|
English
|
正體中文
|
简体中文
|
2823025
|
|
???header.visitor??? :
30287307
???header.onlineuser??? :
1077
???header.sponsordeclaration???
|
|
|
???tair.name??? >
???browser.page.title.author???
|
"wu chuan chun"???jsp.browse.items-by-author.description???
Showing items 1-11 of 11 (1 Page(s) Totally) 1 View [10|25|50] records per page
國立政治大學 |
2015-01 |
Organizational Adaptation for Using PLM Systems: Group Dynamism and Management Involvement.
|
洪為璽; Kung, Kao-Hui; Ho, Chin-Fu; Hung, Wei-Hsi; Wu, Chuan-Chun |
國立政治大學 |
2014-07 |
Linking Web Design Strategy with Business Strategy
|
洪為璽; Hung, Wei-His;Kung, Kao-Hui;Wu, Chuan-Chun;Liao, Chun-Chia |
國立高雄大學 |
2010 |
An active multidimensional association mining framework with user preference ontology
|
Wu, Chin-Ang; Lin, Wen-Yang; Wu, Chuan-Chun |
國立高雄大學 |
2009 |
Facilitating active multidimensional association mining with user preference ontology
|
Wu, Chin-Ang; Lin, Wen-Yang; Wu, Chuan-Chun |
國立高雄大學 |
2009 |
Favorable support threshold recommendation for multidimensional association mining using user preference ontology
|
Wu, Chin-Ang; Lin, Wen-Yang; Jiang, Chang-Long; Wu, Chuan-Chun |
國立高雄大學 |
2007 |
Ontology-Incorporated Mining of Association Rules In Data Warehouse
|
林文揚; Wu, Chin-Ang; Lin, Wen-Yang; Tseng, Ming-Cheng; Wu, Chuan-Chun |
國立高雄大學 |
2007 |
Ontology-assisted query formulation in multidimensional association rule mining
|
Wu, Chin-Ang; Lin, Wen-Yang; Wu, Chuan-Chun |
國立高雄大學 |
2006 |
Ontology-based query formulation for mining associations from data warehouses
|
Lin, Wen-Yang; Wu, Chin-Ang; Wu, Chuan-Chun |
國立高雄大學 |
2006 |
Ontology-incorporated mining of association rules in data warehouse
|
Lin, Wen-Yang; Wu, Chin-Ang; Tseng, Ming-Cheng; Wu, Chuan-Chun |
國立高雄大學 |
2006 |
An object-relational data warehouse modeling for complex data
|
Lin, Wen-Yang; Wu, Chin-Ang; Wu, Chuan-Chun |
義守大學 |
2006 |
An object-relational data warehouse modeling for complex data
|
Lin, Wen-Yang ; Wu, Chin-Ang ; Wu, Chuan-Chun |
Showing items 1-11 of 11 (1 Page(s) Totally) 1 View [10|25|50] records per page
|