噪声环境下的项集挖掘:一种混合方法

Karima Mouhoubi, Lucas Létocart, C. Rouveirol
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引用次数: 2

摘要

数据挖掘的一般任务包括在布尔矩阵中找到所有为1的矩形,其中行和列的顺序并不重要。然而,为解决这一问题而开发的大多数算法都无法适应可能包含噪声的实际数据。噪声的作用是将相关的项集粉碎成一组小的不相关的项集,从而产生结果项集数量的爆炸式增长。最近提出的解决这个问题的算法受到各种限制,如大量的结果,执行时间仍然很高,无法发现重叠的模式。在这项工作中,我们提出了一种新的基于图算法的启发式方法,用于在嘈杂的二进制上下文中高效地提取项目集模式。该方法基于最大流/最小切算法,在与布尔数据矩阵相关的图中寻找1的密集子图。为了评估我们的方法,我们在生物信息学应用的合成数据和真实数据集上进行了各种实验。我们在不同的合成数据集和不同方法的基因表达数据上比较了我们的结果,并证明了i)我们的方法是相当高效的ii)我们的算法提取的模式比其他方法有更好的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Itemset Mining in Noisy Contexts: A Hybrid Approach
A general task in data mining consists in finding all rectangles of 1 in a boolean matrix in which the order of the rows and columns is not important. However, most algorithms which have been developed to solve this task are unable to be adapted to real data that may contain noise. The effect of the noise is to shatter relevant item sets into a set of small irrelevant item sets, yielding an explosion in the number of resulting item sets. Recent algorithms that have been proposed to address this problem suffer from various limitations such as the large number of results, the execution time which remains very high and the inability to discover overlapping patterns. In this work, we propose a new heuristic approach based on a graph algorithm for the efficient extraction of item set patterns in noisy binary contexts. This method is based on maximal flow/minimal cut algorithms to find dense sub graphs of 1 in the graph associated to the boolean data matrix. To evaluate our approach, various experiments have been performed on both synthetic data and real datasets from bioinformatic applications. We have compared our results on various synthetic datasets and a gene-expression data with various methods and demontrate that i) our method is quite efficient ii) the patterns extracted by our algorithm have a better quality than the other methods.
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