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Cohesion: A concept and framework for confident association discovery with potential application in microarray mining

机译:凝聚力:一种有信心的关联发现的概念和框架,以及在微阵列挖掘中的潜在应用

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The minimal frequency constraint in classical association mining algorithms turns out to be a challenging bottleneck in discovery of large number of infrequent associations that can be potential in knowledge content. A lower choice for threshold frequency not only incurs huge cost of pattern explosion but also cuts reliability of discovered knowledge. The goal of the present paper is to devise a new framework addressing two necessities. The first is discovery of confident associations unconstrained to classical minimal frequency. The second is to ensure quality of the discovered rules. We propose a new property among items, terming it cohesion, and develop cohesion-based scalable algorithms for confident association discovery. In order to assess quality of rules in terms of knowledge content, we propose two new measures, accuracy and predictability based on documented associations. Experiments with market-basket data as well as microarray data establish superiority of cohesion-based technique both in terms of amount and quality of discovered knowledge.
机译:在发现可能在知识内容中存在的大量不频繁关联中,经典关联挖掘算法中的最小频率约束已成为挑战性瓶颈。阈值频率的较低选择不仅会导致图案爆炸的巨大成本,而且会降低所发现知识的可靠性。本文的目的是设计一个新的框架来解决两个必要性。首先是发现不受经典最小频率约束的自信关联。第二是确保所发现规则的质量。我们在项目之间提出了一个新属性,称为内聚性,并开发了基于内聚性的可扩展算法来进行可信的关联发现。为了根据知识内容评估规则的质量,我们提出了两种新的度量,即基于已记录的关联的准确性和可预测性。使用市场购物数据和微阵列数据进行的实验在发现知识的数量和质量方面都确立了基于内聚的技术的优越性。

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