Optimization of association rules using hybrid data mining technique

被引:0
|
作者
Sahana P. Shankar
E. Naresh
Harshit Agrawal
机构
[1] Ramaiah University of Applied Sciences,
[2] M S Ramaiah Institute of Technology,undefined
关键词
Defect prediction; Data mining; Spread; Confidence; Support count; Association rules; Quality; NASA; MDP; Promise repository;
D O I
暂无
中图分类号
学科分类号
摘要
Software quality has been the important area of interest for decades now in the IT sector and software firms. Defect prediction gives the tester the pointers as to where the bugs will most likely be hidden in the software product. Identifying and reporting the defect probe areas is the main job of software defect prediction techniques. Early detection of software defects during Software Development Life Cycle could lead to a reduction in cost of development, time involved in further testing activities and rework effort post-production and maintenance phase, thus resulting in more reliable software. Software metrics can be used for developing the defect prediction models. Several data mining techniques can be applied on the available open-source software datasets. These datasets are extracted from software programs. Such datasets made publicly available by National Aeronautics and Space Administration for their various softwares have been extensively used in software engineering-related research activities. These datasets contain information on associated Software Metrics at module level. The proposed idea is a novel hybrid data mining technique consisting of Clustering and Modified Apriori Algorithm that results in improved efficiency and reliability of Software Defect Prediction. This technique works by reducing the number of association rules generated. The results are achieved by using interestingness measure called spread. The paper also does a comparative analysis of the results obtained from the novel technique with the existing hybrid technique of Clustering and Apriori.
引用
收藏
页码:251 / 261
页数:10
相关论文
共 50 条
  • [31] Using visual data mining tools to explore a set of association rules
    Bothorel, Gwenael
    Serrurier, Mathieu
    Hurter, Christophe
    IHM'11: 23EME CONFERENCE FRANCOPHONE SUR L'INTERACTION HOMME-MACHINE, 2011,
  • [32] Distributed Data Access Control Algorithm Using Mining Association Rules
    Rajkumar, N.
    Sivanandam, S. N.
    Thomas, J. Stanly
    INTERNATIONAL JOURNAL OF COMPUTER SCIENCE AND NETWORK SECURITY, 2008, 8 (08): : 306 - 311
  • [33] MINING OF ASSOCIATION RULES FROM DISTRIBUTED DATA USING MOBILE AGENTS
    Hu, Gongzhu
    Ding, Shaozhen
    ICE-B 2009: PROCEEDINGS OF THE INTERNATIONAL CONFERENCE ON E-BUSINESS, 2009, : 21 - 26
  • [34] Using Apriori Algorithm on Students' Performance Data for Association Rules Mining
    Wu, Xiaodong
    Zeng, Yuzhu
    PROCEEDINGS OF THE 2ND INTERNATIONAL SEMINAR ON EDUCATION RESEARCH AND SOCIAL SCIENCE (ISERSS 2019), 2019, 322 : 403 - 406
  • [35] An Algorithm for Mining Conditional Hybrid Dimensional Association Rules using Boolean Matrix
    Khare, Neelu
    Adlakha, Neeru
    Pardasani, K. R.
    2010 2ND INTERNATIONAL CONFERENCE ON COMPUTER AND AUTOMATION ENGINEERING (ICCAE 2010), VOL 2, 2010, : 644 - 648
  • [36] Mining association rules from quantitative data
    Hong, Tzung-Pei
    Kuo, Chan-Sheng
    Chi, Sheng-Chai
    Intelligent Data Analysis, 1999, 3 (05): : 363 - 376
  • [37] Evaluation of sampling for data mining of association rules
    Zaki, MJ
    Parthasarathy, S
    Li, W
    Ogihara, M
    SEVENTH INTERNATIONAL WORKSHOP ON RESEARCH ISSUES IN DATA ENGINEERING, PROCEEDINGS: HIGH PERFORMANCE DATABASE MANAGEMENT FOR LARGE-SCALE APPLICATIONS, 1997, : 42 - 50
  • [38] Role of sampling in data mining for association rules
    Jeragh, M
    Mehrotra, KG
    IC-AI'2001: PROCEEDINGS OF THE INTERNATIONAL CONFERENCE ON ARTIFICIAL INTELLIGENCE, VOLS I-III, 2001, : 483 - 489
  • [39] Mining Multilevel Association Rules on RFID data
    Kim, Younghee
    Kim, Ungmo
    2009 FIRST ASIAN CONFERENCE ON INTELLIGENT INFORMATION AND DATABASE SYSTEMS, 2009, : 46 - 50
  • [40] Scalable parallel data mining for association rules
    Han, EH
    Karypis, G
    Kumar, V
    IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2000, 12 (03) : 337 - 352