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Preliminary Assessment of an SFFS Method for Sub-Group Feature Identification in Heterogeneous Data Sets

机译:异构数据集中用于子组特征识别的SFFS方法的初步评估

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Many biomedical pattern recognition problems involve disorders or conditions that present with different symptoms or features, resulting in a data set that is not homogeneous across an affected population. Examples of such data sets may include those describing autism spectrum disorders and mild cognitive impairment. In this paper, we describe preliminary analyses with synthetic data sets that simulate feature synergies inherent in many of these problems. A sequential forward floating search (SFFS) algorithm is then used to select relevant features for classification purposes. Our results suggest the SFFS method of feature selection may be an ideal technique when working with such data sets.
机译:许多生物医学模式识别问题涉及表现出不同症状或特征的疾病或病症,导致整个受影响人群的数据集不统一。此类数据集的示例可以包括描述自闭症谱系障碍和轻度认知障碍的数据集。在本文中,我们用综合数据集描述了初步分析,这些综合数据集模拟了许多这些问题中固有的特征协同作用。然后使用顺序前向浮动搜索(SFFS)算法来选择相关特征以进行分类。我们的结果表明,使用这种数据集时,特征选择的SFFS方法可能是一种理想的技术。

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