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Jul, 2022
利用流形先验在模型训练中融入远程学习
Distance Learner: Incorporating Manifold Prior to Model Training
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Aditya Chetan, Nipun Kwatra
TL;DR
本研究提出了Distance Learner方法,利用“流形假设”作为先验知识,对于DNN-based分类器进行训练,结果表明Distance Learner相比标准分类器学习到更有意义的分类边界,并且在对抗鲁棒性任务中表现出色。
Abstract
The
manifold hypothesis
(real world data concentrates near low-dimensional manifolds) is suggested as the principle behind the effectiveness of
machine learning
algorithms in very high dimensional problems that a
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