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首页> 外文期刊>Applied Soft Computing >Utilizing multiple pheromones in an ant-based algorithm for continuous-attribute classification rule discovery
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Utilizing multiple pheromones in an ant-based algorithm for continuous-attribute classification rule discovery

机译:在基于蚂蚁的算法中使用多个信息素进行连续属性分类规则发现

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摘要

The cAnt-Miner algorithm is an Ant Colony Optimization (ACO) based technique for classification rule discovery in problem domains which include continuous attributes. In this paper, we propose several extensions to cAnt-Miner. The main extension is based on the use of multiple pheromone types, one for each class value to be predicted. In the proposed μcAnt-Miner algorithm, an ant first selects a class value to be the consequent of a rule and the terms in the antecedent are selected based on the pheromone levels of the selected class value; pheromone update occurs on the corresponding pheromone type of the class value. The pre-selection of a class value also allows the use of more precise measures for the heuristic function and the dynamic discretization of continuous attributes, and further allows for the use of a rule quality measure that directly takes into account the confidence of the rule. Experimental results on 20 benchmark datasets show that our proposed extension improves classification accuracy to a statistically significant extent compared to cAnt-Miner, and has classification accuracy similar to the well-known Ripper and PART rule induction algorithms.
机译:cAnt-Miner算法是一种基于蚁群优化(ACO)的技术,用于在包含连续属性的问题域中发现分类规则。在本文中,我们提出了对cAnt-Miner的一些扩展。主要扩展是基于多种信息素类型的使用,每种要预测的类值都有一个。在提出的μcAnt-Miner算法中,蚂蚁首先选择一个类别值作为规则的结果,然后根据所选类别值的信息素水平选择先行词。信息素更新发生在类值的相应信息素类型上。对类别值的预选择还允许对启发式函数使用更精确的度量,并对连续属性进行动态离散化,并进一步允许使用直接考虑规则置信度的规则质量度量。在20个基准数据集上的实验结果表明,与cAnt-Miner相比,我们提出的扩展将分类准确性提高了统计学上显着的程度,并且具有类似于众所周知的Ripper和PART规则归纳算法的分类准确性。

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