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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Trace ratio criterion based generalized discriminative learning for semi-supervised dimensionality reduction
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Trace ratio criterion based generalized discriminative learning for semi-supervised dimensionality reduction

机译:基于跟踪比率准则的广义判别学习的半监督降维

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摘要

Dealing with high-dimensional data has always been a major problem in many pattern recognition and machine learning applications. Trace ratio criterion is a criterion that can be applicable to many dimensionality reduction methods as it directly reflects Euclidean distance between data points of within or between classes. In this paper, we analyze the trace ratio problem and propose a new efficient algorithm to find the optimal solution. Based on the proposed algorithm, we are able to derive an orthogonal constrained semi-supervised learning framework. The new algorithm incorporates unlabeled data into training procedure so that it is able to preserve the discriminative structure as well as geometrical structure embedded in the original dataset. Under such a framework, many existing semi-supervised dimensionality reduction methods such as SDA, Lap-LDA, SSDR, SSMMC, can be improved using our proposed framework, which can also be used to formulate a corresponding kernel framework for handling nonlinear problems. Theoretical analysis indicates that there are certain relationships between linear and nonlinear methods. Finally, extensive simulations on synthetic dataset and real world dataset are presented to show the effectiveness of our algorithms. The results demonstrate that our proposed algorithm can achieve great superiority to other state-of-art algorithms.
机译:在许多模式识别和机器学习应用程序中,处理高维数据一直是一个主要问题。痕量比率标准是可以适用于许多降维方法的标准,因为它直接反映了类内或类之间的数据点之间的欧几里德距离。在本文中,我们分析了痕量比问题,并提出了一种新的有效算法来寻找最佳解。基于所提出的算法,我们能够推导正交约束的半监督学习框架。新算法将未标记的数据合并到训练过程中,从而能够保留判别结构以及嵌入到原始数据集中的几何结构。在这样的框架下,可以使用我们提出的框架来改进许多现有的半监督降维方法,例如SDA,Lap-LDA,SSDR,SSMMC,也可以用来制定相应的内核框架来处理非线性问题。理论分析表明,线性方法和非线性方法之间存在一定关系。最后,对合成数据集和现实世界数据集进行了广泛的仿真,以证明我们算法的有效性。结果表明,我们提出的算法可以比其他现有技术有很大的优势。

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