数据降维对于提高高维数据处理的效率具有重要意义,稀疏编码是目前受到广泛关注的主流降维方法。针对该方法在降维过程中不能保持样本空间几何结构信息的不足,提出一种基于谱回归和图正则最小二乘回归的改进方案,以2个图像数据集和2个基因表达数据集为样本的实验表明该方法优于未加改进的稀疏编码降维法。
Data dimension reduction is significant to research high- dimensional data. Sparse concept coding receives widespread attention, but the sparse representation coefficients fail to maintain the essential structure of the data. In response to this discovery, a method based on spectral regression and graph regularization least square regression for data dimension reduction is proposed. The experiments on two image data sets and two gene expression data sets show the proposed method is better than the unimproved sparse concept coding.