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Mining cancer data with discrete particle swarm optimization and rule pruning

机译:使用离散粒子群优化和规则修剪来挖掘癌症数据

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Cancer is one of the most the gravest problems facing mankind. In 2008, it is estimated that over 7.6 million lives have been claimed by cancer. Early and precise detection plays a key role in treating the disease and improve survivability of patient. Among data classification algorithms, discrete particle swarm optimization (DPSO), a technique based on standard PSO has proved to be competitive in predicting breast cancer, and in this paper, we implement a classifier using DPSO with new rule pruning procedure for detecting lung cancer and breast cancer, which are the most common cancer for men and women. Experiment shows the new pruning method further improves the classification accuracy, and the new approach is effective in making cancer prediction.
机译:癌症是人类面临的最严重的问题之一。据估计,在2008年,癌症夺走了760万人的生命。早期和精确的检测在治疗该疾病和提高患者的生存能力方面起着关键作用。在数据分类算法中,离散粒子群优化(DPSO)是一种基于标准PSO的技术,已被证明在预测乳腺癌方面具有竞争优势,在本文中,我们将DPSO与新的规则修剪程序一起实现分类器,以检测肺癌和乳腺癌,这是男女最常见的癌症。实验表明,该新的修剪方法进一步提高了分类的准确性,并且该新方法可有效地进行癌症预测。

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