上下文感知特征选择和分类

Juanyan Wang, M. Bilgic
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引用次数: 0

摘要

我们提出了一个执行实例级特征选择和分类的联合模型。对于给定的情况,联合模型首先略读完整的特征向量,决定哪些特征与该情况相关,然后仅使用选定的特征做出分类决策,从而产生紧凑的、可解释的和特定于情况的分类决策。因为选择的特征取决于手头的情况,所以我们将这种方法称为上下文感知特征选择和分类。该模型可以在由专家使用类标签和实例级特征选择进行注释的实例上进行训练,因此它可以选择人类将使用的实例级特征。在多个数据集上的实验表明,该模型在分类和特征选择的组合度量上优于8个基线,并且能够更好地模拟真实的实例级特征选择。补充材料可在https://github.com/IIT-ML/IJCAI23-CFSC上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Context-Aware Feature Selection and Classification
We propose a joint model that performs instance-level feature selection and classification. For a given case, the joint model first skims the full feature vector, decides which features are relevant for that case, and makes a classification decision using only the selected features, resulting in compact, interpretable, and case-specific classification decisions. Because the selected features depend on the case at hand, we refer to this approach as context-aware feature selection and classification. The model can be trained on instances that are annotated by experts with both class labels and instance-level feature selections, so it can select instance-level features that humans would use. Experiments on several datasets demonstrate that the proposed model outperforms eight baselines on a combined classification and feature selection measure, and is able to better emulate the ground-truth instance-level feature selections. The supplementary materials are available at https://github.com/IIT-ML/IJCAI23-CFSC.
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