基于深度稀疏自编码器集成的不平衡数据特征选择

M. Massi, F. Ieva, Francesca Gasperoni, A. Paganoni
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引用次数: 5

摘要

在学习算法的许多领域应用中,类不平衡是一个常见的问题。通常,在相同的领域中,正确分类和描述少数类观察结果更为相关。这种需求可以通过特征选择(FS)来解决,它提供了几个进一步的优势,例如降低计算成本,帮助推理和可解释性。然而,传统的FS技术在存在严重不平衡的数据时可能变得不理想。为了在这种情况下实现FS的优势,我们提出了一种基于深度稀疏自编码器集成(DSAEE)的重构误差对特征重要性进行排序的滤波FS算法。我们使用仅在多数类上训练的每个DSAE来重建两个类。通过对汇总重建误差的分析,我们确定了少数类呈现不同值分布的特征,从而识别出最相关的特征来区分两者。我们在模拟和不同样本量的高维数据集上的几个实验中实证地证明了我们的算法的有效性,展示了它选择相关和可推广的特征来描述和分类少数类的能力,优于其他基准FS方法。我们还简要介绍了放射基因组学的实际应用,其中该方法得到了成功的应用。
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Feature selection for imbalanced data with deep sparse autoencoders ensemble
Class imbalance is a common issue in many domain applications of learning algorithms. Oftentimes, in the same domains it is much more relevant to correctly classify and profile minority class observations. This need can be addressed by feature selection (FS), that offers several further advantages, such as decreasing computational costs, aiding inference and interpretability. However, traditional FS techniques may become suboptimal in the presence of strongly imbalanced data. To achieve FS advantages in this setting, we propose a filtering FS algorithm ranking feature importance on the basis of the reconstruction error of a deep sparse autoencoders ensemble (DSAEE). We use each DSAE trained only on majority class to reconstruct both classes. From the analysis of the aggregated reconstruction error, we determine the features where the minority class presents a different distribution of values w.r.t. the overrepresented one, thus identifying the most relevant features to discriminate between the two. We empirically demonstrate the efficacy of our algorithm in several experiments, both simulated and on high‐dimensional datasets of varying sample size, showcasing its capability to select relevant and generalizable features to profile and classify minority class, outperforming other benchmark FS methods. We also briefly present a real application in radiogenomics, where the methodology was applied successfully.
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