Association Rule Mining for Specific New Course
รหัสดีโอไอ
Creator Nhabhat Chaimongkol
Title Association Rule Mining for Specific New Course
Contributor Phayung Meesad
Publisher Faculty of Information Science and Technology, Mahanakorn University of Technology
Publication Year 2553
Journal Title Journal of Information Science and Technology
Journal Vol. 1
Journal No. 1
Page no. 15-22
Keyword Data mining, Association Rule, FP-growth, Mining Course Maps, ARMADA
URL Website https://tci-thaijo.org/index.php/JIST
Website title Journal of Information Science and Technology
ISSN 2651-1053
Abstract Most language schools devote a significant portion of their budget on new courses to distinguish their school from their competitors and to increase the number of students. The schools should specify courses that fulfill the students? needs. This will raise the competitiveness of the schools. Also the schools will earn higher loyalties and profits because of the increase of new students. This article proposes a Mining Course Map (MCM) algorithm for investigating on the relationships among students? demands, type of course and transaction records. MCM is a modified association rule analysis based-on FP-growth algorithm. For comparison study, the proposed method was compared with Association Rule Miner And Deduction Analysis (ARMADA). The results show that the execution time of MCM is less than ARMADA which means that MCM is more efficient than the ARMADA. In addition, the results show that different knowledge and rules can be extracted from students to specify new courses for new and old members. This paper suggests that the school should extract knowledge from student demands. The knowledge can be used to manage new courses properly.
คณะวิทยาการและเทคโนโลยีสารสนเทศ มหาวิทยาลัยเทคโนโลยีมหานคร

บรรณานุกรม

EndNote

APA

Chicago

MLA

ดิจิตอลไฟล์

Digital File
DOI Smart-Search
สวัสดีค่ะ ยินดีให้บริการสอบถาม และสืบค้นข้อมูลตัวระบุวัตถุดิจิทัล (ดีโอไอ) สำนักการวิจัยแห่งชาติ (วช.) ค่ะ