CVJun 17, 2021

Deep Contrastive Graph Representation via Adaptive Homotopy Learning

arXiv:2106.09244v16 citations
Originality Incremental advance
AI Analysis

This work addresses a flexibility limitation in homotopy-based machine learning methods, offering an incremental improvement for researchers in graph representation and contrastive learning.

The paper tackled the lack of adaptiveness in homotopy models by proposing an adaptive homotopy framework, which improved contrastive learning to achieve unsupervised deep feature extraction with validated superiority on benchmark datasets.

Homotopy model is an excellent tool exploited by diverse research works in the field of machine learning. However, its flexibility is limited due to lack of adaptiveness, i.e., manual fixing or tuning the appropriate homotopy coefficients. To address the problem above, we propose a novel adaptive homotopy framework (AH) in which the Maclaurin duality is employed, such that the homotopy parameters can be adaptively obtained. Accordingly, the proposed AH can be widely utilized to enhance the homotopy-based algorithm. In particular, in this paper, we apply AH to contrastive learning (AHCL) such that it can be effectively transferred from weak-supervised learning (given label priori) to unsupervised learning, where soft labels of contrastive learning are directly and adaptively learned. Accordingly, AHCL has the adaptive ability to extract deep features without any sort of prior information. Consequently, the affinity matrix formulated by the related adaptive labels can be constructed as the deep Laplacian graph that incorporates the topology of deep representations for the inputs. Eventually, extensive experiments on benchmark datasets validate the superiority of our method.

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