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Information-Theoretic Ensemble Feature Selection With Multi-Stage Aggregation for Sensor Array Optimization

机译:信息 - 理论集合功能选择具有传感器阵列优化的多级聚合

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In an electronic nose (e-nose) system, the gas sensor array is the key component for detecting the volatile profile of a sample. An inappropriate sensor combination can lead to several issues, including overlapping selectivities, high computational overhead, performance degradation, etc. To deal with this problem, typically, a feature selection algorithm (FSA) is utilized to optimize the gas sensor combination in the sensor array. However, the instability of the FSA output is a serious problem in sensor array optimization. An unstable FSA output makes it difficult to conclude the general sensor combination. Hence, in this study, the Information-Theoretic Ensemble Feature Selection (ITEFS) method is proposed to deal with FSA instability. In the experiment, twelve homogeneous e-nose data sets were used that corresponded to twelve types of beef samples. Moreover, the outputs from eleven information-theoretic FSAs were aggregated to determine the general sensor combination. The performance of the selected sensors was validated based on the number of overlapping selectivities, F-measure, and execution time. The results indicated that ITEFS can more effectively reduce overlapping selectivities than other FSAs. The selected sensors also displayed comparable performance in classification tasks to other FSAs even when using fewer sensors, with an average F-measure of more than 99% using k-NN and SVM on all data sets. This indicates that the combination of selected sensors had sufficiently good generalization to detect the various types of beef samples. In addition, the utilization of a lower number of sensors also reduced the execution time in the training and testing processes.
机译:在电子鼻子(E-鼻子)系统中,气体传感器阵列是用于检测样品的挥发性轮廓的关键部件。不适当的传感器组合可以导致几个问题,包括重叠选择性,高计算开销,性能下降等来处理该问题,通常,使用特征选择算法(FSA)来优化传感器阵列中的气体传感器组合。但是,FSA输出的不稳定性是传感器阵列优化中的严重问题。不稳定的FSA输出使得难以结束一般传感器组合。因此,在本研究中,提出了信息 - 理论集合特征选择(ITEFS)方法来处理FSA不稳定性。在实验中,使用12种均匀的电子鼻数据集,其对应于12种牛肉样品。此外,聚合来自11个信息定理FSA的输出以确定一般传感器组合。基于重叠选择性,F测量和执行时间的数量来验证所选传感器的性能。结果表明ITEFS可以更有效地减少与其他FSA的重叠选择性。即使在使用较少的传感器时,所选传感器也将在分类任务中显示对其他FSA的相当性能,在所有数据集上使用K-NN和SVM具有超过99%的平均F测量值。这表明所选传感器的组合具有足够良好的展示来检测各种类型的牛肉样品。另外,利用较少数量的传感器也在训练和测试过程中减少了执行时间。

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