MINING STATIC AND DYNAMIC STRUCTURAL PATTERNS IN NETWORKS FOR KNOWLEDGE MANAGEMENT: A COMPUTATIONAL FRAMEWORK AND CASE STUDIES

Contemporary organizations live in an environment of networks: internally, they manage the networks of employees, information resources, and knowledge assets to enhance productivity and improve efficiency; externally, they form alliances with strategic partners, suppliers, buyers, and other stakehol...

Full description

Bibliographic Details
Main Author: Xu, Jie
Other Authors: Chen, Hsinchun
Language:EN
Published: The University of Arizona. 2005
Subjects:
Online Access:http://hdl.handle.net/10150/195221
id ndltd-arizona.edu-oai-arizona.openrepository.com-10150-195221
record_format oai_dc
spelling ndltd-arizona.edu-oai-arizona.openrepository.com-10150-1952212015-10-23T04:42:18Z MINING STATIC AND DYNAMIC STRUCTURAL PATTERNS IN NETWORKS FOR KNOWLEDGE MANAGEMENT: A COMPUTATIONAL FRAMEWORK AND CASE STUDIES Xu, Jie Chen, Hsinchun Chen, Hsinchun Nunamaker, Jr., Jay F. Zeng, Daniel D. Network Structure Data mining Knoweldge management Contemporary organizations live in an environment of networks: internally, they manage the networks of employees, information resources, and knowledge assets to enhance productivity and improve efficiency; externally, they form alliances with strategic partners, suppliers, buyers, and other stakeholders to conserve resources, share risks, andgain market power. Many managerial and strategic decisions are made by organizations based on their understanding of the structure of these networks. This dissertation is devoted to network structure mining, a new research topic on knowledge discovery indatabases (KDD) for supporting knowledge management and decision making in organizations.A comprehensive computational framework is developed to provide a taxonomy and summary of the theoretical foundations, major research questions, methodologies,techniques, and applications in this new area based on extensive literature review. Research in this new area is categorized into static structure mining and dynamic structure mining. The major research questions of static mining are locating criticalresources in networks, reducing network complexity, and capturing topological properties of large-scale networks. An inventory of techniques developed in multiple reference disciplines such as social network analysis and Web mining are reviewed. These techniques have been used in mining networks in various applications including knowledge management, marketing, Web mining, and intelligence and security. Dynamic pattern mining is concerned with network evolution and major findings are reviewed.A series of case studies are presented in this dissertation to demonstrate how network structure mining can be used to discover valuable knowledge from various networks ranging from criminal networks to patent citation networks. Several techniques aredeveloped and employed in these studies. Performance evaluation results are provided to demonstrate the usefulness and potential of this new research field in supporting knowledge management and decision making in real applications. 2005 text Electronic Dissertation http://hdl.handle.net/10150/195221 137354212 1151 EN Copyright © is held by the author. Digital access to this material is made possible by the University Libraries, University of Arizona. Further transmission, reproduction or presentation (such as public display or performance) of protected items is prohibited except with permission of the author. The University of Arizona.
collection NDLTD
language EN
sources NDLTD
topic Network Structure
Data mining
Knoweldge management
spellingShingle Network Structure
Data mining
Knoweldge management
Xu, Jie
MINING STATIC AND DYNAMIC STRUCTURAL PATTERNS IN NETWORKS FOR KNOWLEDGE MANAGEMENT: A COMPUTATIONAL FRAMEWORK AND CASE STUDIES
description Contemporary organizations live in an environment of networks: internally, they manage the networks of employees, information resources, and knowledge assets to enhance productivity and improve efficiency; externally, they form alliances with strategic partners, suppliers, buyers, and other stakeholders to conserve resources, share risks, andgain market power. Many managerial and strategic decisions are made by organizations based on their understanding of the structure of these networks. This dissertation is devoted to network structure mining, a new research topic on knowledge discovery indatabases (KDD) for supporting knowledge management and decision making in organizations.A comprehensive computational framework is developed to provide a taxonomy and summary of the theoretical foundations, major research questions, methodologies,techniques, and applications in this new area based on extensive literature review. Research in this new area is categorized into static structure mining and dynamic structure mining. The major research questions of static mining are locating criticalresources in networks, reducing network complexity, and capturing topological properties of large-scale networks. An inventory of techniques developed in multiple reference disciplines such as social network analysis and Web mining are reviewed. These techniques have been used in mining networks in various applications including knowledge management, marketing, Web mining, and intelligence and security. Dynamic pattern mining is concerned with network evolution and major findings are reviewed.A series of case studies are presented in this dissertation to demonstrate how network structure mining can be used to discover valuable knowledge from various networks ranging from criminal networks to patent citation networks. Several techniques aredeveloped and employed in these studies. Performance evaluation results are provided to demonstrate the usefulness and potential of this new research field in supporting knowledge management and decision making in real applications.
author2 Chen, Hsinchun
author_facet Chen, Hsinchun
Xu, Jie
author Xu, Jie
author_sort Xu, Jie
title MINING STATIC AND DYNAMIC STRUCTURAL PATTERNS IN NETWORKS FOR KNOWLEDGE MANAGEMENT: A COMPUTATIONAL FRAMEWORK AND CASE STUDIES
title_short MINING STATIC AND DYNAMIC STRUCTURAL PATTERNS IN NETWORKS FOR KNOWLEDGE MANAGEMENT: A COMPUTATIONAL FRAMEWORK AND CASE STUDIES
title_full MINING STATIC AND DYNAMIC STRUCTURAL PATTERNS IN NETWORKS FOR KNOWLEDGE MANAGEMENT: A COMPUTATIONAL FRAMEWORK AND CASE STUDIES
title_fullStr MINING STATIC AND DYNAMIC STRUCTURAL PATTERNS IN NETWORKS FOR KNOWLEDGE MANAGEMENT: A COMPUTATIONAL FRAMEWORK AND CASE STUDIES
title_full_unstemmed MINING STATIC AND DYNAMIC STRUCTURAL PATTERNS IN NETWORKS FOR KNOWLEDGE MANAGEMENT: A COMPUTATIONAL FRAMEWORK AND CASE STUDIES
title_sort mining static and dynamic structural patterns in networks for knowledge management: a computational framework and case studies
publisher The University of Arizona.
publishDate 2005
url http://hdl.handle.net/10150/195221
work_keys_str_mv AT xujie miningstaticanddynamicstructuralpatternsinnetworksforknowledgemanagementacomputationalframeworkandcasestudies
_version_ 1718099492184522752