首页> 外文会议>Proceedings of the international conference on communications and cyber physical engineering 2018 >Association Rule Mining Using an Unsupervised Neural Network with an Optimized Genetic Algorithm
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Association Rule Mining Using an Unsupervised Neural Network with an Optimized Genetic Algorithm

机译:使用优化遗传算法的无监督神经网络关联规则挖掘

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摘要

The best known and most widely utilized pattern finding algorithm in data mining applications is association rule mining (ARM). Extraction of frequent patterns is an indispensable step in ARM. Most studies in the literature have been implemented on the concept of support and confidence framework utilization. Here, we investigated an efficient and robust ARM scheme based on a self-organizing map (SOM) and an optimized genetic algorithm (OGA). A SOM is an unsupervised neural network that efficaciously produces spatially coordinated internal feature representations and detected abstractions in the input space and is the most efficient clustering technique that reveals conventional similarities in the input space by performing a topology maintaining mapping. Hence, a SOM is utilized to generate accurate clustered frequency patterns and an OGA is used to generate positive and negative association rules with multiple consequences by studying all possible patterns. Experimental analysis on various datasets has shown the robustness of our proposed ARM in comparison to traditional rule mining approaches by proving that a greater number of positive and negative association rules is generated by the proposed methodology resulting in a better performance when compared to conventional rule mining schemes.
机译:数据挖掘应用程序中最著名,使用最广泛的模式发现算法是关联规则挖掘(ARM)。频繁模式的提取是ARM中必不可少的步骤。文献中的大多数研究都是在支持和信任框架利用的概念上进行的。在这里,我们研究了一种基于自组织映射(SOM)和优化遗传算法(OGA)的高效且健壮的ARM方案。 SOM是一种无监督的神经网络,可以有效地在输入空间中生成空间协调的内部特征表示和检测到的抽象,并且是通过执行拓扑维护映射来揭示输入空间中常规相似性的最有效的聚类技术。因此,通过研究所有可能的模式,SOM用于生成准确的群集频率模式,而OGA用于生成具有多种后果的正负关联规则。对各种数据集的实验分析表明,与传统的规则挖掘方法相比,通过证明所提出的方法生成了更多的正关联规则和负关联规则,与传统的规则挖掘方法相比,我们的ARM具有较强的鲁棒性。 。

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