Abstract

Semantic gap is common issues in classification tasks. Different from traditional classification tasks, the semantic gap problem can introduce serious error propagation for hierarchical classification. In this paper, we propose a hierarchical feature selection method with label enhancement (HFSLE) to solve this challenge, which estimates the label distribution and selects subsets of features for each subtask. Firstly, HFSLE combines the label enhancement and hierarchical feature selection process so that the label enhancement benefits from the feedback of the loss function. Then, the label enhancement is constrained by the consistency of the parent-child distribution to obtain a plausible label distribution. Finally, feature selection is optimized based on intra-class consistency hierarchical regularization terms, which unifies feature subsets with hierarchical semantic descriptions to narrow the semantic gap. HFSLE gives a new perspective on the hierarchical feature selection based on label distribution rather than the original logical label. To demonstrate the superiority of the method, we compared it with six well-established feature selection methods on eight hierarchical data sets, and analyzed the convergence and robustness of the method. Extensive experiments demonstrate that the proposed method can perform favorably against advanced hierarchical feature selection approaches.

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