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Data Mining using Advanced Ant Colony Optimization Algorithm and Application to Bankruptcy Prediction

机译:蚁群优化算法的数据挖掘及其在破产预测中的应用

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Ant Colony Optimization (ACO) is gaining popularity as data mining technique in the domain of Swarm Intelligence for its simple, accurate and comprehensive nature of classification. In this paper the authors propose a novel advanced version of the original ant colony based miner (Ant-Miner) in order to extract classification rules from data. They call this Advanced ACO-Miner (ADACOM). The main goal of ADACOM is to explore the flexibility of using a different knowledge extraction heuristic approach viz. Gini's Index to increase the predictive accuracy and the simplicity of the rules extracted. Further, the authors increase the information and the prediction level of the set of rules extracted by dynamically changing specific parameters. Simulations are performed with ADACOM on a few benchmark datasets Wine, WBC (Wisconsin Breast Cancer) and Iris from UCI (University of California at Irvine) data repository and compared with Ant-Miner (Parpinelli, Lopes, & Freitas, 2002), Ant-Miner2 (Liu, Abbass, & McKay, 2002), Ant-Mineri (Liu, Abbass, & McKay, 2003), Ant-Miner+ (Martens, De Backer, Haesen, Vanthienen, Snoeck, & Baesens, 2007) and C4.5 (Quinlan, 1993). The results show that ADACOM outperforms the above mentioned algorithms in terms of predictive accuracy, simplicity of rules, sensitivity, specificity and AUC values (area under ROC curve). In addition, the ADACOM is also employed to extract rules from bank datasets (UK, US, Spanish and Turkish) for bankruptcy prediction and the results are compared with that obtained by Ant-Miner. Again ADACOM yielded better results and is proven to be the better choice for solving bankruptcy prediction problems in banks.
机译:蚁群优化(ACO)凭借其简单,准确和全面的分类特性,在Swarm Intelligence领域中作为数据挖掘技术越来越受欢迎。在本文中,作者提出了一种基于蚁群的矿工(Ant-Miner)的新颖高级版本,以便从数据中提取分类规则。他们称为高级ACO矿工(ADACOM)。 ADACOM的主要目标是探索使用不同的知识提取启发式方法的灵活性。基尼系数可提高预测准确性和提取规则的简便性。此外,作者通过动态更改特定参数来增加提取的规则集的信息和预测级别。使用ADACOM对一些基准数据集Wine,WBC(威斯康星州乳腺癌)和UCI(加利福尼亚大学尔湾分校)的Iris进行了模拟,并将其与Ant-Miner(Parpinelli,Lopes和Freitas,2002年),Ant- Miner2(Liu,Abbass和McKay,2002年),Ant-Mineri(Liu,Abbass和McKay,2003年),Ant-Miner +(Martens,De Backer,Haesen,Vanthienen,Snoeck和Baesens,2007年)和C4.5 (Quinlan,1993)。结果表明,在预测准确性,规则简单性,敏感性,特异性和AUC值(ROC曲线下的面积)方面,ADACOM优于上述算法。此外,ADACOM还用于从银行数据集(英国,美国,西班牙和土耳其)中提取规则以进行破产预测,并将结果与​​Ant-Miner获得的结果进行比较。 ADACOM再次产生了更好的结果,并被证明是解决银行破产预测问题的更好选择。

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