Epoch-Evolving Gaussian Process Guided Learning for Classification | IEEE Journals & Magazine | IEEE Xplore

Epoch-Evolving Gaussian Process Guided Learning for Classification


Abstract:

The conventional mini-batch gradient descent algorithms are usually trapped in the local batch-level distribution information, resulting in the “zig-zag” effect in the le...Show More

Abstract:

The conventional mini-batch gradient descent algorithms are usually trapped in the local batch-level distribution information, resulting in the “zig-zag” effect in the learning process. To characterize the correlation information between the batch-level distribution and the global data distribution, we propose a novel learning scheme called epoch-evolving Gaussian process guided learning (GPGL) to encode the global data distribution information in a non-parametric way. Upon a set of class-aware anchor samples, our GP model is built to estimate the class distribution for each sample in mini-batch through label propagation from the anchor samples to the batch samples. The class distribution, also named the context label, is provided as a complement for the ground-truth one-hot label. Such a class distribution structure has a smooth property and usually carries a rich body of contextual information that is capable of speeding up the convergence process. With the guidance of the context label and ground-truth label, the GPGL scheme provides a more efficient optimization through updating the model parameters with a triangle consistency loss. Furthermore, our GPGL scheme can be generalized and naturally applied to the current deep models, outperforming the state-of-the-art optimization methods on six benchmark datasets.
Published in: IEEE Transactions on Neural Networks and Learning Systems ( Volume: 35, Issue: 1, January 2024)
Page(s): 326 - 337
Date of Publication: 23 May 2022

ISSN Information:

PubMed ID: 35604997

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