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Fuzzy-rough data reduction with ant colony optimization

机译:蚁群优化的模糊粗糙数据约简

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Feature selection refers to the problem of selecting those input features that are most predictive of a gi ven outcome; a problem encountered in many areas such as machine learning, pattern recognition and signal processing. In particular, solution to this has found successful application in tasks that involve datasets containing huge numbers of features (in the order of tens of thousands), which would be impossible to process further. Recent examples include text processing and web content classification. Rough set theory has been used as such a dataset preprocessor with much success, but current methods are inadequate at finding minimal reductions, the smallest sets of features possible. To alleviate this difficulty, a feature selection technique that employs a hybrid variant of rough sets, fuzzy-rough sets, has been developed recently and has been shown to be effective. However, this method is still not able to find the optimal subsets regularly. This paper proposes a new feature selection mechanism based on ant colony optimization in an attempt to combat this. The method is then applied to the problem of finding optimal feature subsets in the fuzzy-rough data reduction process. The present work is applied to complex systems monitoring and experimentally compared with the original fuzzy-rough method, an entropy-based feature selector, and a transformation-based reduction method, PCA. Comparisons with the use of a support vector classifier are also included.
机译:特征选择是指选择最能预测给定结果的输入特征的问题。这是机器学习,模式识别和信号处理等许多领域遇到的问题。尤其是,针对此问题的解决方案已成功应用于包含大量特征(约数万个)的数据集的任务中,而这些特征将无法进一步处理。最近的示例包括文本处理和Web内容分类。粗糙集理论已被成功用作这样的数据集预处理器,但是当前的方法不足以找到最小化的约简,最小的特征集。为了减轻这个困难,最近已经开发出一种采用粗糙集,模糊粗糙集的混合变体的特征选择技术,并且已经证明是有效的。但是,该方法仍然无法定期找到最佳子集。为了解决这个问题,本文提出了一种基于蚁群优化的新特征选择机制。然后将该方法应用于在模糊粗糙数据约简过程中找到最佳特征子集的问题。目前的工作应用于复杂的系统监控,并与原始的模糊粗糙方法,基于熵的特征选择器和基于变换的约简方法PCA进行了实验比较。还包括与使用支持向量分类器的比较。

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