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Marginal discriminant projections: An adaptable margin discriminant approach to feature reduction and extraction

机译:边缘判别投影:一种适用于特征缩减和提取的自适应边缘判别方法

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摘要

For pattern analysis and recognition, it is necessary to find the meaningful low-dimensional representation of data in general. In the past decades, subspace learning methods have been regarded as the useful tools for feature extraction and dimensionality reduction. Without loss of generality, the linear subspace learning algorithms can be explained as the enhancement of the affinity and repulsion of several data pairs. Based on this point of view, a novel linear discriminant method, termed Marginal Discriminant Projections (MDP), is proposed to learn the marginal subspace. Rather than the existing marginal learning method, the maladjusted learning problem is alleviated by adopting a hierarchical fuzzy clustering approach, where the discriminative margin can be found adaptively and the iterative objective optimization is avoided. In addition, the proposed method is immune from the well-known curse of dimensionality problem, with respect to the presented subspace learning framework. Experiments on extensive datasets demonstrate the effectiveness of the proposed MDP for discriminative learning and recognition tasks.
机译:对于模式分析和识别,通常需要找到有意义的低维数据表示形式。在过去的几十年中,子空间学习方法已被视为用于特征提取和降维的有用工具。不失一般性,可以将线性子空间学习算法解释为几个数据对的亲和力和排斥力的增强。基于这种观点,提出了一种新的线性判别方法,称为边际判别投影(MDP),以学习边际子空间。不同于现有的边际学习方法,通过采用分层模糊聚类方法缓解了学习不良的问题,该方法可以自适应地找到判别性边际,避免了迭代目标的优化。另外,相对于所提出的子空间学习框架,所提出的方法不受维度问题的众所周知的诅咒。在广泛的数据集上进行的实验证明了所提出的MDP对于区分性学习和识别任务的有效性。

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