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Data fusion using feature selection based causal network algorithm

机译:基于特征选择的因果网络算法进行数据融合

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We propose a statistical definition of reduct and develop a feature selection algorithm based upon it. It shows that the features found by this algorithm get the largest coverage of the objects, and is most resistant to noise compared with the results found by genetic and dynamic reduct searching algorithm when they are applied to a water-pollution monitoring multisensor fusion system, which is described by the causal network model. Comparative tests show that with the selected features, the efficiency of the causal network based searching algorithm is greatly improved, at the same time the classification accuracy is maintained.
机译:我们提出了一种归约的统计定义,并据此开发了一种特征选择算法。结果表明,与遗传和动态还原搜索算法应用于水污染监测多传感器融合系统的结果相比,该算法发现的特征能最大程度地覆盖物体,并且对噪声的抵抗力最大。由因果网络模型描述。比较测试表明,通过选择特征,可以大大提高基于因果网络的搜索算法的效率,同时保持分类精度。

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