A Classification Algorithm Based on Improved Locally Linear Embedding

Pub Date : 2024-05-22 DOI:10.4018/ijcini.344020
Hui Wang, Tie Cai, Dongsheng Cheng, Kangshun Li, Ying Zhou
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Abstract

The current classification is difficult to overcome the high-dimension classification problems. So, we will design the decreasing dimension method. Locally linear embedding is that the local optimum gradually approaches the global optimum, especially the complicated manifold learning problem used in big data dimensionality reduction needs to find an optimization method to adjust k-nearest neighbors and extract dimensionality. Therefore, we intend to use orthogonal mapping to find the optimization closest neighbors k, and the design is based on the Lebesgue measure constraint processing technology particle swarm locally linear embedding to improve the calculation accuracy of popular learning algorithms. So, we propose classification algorithm based on improved locally linear embedding. The experiment results show that the performance of proposed classification algorithm is best compared with the other algorithm.
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基于改进局部线性嵌入的分类算法
目前的分类方法难以克服高维分类问题。因此,我们将设计降维方法。局部线性嵌入是局部最优逐渐接近全局最优,特别是大数据降维中使用的复杂流形学习问题,需要找到一种优化方法来调整k近邻,提取维度。因此,我们拟采用正交映射寻找优化近邻k,并设计基于Lebesgue度量约束处理技术的粒子群局部线性嵌入,以提高流行学习算法的计算精度。因此,我们提出了基于改进的局部线性嵌入的分类算法。实验结果表明,与其他算法相比,所提出的分类算法性能最佳。
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