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Information-preserving hybrid data reduction based on fuzzy-rough techniques

机译:基于模糊粗糙技术的信息保全混合数据约简

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摘要

Data reduction plays an important role in machine learning and pattern recognition with a high-dimensional data. In real-world applications data usually exists with hybrid formats, and a unified data reducing technique for hybrid data is desirable. In this paper, an information measure is proposed to computing discernibility power of a crisp equivalence relation or a fuzzy one, which is the key concept in classical rough set model and fuzzy-rough set model. Based on the information measure, a general definition of significance of nominal, numeric and fuzzy attributes is presented. We redefine the independence of hybrid attribute subset, reduct, and relative reduct. Then two greedy reduction algorithms for unsupervised and supervised data dimensionality reduction based on the proposed information measure are constructed. Experiments show the reducts found by the proposed algorithms get a better performance compared with classical rough set approaches.
机译:数据约简在高维数据的机器学习和模式识别中起着重要作用。在实际应用中,数据通常以混合格式存在,因此需要一种用于混合数据的统一数据缩减技术。本文提出了一种信息量度来计算清晰等价关系或模糊关系的分辨力,这是经典粗糙集模型和模糊粗糙集模型的关键概念。基于信息量度,提出了名义,数字和模糊属性的重要性的一般定义。我们重新定义了混合属性子集,归约和相对归约的独立性。然后,基于所提出的信息测度,构造了两种用于无监督和无监督数据降维的贪婪归约算法。实验表明,与经典的粗糙集方法相比,该算法发现的归约方法具有更好的性能。

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