作者
Jieping Ye, Ravi Janardan, Qi Li, Haesun Park
发表日期
2006/8/28
期刊
IEEE Transactions on Knowledge and Data Engineering
卷号
18
期号
10
页码范围
1312-1322
出版商
IEEE
简介
High-dimensional data appear in many applications of data mining, machine learning, and bioinformatics. Feature reduction is commonly applied as a preprocessing step to overcome the curse of dimensionality. Uncorrelated Linear Discriminant Analysis (ULDA) was recently proposed for feature reduction. The extracted features via ULDA were shown to be statistically uncorrelated, which is desirable for many applications. In this paper, an algorithm called ULDA/QR is proposed to simplify the previous implementation of ULDA. Then, the ULDA/GSVD algorithm is proposed, based on a novel optimization criterion, to address the singularity problem which occurs in undersampled problems, where the data dimension is larger than the sample size. The criterion used is the regularized version of the one in ULDA/QR. Surprisingly, our theoretical result shows that the solution to ULDA/GSVD is independent of the value of …
引用总数
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学术搜索中的文章
J Ye, R Janardan, Q Li, H Park - IEEE Transactions on Knowledge and Data …, 2006