从医学数据库中挖掘负关联,考虑频繁模式、常规模式、封闭模式和最大模式

IF 2.6 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Computers Pub Date : 2024-01-08 DOI:10.3390/computers13010018
Raja Rao Budaraju, Sastry Kodanda Rama Jammalamadaka
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引用次数: 0

摘要

许多数据挖掘研究都侧重于挖掘频繁和有规律的项目集之间的正关联。但是,这些研究都没有考虑到这种关联的时间和规律性。即使不考虑时间因素,只考虑规律性和频率,频繁和有规律的项目集也会非常庞大。负关联在医学数据库中同样重要,它反映了治疗各种疾病的药物之间存在着相当大的差异。找到最有效的负关联非常重要。挖掘出的关联应尽可能小,这样才能找到最重要的断开关联。本文提出了一种挖掘方法,通过挖掘医学数据库,找到反映最小负面关联的规则、频繁、封闭和最大项目集。在考虑任何样本大小、规则性或频率阈值的情况下,当使用最大和封闭属性时,所提出的算法可将负面关联减少 70%。
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Mining Negative Associations from Medical Databases Considering Frequent, Regular, Closed and Maximal Patterns
Many data mining studies have focused on mining positive associations among frequent and regular item sets. However, none have considered time and regularity bearing in mind such associations. The frequent and regular item sets will be huge, even when regularity and frequency are considered without any time consideration. Negative associations are equally important in medical databases, reflecting considerable discrepancies in medications used to treat various disorders. It is important to find the most effective negative associations. The mined associations should be as small as possible so that the most important disconnections can be found. This paper proposes a mining method that mines medical databases to find regular, frequent, closed, and maximal item sets that reflect minimal negative associations. The proposed algorithm reduces the negative associations by 70% when the maximal and closed properties have been used, considering any sample size, regularity, or frequency threshold.
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来源期刊
Computers
Computers COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
5.40
自引率
3.60%
发文量
153
审稿时长
11 weeks
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