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SemiFREE: Semisupervised Feature Selection With Fuzzy Relevance and Redundancy

Keyu Liu, Tianrui Li, Xibei Yang, Hongmei Chen, Jie Wang, Zhixuan Deng

2023IEEE Transactions on Fuzzy Systems53 citationsDOI

Abstract

Feature selection, as an effective dimensionality reduction technique, is favored in preprocessing data. However, most existing algorithms are solely liable for labeled or unlabeled data, whereas a limited portion of real-world data is annotated with labels. In this article, we therefore propose a novel scheme named SemiFREE, i.e., semisupervised feature selection with fuzzy relevance and redundancy. First, both labeled and unlabeled samples are assigned with fuzzy decisions that allow class membership to naturally express the fuzziness or uncertainty in data labeling. Second, sample similarities in feature space and fuzzy decision are captured to induce fuzzy information measures for redefining the feature relevance and redundancy. Finally, adhering to the principle of relevance-maximization and redundancy-minimization, SemiFREE leverages the forward sequential searching strategy to identify qualified features progressively. Extensive experiments demonstrate the superiority of SemiFREE in the presence of partially labeled data against some other well-established feature selection algorithms.

Topics & Concepts

Redundancy (engineering)Feature selectionArtificial intelligenceMinimum redundancy feature selectionComputer scienceFuzzy logicPattern recognition (psychology)PreprocessorData miningDimensionality reductionRelevance (law)Curse of dimensionalityFeature (linguistics)MaximizationFuzzy classificationMachine learningFuzzy setMathematicsPhilosophyLinguisticsLawPolitical scienceMathematical optimizationOperating systemRough Sets and Fuzzy LogicImage Retrieval and Classification TechniquesMachine Learning and Data Classification
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