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Direction Concentration Learning: Enhancing Congruency in Machine Learning

机译:方向集中学习:提高机器学习的同时

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摘要

One of the well-known challenges in computer vision tasks is the visual diversity of images, which could result in an agreement or disagreement between the learned knowledge and the visual content exhibited by the current observation. In this work, we first define such an agreement in a concepts learning process as congruency. Formally, given a particular task and sufficiently large dataset, the congruency issue occurs in the learning process whereby the task-specific semantics in the training data are highly varying. We propose a Direction Concentration Learning (DCL) method to improve congruency in the learning process, where enhancing congruency influences the convergence path to be less circuitous. The experimental results show that the proposed DCL method generalizes to state-of-the-art models and optimizers, as well as improves the performances of saliency prediction task, continual learning task, and classification task. Moreover, it helps mitigate the catastrophic forgetting problem in the continual learning task. The code is publicly available at https://github.com/luoyan407/congruency.
机译:计算机视觉任务中的众所周知的挑战之一是图像的视觉多样性,这可能导致学习知识与当前观察所呈现的视觉内容之间的协议或分歧。在这项工作中,我们首先在概念学习过程中定义这样的协议作为一致性。正式地,给定特定任务和足够大的数据集,在学习过程中发生同时性问题,其中训练数据中的任务特定语义是高度不同的。我们提出了一个方向集中学习(DCL)方法,以提高学习过程中的一致性,其中增强的同时影响收敛路径较少迂回。实验结果表明,所提出的DCL方法推广到最先进的模型和优化器,并提高了显着性预测任务,持续学习任务和分类任务的性能。此外,它有助于减轻持续学习任务中的灾难性遗忘问题。该代码在https://github.com/luoyan407/congruency上公开提供。

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