Performance Analysis of T-PASCAL on Sparse and Dense Datasets

Anjana Pandey, Sumit Sabnani, K. Pardasani, Sanjay Sharma
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Abstract

Usually popular temporal association rule mining methods are having performance bottleneck for database with different characteristics. Methods like Temporal-Apriori suffer from problem of candidate generation and database scans for Temporal Association rule mining. To overcome some of these problems of Temporal-Apriori TPASCAL has been discussed recently The TPASCAL uses counting inference approach that minimizes as much as possible the number of pattern support counts performed when extracting frequent patterns. TPASCAL is calendric temporal association rule mining, which is working on precise-match association rules that require the association rule hold during every Interval. TPASCAL is based on the level wise extraction of frequent patterns Here an attempt has been made to evaluate and compare the performance of TPASCAL with temporal-Apriori on datasets with different characteristics. The relationship of execution time with characteristics like denseness, sparseness and volume of data extra has been obtained by implementing the algorithm on synthetic dataset available online. The parameter which is affecting the efficiency of two algorithm have been explored and evaluated
T-PASCAL在稀疏和密集数据集上的性能分析
通常流行的时态关联规则挖掘方法对于不同特征的数据库存在性能瓶颈。时态- apriori等方法在时态关联规则挖掘中存在候选生成和数据库扫描问题。为了克服这些问题,TPASCAL使用计数推理方法,在提取频繁模式时尽可能减少模式支持计数的数量。TPASCAL是日历时态关联规则挖掘,它处理要求关联规则在每个Interval期间保持的精确匹配关联规则。TPASCAL是一种基于频繁模式的分层抽取的方法,本文试图评价和比较TPASCAL与temporal-Apriori在不同特征数据集上的性能。通过在在线可用的合成数据集上实现该算法,得到了执行时间与数据密度、稀疏度和额外数据量等特征之间的关系。对影响两种算法效率的参数进行了探讨和评价
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