국가지식-학술정보
Comparative Study of Quantitative Data Binning Methods in Association Rule
Comparative Study of Quantitative Data Binning Methods in Association Rule
- 한국데이터정보과학회
- Journal of the Korean Data and Information Science Society
- Vol.19 No.3
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2008.01903 - 911 (9 pages)
- 0
커버이미지 없음
Association rule mining searches for interesting relationships among items in a given large database. Association rules are frequently used by retail stores to assist in marketing, advertising, floor placement, and inventory control. Many data is most quantitative data. There is a need for partitioning techniques to quantitative data. The partitioning process is referred to as binning. We introduce several binning methods ; parameter mean binning, equi-width binning, equi-depth binning, clustering-based binning. So we apply these binning methods to several distribution types of quantitative data and present the best binning method for association rule discovery.
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