使用遗传算法和模糊粗糙概念进行降维

M. Saha, J. Sil
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引用次数: 9

摘要

现实世界的数据集通常是模糊和冗余的,这给准确决策带来了问题。最近,粗糙集理论已成功地用于降维,但仅适用于离散数据集。数据的离散化会导致信息丢失,并可能增加数据集的不一致性。本文旨在开发一种利用模糊粗糙概念的算法来克服这种情况。该方法对数据集进行降维处理,并利用遗传算法得到最优属性子集,足以对目标进行分类。该算法在不影响分类精度和避免陷入局部极小值的情况下,在很大程度上降低了维数。结果与现有算法进行了比较,验证了相容的结果。
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Dimensionality reduction using genetic algorithm and fuzzy-rough concepts
Real-world datasets are often vague and redundant, creating problem to take decision accurately. Very recently, Rough-set theory has been used successfully for dimensionality reduction but is applicable only on discrete dataset. Discretisation of data leads to information loss and may add inconsistency in the datasets. The paper aims at developing an algorithm using fuzzy-rough concept to overcome this situation. By this approach, dimensionality of the dataset has been reduced and using genetic algorithm, an optimal subset of attributes is obtained, sufficient to classify the objects. The proposed algorithm reduces dimensionality to a great extent without degrading the accuracy of classification and avoid of being trapped at local minima. Results are compared with the existing algorithms demonstrate compatible outcome.
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