IMPLEMENTATION OF DYNAMIC AND FAST MINING ALGORITHMS ON INCREMENTAL DATASETS TO DISCOVER QUALITATIVE RULES

Q3 Economics, Econometrics and Finance
Pannangi Naresh, R. Suguna
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引用次数: 0

Abstract

Association Rule Mining is an important field in knowledge mining that allows the rules of association needed for decision making. Frequent mining of objects presents a difficulty to huge datasets. As the dataset gets bigger and more time and burden to uncover the rules. In this paper, overhead and time-consuming overhead reduction techniques with an IPOC (Incremental Pre-ordered code) tree structure were examined. For the frequent usage of database mining items, those techniques require highly qualified data structures. FIN (Frequent itemset-Nodeset) employs a node-set, a unique and new data structure to extract frequently used Items and an IPOC tree to store frequent data progressively. Different methods have been modified to analyze and assess time and memory use in different data sets. The strategies suggested and executed shows increased performance when producing rules, using time and efficiency.
在增量数据集上实现动态快速挖掘算法,发现定性规则
关联规则挖掘是知识挖掘中的一个重要领域,它允许决策所需的关联规则。频繁的对象挖掘给庞大的数据集带来了困难。随着数据集变得越来越大,揭示规则的时间和负担也越来越多。本文研究了具有IPOC(增量预编码)树结构的开销和耗时的开销减少技术。对于数据库挖掘项的频繁使用,这些技术需要高度合格的数据结构。FIN(Frequency itemset Nodeset)采用一个节点集、一个独特的新数据结构来提取常用项,并采用IPOC树来逐步存储频繁数据。对不同的方法进行了修改,以分析和评估不同数据集中的时间和记忆使用情况。建议和执行的策略在生成规则时显示出更高的性能,使用时间和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Applied Computer Science
Applied Computer Science Engineering-Industrial and Manufacturing Engineering
CiteScore
1.50
自引率
0.00%
发文量
0
审稿时长
8 weeks
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