Efficiency and Consistency Study on Carma

Yuan Huang, Xing Wang, B. Shia
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引用次数: 1

Abstract

Carma is a type of online association algorithm, designed to facilitate association rule with online data flow and successively changing support thresholds. In this paper we study the factors that contribute to the efficiency of Carma and how data flow distribution give effects on the performance of Carma. We design several experiments with two kinds of data. In fixed support threshold situations, we compare Carma with that of Apriori. We find the sets generated by Carma are subsets of those generated by Apriori. We find that if the support threshold is reasonably defined, these two algorithms reach the same results. On the other hand, as the support threshold increases, Phase Ι generates less items and the number of deleted sets from Phase II first increases and then declines. Carma behaves consistently towards changing support. We notice the earlier the items enter into a lattice, the more accurate the estimations are. If base stone elements show up early in the transaction, the performance of Phase II is mainly influenced by the late-entered item sets. Based on the discussion with Carma, we propose a new procedure to improve Carma. Simulations reveal that the modified algorithm works well.
Carma的效率与一致性研究
Carma是一种在线关联算法,旨在使关联规则具有在线数据流和连续变化的支持阈值。本文研究了影响Carma效率的因素,以及数据流分布对Carma性能的影响。我们用两种数据设计了几个实验。在固定支持阈值的情况下,我们比较了Carma和Apriori。我们发现Carma生成的集合是Apriori生成的集合的子集。我们发现,如果合理地定义支持阈值,这两种算法可以达到相同的结果。另一方面,随着支持阈值的增加,阶段Ι生成的项目减少,从阶段II删除的集合数量先增加后减少。卡玛始终如一地对待改变的支持。我们注意到,项目越早进入格子,估计就越准确。如果基础石元素在交易中出现较早,则第二阶段的表现主要受后期进入的道具集的影响。在与Carma讨论的基础上,提出了一种改进Carma的新方法。仿真结果表明,改进后的算法效果良好。
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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