cs.AI updates on arXiv.org 10月06日
MINERVA:基于神经估计的互信息特征选择新算法
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本文提出了一种名为MINERVA的特征选择算法,通过神经网络估计特征与目标间的互信息,有效捕捉复杂特征-目标关系,并在合成和实际欺诈数据集上验证了其效果。

arXiv:2510.02610v1 Announce Type: cross Abstract: Existing feature filters rely on statistical pair-wise dependence metrics to model feature-target relationships, but this approach may fail when the target depends on higher-order feature interactions rather than individual contributions. We introduce Mutual Information Neural Estimation Regularized Vetting Algorithm (MINERVA), a novel approach to supervised feature selection based on neural estimation of mutual information between features and targets. We paramaterize the approximation of mutual information with neural networks and perform feature selection using a carefully designed loss function augmented with sparsity-inducing regularizers. Our method is implemented in a two-stage process to decouple representation learning from feature selection, ensuring better generalization and a more accurate expression of feature importance. We present examples of ubiquitous dependency structures that are rarely captured in literature and show that our proposed method effectively captures these complex feature-target relationships by evaluating feature subsets as an ensemble. Experimental results on synthetic and real-life fraud datasets demonstrate the efficacy of our method and its ability to perform exact solutions.

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特征选择 神经网络 互信息 欺诈检测 数据集
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