4.7 Article

Adversarial Lagrangian integrated contrastive embedding for limited size datasets

期刊

NEURAL NETWORKS
卷 160, 期 -, 页码 122-131

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.neunet.2022.12.023

关键词

Deep learning; Adversarial transfer contrastive embedding; Small and limited datasets; Sparsity and low -rank constraints; Augmented Lagrangian multipliers

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This study proposes an adversarial Lagrangian integrated contrastive embedding (ALICE) method for small-sized datasets. The method demonstrates improved accuracy and training convergence through pre-trained adversarial transfer. It also investigates an adversarial integrated contrastive model with various augmentation techniques and incorporates multi-objective augmented Lagrangian multipliers to encourage low-rank and sparsity.
Certain datasets contain a limited number of samples with highly various styles and complex structures. This study presents a novel adversarial Lagrangian integrated contrastive embedding (ALICE) method for small-sized datasets. First, the accuracy improvement and training convergence of the proposed pre-trained adversarial transfer are shown on various subsets of datasets with few samples. Second, a novel adversarial integrated contrastive model using various augmentation techniques is investigated. The proposed structure considers the input samples with different appearances and gen-erates a superior representation with adversarial transfer contrastive training. Finally, multi-objective augmented Lagrangian multipliers encourage the low-rank and sparsity of the presented adversarial contrastive embedding to adaptively estimate the coefficients of the regularizers automatically to the optimum weights. The sparsity constraint suppresses less representative elements in the feature space. The low-rank constraint eliminates trivial and redundant components and enables superior generalization. The performance of the proposed model is verified by conducting ablation studies by using benchmark datasets for scenarios with small data samples.(c) 2022 Elsevier Ltd. All rights reserved.

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