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Unsupervised and Semi-supervised Dimensionality Reduction with Self-Organizing Incremental Neural Network and Graph Similarity Constraints

机译:具有自组织增量神经网络和图相似性约束的无监督和半监督降维

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摘要

The complexity of optimizations in semi-supervised dimensionality reduction methods has limited their usage. In this paper, an unsupervised and semi-supervised nonlinear dimensionality reduction method that aims at lower space complexity is proposed. First, a positive and negative competitive learning strategy is introduced to the single layered Self-Organizing Incremental Neural Network (SOINN) to process partially labeled datasets. Then, we formulate the dimensionality reduction of SOINN weight vectors as a quadratic programming problem with graph similarities calculated from previous step as constraints. Finally, an approximation of distances between newly arrived samples and the SOINN weight vectors is proposed to complete the dimensionality reduction task. Experiments are carried out on two artificial datasets and the NSL-KDD dataset comparing with Isomap, Transductive Support Vector Machine etc. The results show that the proposed method is effective in dimensionality reduction and an efficient alternate transductive learner.
机译:半监督降维方法中优化的复杂性限制了它们的使用。本文提出了一种针对低空间复杂度的无监督半监督非线性降维方法。首先,将正负竞争学习策略引入单层自组织增量神经网络(SOINN),以处理部分标记的数据集。然后,我们将SOINN权向量的降维公式化为二次规划问题,并以从上一步计算出的图相似度作为约束。最后,提出了新到达的样本与SOINN权向量之间距离的近似值,以完成降维任务。在两个人工数据集和NSL-KDD数据集上进行了实验,并与Isomap,Transduction Support Vector Machine等进行了比较。结果表明,该方法在降维方面是有效的,并且是一种有效的替代Transduction学习器。

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