distributed to their upper-level parents to avoid structural skew. Findings: The proposed algorithm has been compared with a well-established solution Heymann Tag Tree(HTT). The experimental results using a social tag dataset showed that the proposed algorithm with its default condition outperformed HTT in precision based on Open Directory Project(ODP) classification. It has been verified that h-degree can be applied as a better node generality metric compared with degree centrality.Research limitations: A thorough investigation into the evaluation methodology is needed, including user studies and a set of metrics for evaluating semantic coherence and navigation performance.Practical implications: The algorithm will benefit the use of digital resources by generating a flexible domain knowledge structure that is easy to navigate. It could be used to manage multiple resource collections even without social annotations since tags can be keywords created by authors or experts, as well as automatically extracted from text.Originality/value: Few previous studies paid attention to the issue of whether the tagging systems are easy to navigate for users. The contributions of this study are twofold:(1) an algorithm was developed to construct tag trees with consideration given to both semanticcoherence and structural balance and(2) the effectiveness of a node generality metric, h-degree, was investigated in a tag co-occurrence network.
出处 《Journal of Data and Information Science》 CSCD 2017年第2期56-75,共20页 数据与情报科学学报(英文版)
基金 funded by the National Natural Science Foundation of China(Grand No.:70903008) supported by COGS Lab in School of Government,Beijing Normal University
关键词 Semantic coherence Structural balance Tag tree Resources navigation Algorithm Semantic coherence Structural balance Tag tree Resources navigation Algorithm
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  • 1CNNIC.第21次中国互联网络发展状况调查统计报告[0L].[2012-04-02].http://www.cnnie.cn/researeh/bgxz/tjbg/.
  • 2Begelmana, Keller P, Smadja F. Automated tag clustering: Improving search and exploration in the tag space [ C]//Proc. of 15th International World Wide Web Conference. WWW2006.
  • 3H G-M Paul Heymann. Collaborative creation of communal hierarchical taxonomies in social tagging systems[ R].InfoLab, Stanford University,2006. [ 2011 - 03 - O1]. http ://ilpubs. stanford, edu :80901775/?auth = basic.
  • 4Xian W, Lei Z, Yong Y. Exploring social annotations for the semantic web [ C ]//Proceedings of the 15th interna- tional conference on World Wide Web. ACM ,2006 :417 -426.
  • 5Anon Plangprasopchok,Kristina Lerman,Lise Getoor. Constructing folksonomies by integrating structured metadata [ C ]//In Proc. 19th International World Wide Web Conference. ACM ,2010 : 1165 - 1166.
  • 6Christopher H B, Nancy M. Improved annotation of the blogosphere via autotagging and hierarchical clustering [ C ]//In Proceedings of the 15th international conference on World Wide Web. ACM ,2006:625 -331.
  • 7Kiu Ching-Chieh,Tsui E. Taxonomy-Folksonomy integration from knowledge navigation through unsupervised data mining techniques [ C ]//In Proceeding of the Workshop on Integrating Taxonomies and Folksonomies ti'om En- hanced Knowledge Navigation at Practical Applications of Knowledge Management. 2008:19 -27.
  • 8Zhou M, Bao S, Wu X, Yu Y. An unsupervised model for exploring hierarchical semantics from social annotations [J]. In Lecture Notes in Computer Science-The Semantic Web. 2007,4825:680 -693.
  • 9Golder S, Huberman B A. Usage patterns of collaborative tagging systems [ J ]. Journal of Information Science. 2006,32.
  • 10Kipp M E I, Campbell D G. Patterns and inconsistencies in collaborative tagging systems : An Examination of tag- ging practices [ C ]//In Proceedings of the 2006 Annual Meeting of the American Society for Information Science and Technology. 2006,43 ( 1 ) : 1 - 18.

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