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Comparative evaluation of pattern mining techniques: an empirical study

机译:模式采矿技术的比较评价:实证研究

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Pattern mining has emerged as a compelling field of data mining over the years. Literature has bestowed ample endeavors in this field of research ranging from frequent pattern mining to rare pattern mining. A precise and impartial analysis of the existing pattern mining techniques has therefore become essential to widen the scope of data analysis using the notion of pattern mining. This paper is therefore an attempt to provide a comparative scrutiny of the fundamental algorithms in the field of pattern mining through performance analysis based on several decisive parameters. The paper provides a structural classification of the widely referenced techniques in four pattern mining categories: frequent, maximal frequent, closed frequent and rare. It provides an analytical comparison of these techniques based on computational time and memory consumption using benchmark real and synthetic data sets. The results illustrate that tree based approaches perform exceptionally well over level wise approaches in case of dense data sets for all the categories. However, for sparse data sets, level wise approaches performed better than the former ones. This study has been carried out with an aim to analyze the pros and cons of the well known pattern mining techniques under different categories. Through this empirical study, an endeavor has been made to enable the researchers identify some fruitful and promising research directions in one of the most remarkable area of research, pattern mining.
机译:模式挖掘已成为多年来的令人信服的数据挖掘领域。文学在这种研究领域中赋予了丰富的努力,从常见的模式挖掘到稀有模式挖掘。因此,对现有模式挖掘技术的精确和公正分析已经对使用模式挖掘的概念扩大数据分析的范围至关重要。因此,本文试图通过基于几个决定参数的性能分析来提供模式挖掘领域的基本算法的比较审查。本文提供了四种模式挖掘类别的广泛参考技术的结构分类:频繁,最大频繁,频繁,频繁且罕见。它基于使用基准真实和合成数据集的计算时间和存储器消耗来提供这些技术的分析比较。结果说明了在所有类别的密集数据集的情况下,基于树的方法在级别明智的方法中表现出极佳。然而,对于稀疏数据集,级别明智的方法比前者更好。本研究旨在分析不同类别下众所周知的模式采矿技术的优缺点。通过这项实证研究,已经使努力使研究人员能够在一个最显着的研究领域,模式挖掘中确定一些丰硕和有前途的研究方向。

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