基于知识网格的知识供应理论与技术
详细信息    本馆镜像全文|  推荐本文 |  |   获取CNKI官网全文
摘要
该学位论文结合国家重点基础研究发展计划(973)资助项目:知识网格环境下面向产品创新设计的知识供应理论与技术研究,对基于知识网格的知识供应理论与技术进行了研究。本文从知识网格、知识资源组织、知识需求描述、知识供应引擎等方面进行了分析、研究和阐述;并结合产品设计领域,对提出的理论与方法进行了系统开发及应用实证。
     本文提出了基于对等网络的分布式结构化知识网格三层架构模型、以及知识资源查询路由方法;并对知识网格的核心——知识资源空间模型,结合知识地图进行了扩展;面向知识供应之目标,提出了基于知识网格的知识供应系统层次图、知识网格物理拓扑,以及在其基础上如何支持企业组织内部(或之间)的知识供应。
     本文提出了基于知识服务的异构知识资源统一描述、封装方法,并定义了知识服务本体;与此同时,提出了语义超图模型及其数据结构、推理机制,用于描述知识服务之间的语义关联,实现知识供应源头异构知识资源的有效组织管理。
     本文提出了基于工作流的知识需求描述以及智能获取方法,定义了基于工作流中成员-角色-任务的知识需求描述模型,并提出一套新的方法,主要是根据用户的兴趣、知识背景、工作的任务的需求、角色对能力的要求、以往阅读查询历史、社区交流记录、以及工作安排等信息,去自动挖掘出协同团队中各个用户的不同知识需求。
     本文提出了知识网格环境下集中式、分布式知识供应引擎模型,针对集中式,具体提出了基于用户需求的知识供应引擎(普通应用)、面向创新的知识供应引擎(高级应用);并且结合分布式结构化知识网格三层架构模型,提出了适应该环境的分布式知识供应引擎实现策略。
     本文将前面提出的知识供应理论与技术应用到产品设计领域中。具体研究知识供应平台的系统架构和应用模块,研究如何通过该平台对产品开发中知识资源进行组织和管理,用具体实例展示产品设计活动中基于需求的知识供应过程、以及面向产品创新设计的知识供应高级应用。最后,通过具体实例展示了面向产品开发的分布式环境下知识供应引擎工作过程和场景。
     最后,对全文主要贡献进行了总结,并阐述了进一步研究计划。
With the support from the National Basic Research Program of China / 973 Project (Innovative product development oriented knowledge supply based on knowledge grid), this doctoral dissertation focus on the knowledge supply in the knowledge grid environment. It introduces knowledge grid, organization of knowledge resources, knowledge demand modeling, and knowledge supply engine. In addition, the proposed theory is implemented in the domain of product development, and its case study is also illustrated in this dissertation.
     The dissertation proposed structured & distributed three layer model based on peer to peer model, and the query routing algorithm. The knowledge space model, the core of knowledge grid, is also extended by employing the knowledge map toolkit. With the target of knowledge supply, the research of knowledge grid brought out the architecture of knowledge supply based on knowledge grid, the physical topology of knowledge grid, and the methodology for supporting the knowledge supply among inner or inter organizations.
     The dissertation proposed the knowledge service based uniform knowledge expression and encapsulation for heterogeneous knowledge resources. An original model of Hy-SN (hyper graph based semantic network) is proposed for describing the semantic relationships among knowledge services. The data structure and reasoning mechanism of Hy-SN are also proposed for managing knowledge resources efficiently.
     The dissertation proposed the workflow centric knowledge demand modeling and intelligent mining. It mainly consists of the static model of knowledge demand based on member-role-task reference model, and a set of content-based or collaborative filtering algorithms for mining users’knowledge demand automatically and intelligently, which is mainly according the users’interest, education background, knowledge query history, and communication records among communities.
     This dissertation proposed centralized and distributed knowledge supply engine model. As to the former sort (centralized), the users demand based knowledge supply model is brought out as routine application, and innovation oriented knowledge supply model for advanced application. Corresponding with the structured & distributed three layer knowledge grid model, a distributed knowledge supply engine model is also introduced in detail.
     The proposed theories are implemented in the domain of product development. The system architecture of knowledge supply platform is introduced in last chapter. By using the prototype system, some knowledge resources are managed and some cases for knowledge supply in the product development process are also illustrated. As to the advanced knowledge supply application, a case for innovative knowledge supply is described in detail. The case study for distributed knowledge supply engine is also mentioned in the last chapter.
     At last, some major contributions of this dissertation are summarized, and some advices for further research are proposed.
引文
[1] G. Fischer, J. Ostward, Knowledge management problems, promises, realities, and challenges, IEEE Intelligent System, 2001, January/February, pp.60-72
    [2] P. Warren, Knowledge management and the semantic Web: from scenario to technology, IEEE Intelligent Systems, 2006, 21(1), 53-59
    [3] A. Maedche, B. Motik, L. Stojanovic, R. Studer, R. Volz, Ontologies for enterprise knowledge management, IEEE Intelligent Systems, 2003, 18(2), 26-33
    [4] V. Uren, P. Cimiano, J. Iria, et.al. Semantic annotation for knowledge management: Requirements and a survey of the state of the art, Web Semantics: Science, Services and Agents on the World Wide Web, Volume 4, Issue 1, January 2006, Pages 14-28
    [5] D. O’Leary, Enterprise knowledge management, Computer, 1998, March, pp.54-61
    [6] T. H. Davenport, Prusak. Working Knowledge: How Organizations Manage What They Know. Cambridge, MA: Harvard Business School Press,1998
    [7] OECD经济合作与发展组织.以知识为基础的经济.北京:机械工业出版社, 1997
    [8] A. Verna. The Knowledge Evolution: Expanding Organizational Intelligence. Butterworth Heinemann, 1997
    [9]王君.基于过程的知识管理系统构建研究,东北大学博士论文, 2003.16-19
    [10] K. Wiig. Integrating Intellectual Capital and Knowledge Management. Long Range Planning. 1997.30(3)
    [11] C. Frappuolo .Defining Knowledge Management, ComputerWorld,3-218,1998
    [12] D. E. O'Leary. Enterprise Knowledge Management. IEEE Computer, 1998. 31(3):54-61
    [13] IBM中国.知识管理白皮书.http://www-900.ibm.corn/lotus/teachinfo/index.shtmi,2002
    [14] B. Gates.蒋显景等译.未来时速;数字神经系统与商务新思维.北京:北京大学出版社,1999
    [15] P. F. Drucker (ed.). Harvard Business Review on Knowledge Management. Boston, MA: Harvard Business School Press, 1998
    [16] L. Bassi. Harnessing the Power of Intellectual Capital. Training & Develepment,1999.51(12)
    [17]夏敬华,金昕.知识管理,机械工业出版社, 2003.100-104
    [18] R. L. Ruggles. The State of Notion: Knowledge Management in Practice. California Management Review, 1998.40(3):80-84
    [19]盛小平,何立阳.知识管理系统研究综述,图书馆, 2003.1:36-39
    [20] S. Lee R. Sherwood, B, Bhattacharjee. Cooperative Peer Groups in NICE. In: IEEE Infocom. Apr.2003
    [21] J. Golbeck, B. Parsia, J. Hendler. Trust Networks on the Semantic Web. In:Proceedings of Cooperative Intelligent Agents, Helsinki, Finland, August,2003.238–249
    [22] P. Meso, R. Smith. A Resource-based View of Organizational Knowledge Management System. Journal of Knowledge Management, 2000.4(3):224-234
    [23] B. J. Bowman. Building Knowledge Management Systems. Information System Management, 2002.19(3):32-40
    [24] P. Gottschalk, Stages of knowledge management systems in police investigations, Knowledge-Based Systems, Volume 19, Issue 6, October 2006, Pages 381-387
    [25] S. Richardson, J. Courtney, J. Haynes, Theoretical principles for knowledge management system design: Application to pediatric bipolar disorder, Decision Support Systems, Volume 42, Issue 3, December 2006, Pages 1321-1337
    [26] Y. Awazu, Managing technology alliances: The case for knowledge management, International Journal of Information Management, Volume 26, Issue 6, December 2006, Pages 484-493
    [27] Y. Lin, L. Wang, H. Tserng, Enhancing knowledge exchange through web map-based knowledge management system in construction: Lessons learned in Taiwan, Automation in Construction, Volume 15, Issue 6, November 2006, Pages 693-705
    [28] J. Lin, An object-oriented development method for Customer Knowledge Management Information Systems, Knowledge-Based Systems, Vol.20, Issue 1, February 2007, Pages 17-36
    [29] T. Wang, T. Chang, Forecasting the probability of successful knowledge management by consistent fuzzy preference relations, Expert Systems with Applications, Volume 32, Issue 3, April 2007, Pages 801-813
    [30] W. Wu, Y. Lee, Selecting knowledge management strategies by using the analytic network process, Expert Systems with Applications, Vol.32, Issue 3, April 2007, Pages 841-847
    [31]都志辉,陈渝,刘鹏.网格计算.清华大学出版社, 2002.10
    [32]徐志伟,冯百明,李伟.网格计算技术.电子工业出版社, 2004.05
    [33]金海,袁平鹏.网格计算(第2版),电子工业出版社, 2004.09
    [34]都志辉,网格计算——支持全球化资源共享与协作的关键技术,华中科技大学出版社,2006
    [35] M. Li,M. Baker著,王相林,张善卿,王景丽译,网格计算核心技术,清华大学出版社, 2006.12
    [36] I. Foster, C. Kesselman, (eds.), The Grid: Blueprint for a New Computing Infrastructure, Morgan Kaufmann, 1999
    [37] I Foster, C Kesselman, S Tuecke, The anatomy of the grid: Enabling scalable virtual organizations, International Journal of Supercomputer Applications.2001, 15 (3): 200~222
    [38] I. Foster, C. Kesselman, J. M. Nick, S. Tuecke, the Physiology of the Grid– An Open Grid Services Architecture for Distributed Systems Integration, http://www.globus.org/ogsa/, Feb. 2000
    [39] OGSA’s Architecture description, part 1, http://www.gridforum.org/ogsi-wg/drafts/ogsa_ draft 2.9 2002-06-22. pdf,
    [40] OGSA’s Architecture description, part 2,http://www.gridforum.org/ogsi-wg/drafts/ogsa_ draft 2.9 2002-07-17. pdf
    [41] S. Fitzgerald, I. Foster, C. Kesselman, et al. A directory service for configuring high-performance distributed computations. Proc 6th IEEE Symp on High-Performance Distributed Computing. 1997.365-375.
    [42] I. Foster, C. Kesselman, The Globus Project: A Status Report. Proc. IPPS/SPDP '98 Heterogeneous Computing Workshop, 1998, pp. 4-18
    [43] I. Foster, Internet Computing and the Emerging Grid, Nature Web Matters, Nature, vol. 408 issue 6815,2000
    [44] I. Foster, C. Kesselman, G. Tsudik, S. Tuecke, A Security Architecture for Computational Grids, ACM Conference on Computer and Communications Security 1998, pp.82-89
    [45] I. Foster, C. Kesselman, G. Tsudik, S. Tuecke, A Security Architecture for Computational Grids, In Proceedings of 5th ACM Conference on Computers and Communications Security, Nov. 1998
    [46] I. Foster, C. Kesselman, J. M. Nick, S. Tuecke, the Physiology of the Grid– An Open Grid Services Architecture for Distributed Systems Integration, http://www.globus.org/ogsa/, Feb. 2000
    [47] I. Foster, A Resource Management Architecture for Metacomputing Systems. Proc. IPPS/SPDP′98 Workshop on Job Scheduling Strategies for Parallel Processing,pp.62-82,1998
    [48] I. Foster, A security architecture for computational grids. In: Proceedings of the 5th ACM Conference on Computer and Communication Security,NY,USA,1998,83-92
    [49] S. Brunett, K. Czajkowski, S. Fitzgerald, I. Foster, A. Johnson, C. Kesselman, J. Leigh, S. Tuecke, Application Experiences with the Globus Toolkit. Proceedings of 7th IEEE Symp. on High Performance Distributed Computing, July 1998.
    [50] I. Foster, C. Kesselman, J. Nick, S. Tuecke. Grid services for distributed system integration. IEEE Computer, 2002,35(6):37-46
    [51] A. Smirnov, M. Pashkin, N. Chilov, T. Levashova, Knowledge logistics in information grid environment, Future Generation Computer Systems, Volume 20, Issue 1, 15 January 2004, pp.61-79
    [52]徐志伟,李晓林,游赣梅.织女星信息网格的体系结构研究[J].计算机研究与发展,2002,(8).
    [53]张纲,李晓林,游赣梅,徐志伟.基于角色的信息网格访问控制的研究[J].计算机研究与发展,2002,(8).
    [54]蒋昌俊,曾国荪,陈闳中等.交通信息网格的研究[J].计算机研究与发展,2003,(12).
    [55]陈磊,韩颖,李三立,.信息网格中基于本体的Web服务动态集成和重构[J].软件学报,2006,(11).
    [56]崔巍,李德仁.基于本体与LDAP的空间信息网格资源管理机制[J].武汉大学学报(信息科学版),2005,(6).
    [57]李德仁,朱欣焰,龚健雅.从数字地图到空间信息网格——空间信息多级网格理论思考[J].武汉大学学报(信息科学版),2003,(6).
    [58]李蓥,李明禄,俞嘉地.信息网格门户的研究[J].电子学报,2004,(S1).
    [59] M. Hyatt, R. Vrablik, The information grid: secure access to any information, anywhere, over any network [EB/OL]. http://www-106.ibm.com/developerworks/library/gr-infogrid.html?ca = drs-g030413, January 2004.
    [60] L. Ferreira, J. Dirker, O. Hernandez, et al., The information grid, Part 1: The infrastructure: Getting information from here to there and back again [EB/OL]. http://www.ibm.com/ developerworks/library/gr-info1, 2004.
    [61] L. Ferreira, J. Dirker, O. Hernandez, et al., The information grid, Part 2: Blueprints and layers: Planning the information infrastructure for a grid [EB/OL]. http://www.ibm.com/ developerworks/library/gr-info2, 2004.
    [62] H. Zhuge, The Future Interconnection Environment, IEEE Computer, 38 (4)(2005) 27-33.
    [63] H. Zhuge, Semantic Grid: Scientific Issues, Infrastructure, and Methodology, Communications of the ACM. 48 (4) (2005)117-119.
    [64] L. Wang, K. Chen, Comments on an access control model in semantic grid, Future Generation Computer Systems, Vol.22(1),2006, pp.3-5
    [65] M. Li, P. van Santen, D. W. Walker, et.al, SGrid: a service-oriented model for the Semantic Grid, Future Generation Computer Systems, Vol.20(1),2004, pp.7-18
    [66] G. Bu, Z. Xu, Access control in semantic grid, Future Generation Computer Systems, Vol.20(1),2004, pp.113-122
    [67] F. Berman. From TeraGrid to Knowledge Grid. Communications of the ACM, 2001,44(11):27-28
    [68] M. Cannataro, D. Talia. Knowledge grid: An architecture for distributed knowledge discovery. Communications of the ACM, 2003,46(1):89-93
    [69] H. Zhuge. A knowledge grid model and platform for global knowledge sharing. Expert System with Applications, 2002,22(4):313-320
    [70] H. Zhuge. Knowledge Grid. Singapore, World Scientific Publisher,2004
    [71] H. Zhuge, China's E-Science Knowledge Grid Environment, IEEE Intelligent Systems, 19 (1) (2004) 13-17.
    [72] H. Zhuge, X. Sun, et al, A Scalable P2P Platform for the Knowledge Grid, IEEE Transactions on Knowledge and Data Engineering, 17(12),2005, pp.1721-1736.
    [73] K. Kim, A layered workflow knowledge Grid/P2P architecture and its models for future generation workflow systems, Future Generation Computer Systems, Vol.23(3), 2007,pp.304-316
    [74] X. Shi, J. Zhao, Z. Ouyang, Assessment of eco-security in the Knowledge Grid e-science environment, Journal of Systems and Software, Vol.79(2),2006, pp.246-252
    [75] C. Goble, R. Stevens, S. Bechhofer, The Semantic Web and Knowledge Grids, Drug Discovery Today: Technologies, Vol.2(3),2005, pp.225-233
    [76]查礼,李伟,余海燕,蔡季萍.面向服务的织女星网格系统软件设计与评测[J].计算机学报,2005,(4).
    [77]谈恩华,查礼.织女星网格路由器的应用与改进[J].计算机研究与发展,2004,(12).
    [78]廖华明,李晓林,李伟.织女星网格系统平台研究进展(摘录)[J].计算机教育,2003,(1).
    [79] H. Zhuge, Resource Space Grid: Model, Method and Platform, Concurrency and Computation: Practice and Experience, 16 (14) (2004) 1385 - 1413.
    [80] H. Zhuge, E. Yao, Y. Xing, and J.Liu, Extended Normal Form Theory of Resource Space Model, Future Generation Computer Systems,21 (1) (2005) 189-198.
    [81] H. Zhuge, Resource Space Model, Its Design Method and Applications. Journal of Systems and Software 72(1)(2004)71-81.
    [82] H. Zhuge, Fuzzy resource space model and platform. Journal of Systems and Software 73(3)(2004)389-396.
    [83] H. Zhuge, P. Shi, Y. Xing and C. He, Transformation from OWL Description to Resource Space Model, 1st Asian Semantic Web Conference, Beijing, China, Sept. 3-7, 2006. (Keynote), LNCS 4185, pp.4-23.
    [84] H. Zhuge and Y. Xing, Integrity Theory for Resource Space Model and Its Application, The 6th International Conference on Web-Age Information Management (WAIM2005), Hangzhou, China, Oct.11-13, 2005. (Keynote), LNCS 3739, pp.8-24.
    [85] H. Zhuge and E. Yao, Completeness of Query Operations on Resource Spaces, Proceedings of 2nd International Conference on Semantics, Knowledge and Grid, Guilin, China, November, 2006, IEEE Computer Society Press. (Keynote)
    [86] H. Zhuge, R. Jia, et. al., Semantic Link Network Builder and Intelligent Browser, Concurrency and Computation: Practice and Experience, 16 (14) (2004) 1453 -1476.
    [87] H. Zhuge, Active e-Document Framework ADF: Model and Platform, Information and Management, 41(1)(2003)87-97.
    [88] H. Zhuge, J. Liu, L. Feng, X. Sun, C. He. Query Routing in a Peer-to-Peer Semantic Link Network. Computational Intelligence, 21(2)(2005)197-216.
    [89] H. Zhuge, X. Luo, The Knowledge Map:Mathematical Model and Dynamic Behaviors, Journal of Computer Science and Technology, accepted.
    [90] H. Zhuge, X. Luo, Automatic Generation of Semantics for Documents in the Knowledge Grid, Journal of Systems and Software, 79 (2006) 969–983.
    [91] H. Zhuge, Semantic component networking: Toward the synergy of static reuse and dynamic clustering of resources in the knowledge grid, Journal of Systems and Software, Vol.79(10),2006, pp.1469-1482
    [92] H. Zhuge, Clustering Soft-Devices in Semantic Grid, IEEE Computing in Science and Engineering, 4 (6) (2002) 60-62.
    [93] H. Zhuge, Soft-Device Inheritance in the Knowledge Grid, Keynote at AIS-ADM 2005, St. Petersburg, Russia, June 6-8, 2005. Proceedings: Springer Lecture Notes in Computer Science, vol.3505, pp.62-78.
    [94] H. Zhuge, Semantic Component Networking: Toward the Synergy of Static Reuse and Dynamic Clustering of Resources in the Knowledge Grid, Journal of Systems and Software, 79 (2006) 1469–1482.
    [95]蒋昌俊,刘关俊, Petri网语言的Pumping引理[J].计算机学报,2006,(2).
    [96]林琳,蒋昌俊.基于广义随机Petri网的交通信息系统建模与分析[J].计算机学报,2005,(1).
    [97] H. Jin, H. Wu, X. Ning. Facilitate Service Discovery with Semantic Overlay. Journal of Computer Science and Technology, Vol.21, No.4, July 2006, pp.582-591.
    [98] H. Jin, X. Shi, W. Qiang, D. Zou. DRIC: Dependable Grid Computing Framework. IEICE Transactions on Information and Systems, 2006; E89-D(2): 612 - 623.
    [99] J. Liu, H. Zhuge. A Semantic-based P2P Resource Organization Model R-Chord. Journal of Systems and Software, 79 (11), 1619-1631, 2006.
    [100] H. Jin, H. Wu. Semantic-enabled Specification for Web Service Agreement. The International Journal of Web Services Practices, Vol.1, No.1-2, 2005, pp.13-20, 2005.
    [101] Z. Shi, M. Dong, Y. Jiang, H. Zhang. A Logic Foundation for the Semantic Web. Science in China, Series F Information Sciences, 48(2):161-178, 2005
    [102] H. Huang, Z. Shi, J. Wang, R. Huang. DDL: Embracing Actions into Semantic Web. ICIIP2006, Adelaide, 200
    [103] Y. Qu, W. Hu, G. Cheng, Constructing virtual documents for ontology matching. WWW 2006: 23-31.
    [104] W. Hu, Y. Qu. Block Matching for Ontologies. Lecture Notes in Computer Science, Volume 4273/2006, Proceedings of ISWC2006, 300-313.
    [105] Z. Shi, H. Huang, J. Luo, et al. Agent-based Grid Computing. Applied Mathematical Modeling, 30(2006): 629-640.
    [106] Z. Shi, Agent Grid Collaborative Environment. LNAI4088, PRIMA 2006: 5, 2006.
    [107] P. Luo, K. Lü, Q. He, Z. Shi. Distributed Data Mining in Grid Computing Environments. Future Generation Computer Systems 23, 84-91 (2007)
    [108] L. Zhen, Z. Jiang, RDF-based Innovative Design Knowledge Representation, Proceeding of the 1st International Conference on Semantics, Knowledge and Grid, (SKG 2005), IEEE Computer Society, Beijing, China, Nov. 27-29, 2005, 721-727
    [109]镇璐,蒋祖华.基于知识网格的知识供应模型研究,上海交通大学学报, 2007, 41(1): 45-50
    [110]镇璐,蒋祖华.知识网格辅助产品创新平台及其关键技术,上海交通大学学报, 2007, 41(6): 876-880
    [111]镇璐,蒋祖华.语义Web中工程设计类知识表示研究,计算机工程, 2007,33(12):199-201
    [112] L. Zhen, Z. Jiang, Innovation-Oriented Knowledge Query in Knowledge Grid, Journal of Information Science and Engineering, 2008, Vol.24(2): 1-15
    [113] H. Chen, Z. Wu, C. Huang, J. Xu, TCM-Grid: Weaving a medical grid for traditional Chinese medicine. Lecture Notes in Computer Science, 2003,2659:1143-1152
    [114] Z. Wu, H. Chen, Knowledge Base Grid: A Generic Grid Architecture for Semantic Web. Journal of Computer Science and Technology, 2003,18(4):462-473
    [115] Z. Wu, S. Deng, J. Wu, H. Chen, DartGrid 2: A semantic grid platform for ITS, IEEE Intelligent System, 2005, May/June, pp.12-15
    [116] G. Yang, H. Jin, M. Li, N. Xiao, W. Li, Z. Wu et.al., Grid Computing in China, JOURNAL OF GRID COMPUTING No.2, 193-106, 2004
    [117] M. Chen, G. Yang. Reciprocity: Enforcing Contribution in P2P Perpendicular Downloading. IEICE Transactions on Information and Systems, 2006 E89-D(2): 563-569
    [118] X. Liu, G. Yang, Y. Wu, Efficient Search Using Adaptive Metadata Spreading in Peer-to-peer Networks. In Proc. Grid Cooperative Computing 2004, LECTURE NOTES IN COMPUTER SCIENCE 3251: 551-558 2004
    [119] L. Xiao, W. Fu, SDPG: Spatial Data Processing grid. Journal of Computer Science and Technology, 2003,18(4):523-531
    [120] G. Adomavicius and A. Tuzhilin, Toward the next generation of recommender systems a survey of the state-of-the-art and possible extensions, IEEE Tran. on Knowledge and Data Engineering, 2005,17(6): 734-749
    [121] G. Adomavicius, R. Sankaranarayanan, S. Sen, and A. Tuzhilin,“Incorporating Contextual Information in Recommender Systems Using a Multidimensional Approach,”ACM Trans. Information Systems, vol. 23, no. 1, Jan. 2005.
    [122] G. Adomavicius and A. Tuzhilin,“Expert-Driven Validation of Rule-Based User Models in Personalization Applications,”Data Mining and Knowledge Discovery, vol. 5, nos. 1 and 2, pp. 33-58, 2001.
    [123] G. Adomavicius and A. Tuzhilin,“Multidimensional Recommender Systems: A Data Warehousing Approach,”Proc. Second Int’l Workshop Electronic Commerce (WELCOM’01), 2001.
    [124] A. Ansari, S. Essegaier, and R. Kohli,“Internet Recommendations Systems,”J. Marketing Research, pp. 363-375, Aug. 2000.
    [125] J.S. Armstrong, Principles of Forecasting—A Handbook for Researchers and Practitioners. Kluwer Academic, 2001.
    [126] R. Baeza-Yates and B. Ribeiro-Neto, Modern Information Retrieval. Addison-Wesley, 1999.
    [127] N. Belkin and B. Croft,“Information Filtering and Information Retrieval,”Comm. ACM, vol. 35, no. 12, pp. 29-37, 1992.
    [128] D. Billsus and M. Pazzani,“Learning Collaborative Information Filters,”Proc. Int’l Conf. Machine Learning, 1998.
    [129] D. Billsus and M. Pazzani,“A Personal News Agent that Talks,Learns and Explains,”Proc. Third Ann. Conf. Autonomous Agents,1999.
    [130] D. Billsus and M. Pazzani,“User Modeling for Adaptive News Access,”User Modeling and User-Adapted Interaction, vol. 10, nos. 2-3, pp. 147-180, 2000.
    [131] D. Billsus, C.A. Brunk, C. Evans, B. Gladish, and M. Pazzani,“Adaptive Interfaces for Ubiquitous Web Access,”Comm. ACM,vol. 45, no. 5, pp. 34-38, 2002.
    [132] R. Burke,“Knowledge-Based Recommender Systems,”Encyclopedia of Library and Information Systems, A. Kent, ed., vol. 69, Supplement 32, Marcel Dekker, 2000.
    [133] B. Kitts, D. Freed, M. Vrieze. Cross-sell, A Fast Promotion-Tunable Customer-Item Recommendation Method Based on Conditionally Independent Probabilities. In Proceedings of the Sixth ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, 2000, pp. 437-446
    [134] M. Deshpande and G. Karypis,“Item-Based Top-N Recommendation Algorithms,”ACM Trans. Information Systems, vol. 22, no. 1, pp. 143-177, 2004.
    [135] Z. Huang, H. Chen, and D. Zeng,“Applying Associative Retrieval Techniques to Alleviate the Sparsity Problem in Collaborative Filtering,”ACM Trans. Information Systems, vol. 22, no. 1, pp. 116-142, 2004.
    [136] D.A. Hull,“The TREC-7 Filtering Track: Description and Analysis,”Proc. Seventh Text Retrieval Conf. (TREC-7), 1999.
    [137] R. Jin, L. Si, and C. Zhai,“Preference-Based Graphic Models for Collaborative Filtering,”Proc. 19th Conf. Uncertainty in Artificial Intelligence (UAI 2003), Aug. 2003.
    [138] R. Jin, L. Si, C. Zhai, and J. Callan,“Collaborative Filtering with Decoupled Models for Preferences and Ratings,”Proc. 12th Int’l Conf. Information and Knowledge Management (CIKM 2003), Nov.2003.
    [139] W.S. Lee,“Collaborative Learning for Recommender Systems,”Proc. Int’l Conf. Machine Learning, 2001.
    [140] G. Linden, B. Smith, and J. York,“Amazon.com Recommendations: Item-to-Item Collaborative Filtering,”IEEE Internet Computing, Jan. 2003.
    [141] B. Sarwar, G. Karypis, J. Konstan, and J. Riedl,“Item-Based Collaborative Filtering Recommendation Algorithms,”Proc. 10th Int’l WWW Conf., 2001.
    [142] R. Schaback and H. Wendland,“Characterization and Construction of Radial Basis Functions,”Multivariate Approximation and Applications, N. Dyn, D. Leviatan, D. Levin, and A. Pinkus, eds., Cambridge Univ. Press, 2001.
    [143] J.L. Herlocker and J.A. Konstan,“Content-Independent Task-Focused Recommendation,”IEEE Internet Computing, vol. 5, no. 6,pp. 40-47, Nov./Dec. 2001.
    [144] R.O. Duda, P.E. Hart, and D.G. Stork, Pattern Classification. John Wiley & Sons, 2001.
    [145] M. Ehrgott, Multicriteria Optimization. Springer Verlag, Sept. 2000.
    [146] A. Nakamura and N. Abe,“Collaborative Filtering Using Weighted Majority Prediction Algorithms,”Proc. 15th Int’l Conf. Machine Learning, 1998.
    [147] J.B. Schafer, J.A. Konstan, and J. Riedl,“E-Commerce Recommendation Applications,”Data Mining and Knowledge Discovery, vol. 5, nos. 1/2, pp. 115-153, 2001.
    [148] Y. Zhang and J. Callan,“Maximum Likelihood Estimation for Filtering Thresholds,”Proc. 24th Ann. Int’l ACM SIGIR Conf., 2001.
    [149] M. Pazzani,“A Framework for Collaborative, Content-Based, and Demographic Filtering, Artificial Intelligence Rev., pp. 393-408, Dec. 1999.
    [150] D.M. Pennock and E. Horvitz,“Collaborative Filtering by Personality Diagnosis: A Hybrid Memory And Model-Based Approach,”Proc. Int’l Joint Conf. Artificial Intelligence Workshop: Machine Learning for Information Filtering, Aug. 1999.
    [151] K. Yu, X. Xu, J. Tao, M. Ester, and H.-P. Kriegel,“Instance Selection Techniques for Memory-Based Collaborative Filtering,”Proc. Second SIAM Int’l Conf. Data Mining (SDM’02), 2002.
    [152] J. Li and O.R. Za?¨ane,“Combining Usage, Content, and Structure Data to Improve Web Site Recommendation,”Proc. Fifth Int’l Conf. Electronic Commerce and Web Technologies (EC-Web’04), pp. 305-315, 2004.
    [153] P. Melville, R.J. Mooney, and R. Nagarajan,“Content-Boosted Collaborative Filtering for Improved Recommendations,”Proc. 18th Nat’l Conf. Artificial Intelligence, 2002.
    [154] L. Si and R. Jin,“Flexible Mixture Model for Collaborative Filtering,”Proc. 20th Int’l Conf. Machine Learning, Aug. 2003.
    [155] T. Tran and R. Cohen,“Hybrid Recommender Systems for Electronic Commerce,”Proc. Knowledge-Based Electronic Markets, Papers from the AAAI Workshop, Technical Report WS-00-04, AAAI Press, 2000.
    [156] B. Mobasher, H. Dai, T. Luo, and M. Nakagawa,“Discovery and Evaluation of Aggregate Usage Profiles for Web Personalization,”Data Mining and Knowledge Discovery, vol. 6, no. 1, pp. 61-82, 2002.
    [157] S.E. Middleton, N.R. Shadbolt, and D.C. de Roure,“Ontological User Profiling in Recommender Systems,”ACM Trans. Information Systems, vol. 22, no. 1, pp. 54-88, 2004.
    [158] Y. Yang and B. Padmanabhan,“On Evaluating Online Personalization,”Proc. Workshop Information Technology and Systems, pp. 35-41, Dec. 2001.
    [159] A.M. Rashid, I. Albert, D. Cosley, S.K. Lam, S.M. McNee, J.A. Konstan, and J. Riedl,“Getting to Know You: Learning New User Preferences in Recommender Systems,”Proc. Int’l Conf. Intelligent User Interfaces, 2002.
    [160] R. Armstrong, D. Freitag, T. Joachims, T. Mitchell. Webwatcher: A Learning Apprentice for the World Wide Web. AAAI Spring Symposium on Information Gathering from Heterogeneous Distributed Environments, 1995
    [161] N. Littlestone. Learning Quickly When Irrelevant Attributes Abound. Machine Learning, 1988, 2(4): 285-318
    [162] J. Rocchio. Relevance Feedback in Information Retrieval. The SMART Retrieval System: Experiments in Automatic Document Processing, 1971, pp. 313-323
    [163] H. Lieberman. Letizia: An Agent That Assists Web Browsing. In: Burke, R., ed. Proceedings of the International Joint Conference on Artificial Intelligence. Menlo Park, CA: AAAI Press, 1995, pp. 924-929
    [164] M. Pazzani, J. Muramatsu, D. Billsus. Syskill & Webert: Identifying Interesting Web Sites. AAI Spring Symposium on Machine Learning in Information Access, 1996
    [165] K. D. Bollacker, S. Lawrence, C. L. Giles. A System for Automatic Personalized Tracking of Scientific Literature on the Web. Proceedings of the Fourth ACM Conference on Digital Libraries, Berkeley, CA, USA, 1999, pp.105-113
    [166] L. Chen, K. Sycara. WebMate: A Personal Agent for Browsing and Searching. In: Sycara. K. P., Wooldridge, M., eds. Proceedings of the 2th International Conference on Autonomous Agents. New York: ACM Press, 1998, pp. 132-139
    [167] J. Konstan, B. Miller, D. Maltz, et al. GroupLens: Applying Collaborative Filtering to Usenet News. Communications of the ACM, 1997, 40(3): 77-87
    [168] J.A. Konstan, J. Riedl, A. Borchers, and J.L. Herlocker,“Recommender Systems: A GroupLens Perspective,”Proc. Recommender Systems, Papers from 1998 Workshop, Technical Report WS-98-08, 1998.
    [169] M. Balabanovi. An Adaptive Web Page Recommendation Service. In Proceedings of Autonomous Agents, 1997, pp.378–385.
    [170] M. Balabanovic, Y. Shoham. Learning Information Retrieval Agents: Experiments with Automated Web Browsing. AAAI Spring Symposium on Information Gathering, Stanford, CA, 1995.
    [171] M. Balabanovi, Y. Shoham. Fab: Content-Based, Collaborative Recommendation. Communications of the ACM, 1997, 40(3): 66-72
    [172] P. Cotter, B. Smyth. WAPing the Web: Content Personalisation for WAP-enabled Devices. Adaptive Hypermedia and Adaptive Web-Based Systems Springer-Verlag, 2000
    [173] N. Good, J. Schafer, J. Konstan, J. Borchers, B. Sarwar, J. Herlocker, J. Riedl. Combining Collaborative Filtering with Personal Agents for Better Recommendations. In Proceedings of the 1999 Conference of the American Association of Artificial Intelligence, 1999, pp. 439-446
    [174] B.N. Miller, I. Albert, S.K. Lam, J.A. Konstan, and J. Riedl,“MovieLens Unplugged: Experiences with an Occasionally Connected Recommender System,”Proc. Int’l Conf. Intelligent User Interfaces, 2003.
    [175] K. Bradley, R. Rafter, B. Smyth. Case-Based User Profiling for Content Personalisation. Adaptive Hypermedia and Adaptive Web-Based Systems, Springer-Verlag, 2000
    [176] R. Rafter, K. Bradley, B. Smyth. Automated Collaborative Filtering Applications for Online Recruitment Services. Adaptive Hypermedia and Adaptive Web-Based Systems, Italy, Springer-Verlag, 2000
    [177] M. Barra. Distributed Systems for Group Adaptivity on the Web. Adaptive Hypermedia and Adaptive Web-Based Systems Springer-Verlag, 2000
    [178] O. Vel, S. Nesbitt. A Collaborative Filtering Agent System for Dynamic Virtual Communities on the Web. Proceedings of Conference on Automated Learning and Discovery, Pittsburgh, PA, 1998
    [179] T. Joachims, D. Freitag, T. Mitchell. WebWatcher: A Tour Guide for the World Wide Web. In: Georgeff, M.P., Pollack, E.M., eds. Proceedings of the International Joint Conference on Artificial Intelligence, San Francisco, 1997, pp. 770-777
    [180] J. Rucker, M. J. Polanco. SiteSeer: Personalized Navigation for the Web. Communications of the ACM, 1997, 40(3): 73-75
    [181] B. Mobasher. WebPersonalizer: A Server Side Recommender System Based on Web Usage Mining. In Technical Report TR-01-004, March, 1991
    [182] T. Hofmann,“Probabilistic Latent Semantic Analysis,”Proc. 15th Conf. Uncertainty in Artificial Intelligence, pp. 289-296, 1999.
    [183] T. Hofmann,“Collaborative Filtering via Gaussian Probabilistic Latent Semantic Analysis,”Proc. 26th Ann. Int’l ACM SIGIR Conf.,2003.
    [184] T. Hofmann,“Latent Semantic Models for Collaborative Filtering,”ACM Trans. Information Systems, vol. 22, no. 1, pp. 89-115, 2004.
    [185] B.P.S. Murthi and S. Sarkar,“The Role of the Management Sciences in Research on Personalization,”Management Science, vol. 49, no. 10, pp. 1344-1362, 2003.
    [186] C. Basu, H. Hirsh, and W. Cohen,“Recommendation as Classification: Using Social and Content-Based Information in Recommendation,”Recommender Systems. Papers from 1998 Workshop, Technical Report WS-98-08, AAAI Press 1998.
    [187] C. Dellarocas,“The Digitization of Word of Mouth: Promise and Challenges of Online Feedback Mechanisms,”Management Science, vol. 49, no. 10, pp. 1407-1424, 2003.
    [188] N. Good, J.B. Schafer, J.A. Konstan, A. Borchers, B. Sarwar, J.L. Herlocker, and J. Riedl,“Combining Collaborative Filtering with Personal Agents for Better Recommendations,”Proc. Conf. Am. Assoc. Artificial Intelligence (AAAI-99), pp. 439-446, July 1999.
    [189] J.L. Herlocker, J.A. Konstan, A. Borchers, and J. Riedl,“An Algorithmic Framework for Performing Collaborative Filtering,”Proc. 22nd Ann. Int’l ACM SIGIR Conf. Research and Development in Information Retrieval (SIGIR’99), 1999.
    [190] C.C. Peddy and D. Armentrout, Building Solutions with Microsoft Commerce Server 2002. Microsoft Press, 2003.
    [191] M. Claypool, A. Gokhale, T. Miranda, P. Murnikov, D. Netes, and M. Sartin,“Combining Content-Based and Collaborative Filters in an Online Newspaper,”Proc. ACM SIGIR’99 Workshop Recommender Systems: Algorithms and Evaluation, Aug. 1999.
    [192] J. Delgado and N. Ishii,“Memory-Based Weighted-Majority Prediction for Recommender Systems,”Proc. ACM SIGIR’99 Workshop Recommender Systems: Algorithms and Evaluation, 1999.
    [193] J.L. Herlocker, J.A. Konstan, and J. Riedl,“Explaining Collaborative Filtering Recommendations,”Proc. ACM Conf. Computer Supported Cooperative Work, 2000.
    [194] J. Trnkoczy, M. Turk, V. Stankovski, A grid-based architecture for personalized federation of digital libraries, Library Collections, Acquisitions, and Technical Services,16(1),2007, pp.23-34
    [195] E. Ngai, Learning in introductory e-commerce: A project-based teamwork approach, Computers & Education, Volume 48, Issue 1, January 2007, Pages 17-29
    [196]阎保平,中国科学院的E-Science及其“十五”信息化建设. China - American Network Symposium, 2002 ,上海
    [197] T. Hey, A. E. Trefethen. Cyberinfrastructure for E-Science. Science, 2005, 308(5723): 817-821
    [198] S. Oppong, D. Yen, J. Merhout, A new strategy for harnessing knowledge management in e-commerce, Technology in Society, Vol.27(3), 2005, pp.413-435
    [199] A.Stringfellow, W. Nie, D. Bowen, CRM: Profiting from understanding customer needs, Business Horizons, Vol.47(5), 2004, pp.45-52

© 2004-2018 中国地质图书馆版权所有 京ICP备05064691号 京公网安备11010802017129号

地址:北京市海淀区学院路29号 邮编:100083

电话:办公室:(+86 10)66554848;文献借阅、咨询服务、科技查新:66554700